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Documentation
- 1: Installation
- 1.1: Quick Start
- 1.2: Installation Guide
- 1.2.1: Prerequisites
- 1.2.2: Install via Helm
- 1.2.3: Install via OperatorHub
- 1.2.4: The Kiali CR
- 1.2.5: Accessing Kiali
- 1.2.6: Advanced Install
- 1.2.7: Example Install
- 1.2.8:
- 1.3: Deployment Options
- 2: Configuration
- 2.1: Authentication Strategies
- 2.1.1: Anonymous strategy
- 2.1.2: Header strategy
- 2.1.3: OpenID Connect strategy
- 2.1.4: OpenShift strategy
- 2.1.5: Token strategy
- 2.1.6: Session options
- 2.2: Console Customization
- 2.3: Custom Dashboards
- 2.4: Istio Environment
- 2.5: Kiali CR Reference
- 2.6: Multi-cluster
- 2.7: Namespace access control
- 2.8: Namespace Management
- 2.9: No Istiod Access
- 2.10: Prometheus, Jaeger, Grafana
- 2.10.1: Grafana
- 2.10.2: Prometheus
- 2.10.3: Tracing
- 2.10.3.1: Jaeger
- 2.10.3.2: Grafana Tempo
- 2.11: Traffic Health
- 2.12: Virtual Machine workloads
- 3: Features
- 3.1: Application Wizards
- 3.2: Detail Views
- 3.3: Health
- 3.4: Istio Configuration
- 3.5: Istio Infrastructure Status
- 3.6: Multi-cluster
- 3.7: Security
- 3.8: Topology
- 3.9: Tracing
- 3.10: Validation
- 4: Tutorials
- 4.1: Kiali and Grafana Tempo Query integration
- 4.1.1: Introduction
- 4.1.2: Kiali and Tempo setup
- 4.2: Travels Demo - Multicluster
- 4.2.1: Introduction
- 4.2.2: Prerequisites
- 4.2.3: Deploy East cluster
- 4.2.4: Install Istio on East cluster
- 4.2.5: Install Kiali
- 4.2.6: Install Travels on East cluster
- 4.2.7: Deploy West cluster
- 4.2.8: Install Istio on West cluster
- 4.2.9: Configure Kiali for multicluster
- 4.2.10: Install Travels on West cluster
- 4.3: Travels Demo Tutorial
- 4.3.1: Prerequisites
- 4.3.2: Install Travel Demo
- 4.3.3: First Steps
- 4.3.4: Observe
- 4.3.5: Connect
- 4.3.6: Secure
- 4.3.7: Uninstall Travel Demo
- 5: Architecture and Terms
- 5.1: Architecture
- 5.2: Terminology
- 5.2.1: Concepts
- 5.2.2: Networking
- 6: FAQ
- 6.1: Authentication
- 6.2: Distributed Tracing
- 6.3: General
- 6.4: Graph
- 6.5: Installation
- 6.6: Istio Component Status
- 6.7: Validations
- 7: Contribution Guidelines
- 7.1: How to Contribute
- 7.2: Development Environment
- 8: Kiali Integrations
- 8.1: OSSM Console
1 - Installation
1.1 - Quick Start
You can quickly install and try Kiali via one of the following two methods.
Install via Istio Addons
If you downloaded Istio, the easiest way to install and try Kiali is by running:
kubectl apply -f ${ISTIO_HOME}/samples/addons/kiali.yaml
To uninstall:
kubectl delete -f ${ISTIO_HOME}/samples/addons/kiali.yaml --ignore-not-found
Install via Helm
To install the latest version of Kiali Server using Helm, run the following command:
helm install \
--namespace istio-system \
--set auth.strategy="anonymous" \
--repo https://kiali.org/helm-charts \
kiali-server \
kiali-server
--disable-openapi-validation
(this is needed on some versions of OpenShift, for example).
To uninstall:
helm uninstall --namespace istio-system kiali-server
Access to the UI
Run the following command:
kubectl port-forward svc/kiali 20001:20001 -n istio-system
Then, access Kiali by visiting \https://localhost:20001/ in your preferred web browser.
1.2 - Installation Guide
This section describes the production installation methods available for Kiali.
The recommended way to deploy Kiali is via the Kiali Operator, either using Helm Charts or OperatorHub.
The Kiali Operator is a Kubernetes Operator and manages your Kiali installation. It watches the Kiali Custom Resource (Kiali CR), a YAML file that holds the deployment configuration.
1.2.1 - Prerequisites
Istio
Before you install Kiali you must have already installed Istio along with its telemetry storage addon (i.e. Prometheus). You might also consider installing Istio’s optional tracing addon (i.e. Jaeger) and optional Grafana addon but those are not required by Kiali. Refer to the Istio documentation for details.
Enable the Debug Interface
Like istioctl
, Kiali makes use of Istio’s port 8080 “Debug Interface”. Despite the naming, this is required for accessing the status of the proxies
and the Istio registry.
The ENABLE_DEBUG_ON_HTTP
setting controls the relevant access. Istio suggests to disable this for security, but Kiali requires ENABLE_DEBUG_ON_HTTP=true
,
which is the default.
For more information, see the Istio documentation.
Version Compatibility
Each Kiali release is tested against the most recent Istio release. In general, Kiali tries to maintain compatibility with older Istio releases and Kiali versions later than those posted in the below table may work, but such combinations are not tested and will not be supported. Known incompatibilities are noted in the compatibility table below.
Istio | Kiali Min | Kiali Max | Notes |
---|---|---|---|
1.19 | 1.72.0 | ||
1.18 | 1.67.0 | 1.73.0 | |
1.17 | 1.63.2 | 1.66.1 | Avoid 1.63.0,1.63.1 due to a regression. |
1.16 | 1.59.1 | 1.63.2 | Istio 1.16 is out of support. Avoid 1.62.0,1.63.0,1.63.1 due to a regression. |
1.15 | 1.55.1 | 1.59.0 | Istio 1.15 is out of support. |
1.14 | 1.50.0 | 1.54 | Istio 1.14 is out of support. |
1.13 | 1.45.1 | 1.49 | Istio 1.13 is out of support. |
1.12 | 1.42.0 | 1.44 | Istio 1.12 is out of support. |
1.11 | 1.38.1 | 1.41 | Istio 1.11 is out of support. |
1.10 | 1.34.1 | 1.37 | Istio 1.10 is out of support. |
1.9 | 1.29.1 | 1.33 | Istio 1.9 is out of support. |
1.8 | 1.26.0 | 1.28 | Istio 1.8 removes all support for mixer/telemetry V1, as does Kiali 1.26.0. Use earlier versions of Kiali for mixer support. |
1.7 | 1.22.1 | 1.25 | Istio 1.7 istioctl no longer installs Kiali. Use the Istio samples/addons for quick demo installs. Istio 1.7 is out of support. |
1.6 | 1.18.1 | 1.21 | Istio 1.6 introduces CRD and Config changes, Kiali 1.17 is recommended for Istio < 1.6. |
Maistra Version Compatibility
Maistra |
SMCP CR |
Kiali |
Notes |
---|---|---|---|
2.4 | 2.4 | 1.65 | Using Maistra 2.4 to install service mesh control plane 2.4 requires Kiali Operator v1.65. Other versions are not compatible. |
2.4 | 2.3 | 1.57 | Using Maistra 2.4 to install service mesh control plane 2.3 requires Kiali Operator v1.65. Other versions are not compatible. |
2.4 | 2.2 | 1.48 | Using Maistra 2.4 to install service mesh control plane 2.2 requires Kiali Operator v1.65. Other versions are not compatible. |
2.3 | 2.3 | 1.57 | Using Maistra 2.3 to install service mesh control plane 2.3 requires Kiali Operator v1.57. Other versions are not compatible. |
2.3 | 2.2 | 1.48 | Using Maistra 2.3 to install service mesh control plane 2.2 requires Kiali Operator v1.57. Other versions are not compatible. |
2.2 | 2.2 | 1.48 | Using Maistra 2.2 to install service mesh control plane 2.2 requires Kiali Operator v1.48. Other versions are not compatible. |
n/a | 2.1 | n/a | Service mesh control plane 2.1 is out of support. |
n/a | 2.0 | n/a | Service mesh control plane 2.0 is out of support. |
n/a | 1.1 | n/a | Service mesh control plane 1.1 is out of support. |
n/a | 1.0 | n/a | Service mesh control plane 1.0 is out of support. |
OpenShift Service Mesh Version Compatibility
OpenShift
If you are running Red Hat OpenShift Service Mesh (RH OSSM), use only the bundled version of Kiali.OSSM |
Kiali |
Notes |
---|---|---|
2.4 | 1.65 | |
2.3 | 1.57 | |
2.2 | 1.48 |
Browser Compatibility
Kiali requires a modern web browser and supports the last two versions of Chrome, Firefox, Safari or Edge.
Hardware Requirements
Any machine capable of running a Kubernetes based cluster should also be able to run Kiali.
However, Kiali tends to grow in resource usage as your cluster grows. Usually the more namespaces and workloads you have in your cluster, the more memory you will need to allocate to Kiali.
Platform-specific requirements
OpenShift
If you are installing on OpenShift, you must grant the cluster-admin
role to the user that is installing Kiali. If OpenShift is installed locally on the machine you are using, the following command should log you in as user system:admin
which has this cluster-admin
role:
$ oc login -u system:admin
kubectl
is used to interact with the cluster environment. On OpenShift you can simply replace kubectl
with oc
, unless otherwise noted.
Google Cloud Private Cluster
Private clusters on Google Cloud have network restrictions. Kiali needs your cluster’s firewall to allow access from the Kubernetes API to the Istio Control Plane namespace, for both the 8080
and 15000
ports.
To review the master access firewall rule:
gcloud compute firewall-rules list --filter="name~gke-${CLUSTER_NAME}-[0-9a-z]*-master"
To replace the existing rule and allow master access:
gcloud compute firewall-rules update <firewall-rule-name> --allow <previous-ports>,tcp:8080,tcp:15000
1.2.2 - Install via Helm
Introduction
Helm is a popular tool that lets you manage Kubernetes applications. Applications are defined in a package named Helm chart, which contains all of the resources needed to run an application.
Kiali has a Helm Charts Repository at https://kiali.org/helm-charts. Two Helm Charts are provided:
- The
kiali-operator
Helm Chart installs the Kiali operator which in turn installs Kiali when you create a Kiali CR. - The
kiali-server
Helm Chart installs a standalone Kiali without the need of the Operator nor a Kiali CR.
kiali-server
Helm Chart does not provide all the functionality that the Operator
provides. Some features you read about in the documentation may only be available if
you install Kiali using the Operator. Therefore, although the kiali-server
Helm Chart
is actively maintained, it is not recommended and is only provided for convenience.
If using Helm, the recommended method is to install the kiali-operator
Helm Chart
and then create a Kiali CR to let the Operator deploy Kiali.
Make sure you have the helm
command available by following the
Helm installation docs.
Adding the Kiali Helm Charts repository
Add the Kiali Helm Charts repository with the following command:
$ helm repo add kiali https://kiali.org/helm-charts
helm
commands in this page assume that you added the Kiali Helm Charts repository as shown.
If you already added the repository, you may want to update your local cache to fetch latest definitions by running:
$ helm repo update
Installing Kiali using the Kiali operator
Once you’ve added the Kiali Helm Charts repository, you can install the latest Kiali Operator along with the latest Kiali server by running the following command:
$ helm install \
--set cr.create=true \
--set cr.namespace=istio-system \
--namespace kiali-operator \
--create-namespace \
kiali-operator \
kiali/kiali-operator
The --namespace kiali-operator
and --create-namespace
flags instructs to
create the kiali-operator
namespace (if needed), and deploy the Kiali
operator on it. The --set cr.create=true
and --set cr.namespace=istio-system
flags instructs to create a Kiali CR in the
istio-system
namespace. Since the Kiali CR is created in advance, as soon as
the Kiali operator starts, it will process it to deploy Kiali.
The Kiali Operator Helm Chart is configurable. Check available options and default values by running:
$ helm show values kiali/kiali-operator
--version X.Y.Z
flag to the helm install
and helm show values
commands to work with a specific version of Kiali.
The kiali-operator
Helm Chart mirrors all settings of the Kiali CR as chart
values that you can configure using regular --set
flags. For example, the
Kiali CR has a spec.server.web_root
setting which you can configure in the
kiali-operator
Helm Chart by passing --set cr.spec.server.web_root=/your-path
to the helm install
command.
For more information about the Kiali CR, see the Creating and updating the Kiali CR page.
Operator-Only Install
To install only the Kiali Operator, omit the --set cr.create
and
--set cr.namespace
flags of the helm command previously shown. For example:
$ helm install \
--namespace kiali-operator \
--create-namespace \
kiali-operator \
kiali/kiali-operator
This will omit creation of the Kiali CR, which you will need to create later to install Kiali Server. This option is good if you plan to do large customizations to the installation.
Installing Multiple Instances of Kiali
By installing a single Kiali operator in your cluster, you can install multiple instances of Kiali by simply creating multiple Kiali CRs. For example, if you have two Istio control planes in namespaces istio-system
and istio-system2
, you can create a Kiali CR in each of those namespaces to install a Kiali instance in each control plane.
If you wish to install multiple Kiali instances in the same namespace, or if you need the Kiali instance to have different resource names than the default of kiali
, you can specify spec.deployment.instance_name
in your Kiali CR. The value for that setting will be used to create a unique instance of Kiali using that instance name rather than the default kiali
. One use-case for this is to be able to have unique Kiali service names across multiple Kiali instances in order to be able to use certain routers/load balancers that require unique service names.
spec.deployment.instance_name
field is used for the Kiali resource names, including the Service name, you must ensure the value you assign this setting follows the Kubernetes DNS Label Name rules. If it does not, the operator will abort the installation. And note that because Kiali uses this as a prefix (it may append additional characters for some resource names) its length is limited to 40 characters.
Standalone Kiali installation
To install the Kiali Server without the operator, use the kiali-server
Helm Chart:
$ helm install \
--namespace istio-system \
kiali-server \
kiali/kiali-server
The kiali-server
Helm Chart mirrors all settings of the Kiali CR as chart
values that you can configure using regular --set
flags. For example, the
Kiali CR has a spec.server.web_fqdn
setting which you can configure in the
kiali-server
Helm Chart by passing the --set server.web_fqdn
flag as
follows:
$ helm install \
--namespace istio-system \
--set server.web_fqdn=example.com \
kiali-server \
kiali/kiali-server
Upgrading Helm installations
If you want to upgrade to a newer Kiali version (or downgrade to older
versions), you can use the regular helm upgrade
commands. For example, the
following command should upgrade the Kiali Operator to the latest version:
$ helm upgrade \
--namespace kiali-operator \
--reuse-values \
kiali-operator \
kiali/kiali-operator
WARNING: No migration paths are provided. However, Kiali is a stateless
application and if the helm upgrade
command fails, please uninstall the
previous version and then install the new desired version.
Managing configuration of Helm installations
After installing either the kiali-operator
or the kiali-server
Helm Charts,
you may be tempted to manually modify the created resources to modify the
installation. However, we recommend using helm upgrade
to update your
installation.
For example, assuming you have the following installation:
$ helm list -n kiali-operator
NAME NAMESPACE REVISION UPDATED STATUS CHART APP VERSION
kiali-operator kiali-operator 1 2021-09-14 18:00:45.320351026 -0500 CDT deployed kiali-operator-1.40.0 v1.40.0
Notice that the current installation is version 1.40.0
of the
kiali-operator
. Let’s assume you want to use your own mirrors of the Kiali
Operator container images. You can update your installation with the following
command:
$ helm upgrade \
--namespace kiali-operator \
--reuse-values \
--set image.repo=your_mirror_registry_url/owner/kiali-operator-repo \
--set image.tag=your_mirror_tag \
--version 1.40.0 \
kiali-operator \
kiali/kiali-operator
--reuse-values
flag to take the
configuration of your current installation. Then, you only need to specify the
new settings you want to change using --set
flags.
--version X.Y.Z
flag with the
version of your current installation. Otherwise, you may end up upgrading to a
new version.
Uninstalling
Removing the Kiali operator and managed Kialis
If you used the kiali-operator
Helm chart, first you must ensure that all
Kiali CRs are deleted. For example, the following command will agressively
delete all Kiali CRs in your cluster:
$ kubectl delete kiali --all --all-namespaces
The previous command may take some time to finish while the Kiali operator removes all Kiali installations.
Then, remove the Kiali operator using a standard helm uninstall
command. For
example:
$ helm uninstall --namespace kiali-operator kiali-operator
$ kubectl delete crd kialis.kiali.io
kialis.kiali.io
CRD because
Helm won’t delete it.
Known problem: uninstall hangs (unable to delete the Kiali CR)
Typically this happens if not all Kiali CRs are deleted prior to uninstalling the operator. To force deletion of a Kiali CR, you need to clear its finalizer. For example:
$ kubectl patch kiali kiali -n istio-system -p '{"metadata":{"finalizers": []}}' --type=merge
Removing standalone Kiali
If you installed a standalone Kiali by using the kiali-server
Helm chart, use
the standard helm uninstall
commands. For example:
$ helm uninstall --namespace istio-system kiali-server
1.2.3 - Install via OperatorHub
Introduction
The OperatorHub is a website that contains a catalog of Kubernetes Operators. Its aim is to be the central location to find Operators.
The OperatorHub relies in the Operator Lifecycle Manager (OLM) to install, manage and update Operators on any Kubernetes cluster.
The Kiali Operator is being published to the OperatorHub. So, you can use the OLM to install and manage the Kiali Operator installation.
Installing the Kiali Operator using the OLM
Go to the Kiali Operator page in the OperatorHub: https://operatorhub.io/operator/kiali.
You will see an Install button at the right of the page. Press it and you will be presented with the installation instructions. Follow these instructions to install and manage the Kiali Operator installation using OLM.
Afterwards, you can create the Kiali CR to install Kiali.
Installing the Kiali Operator in OpenShift
The OperatorHub is bundled in the OpenShift console. To install the Kiali Operator, simply go to the OperatorHub in the OpenShift console and search for the Kiali Operator. Then, click on the Install button and follow the instruction on the screen.
Afterwards, you can create the Kiali CR to install Kiali.
1.2.4 - The Kiali CR
The Kiali Operator watches the Kiali Custom Resource (Kiali CR), a custom resource that contains the Kiali Server deployment configuration. Creating, updating, or removing a Kiali CR will trigger the Kiali Operator to install, update, or remove Kiali.
If you want the operator to re-process the Kiali CR (called “reconciliation”) without having to change the Kiali CR’s spec
fields, you can modify any annotation on the Kiali CR itself. This will trigger the operator to reconcile the current state of the cluster with the desired state defined in the Kiali CR, modifying cluster resources if necessary to get them into their desired state. Here is an example illustrating how you can modify an annotation on a Kiali CR:
$ kubectl annotate kiali my-kiali -n istio-system --overwrite kiali.io/manual-reconcile="$(date)"
The Operator provides comprehensive defaults for all properties of the Kiali
CR. Hence, the minimal Kiali CR does not have a spec
:
apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
name: kiali
Assuming you saved the previous YAML to a file named my-kiali-cr.yaml
, and that you are
installing Kiali in the same default namespace as Istio, create the resource with the following command:
$ kubectl apply -f my-kiali-cr.yaml -n istio-system
Once created, the Kiali Operator should shortly be notified and will process the resource, performing the Kiali
installation. You can wait for the Kiali Operator to finish the reconcilation by using the standard kubectl wait
command and ask for it to wait for the Kiali CR to achieve the condition of Successful
. For example:
kubectl wait --for=condition=Successful kiali kiali -n istio-system
You can check the installation progress by inspecting the status
attribute of the created Kiali CR:
$ kubectl describe kiali kiali -n istio-system
Name: kiali
Namespace: istio-system
Labels: <none>
Annotations: <none>
API Version: kiali.io/v1alpha1
Kind: Kiali
(...some output is removed...)
Status:
Conditions:
Last Transition Time: 2021-09-15T17:17:40Z
Message: Running reconciliation
Reason: Running
Status: True
Type: Running
Deployment:
Instance Name: kiali
Namespace: istio-system
Environment:
Is Kubernetes: true
Kubernetes Version: 1.21.2
Operator Version: v1.40.0
Progress:
Duration: 0:00:16
Message: 5. Creating core resources
Events: <none>
You may want to check the example install page to see some examples where the Kiali CR has a spec
and to better
understand its structure. Most available attributes of the Kiali CR are
described in the pages of the Installation and
Configuration sections of the
documentation. For a complete list, see the Kiali CR Reference.
spec.deployment.accessible_namespaces
setting in the CR. See the
Namespace Management page
for more information.
Once you created a Kiali CR, you can manage your Kiali installation by editing the resource using the usual Kubernetes tools:
$ kubectl edit kiali kiali -n istio-system
To confirm your Kiali CR is valid, you can utilize the Kiali CR validation tool.
1.2.5 - Accessing Kiali
Introduction
After Kiali is succesfully installed you will need to make Kiali accessible to users. This page describes some popular methods of exposing Kiali for use.
If exposing Kiali in a custom way, you may need to set some configurations to make Kiali aware of how users will access Kiali.
istio-system
namespace.
Accessing Kiali using port forwarding
You can use port-forwarding to access Kiali by running any of these commands:
# If you have oc command line tool
oc port-forward svc/kiali 20001:20001 -n istio-system
# If you have kubectl command line tool
kubectl port-forward svc/kiali 20001:20001 -n istio-system
These commands will block. Access Kiali by visiting https://localhost:20001/
in
your preferred web browser.
Accessing Kiali through an Ingress
You can configure Kiali to be installed with an
Ingress resource
defined, allowing you to access
the Kiali UI through the Ingress. By default, an Ingress will not be created. You can
enable a simple Ingress by setting spec.deployment.ingress.enabled
to true
in the Kiali
CR (a similar setting for the server Helm chart is available if you elect to install Kiali
via Helm as opposed to the Kiali Operator).
Exposing Kiali externally through this spec.deployment.ingress
mechanism is a
convenient way of exposing Kiali externally but it will not necessarily work or
be the best way to do it because the way in which you should expose Kiali
externally will be highly dependent on your specific cluster environment and
how services are exposed generally for that environment.
spec.deployment.ingress.enabled: false
. Note that the Route is required
if you configure Kiali to use the auth strategy of openshift
(which is the default
auth strategy Kiali will use when installed on OpenShift).
The default Ingress that is created will be configured for a typical NGinx implementation. If you have your own
Ingress implementation you want to use, you can override the default configuration through
the settings spec.deployment.ingress.override_yaml
and spec.deployment.ingress.class_name
.
More details on customizing the Ingress can be found below.
The Ingress IP or domain name should then be used to access the Kiali UI. To find your Ingress IP or domain name, as per the Kubernetes documentation, try the following command (though this may not work if using Minikube without the ingress addon):
kubectl get ingress kiali -n istio-system -o jsonpath='{.status.loadBalancer.ingress[0].ip}'
If it doesn’t work, unfortunately, it depends on how and where you had setup your cluster. There are several Ingress controllers available and some cloud providers have their own controller or preferred exposure method. Check the documentation of your cloud provider. You may need to customize the pre-installed Ingress rule or expose Kiali using a different method.
Customizing the Ingress resource
The created Ingress resource will route traffic to Kiali regardless of the domain in the URL. You may need a more specific Ingress resource that routes traffic to Kiali only on a specific domain or path. To do this, you can specify route settings.
Alternatively, and for more advanced Ingress configurations, you can provide your own Ingress declaration in the Kiali CR. For example:
deployment.ingress.override_yaml
will be applied
to the created Route. The deployment.ingress.class_name
is ignored on OpenShift.
spec:
deployment:
ingress:
class_name: "nginx"
enabled: true
override_yaml:
metadata:
annotations:
nginx.ingress.kubernetes.io/secure-backends: "true"
nginx.ingress.kubernetes.io/backend-protocol: "HTTPS"
spec:
rules:
- http:
paths:
- path: /kiali
backend:
serviceName: kiali
servicePort: 20001
Accessing Kiali in Minikube
If you enabled the Ingress controller, the default Ingress resource created by the installation (mentioned in the previous section) should be enough to access Kiali. The following command should open Kiali in your default web browser:
xdg-open https://$(minikube ip)/kiali
Accessing Kiali through a LoadBalancer or a NodePort
By default, the Kiali service is created with the ClusterIP
type. To use a
LoadBalancer
or a NodePort
, you can change the service type in the Kiali CR as
follows:
spec:
deployment:
service_type: LoadBalancer
Once the Kiali operator updates the installation, you should be able to use
the kubectl get svc -n istio-system kiali
command to retrieve the external
address (or port) to access Kiali. For example, in the following output Kiali
is assigned the IP 192.168.49.201
, which means that you can access Kiali by
visiting http://192.168.49.201:20001
in a browser:
NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE
kiali LoadBalancer 10.105.236.127 192.168.49.201 20001:31966/TCP,9090:30128/TCP 34d
If you are using the LoadBalancer
service type to directly expose the Kiali
service, you may want to check the available options for the
HTTP Server and
Metrics server.
Accessing Kiali through an Istio Ingress Gateway
If you want to take advantage of Istio’s infrastructure, you can expose Kiali using an Istio Ingress Gateway. The Istio documentation provides a good guide explaining how to expose the sample add-ons. Even if the Istio guide is focused on the sample add-ons, the steps are the same to expose a Kiali installed using this Installation guide.
Accessing Kiali in OpenShift
By default, Kiali is exposed through a Route if installed on OpenShift. The following command should open Kiali in your default web browser:
xdg-open https://$(oc get routes -n istio-system kiali -o jsonpath='{.spec.host}')/console
Specifying route settings
If you are using your own exposure method or if you are using one of the methods mentioned in this page, you may need to configure the route that is being used to access Kiali.
In the Kiali CR, route settings are broken in several attributes. For example,
to specify that Kiali is being accessed under the
https://apps.example.com:8080/dashboards/kiali
URI, you would need to set the
following:
spec:
server:
web_fqdn: apps.example.com
web_port: 8080
web_root: /dashboards/kiali
web_schema: https
If you are letting the installation create an Ingress resource for you, the Ingress will be adjusted to match these route settings. If you are using your own exposure method, these spec.server settings are only making Kiali aware of what its public endpoint is.
It is possible to omit these settings and Kiali may be able to discover some of
these configurations, depending on your exposure method. For example, if you
are exposing Kiali via LoadBalancer
or NodePort
service types, Kiali can
discover most of these settings. If you are using some kind of Ingress, Kiali
will honor X-Forwarded-Proto
, X-Forwarded-Host
and X-Forwarded-Port
HTTP
headers if they are properly injected in the request.
The web_root
receives special treatment, because this is the path where Kiali
will serve itself (both the user interface and its api). This is useful if you
are serving multiple applications under the same domain. It must begin with a
slash and trailing slashes must be omitted. The default value is /kiali
for
Kubernetes and /
for OpenShift.
1.2.6 - Advanced Install
Multiple Istio control planes in the same cluster
Currently, Kiali can manage only one Istio control plane. However, there are certain cases where you may have more than one Istio control plane in your cluster. One of such cases is when performing a Canary upgrade of Istio.
In these cases, you will need to configure in Kiali which control plane you want to manage. This is done by configuring the name of the components of the control plane. This is configured in the Kiali CR and the default values are the following:
spec:
external_services:
istio:
config_map_name: "istio"
istiod_deployment_name: "istiod"
istio_sidecar_injector_config_map_name: "istio-sidecar-injector"
If you want to manage both Istio control planes, simply install two Kiali instances and point each one to a different Istio control plane.
Installing a Kiali Server of a different version than the Operator
When you install the Kiali Operator, it will be configured to install a Kiali Server that is the same version as the operator itself. For example, if you have Kiali Operator v1.34.0 installed, that operator will install Kiali Server v1.34.0. If you upgrade (or downgrade) the Kiali Operator, the operator will in turn upgrade (or downgrade) the Kiali Server.
There are certain use-cases in which you want the Kiali Operator to install a Kiali Server whose version is different than the operator version. Read the following section «Using a custom image registry» section to learn how to configure this setup.
Using a custom image registry
Kiali is released and published to the Quay.io container image registry. There is a repository hosting the Kiali operator images and another one for the Kiali server images.
If you need to mirror the Kiali container images to some other registry, you still can use Helm to install the Kiali operator as follows:
$ helm install \
--namespace kiali-operator \
--create-namespace \
--set image.repo=your.custom.registry/owner/kiali-operator-repo
--set image.tag=your_custom_tag
--set allowAdHocKialiImage=true
kiali-operator \
kiali/kiali-operator
--set allowAdHocKialiImage=true
which allows specifying a
custom image in the Kiali CR. For security reasons, this is disabled by
default.
Then, when creating the Kiali CR, use the following attributes:
spec:
deployment:
image_name: your.custom.registry/owner/kiali-server-repo
image_version: your_custom_tag
Change the default image
As explained earlier, when you install the Kiali Operator, it will be
configured to install a Kiali Server whose image will be pulled from quay.io
and whose version will be the same as the operator. You can ask the operator to
use a different image by setting spec.deployment.image_name
and
spec.deployment.image_version
within the Kiali CR (as explained above).
However, you may wish to alter this default behavior exhibited by the operator.
In other words, you may want the operator to install a different Kiali Server
image by default. For example, if you have an air-gapped environment with its
own image registry that contains its own copy of the Kiali Server image, you
will want the operator to install a Kiali Server that uses that image by
default, as opposed to quay.io/kiali/kiali
. By configuring the operator to do
this, you will not force the authors of Kiali CRs to have to explicitly define
the spec.deployment.image_name
setting and you will not need to enable the
allowAdHocKialiImage
setting in the operator.
To change the default Kiali Server image installed by the operator, set the
environment variable RELATED_IMAGE_kiali_default
in the Kiali Operator
deployment. The value of that environment variable must be the full image tag
in the form repoName/orgName/imageName:versionString
(e.g.
my.internal.registry.io/mykiali/mykialiserver:v1.50.0
). You can do this when
you install the operator via helm:
$ helm install \
--namespace kiali-operator \
--create-namespace \
--set "env[0].name=RELATED_IMAGE_kiali_default" \
--set "env[0].value=my.internal.registry.io/mykiali/mykialiserver:v1.50.0" \
kiali-operator \
kiali/kiali-operator
Development Install
This option installs the latest Kiali Operator and Kiali Server images which are built from the master branches of Kiali GitHub repositories. This option is good for demo and development installations.
helm install \
--set cr.create=true \
--set cr.namespace=istio-system \
--set cr.spec.deployment.image_version=latest \
--set image.tag=latest \
--namespace kiali-operator \
-- create-namespace \
kiali-operator \
kiali/kiali-operator
1.2.7 - Example Install
This is a quick example of installing Kiali. This example will install the operator and two Kiali Servers - one server will require the user to enter credentials at a login screen in order to obtain read-write access and the second server will allow anonymous read-only access.
For this example, assume there is a Minikube Kubernetes cluster running with an
Istio control plane installed in the namespace istio-system
and
the Istio Bookinfo Demo installed in the namespace bookinfo
:
$ kubectl get deployments.apps -n istio-system
NAME READY UP-TO-DATE AVAILABLE AGE
grafana 1/1 1 1 8h
istio-egressgateway 1/1 1 1 8h
istio-ingressgateway 1/1 1 1 8h
istiod 1/1 1 1 8h
jaeger 1/1 1 1 8h
prometheus 1/1 1 1 8h
$ kubectl get deployments.apps -n bookinfo
NAME READY UP-TO-DATE AVAILABLE AGE
details-v1 1/1 1 1 21m
productpage-v1 1/1 1 1 21m
ratings-v1 1/1 1 1 21m
reviews-v1 1/1 1 1 21m
reviews-v2 1/1 1 1 21m
reviews-v3 1/1 1 1 21m
Install Kiali Operator via Helm Chart
First, the Kiali Operator will be installed in the kiali-operator
namespace using the operator helm chart:
$ helm repo add kiali https://kiali.org/helm-charts
$ helm repo update kiali
$ helm install \
--namespace kiali-operator \
--create-namespace \
kiali-operator \
kiali/kiali-operator
Install Kiali Server via Operator
Next, the first Kiali Server will be installed. This server will require the user to enter a Kubernetes token in order to log into the Kiali dashboard and will provide the user with read-write access. To do this, a Kiali CR will be created that looks like this (file: kiali-cr-token.yaml
):
apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
name: kiali
namespace: istio-system
spec:
auth:
strategy: "token"
deployment:
accessible_namespaces: ["bookinfo"]
view_only_mode: false
server:
web_root: "/kiali"
This Kiali CR will command the operator to deploy the Kiali Server in the same namespace where the Kiali CR is (istio-system
). The operator will configure the server to: respond to requests to the web root path of /kiali
, enable read-write access, use the authentication strategy of token
, and be given access to the bookinfo
namespace:
$ kubectl apply -f kiali-cr-token.yaml
Get the Status of the Installation
The status of a particular Kiali Server installation can be found by examining the status
field of its corresponding Kiali CR. For example:
$ kubectl get kiali kiali -n istio-system -o jsonpath='{.status}'
When the installation has successfully completed, the status
field will look something like this (when formatted):
$ kubectl get kiali kiali -n istio-system -o jsonpath='{.status}' | jq
{
"conditions": [
{
"ansibleResult": {
"changed": 21,
"completion": "2021-10-20T19:17:35.519131",
"failures": 0,
"ok": 102,
"skipped": 90
},
"lastTransitionTime": "2021-10-20T19:17:12Z",
"message": "Awaiting next reconciliation",
"reason": "Successful",
"status": "True",
"type": "Running"
}
],
"deployment": {
"accessibleNamespaces": "bookinfo,istio-system",
"instanceName": "kiali",
"namespace": "istio-system"
},
"environment": {
"isKubernetes": true,
"kubernetesVersion": "1.20.2",
"operatorVersion": "v1.41.0"
},
"progress": {
"duration": "0:00:20",
"message": "7. Finished all resource creation"
}
}
Access the Kiali Server UI
The Kiali Server UI is accessed by pointing a browser to the Kiali Server endpoint and requesting the web root /kiali
:
xdg-open http://$(minikube ip)/kiali
Because the auth.strategy
was set to token
, that URL will display the Kiali login screen that will require a Kubernetes token in order to authenticate with the server. For this example, you can use the token that belongs to the Kiali service account itself:
$ kubectl get secret -n istio-system $(kubectl get sa kiali-service-account -n istio-system -o jsonpath='{.secrets[0].name}') -o jsonpath='{.data.token}' | base64 -d
The output of that command above can be used to log into the Kiali login screen.
Install a Second Kiali Server
The second Kiali Server will next be installed. This server will not require the user to enter any login credentials but will only provide a view-only look at the service mesh. To do this, a Kiali CR will be created that looks like this (file: kiali-cr-anon.yaml
):
apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
name: kiali
namespace: kialianon
spec:
installation_tag: "Kiali - View Only"
istio_namespace: "istio-system"
auth:
strategy: "anonymous"
deployment:
accessible_namespaces: ["bookinfo"]
view_only_mode: true
instance_name: "kialianon"
server:
web_root: "/kialianon"
This Kiali CR will command the operator to deploy the Kiali Server in the same namespace where the Kiali CR is (kialianon
). The operator will configure the server to: respond to requests to the web root path of /kialianon
, disable read-write access, not require the user to authenticate, have a unique instance name of kialianon
and be given access to the bookinfo
namespace. The Kiali UI will also show a custom title in the browser tab so the user is aware they are looking at a “view only” Kiali dashboard. The unique deployment.instance_name
is needed in order for this Kiali Server to be able to share access to the Bookinfo application with the first Kiali Server.
$ kubectl create namespace kialianon
$ kubectl apply -f kiali-cr-anon.yaml
The UI for this second Kiali Server is accessed by pointing a browser to the Kiali Server endpoint and requesting the web root /kialianon
. Note that no credentials are required to gain access to this Kiali Server UI because auth.strategy
was set to anonymous
; however, the user will not be able to modify anything via the Kiali UI - it is strictly “view only”:
xdg-open http://$(minikube ip)/kialianon
Reconfigure Kiali Server
A Kiali Server can be reconfigured by simply editing its Kiali CR. The Kiali Operator will perform all the necessary tasks to complete the reconfiguration and reboot the Kiali Server pod when necessary. For example, to change the web root for the Kiali Server:
$ kubectl patch kiali kiali -n istio-system --type merge --patch '{"spec":{"server":{"web_root":"/specialkiali"}}}'
The Kiali Operator will update the necessary resources (such as the Kiali ConfigMap) and will reboot the Kiali Server pod to pick up the new configuration.
Uninstall Kiali Server
To uninstall a Kiali Server installation, simply delete the Kiali CR. The Kiali Operator will then perform all the necessary tasks to remove all remnants of the associated Kiali Server.
kubectl delete kiali kiali -n istio-system
Uninstall Kiali Operator
To uninstall the Kiali Operator, use helm uninstall
and then manually remove the Kiali CRD.
$ kubectl delete kiali --all --all-namespaces
$ helm uninstall --namespace kiali-operator kiali-operator
$ kubectl delete crd kialis.kiali.io
1.2.8 -
Maistra |
SMCP CR |
Kiali |
Notes |
---|---|---|---|
2.4 | 2.4 | 1.65 | Using Maistra 2.4 to install service mesh control plane 2.4 requires Kiali Operator v1.65. Other versions are not compatible. |
2.4 | 2.3 | 1.57 | Using Maistra 2.4 to install service mesh control plane 2.3 requires Kiali Operator v1.65. Other versions are not compatible. |
2.4 | 2.2 | 1.48 | Using Maistra 2.4 to install service mesh control plane 2.2 requires Kiali Operator v1.65. Other versions are not compatible. |
2.3 | 2.3 | 1.57 | Using Maistra 2.3 to install service mesh control plane 2.3 requires Kiali Operator v1.57. Other versions are not compatible. |
2.3 | 2.2 | 1.48 | Using Maistra 2.3 to install service mesh control plane 2.2 requires Kiali Operator v1.57. Other versions are not compatible. |
2.2 | 2.2 | 1.48 | Using Maistra 2.2 to install service mesh control plane 2.2 requires Kiali Operator v1.48. Other versions are not compatible. |
n/a | 2.1 | n/a | Service mesh control plane 2.1 is out of support. |
n/a | 2.0 | n/a | Service mesh control plane 2.0 is out of support. |
n/a | 1.1 | n/a | Service mesh control plane 1.1 is out of support. |
n/a | 1.0 | n/a | Service mesh control plane 1.0 is out of support. |
1.3 - Deployment Options
There are other, more complex deployment settings, described in dedicated pages:
- Authentication
- Customization of the Ingress resource
- Customization of the service type (LoadBalancer or NodePort)
- Namespace management (configuring namespaces accessible and visible to Kiali)
Kiali and Istio installation namespaces
By default, the Kiali operator installs Kiali in the same namespace where the Kiali CR is created. However, it is possible to specify a different namespace for installation:
spec:
deployment:
namespace: "custom-kiali-namespace"
It is assumed that Kiali is installed to the same namespace as Istio. Kiali reads some Istio resources and may not work properly if those resources are not found. Thus, if you are installing Kiali and Istio on different namespaces, you must specify what is the Istio namespace:
spec:
istio_namespace: "istio-system"
Log level and format
By default, Kiali will print up to INFO
-level messages in simple text format.
You can change the log level, output format, and time format as in the
following example:
spec:
deployment:
logger:
# Supported values are "trace", "debug", "info", "warn", "error" and "fatal"
log_level: error
# Supported values are "text" and "json".
log_format: json
time_field_format: "2006-01-02T15:04:05Z07:00"
The syntax for the time_field_format
is the same as the Time.Format
function of the Go language.
The json
format is useful if you are parsing logs of your applications for
further processing.
In Kiali, there are some special logs called audit logs that are emitted each time a user creates, updates or deletes a resource through Kiali. Audit logs are INFO-level messages and are enabled by default. If audit logs are too verbose, you can disable them without reducing the log level as follows:
spec:
server:
audit_log: false
Kiali instance name
If you plan to install more than one Kiali instance on the same cluster, you may need to configure an instance name to avoid conflicts on created resources:
spec:
deployment:
instance_name: "secondary"
The instance_name
will be used as a prefix for all created Kiali resources.
The exception is the kiali-signing-key
secret which will always have
the same name and will be shared on all deployments of the same namespace,
unless you specify a custom secret name.
instance_name
will be used as a name prefix in resources, it must
follow Kubernetes naming
constraints.
instance_name
of an existing Kiali installation. The workaround is to
uninstall Kiali and re-install with the desired instance_name
.
Resource requests and limits
You can set the amount of resources available to Kiali using the
spec.deployment.resources
attribute, like in the following example:
spec:
deployment:
resources:
requests:
memory: "128Mi"
cpu: "100m"
limits:
memory: "1Gi"
cpu: "500m"
Please, read the Managing Resources for Containers section in the Kubernetes documentation for more details about possible configurations.
Custom labels and annotations on the Kiali pod and service
Although some labels and annotations are set on the Kiali pod and on its
service (depending on configurations), you can add additional ones. For the
pod, use the spec.deployment.pod_labels
and spec.deployment.pod_annotations
attributes. For the service, you can only add annotations using the
spec.deployment.service_annotations
attribute. For example:
spec:
deployment:
pod_annotations:
a8r.io/repository: "https://github.com/kiali/kiali"
pod_labels:
sidecar.istio.io/inject: "true"
service_annotations:
a8r.io/documentation: "https://kiali.io/docs/installation/deployment-configuration"
Kiali page title (browser title bar)
If you have several Kiali installations and you are using them at the same time, there are good chances that you will want to identify each Kiali by simply looking at the browser’s title bar. You can set a custom text in the title bar with the following configuration:
spec:
installation_tag: "Kiali West"
The installation_tag
is any human readable text of your desire.
Kubernetes scheduler settings
Replicas and automatic scaling
By default, only one replica of Kiali is deployed. If needed, you can change the replica count like in the following example:
spec:
deployment:
replicas: 2
If you prefer automatic scaling, creation of an HorizontalPodAutoscaler
resource is supported. For example, the following configuration automatically
scales Kiali based on CPU utilization:
spec:
deployment:
hpa:
api_version: "autoscaling/v1"
spec:
minReplicas: 1
maxReplicas: 2
targetCPUUtilizationPercentage: 80
scaleTargetRef
field of the HPA spec, because this field
will be populated by the Kiali operator (or by Helm) depending on other
configuration.
Read the Kubernetes Horizontal Pod Autoscaler documentation to learn more about the HPA.
Allocating the Kiali pod to specific nodes of the cluster
You can constrain the Kiali pod to run on a specific set of nodes by using some of the standard Kubernetes scheduler configurations.
The simplest option is to use the
nodeSelector
configuration which you can configure like in the following example:
spec:
deployment:
node_selector:
worker-type: infra
You can also use the affinity/anti-affinity native Kubernetes feature if you prefer its more expressive syntax, or if you need more complex matching rules. The following is an example for configuring node affinity:
spec:
deployment:
affinity:
node:
requiredDuringSchedulingIgnoredDuringExecution:
nodeSelectorTerms:
- matchExpressions:
- key: worker-type
operator: In
values:
- infra
Similarly, you can also configure pod affinity and pod anti-affinity using the
spec.deployment.affinity.pod
and spec.deployment.affinity.pod_anti
attributes.
Finally, if you want to run Kiali in a node with taints, the following is an example to configure tolerations:
spec:
deployment:
tolerations: # Allow to run Kiali in a tainted master node
- key: "node-role.kubernetes.io/master"
operator: "Exists"
effect: "NoSchedule"
Read the following Kubernetes documentation to learn more about these configurations:
Priority class of the Kiali pod
If you are using priority classes in your cluster, you can specify the priority class that will be set on the Kiali pod. For example:
spec:
deployment:
priority_class_name: high-priority
For more information about priority classes, read Pod Priority and Preemption in the Kubernetes documentation.
Adding host aliases to the Kiali pod
If you need to provide some static hostname resolution in the Kiali pod, you
can use HostAliases to add entries to the /etc/hosts
file
of the Kiali pod, like in the following example:
spec:
deployment:
host_aliases:
- ip: 192.168.1.100
hostnames:
- "foo.local"
- "bar.local"
HTTP server
Kiali is served over HTTP. You can configure a few options of the HTTP server. The following are the defaults, but you can change them to suit your needs.
spec:
server:
# Listen/bind address of the HTTP server. By default it is empty, which means to
# listen on all interfaces.
address: ""
# Listening port of the HTTP server. If you change it, also Kiali's Kubernetes
# Service is affected to use this port.
port: 20001
# Use GZip compression for responses larger than 1400 bytes. You may want to disable
# compression if you are exposing Kiali via a reverse proxy that is already
# doing compression.
gzip_enabled: true
# For development purposes only. Controls if "Cross-Origin Resourse Sharing" is
# enabled.
cors_allow_all: false
There is one additional spec.server.web_root
option that affects the HTTP
server, but that one is described in the Specifying route settings section
of the Instalation guide.
Metrics server
Kiali emits metrics that can be collected by Prometheus. Most of these metrics are performance measurements.
The metrics server is enabled by default and listens on port 9090:
spec:
server:
metrics_enabled: true
metrics_port: 9090
The bind address is the same as the HTTP server. Thus, make sure that the HTTP Server and the metrics server are not configured to the same port.
2 - Configuration
The pages in this Configuration section describe most available options for managing and customizing your Kiali installation.
Unless noted, it is assumed that you are using the Kiali operator and that you are managing the Kiali installation through a Kiali CR. The provided YAML snippets for configuring Kiali should be placed in your Kiali CR. For example, the provided configuration snippet for setting up the Anonymous authentication strategy is the following:
spec:
auth:
strategy: anonymous
You will need to take this YAML snippet and apply it to your Kiali CR. As an example, an almost minimal Kiali CR using the previous configuration snippet would be the following:
apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
namespace: kiali-namespace
name: kiali
spec:
istio_namespace: istio-system
deployment:
namespace: kiali-namespace
auth:
strategy: anonymous
Then, you can save the finished YAML file and apply it with kubectl apply -f
.
It is recommended that you read The Kiali CR and the Example Install pages of the Installation Guide for more information about using the Kiali CR.
Also, for reference, see Kiali CR Reference which documents all available options.
2.1 - Authentication Strategies
Kiali supports five authentication mechanisms.
- The default authentication strategy for OpenShift clusters is
openshift
. - The default authentication strategy for all other Kubernetes clusters is
token
.
All mechanisms other than anonymous
support limiting per-user namespace access control.
Read the dedicated page of each authentication strategy to learn more.
2.1.1 - Anonymous strategy
Introduction
The anonymous
strategy removes any authentication requirement. Users will
have access to Kiali without providing any credentials.
Although the anonymous
strategy doesn’t provide any access protection, it’s
valid for some use-cases. Some examples known from the community:
- Exposing Kiali through a reverse proxy, where the reverse proxy is providing a custom authentication mechanism.
- Exposing Kiali on an already limited network of trusted users.
- When Kiali is accessed through
kubectl port-forward
or alike commands that allow usage of the cluster’s RBAC capabilities to limit access. - When developing Kiali, where a developer has a private instance on his own machine.
anonymous
strategy will leave Kiali unsecured. If you are using this option, make sure
that Kiali is available only to trusted users, or access is protected by other
means.
Set-up
To use the anonymous
strategy, use the following configuration in the Kiali CR:
spec:
auth:
strategy: anonymous
The anonymous
strategy doesn’t have any additional configuration.
Access control
When using the anonymous
strategy, the content displayed in Kiali is based on
the permissions of the Kiali service account. By default, the Kiali service
account has cluster wide access and will be able to display everything in the
cluster.
OpenShift
If you are running Kiali in OpenShift, access can be customized by changing privileges to the Kiali ServiceAccount. For example, to reduce permissions to individual namespaces, first, remove the cluster-wide permissions granted by default:
oc delete clusterrolebindings kiali
Then grant the kiali
role only in needed namespaces. For example:
oc adm policy add-role-to-user kiali system:serviceaccount:istio-system:kiali-service-account -n ${NAMESPACE}
View only
You can tell the Kiali Operator to install Kiali in “view only”
mode (this does work for either OpenShift or Kubernetes). You do this by
setting the view_only_mode
to true
in the Kiali CR, which
allows Kiali to read service mesh resources found in the cluster, but it does
not allow any change:
spec:
deployment:
view_only_mode: true
2.1.2 - Header strategy
Introduction
The header
strategy assumes a reverse proxy is in front of Kiali, such as
OpenUnison or OAuth2 Proxy, injecting the user’s identity into each request to
Kiali as an Authorization
header. This token can be an OpenID Connect
token or any other token the cluster recognizes.
In addition to a user token, the header
strategy supports impersonation
headers. If the impersonation headers are present in the request, then Kiali
will act on behalf of the user specified by the impersonation (assuming the
token supplied in the Authorization
header is authorized to do so).
The header
strategy allows for namespace access control.
Set-up
The header
strategy will work with any Kubernetes cluster. The token provided
must be supported by that cluster. For instance, most “on-prem” clusters support
OpenID Connect, but cloud hosted clusters do not. For clusters that don’t support
a token, the impersonation
headers can be injected by the reverse proxy.
spec:
auth:
strategy: header
The header
strategy doesn’t have any additional configuration.
HTTP Header
The header
strategy looks for a token in the Authorization
HTTP header with the
Bearer
prefix. The HTTP header should look like:
Authorization: Bearer TOKEN
Where TOKEN
is the appropriate token for your cluster. This TOKEN
will be
submitted to the API server via a TokenReview
to validate the token ONLY
on the first access to Kiali. On subsequent calls the TOKEN
is passed through
directly to the API server.
Security Considerations
Network Policies
A policy should be put in place to make sure that the only “client” for Kiali is the authenticating reverse proxy. This helps limit potential abuse and ensures that the authenticating reverse proxy is the source of truth for who accessed Kiali.
Short Lived Tokens
The authenticating reverse proxy should inject a short lived token in the
Authorization
header. A shorter lived token is less likely to be abused if
leaked. Kiali will take whatever token is passed into the reqeuest, so as tokens
are regenerated Kiali will use the new token.
Impersonation
TokenRequest API
The authenticating reverse proxy should use the TokenRequest API instead of static
ServiceAccount
tokens when possible while using impersonation. The
ServiceAccount
that can impersonate users and groups is privileged and having it
be short lived cuts down on the possibility of a token being leaked while it’s being
passed between different parts of the infrastructure.
Drop Incoming Impersonation Headers
The authenticating proxy MUST drop any headers it receives from a remote client that match the impersonation headers. Not only do you want to make sure that the authenticating proxy can’t be overriden on which user to authenticate, but also what groups they’re a member of.
2.1.3 - OpenID Connect strategy
Introduction
The openid
authentication strategy lets you integrate Kiali to an external
identity provider that implements OpenID Connect, and allows
users to login to Kiali using their existing accounts of a
third-party system.
If your
Kubernetes cluster is also integrated with your OpenId provider,
then Kiali’s openid
strategy can offer
namespace access control.
Kiali only supports the authorization code flow of the OpenId Connect spec.
Requirements
The Kiali’s signing key needs to be 16, 24 or 32 byte long. If you install Kiali via the operator and don’t set a custom signing key, the operator should create a 16 byte long signing key.
If you don’t need namespace access control support, you can use any working OpenId Server where Kiali can be configured as a client application.
If you do need namespace access control support, you need either:
- A Kubernetes cluster configured with OpenID connect integration, which results in the API server accepting tokens issued by your identity provider.
- A replacement or reverse proxy for the Kubernetes cluster API capable of handling the OIDC authentication.
The first option is preferred if you can manipulate your cluster API server startup flags, which will result in your cluster to also be integrated with the external OpenID provider.
The second option is provided for cases where you are using a managed
Kubernetes and your cloud provider does not support configuring OpenID
integration. Kiali assumes an implementation of a Kubernetes API server. For
example, a community user has reported to successfully configure Kiali’s OpenID
strategy by using
kube-oidc-proxy
which is a
reverse proxy that handles the OpenID authentication and forwards the
authenticated requests to the Kubernetes API.
Set-up with namespace access control support
Assuming you already have a working Kubernetes cluster with OpenId integration
(or a working alternative like kube-oidc-proxy
), you should already had
configured an application or a client in your OpenId server (some cloud
providers configure this app/client automatically for you). You must re-use
this existing application/client by adding the root path of your Kiali
instance as an allowed/authorized callback URL. If the OpenID server provided
you a client secret for the application/client, or if you had manually set a
client secret, issue the following command to create a Kubernetes secret
holding the OpenId client secret:
kubectl create secret generic kiali --from-literal="oidc-secret=$CLIENT_SECRET" -n $NAMESPACE
where $NAMESPACE
is the namespace where you installed Kiali and
$CLIENT_SECRET
is the secret you configured or provided by your OpenId
Server. If Kiali is already running, you may need to restart the Kiali pod so
that the secret is mounted in Kiali.
Then, to enable the OpenID Connect strategy, the minimal configuration you need to set in the Kiali CR is like the following:
spec:
auth:
strategy: openid
openid:
client_id: "kiali-client"
issuer_uri: "https://openid.issuer.com"
This assumes that your Kubernetes cluster is configured with OpenID Connect
integration. In this case, the client-id
and issuer_uri
attributes must
match the --oidc-client-id
and --oidc-issuer-url
flags
used to start the cluster API server.
If these values don’t match, users will fail to login to Kiali.
If you are using a replacement or a reverse proxy for the Kubernetes API server, the minimal configuration is like the following:
spec:
auth:
strategy: openid
openid:
api_proxy: "https://proxy.domain.com:port"
api_proxy_ca_data: "..."
client_id: "kiali-client"
issuer_uri: "https://openid.issuer.com"
The value of client-id
and issuer_uri
must match the values of the
configuration of your reverse proxy or cluster API replacement. The api_proxy
attribute is the URI of the reverse proxy or cluster API replacement (only
HTTPS is allowed). The api_proxy_ca_data
is the public certificate authority
file encoded in a base64 string, to trust the secure connection.
Set-up with no namespace access control support
Register Kiali as a client application in your OpenId Server. Use the root path of your Kiali instance as the callback URL. If the OpenId Server provides you a client secret, or if you manually set a client secret, issue the following command to create a Kubernetes secret holding the OpenId client secret:
kubectl create secret generic kiali --from-literal="oidc-secret=$CLIENT_SECRET" -n $NAMESPACE
where $NAMESPACE
is the namespace where you installed Kiali and
$CLIENT_SECRET
is the secret you configured or provided by your OpenId
Server. If Kiali is already running, you may need to restart the Kiali pod so
that the secret is mounted in Kiali.
Then, to enable the OpenID Connect strategy, the minimal configuration you need to set in the Kiali CR is like the following:
spec:
auth:
strategy: openid
openid:
client_id: "kiali-client"
disable_rbac: true
issuer_uri: "https://openid.issuer.com"
Additional configurations
Configuring the displayed user name
The Kiali front-end will, by default, retrieve the string of the sub
claim of
the OpenID token and display it as the user name. You can customize which field
to display as the user name by setting the username_claim
attribute of the
Kiali CR. For example:
spec:
auth:
openid:
username_claim: "email"
If you enabled namespace access control, you will want the username_claim
attribute to match the --oidc-username-claim
flag used to start the
Kubernetes API server, or the equivalent option if you are using a replacement
or reverse proxy of the API server. Else, any user-friendly claim will be OK as
it is purely informational.
Configuring requested scopes
By default, Kiali will request access to the openid
, profile
and email
standard scopes. If you need a different set of scopes, you can set the
scopes
attribute in the Kiali CR. For example:
spec:
auth:
openid:
scopes:
- "openid"
- "email"
- "groups"
The openid
scope is forced. If you don’t add it to the list of scopes to
request, Kiali will still request it from the identity provider.
Configuring authentication timeout
When the user is redirected to the external authentication system, by default
Kiali will wait at most 5 minutes for the user to authenticate. After that time
has elapsed, Kiali will reject authentication. You can adjust this timeout by
setting the authentication_timeout
with the number of seconds that Kiali
should wait at most. For example:
spec:
auth:
openid:
authentication_timeout: 60 # Wait only one minute.
Configuring allowed domains
Some identity providers use a shared login and regardless of configuring your own application under your domain (or organization account), login can succeed even if the user that is logging in does not belong to your account or organization. Google is an example of this kind of provider.
To prevent foreign users from logging into your Kiali instance, you can configure a list of allowed domains:
spec:
auth:
openid:
allowed_domains:
- example.com
- foo.com
The e-mail reported by the identity provider is used for the validation. Login
will be allowed if the domain part of the e-mail is listed as an allowed
domain; else, the user will be rejected. Naturally, you will need to
configure the email
scope to be requested.
There is a special case: some identity providers include a hd
claim in the
id_token
. If this claim is present, this is used instead of extracting the
domain from the user e-mail. For example, Google Workspace (aka G Suite)
includes this hd
claim for hosted
domains.
Using an OpenID provider with a self-signed certificate
If your OpenID provider is using a self-signed certificate, you can disable
certificate validation by setting the insecure_skip_verify_tls
to true
in
the Kiali CR:
spec:
auth:
openid:
insecure_skip_verify_tls: true
However, if your organization or internal network has an internal trusted
certificate authority (CA), and your OpenID server is using a certificate
issued by this CA, you can configure Kiali to trust certificates from this CA,
rather than disabling verification. For this, create a ConfigMap named
kiali-cabundle
containing the root CA certificate (the public component)
under the openid-server-ca.crt
key:
apiVersion: v1
kind: ConfigMap
metadata:
name: kiali-cabundle
namespace: istio-system # This is Kiali's install namespace
data:
openid-server-ca.crt: <the public component of your CA root certificate encoded in base64>
After restarting the Kiali pod, Kiali will trust this root certificate for all HTTPS requests related to OpenID authentication.
Using an HTTP/HTTPS Proxy
In some network configurations, there is the need to use proxies to connect to
the outside world. OpenID requires outside world connections to get metadata and
do key validation, so you can configure it by setting the http_proxy
and
https_proxy
keys in the Kiali CR. They use the same format as the HTTP_PROXY
and HTTPS_PROXY
environment variables.
spec:
auth:
openid:
http_proxy: http://USERNAME:PASSWORD@10.0.1.1:8080/
https_proxy: https://USERNAME:PASSWORD@10.0.0.1:8080/
Passing additional options to the identity provider
When users click on the Login button on Kiali, a redirection occurs to the
authentication page of the external identity provider. Kiali sends a fixed set
of parameters to the identity provider to enable authentication. If you need to
add an additional set of parameters to your identity provider, you can use the
additional_request_params
setting of the Kiali CR, which accepts key-value
pairs. For example:
spec:
auth:
openid:
additional_request_params:
prompt: login
The prompt
parameter is a
standard OpenID parameter.
When the login
value is passed in this parameter, the
identity provider is instructed to ask for user credentials regardless if the
user already has an active session because of a previous login in some other
system.
If your OpenId provider supports other non-standard parameters, you can specify
the ones you need in this additional_request_params
setting.
Take into account that you should not add the client_id
, response_type
,
redirect_uri
, scope
, nonce
nor state
parameters to this list. These are
already in use by Kiali and some already have a dedicated setting.
Provider-specific instructions
Using with Keycloak
When using OpenId with Keycloak, you will need to enable the Standard Flow Enabled
option on the Client (in the Administration Console):
The Standard Flow described on the options is the same as the authorization code flow from the rest of the documentation.
Using with Google Cloud Platform / GKE OAuth2
If you are using Google Cloud Platform (GCP) and its products such as Google Kubernetes Engine (GKE), it should be straightforward to configure Kiali’s OpenID strategy to authenticate using your Google credentials.
First, you’ll need to go to your GCP Project and to the Credentials screen which
is available at (Menu Icon) > APIs & Services > Credentials
.
On the Credentials screen you can select to create a new OAuth client ID.
On the Create OAuth client ID screen, set the Application type to Web Application
and enter a name for your key.
Then enter in the Authorized Javascript origins and Authorized redirect URIs for your project.
You can enter in localhost
as appropriate during testing. You can also enter multiple URIs as appropriate.
After clicking Create you’ll be shown your newly minted client id and secret. These are important and needed for your Kiali CR yaml and Kiali secrets files.
You’ll need to update your Kiali CR file to include the following auth
block.
spec:
auth:
strategy: "openid"
openid:
client_id: "<your client id from GCP>"
disable_rbac: true
issuer_uri: "https://accounts.google.com"
scopes: ["openid", "email"]
username_claim: "email"
issuer_uri
should be https://accounts.google.com
.
Finally you will need to create a secret, if you don’t have one already, that sets the oidc-secret
for the openid flow.
apiVersion: v1
kind: Secret
metadata:
name: kiali
namespace: istio-system
labels:
app: kiali
type: Opaque
data:
oidc-secret: "<base64 encode your client secret from GCP and enter here>"
Once all these settings are complete just set your Kiali CR and the Kiali secret to your cluster. You may need to refresh your Kiali Pod to set the Secret if you add the Secret after the Kiali pod is created.
Using with Azure: AKS and AAD
AKS has support for a feature named AKS-managed Azure Active Directory, which enables integration between AKS and AAD. This has the advantage that users can use their AAD credentials to access AKS clusters and can also use Kubernetes RBAC features to assign privileges to AAD users.
However, Azure is implementing this integration via the Kubernetes Webhook Token Authentication rather than via the Kubernetes OpenID Connect Tokens authentication (see the Azure AD integration section in AKS Concepts documentation). Because of this difference, authentication in AKS behaves slightly different from a standard OpenID setup, but Kiali’s OpenID authentication strategy can still be used with namespace access control support by following the next steps.
First, enable the AAD integration on your AKS cluster. See the official AKS documentation to learn how. Once it is enabled, your AKS panel should show the following:
Create a web application for Kiali in your Azure AD panel:
- Go to AAD > App Registration, create an application with a redirect url like
\https://<your-kiali-url>
- Go to Certificates & secrets and create a client secret.
- After creating the client secret, take note of the provided secret. Create a
Kubernetes secret in your cluster as mentioned in the Set-up
with namespace access control support section. Please, note that the suggested name for the
Kubernetes Secret is
kiali
. If you want to customize the secret name, you will have to specify your custom name in the Kiali CR. See: secret_name in Kial CR Reference.
- After creating the client secret, take note of the provided secret. Create a
Kubernetes secret in your cluster as mentioned in the Set-up
with namespace access control support section. Please, note that the suggested name for the
Kubernetes Secret is
- Go to API Permissions and press the Add a permission button. In the new page that appears, switch to the APIs my organization uses tab.
- Type the following ID in the search field:
6dae42f8-4368-4678-94ff-3960e28e3630
(this is a shared ID for all Azure clusters). And select the resulting entry. - Select the Delegated permissions square.
- Select the
user.read
permission. - Go to Authentication and make sure that the Access tokens checkbox is ticked.
Then, create or modify your Kiali CR and include the following settings:
spec:
auth:
strategy: "openid"
openid:
client_id: "<your Kiali application client id from Azure>"
issuer_uri: "https://sts.windows.net/<your AAD tenant id>/"
username_claim: preferred_username
api_token: access_token
additional_request_params:
resource: "6dae42f8-4368-4678-94ff-3960e28e3630"
You can find your client_id
and tenant_id
in the Overview page of the Kiali
App registration that you just created. See this documentation for more information.
2.1.4 - OpenShift strategy
Introduction
The openshift
authentication strategy is the preferred and default strategy
when Kiali is deployed on an OpenShift cluster.
When using the openshift
strategy, a user logging into Kiali will be
redirected to the login page of the OpenShift console. Once the user provides
his OpenShift credentials, he will be redireted back to Kiali and will be
logged in if the user has enough privileges.
The openshift
strategy supports namespace access control.
Set-up
Since openshift
is the default strategy when deploying Kiali in OpenShift,
you shouldn’t need to configure anything. If you want to be verbose, use the
following configuration in the Kiali CR:
spec:
auth:
strategy: openshift
The Kiali operator will make sure to setup the needed OpenShift OAuth resources to register
Kiali as a client for the most common use-cases. The openshift
strategy does have a few
configuration settings that most people will never need but are available in case you have
a situation where the customization is needed. See the Kiali CR Reference page for the
documentation on those settings.
2.1.5 - Token strategy
Introduction
The token
authentication strategy allows a user to login to Kiali using the
token of a Kubernetes ServiceAccount. This is similar to the
login view of Kubernetes Dashboard.
The token
strategy supports namespace access control.
Set-up
Since token
is the default strategy when deploying Kiali in Kubernetes, you
shouldn’t need to configure anything, unless your cluster is OpenShift. If you
want to be verbose or if you need to enable the token
strategy in OpenShift,
use the following configuration in the Kiali CR:
spec:
auth:
strategy: token
The token
strategy doesn’t have any additional configuration other than the
session expiration time.
2.1.6 - Session options
There are two settings that are available for the user’s session. The first one is the session expiration time, which is only applicable to token and header authentication strategies:
spec:
login_token:
# By default, users session expires in 24 hours.
expiration_seconds: 86400
The session expiration time is the amount of time before the user is asked to extend his session by another cycle. It does not matter if the user is actively using Kiali, the user will be asked if the session should be extended.
The second available option is the signing key configuration, which is unset by
default, meaning that a random 16-character signing key will be generated
and stored to a secret named kiali-signing-key
, in Kiali’s installation
namespace:
spec:
login_token:
# By default, create a random signing key and store it in
# a secret named "kiali-signing-key".
signing_key: ""
If the secret already exists (which may mean a previous Kiali installation was present), then the secret is reused.
The signing key is used on security sensitive data. For example, one of the usages is to sign HTTP cookies related to the user session to prevent session forgery.
If you need to set a custom fixed key, you can pre-create or modify the
kiali-signing-key
secret:
apiVersion: v1
kind: Secret
metadata:
namespace: "kiali-installation-namespace"
name: kiali-signing-key
type: Opaque
data:
key: "<your signing key encoded in base64>"
If you prefer a different secret name for the signing key and/or a different key-value pair of the secret, you can specify your preferred names in the Kiali CR:
spec:
login_token:
signing_key: "secret:<secretName>:<secretDataKey>"
spec.login_token.signing_key
attribute. However, this should be only for
testing purposes. The signing key is sensitive and should be treated like a
password that must be protected.
2.2 - Console Customization
Custom metric aggregations
The inbound and outbound metric pages, in the Metrics settings drop-down, provides an opinionated set of groupings that work both for filtering out metric data that does not match the selection and for aggregating data into series. Each option is backed by a label on the collected Istio telemetry.
It is possible to add custom aggregations, like in the following example:
spec:
kiali_feature_flags:
ui_defaults:
metrics_inbound:
aggregations:
- display_name: Istio Network
label: topology_istio_io_network
- display_name: Istio Revision
label: istio_io_rev
metrics_outbound:
aggregations:
- display_name: Istio Revision
label: istio_io_rev
Notice that custom aggregations for inbound and outbound metrics are defined separately.
You can find some screenshots in Kiali v1.40 feature update blog post.
Default metrics duration and refresh interval
Most Kiali pages show metrics per refresh and refresh interval drop-downs. These are located at the top-right of the page.
Metrics per refresh specifies the time range back from the current instant to fetch metrics and/or distributed tracing data. By default, a 1-minute time range is selected.
Refresh interval specifies how often Kiali will automatically refresh the data shown. By default, Kiali refreshes data every 15 seconds.
spec:
kiali_feature_flags:
ui_defaults:
# Valid values: 1m, 5m, 10m, 30m, 1h, 3h, 6h, 12h, 1d, 7d, 30d
metrics_per_refresh: "1m"
# Valid values: pause, 10s, 15s, 30s, 1m, 5m, 15m
refresh_interval: "15s"
User selections won’t persist a reload.
Default namespace selection
By default, when Kiali is accessed by the first time, on most Kiali pages users will need to use the namespace drop-down to choose namespaces they want to view data from. The selection will be persisted on reloads.
However, it is possible to configure a predefined selection of namespaces, like in the following example:
spec:
kiali_feature_flags:
ui_defaults:
namespaces:
- istio-system
- bookinfo
Namespace selection will reset to the predefined set on reloads. Also, if for some reason a namespace becomes deleted, Kiali will simply ignore it from the list.
Graph find and hide presets
In the toolbar of the topology graph, the Find and Hide textboxes can be configured with presets for your most used criteria. You can find screenshots and a brief description of this feature in the feature update blog post for versions 1.31 to 1.33.
The following are the default presets:
spec:
kiali_feature_flags:
ui_defaults:
graph:
find_options:
- auto_select: false
description: "Find: slow edges (> 1s)"
expression: "rt > 1000"
- auto_select: false
description: "Find: unhealthy nodes"
expression: "! healthy"
- auto_select: false
description: "Find: unknown nodes"
expression: "name = unknown"
hide_options:
- auto_select: false
description: "Hide: healthy nodes"
expression: "healthy"
- auto_select: false
description: "Hide: unknown nodes"
expression: "name = unknown"
Hopefully, the attributes to configure this feature are self-explanatory.
To enable one of the configurations by default, it is possible to set auto_select to true, available for find and hide settings.
Note that by providing your own presets, you will be overriding the default configuration. Make sure to include any default presets that you need in case you provide your own configuration.
Graph default traffic rates
Traffic rates in the graph are fetched from Istio telemetry and there are several metric sources that can be used.
In the graph page, you can select the traffic rate metrics using the Traffic drop-down (next to the Namespaces drop-down). By default, Requests is selected for GRPC and HTTP protocols, and Sent bytes is selected for the TCP protocol, but you can change the default selection:
spec:
kiali_feature_flags:
ui_defaults:
graph:
traffic:
grpc: "requests" # Valid values: none, requests, sent, received and total
http: "requests" # Valid values: none and requests
tcp: "sent" # Valid values: none, sent, received and total
Note that only requests provide response codes and will allow health to be calculated. Also, the resulting topology graph may be different for each source.
2.3 - Custom Dashboards
Custom Dashboards require some configuration to work properly.
Declaring a custom dashboard
When installing Kiali, you define your own custom dashboards in the Kiali CR spec.custom_dashboards
field. Here’s an example of what it looks like:
custom_dashboards:
- name: vertx-custom
title: Vert.x Metrics
runtime: Vert.x
discoverOn: "vertx_http_server_connections"
items:
- chart:
name: "Server response time"
unit: "seconds"
spans: 6
metrics:
- metricName: "vertx_http_server_responseTime_seconds"
displayName: "Server response time"
dataType: "histogram"
aggregations:
- label: "path"
displayName: "Path"
- label: "method"
displayName: "Method"
- chart:
name: "Server active connections"
unit: ""
spans: 6
metricName: "vertx_http_server_connections"
dataType: "raw"
- include: "micrometer-1.1-jvm"
externalLinks:
- name: "My custom Grafana dashboard"
type: "grafana"
variables:
app: var-app
namespace: var-namespace
version: var-version
The name field corresponds to what you can set in the pod annotation kiali.io/dashboards.
The rest of the field definitions are:
- runtime: optional, name of the related runtime. It will be displayed on the corresponding Workload Details page. If omitted no name is displayed.
- title: dashboard title, displayed as a tab in Application or Workloads Details
- discoverOn: metric name to match for auto-discovery. If omitted, the dashboard won’t be discovered automatically, but can still be used via pods annotation.
- items: a list of items, that can be either chart, to define a new chart, or include to reference another dashboard
- chart: new chart object
- name: name of the chart
- chartType: type of the chart, can be one of line (default), area, bar or scatter
- unit: unit for Y-axis. Free-text field to provide any unit suffix. It can eventually be scaled on display. See specific section below.
- unitScale: in case the unit needs to be scaled by some factor, set that factor here. For instance, if your data is in milliseconds, set
0.001
as scale andseconds
as unit. - spans: number of “spans” taken by the chart, from 1 to 12, using bootstrap convention
- metrics: a list of metrics to display on this single chart:
- metricName: the metric name in Prometheus
- displayName: name to display on chart
- dataType: type of data to be displayed in the chart. Can be one of raw, rate or histogram. Raw data will be queried without transformation. Rate data will be queried using promQL rate() function. And histogram with histogram_quantile() function.
- min and max: domain for Y-values. When unset, charts implementations should usually automatically adapt the domain with the displayed data.
- xAxis: type of the X-axis, can be one of time (default) or series. When set to series, only one datapoint per series will be displayed, and the chart type then defaults to bar.
- aggregator: defines how the time-series are aggregated when several are returned for a given metric and label set. For example, if a Deployment creates a ReplicaSet of several Pods, you will have at least one time-series per Pod. Since Kiali shows the dashboards at the workload (ReplicaSet) level or at the application level, they will have to be aggregated. This field can be used to fix the aggregator, with values such as sum or avg (full list available in Prometheus documentation). However, if omitted the aggregator will default to sum and can be changed from the dashboard UI.
- aggregations: list of labels eligible for aggregations / groupings (they will be displayed in Kiali through a dropdown list)
- label: Prometheus label name
- displayName: name to display in Kiali
- singleSelection: boolean flag to switch between single-selection and multi-selection modes on the values of this label. Defaults to false.
- groupLabels: a list of Prometheus labels to be used for grouping. Similar to aggregations, except this grouping will be always turned on.
- sortLabel: Prometheus label to be used for the metrics display order.
- sortLabelParseAs: set to int if sortLabel needs to be parsed and compared as an integer instead of string.
- include: to include another dashboard, or a specific chart from another dashboard. Typically used to compose with generic dashboards such as the ones about MicroProfile Metrics or Micrometer-based JVM metrics. To reference a full dashboard, set the name of that dashboard. To reference a specific chart of another dashboard, set the name of the dashboard followed by
$
and the name of the chart (ex:include: "microprofile-1.1$Thread count"
).
- chart: new chart object
- externalLinks: a list of related external links (e.g. to Grafana dashboards)
- name: name of the related dashboard in the external system (e.g. name of a Grafana dashboard)
- type: link type, currently only grafana is allowed
- variables: a set of variables that can be injected in the URL. For instance, with something like namespace: var-namespace and app: var-app, an URL to a Grafana dashboard that manages namespace and app variables would look like:
http://grafana-server:3000/d/xyz/my-grafana-dashboard?var-namespace=some-namespace&var-app=some-app
. The available variables in this context are namespace, app and version.
In Kiali, labels for grouping are aggregated in the top toolbar, so if the same label refers to different things depending on the metric, you wouldn’t be able to distinguish them in the UI. For that reason, ideally, labels should not have too generic names in Prometheus. For instance labels named “id” for both memory spaces and buffer pools would better be named “space_id” and “pool_id”. If you have control on label names, it’s an important aspect to take into consideration. Else, it is up to you to organize dashboards with that in mind, eventually splitting them into smaller ones to resolve clashes.
spec.custom_dashboards
. Simply define a custom dashboard with the same name as the built-in dashboard. To remove a built-in dashboard so Kiali doesn’t use it, simply define a custom dashboard by defining only its name with no other data associated with it (e.g. in spec.custom_dashboards
you add a list item that has - name: <name of built-in dashboard to remove>
.
Dashboard scope
The custom dashboards defined in the Kiali CR are available for all workloads in all namespaces.
Additionally, new custom dashboards can be created for a given namespace or workload, using the dashboards.kiali.io/templates
annotation.
This is an example where a “Custom Envoy” dashboard will be available for all applications and workloads for the default
namespace:
apiVersion: v1
kind: Namespace
metadata:
name: default
annotations:
dashboards.kiali.io/templates: |
- name: custom_envoy
title: Custom Envoy
discoverOn: "envoy_server_uptime"
items:
- chart:
name: "Pods uptime"
spans: 12
metricName: "envoy_server_uptime"
dataType: "raw"
This other example will create an additional “Active Listeners” dashboard only on details-v1
workload:
apiVersion: apps/v1
kind: Deployment
metadata:
name: details-v1
labels:
app: details
version: v1
spec:
replicas: 1
selector:
matchLabels:
app: details
version: v1
template:
metadata:
labels:
app: details
version: v1
annotations:
dashboards.kiali.io/templates: |
- name: envoy_listeners
title: Active Listeners
discoverOn: "envoy_listener_manager_total_listeners_active"
items:
- chart:
name: "Total Listeners"
spans: 12
metricName: "envoy_listener_manager_total_listeners_active"
dataType: "raw"
spec:
serviceAccountName: bookinfo-details
containers:
- name: details
image: docker.io/istio/examples-bookinfo-details-v1:1.16.2
imagePullPolicy: IfNotPresent
ports:
- containerPort: 9080
securityContext:
runAsUser: 1000
Units
Some units are recognized in Kiali and scaled appropriately when displayed on charts:
unit: "seconds"
can be scaled down toms
,µs
, etc.unit: "bytes-si"
andunit: "bitrate-si"
can be scaled up tokB
,MB
(etc.) using SI / metric system. The aliasesunit: "bytes"
andunit: "bitrate"
can be used instead.unit: "bytes-iec"
andunit: "bitrate-iec"
can be scaled up toKiB
,MiB
(etc.) using IEC standard / IEEE 1541-2002 (scale by powers of 2).
Other units will fall into the default case and be scaled using SI standard. For instance, unit: "m"
for meter can be scaled up to km
.
Prometheus Configuration
Kiali custom dashboards work exclusively with Prometheus, so it must be configured correctly to pull your application metrics.
If you are using the demo Istio installation with addons, your Prometheus instance should already be correctly configured and you can skip to the next section; with the exception of Istio 1.6.x where
you need customize the ConfigMap, or install Istio with the flag --set meshConfig.enablePrometheusMerge=true
.
Using another Prometheus instance
You can use a different instance of Prometheus for these metrics, as opposed to Istio metrics. This second Prometheus instance can be configured from the Kiali CR when using the Kiali operator, or ConfigMap otherwise:
# ...
external_services:
custom_dashboards:
prometheus:
url: URL_TO_PROMETHEUS_SERVER_FOR_CUSTOM_DASHBOARDS
namespace_label: kubernetes_namespace
prometheus:
url: URL_TO_PROMETHEUS_SERVER_FOR_ISTIO_METRICS
# ...
For more details on this configuration, such as Prometheus authentication options, check the Kiali CR Reference page.
You must make sure that this Prometheus instance is correctly configured to scrape your application pods and generates labels that Kiali will understand. Please refer to
this documentation to setup the kubernetes_sd_config
section. As a reference,
here is how it is configured in Istio.
It is important to preserve label mapping, so that Kiali can filter by app and version, and to have the same namespace label as defined per Kiali config. Here’s a relabel_configs
that allows this:
relabel_configs:
- action: labelmap
regex: __meta_kubernetes_pod_label_(.+)
- source_labels: [__meta_kubernetes_namespace]
action: replace
target_label: kubernetes_namespace
Pod Annotations and Auto-discovery
Application pods must be annotated for the Prometheus scraper, for example, within a Deployment definition:
spec:
template:
metadata:
annotations:
prometheus.io/scrape: "true"
prometheus.io/port: "8080"
prometheus.io/path: "/metrics"
- prometheus.io/scrape tells Prometheus to fetch these metrics or not
- prometheus.io/port is the port under which metrics are exposed
- prometheus.io/path is the endpoint path where metrics are exposed, default is /metrics
Kiali will try to discover automatically dashboards that are relevant for a given Application or Workload. To do so, it reads their metrics and try to match them with the discoverOn
field defined on dashboards.
But if you can’t rely on automatic discovery, you can explicitly annotate the pods to associate them with Kiali dashboards.
spec:
template:
metadata:
annotations:
# (prometheus annotations...)
kiali.io/dashboards: vertx-server
kiali.io/dashboards is a comma-separated list of dashboard names that Kiali will look for. Each name in the list must match the name of a built-in dashboard or the name of a custom dashboard as defined in the Kial CR’s spec.custom_dashboards
.
2.4 - Istio Environment
Labels and resource names
Istio recommends adding app
and version
labels to
pods to attach this information to telemetry. Kiali relies on correctness of these labels for several features.
In Istio, it is possible to use a different set of labels, like
app.kubernetes.io/name
and app.kubernetes.io/version
, however you must
configure Kiali to the labels you are using. By default, Kiali uses Istio’s
recommended labels:
spec:
istio_labels:
app_label_name: "app"
version_label_name: "version"
Although Istio lets you use different labels on different pods, Kiali can only use a single set.
For example, Istio lets you use the app
label in one pod and the
app.kubernetes.io/name
in another pod and it will generate telemetry
correctly. However, you will have no way to configure Kiali for this case.
Monitoring port of the IstioD pod
Kiali connects directly to the IstioD pod (not the Service) to check for its health. By default, the connection is done to port 15014 which is the default monitoring port of the IstioD pod.
Under some circumstances, you may need to change the monitoring port of the IstioD pod to something else. For example, when running IstioD in host network mode the network is shared between several pods, requiring to change listening ports of some pods to prevent conflicts.
It is possible to map the newly chosen monitoring port of the IstioD pod in the related Service to let other services continue working normally. However, since Kiali connects directly to the IstioD pod, you need to configure the assigned monitoring port in the Kiali CR:
spec:
external_services:
istio:
istiod_pod_monitoring_port: 15014
Root namespace
Istio’s root namespace is the namespace where you can create some resources to define default Istio configurations and adapt Istio behavior to your environment. For more information on this Istio configuration, check the Istio docs Global Mesh options page and search for “rootNamespace”.
Kiali uses the root namespace for some of the validations of Istio resources. If you customized the Istio root namespace, you will need to replicate that configuration in Kiali. By default, it is unset:
spec:
external_services:
istio:
root_namespace: ""
Sidecar injection, canary upgrade management and Istio revisions
Kiali can assist into configuring automatic sidecar injection, and also can assist when you are migrating workloads from an old Istio version to a newer one using the canary upgrade method. Kiali uses the standard Istio labels to control sidecar injection policy and canary upgrades.
Management of sidecar injection is enabled by default. If you don’t want this feature, you can disable it with the following configuration:
spec:
kiali_feature_flags:
istio_injection_action: false
Assistance for migrating workloads between Istio revisions when doing a canary upgrade is turned off by default. This is because it is required to know what is the revision name that was used when installing each Istio control plane. You can enable and configure the canary upgrade support with the following configuration:
spec:
external_services:
istio:
istio_canary_revision:
# Revision string of old Istio version
current: "1-10-3"
# Revision string of new Istio version
upgrade: "1-11-0"
kiali_feature_flags:
# Turns on canary upgrade support
istio_upgrade_action: true
It is important to note that canary upgrades require adding a revision name
during the installation of control planes. You will notice that the revision
name will be appended to the name of Istio resources. Thus, once/if you are
using Kiali with an Istio control plane that has a revision name you will need
to specify what is the name of a few Istio resources that Kiali uses. For
example, if your control plane has a revision name 1-11-0
you would need to
set these configurations:
spec:
external_services:
istio:
config_map_name: "istio-1-11-0"
istio_sidecar_injector_config_map_name: "istio-sidecar-injector-1-11-0"
istiod_deployment_name: "istiod-1-11-0"
There following are links to sections of Kiali blogs posts that briefly explains these features:
2.5 - Kiali CR Reference
Example CR
(all values shown here are the defaults unless otherwise noted)apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
name: kiali
annotations:
ansible.sdk.operatorframework.io/verbosity: "1"
spec:
additional_display_details:
- title: "API Documentation"
annotation: "kiali.io/api-spec"
icon_annotation: "kiali.io/api-type"
installation_tag: ""
istio_namespace: ""
version: "default"
api:
namespaces:
exclude:
- "^istio-operator"
- "^kube-.*"
- "^openshift.*"
- "^ibm.*"
- "^kiali-operator"
include: []
label_selector_exclude: ""
# default: label_selector_include is undefined
label_selector_include: "kiali.io/member-of=istio-system"
auth:
strategy: ""
openid:
# default: additional_request_params is empty
additional_request_params:
openIdReqParam: "openIdReqParamValue"
# default: allowed_domains is an empty list
allowed_domains: ["allowed.domain"]
api_proxy: ""
api_proxy_ca_data: ""
api_token: "id_token"
authentication_timeout: 300
authorization_endpoint: ""
client_id: ""
disable_rbac: false
http_proxy: ""
https_proxy: ""
insecure_skip_verify_tls: false
issuer_uri: ""
scopes: ["openid", "profile", "email"]
username_claim: "sub"
openshift:
auth_timeout: 10
client_id_prefix: "kiali"
#token_inactivity_timeout:
#token_max_age:
# default: custom_dashboards is an empty list
custom_dashboards:
- name: "envoy"
deployment:
# default: accessible_namespaces is undefined
accessible_namespaces: [ "my-mesh.*" ]
# default: additional_service_yaml is empty
additional_service_yaml:
externalName: "kiali.example.com"
affinity:
# default: node is empty
node:
requiredDuringSchedulingIgnoredDuringExecution:
nodeSelectorTerms:
- matchExpressions:
- key: kubernetes.io/e2e-az-name
operator: In
values:
- e2e-az1
- e2e-az2
# default: pod is empty
pod:
requiredDuringSchedulingIgnoredDuringExecution:
- labelSelector:
matchExpressions:
- key: security
operator: In
values:
- S1
topologyKey: topology.kubernetes.io/zone
# default: pod_anti is empty
pod_anti:
preferredDuringSchedulingIgnoredDuringExecution:
- weight: 100
podAffinityTerm:
labelSelector:
matchExpressions:
- key: security
operator: In
values:
- S2
topologyKey: topology.kubernetes.io/zone
# default: cluster_wide_access is undefined
cluster_wide_access: false
# default: configmap_annotations is empty
configmap_annotations:
strategy.spinnaker.io/versioned: "false"
# default: custom_secrets is an empty list
custom_secrets:
- name: "a-custom-secret"
mount: "/a-custom-secret-path"
optional: true
hpa:
api_version: ""
# default: spec is empty
spec:
maxReplicas: 2
minReplicas: 1
metrics:
- type: Resource
resource:
name: cpu
target:
type: Utilization
averageUtilization: 50
# default: host_aliases is an empty list
host_aliases:
- ip: "192.168.1.100"
hostnames:
- "foo.local"
- "bar.local"
image_digest: ""
image_name: ""
image_pull_policy: "IfNotPresent"
# default: image_pull_secrets is an empty list
image_pull_secrets: ["image.pull.secret"]
image_version: ""
ingress:
# default: additional_labels is empty
additional_labels:
ingressAdditionalLabel: "ingressAdditionalLabelValue"
class_name: "nginx"
# default: enabled is undefined
enabled: false
# default: override_yaml is undefined
override_yaml:
metadata:
annotations:
nginx.ingress.kubernetes.io/secure-backends: "true"
nginx.ingress.kubernetes.io/backend-protocol: "HTTPS"
spec:
rules:
- http:
paths:
- path: "/kiali"
pathType: Prefix
backend:
service:
name: "kiali"
port:
number: 20001
instance_name: "kiali"
logger:
log_level: "info"
log_format: "text"
sampler_rate: "1"
time_field_format: "2006-01-02T15:04:05Z07:00"
namespace: "istio-system"
# default: node_selector is empty
node_selector:
nodeSelector: "nodeSelectorValue"
# default: pod_annotations is empty
pod_annotations:
podAnnotation: "podAnnotationValue"
# default: pod_labels is empty
pod_labels:
sidecar.istio.io/inject: "true"
priority_class_name: ""
replicas: 1
# default: resources is undefined
resources:
requests:
cpu: "10m"
memory: "64Mi"
limits:
memory: "1Gi"
secret_name: "kiali"
security_context: {}
# default: service_annotations is empty
service_annotations:
svcAnnotation: "svcAnnotationValue"
# default: service_type is undefined
service_type: "NodePort"
# default: tolerations is an empty list
tolerations:
- key: "example-key"
operator: "Exists"
effect: "NoSchedule"
verbose_mode: "3"
version_label: ""
view_only_mode: false
external_services:
custom_dashboards:
discovery_auto_threshold: 10
discovery_enabled: "auto"
enabled: true
is_core: false
namespace_label: "namespace"
prometheus:
auth:
ca_file: ""
insecure_skip_verify: false
password: ""
token: ""
type: "none"
use_kiali_token: false
username: ""
cache_duration: 10
cache_enabled: true
cache_expiration: 300
# default: custom_headers is empty
custom_headers:
customHeader1: "customHeader1Value"
health_check_url: ""
is_core: true
# default: query_scope is empty
query_scope:
mesh_id: "mesh-1"
cluster: "cluster-east"
thanos_proxy:
enabled: false
retention_period: "7d"
scrape_interval: "30s"
url: ""
grafana:
auth:
ca_file: ""
insecure_skip_verify: false
password: ""
token: ""
type: "none"
use_kiali_token: false
username: ""
dashboards:
- name: "Istio Service Dashboard"
variables:
namespace: "var-namespace"
service: "var-service"
- name: "Istio Workload Dashboard"
variables:
namespace: "var-namespace"
workload: "var-workload"
- name: "Istio Mesh Dashboard"
- name: "Istio Control Plane Dashboard"
- name: "Istio Performance Dashboard"
- name: "Istio Wasm Extension Dashboard"
enabled: true
health_check_url: ""
# default: in_cluster_url is undefined
in_cluster_url: ""
is_core: false
url: ""
istio:
component_status:
components:
- app_label: "istiod"
is_core: true
is_proxy: false
- app_label: "istio-ingressgateway"
is_core: true
is_proxy: true
# default: namespace is undefined
namespace: istio-system
- app_label: "istio-egressgateway"
is_core: false
is_proxy: true
# default: namespace is undefined
namespace: istio-system
enabled: true
config_map_name: "istio"
envoy_admin_local_port: 15000
gateway_api_classes: []
istio_api_enabled: true
# default: istio_canary_revision is undefined
istio_canary_revision:
current: "1-9-9"
upgrade: "1-10-2"
istio_identity_domain: "svc.cluster.local"
istio_injection_annotation: "sidecar.istio.io/inject"
istio_sidecar_annotation: "sidecar.istio.io/status"
istio_sidecar_injector_config_map_name: "istio-sidecar-injector"
istiod_deployment_name: "istiod"
istiod_pod_monitoring_port: 15014
root_namespace: ""
url_service_version: ""
prometheus:
auth:
ca_file: ""
insecure_skip_verify: false
password: ""
token: ""
type: "none"
use_kiali_token: false
username: ""
cache_duration: 10
cache_enabled: true
cache_expiration: 300
# default: custom_headers is empty
custom_headers:
customHeader1: "customHeader1Value"
health_check_url: ""
is_core: true
# default: query_scope is empty
query_scope:
mesh_id: "mesh-1"
cluster: "cluster-east"
thanos_proxy:
enabled: false
retention_period: "7d"
scrape_interval: "30s"
url: ""
tracing:
auth:
ca_file: ""
insecure_skip_verify: false
password: ""
token: ""
type: "none"
use_kiali_token: false
username: ""
enabled: true
in_cluster_url: ""
is_core: false
namespace_selector: true
provider: "jaeger"
# default: query_scope is empty
query_scope:
mesh_id: "mesh-1"
cluster: "cluster-east"
query_timeout: 5
url: ""
use_grpc: true
whitelist_istio_system: ["jaeger-query", "istio-ingressgateway"]
health_config:
# default: rate is an empty list
rate:
- namespace: ".*"
kind: ".*"
name: ".*"
tolerance:
- protocol: "http"
direction: ".*"
code: "[1234]00"
degraded: 5
failure: 10
identity:
# default: cert_file is undefined
cert_file: ""
# default: private_key_file is undefined
private_key_file: ""
istio_labels:
app_label_name: "app"
injection_label_name: "istio-injection"
injection_label_rev: "istio.io/rev"
version_label_name: "version"
kiali_feature_flags:
certificates_information_indicators:
enabled: true
secrets:
- "cacerts"
- "istio-ca-secret"
clustering:
autodetect_secrets:
enabled: true
label: "kiali.io/multiCluster=true"
clusters: []
kiali_urls: []
disabled_features: []
istio_annotation_action: true
istio_injection_action: true
istio_upgrade_action: false
ui_defaults:
graph:
find_options:
- description: "Find: slow edges (> 1s)"
expression: "rt > 1000"
- description: "Find: unhealthy nodes"
expression: "! healthy"
- description: "Find: unknown nodes"
expression: "name = unknown"
hide_options:
- description: "Hide: healthy nodes"
expression: "healthy"
- description: "Hide: unknown nodes"
expression: "name = unknown"
traffic:
grpc: "requests"
http: "requests"
tcp: "sent"
metrics_per_refresh: "1m"
# default: metrics_inbound is undefined
metrics_inbound:
aggregations:
- display_name: "Istio Network"
label: "topology_istio_io_network"
- display_name: "Istio Revision"
label: "istio_io_rev"
# default: metrics_outbound is undefined
metrics_outbound:
aggregations:
- display_name: "Istio Network"
label: "topology_istio_io_network"
- display_name: "Istio Revision"
label: "istio_io_rev"
# default: namespaces is an empty list
namespaces: ["istio-system"]
refresh_interval: "1m"
validations:
ignore: ["KIA1301"]
skip_wildcard_gateway_hosts: false
kubernetes_config:
burst: 200
cache_duration: 300
cache_token_namespace_duration: 10
excluded_workloads:
- "CronJob"
- "DeploymentConfig"
- "Job"
- "ReplicationController"
qps: 175
login_token:
expiration_seconds: 86400
signing_key: ""
server:
address: ""
audit_log: true
cors_allow_all: false
gzip_enabled: true
observability:
metrics:
enabled: true
port: 9090
tracing:
collector_type: "jaeger"
collector_url: "http://jaeger-collector.istio-system:14268/api/traces"
enabled: false
otel:
protocol: "http"
port: 20001
web_fqdn: ""
web_history_mode: ""
web_port: ""
web_root: ""
web_schema: ""
Validating your Kiali CR
A Kiali tool is available to allow you to check your own Kiali CR to ensure it is valid. Simply download the validation script and run it, passing in the location of the Kiali CRD you wish to validate with (e.g. the latest version is found here) and the location of your Kiali CR. You must be connected to/logged into a cluster for this validation tool to work.
For example, to validate a Kiali CR named kiali
in the namespace istio-system
using the latest version of the Kiali CRD, run the following:
bash <(curl -sL https://raw.githubusercontent.com/kiali/kiali-operator/master/crd-docs/bin/validate-kiali-cr.sh) \ -crd https://raw.githubusercontent.com/kiali/kiali-operator/master/crd-docs/crd/kiali.io_kialis.yaml \ --kiali-cr-name kiali \ -n istio-system
If you wish to test your Kiali CR with an older version of Kiali, replace master
in the above -crd
option with the version you wish to test. For example, to test your Kiali CR with Kiali version v1.53.0, pass in the option -crd https://raw.githubusercontent.com/kiali/kiali-operator/v1.53.0/crd-docs/crd/kiali.io_kialis.yaml
in the above command.
For additional help in using this validation tool, pass it the --help
option.
Properties
.spec
This is the CRD for the resources called Kiali CRs. The Kiali Operator will watch for resources of this type and when it detects a Kiali CR has been added, deleted, or modified, it will install, uninstall, and update the associated Kiali Server installation. The settings here will configure the Kiali Server as well as the Kiali Operator. All of these settings will be stored in the Kiali ConfigMap. Do not modify the ConfigMap; it will be managed by the Kiali Operator. Only modify the Kiali CR when you want to change a configuration setting.
.spec.additional_display_details
A list of additional details that Kiali will look for in annotations. When found on any workload or service, Kiali will display the additional details in the respective workload or service details page. This is typically used to inject some CI metadata or documentation links into Kiali views. For example, by default, Kiali will recognize these annotations on a service or workload (e.g. a Deployment, StatefulSet, etc.):
annotations:
kiali.io/api-spec: http://list/to/my/api/doc
kiali.io/api-type: rest
Note that if you change this setting for your own custom annotations, keep in mind that it would override the current default. So you would have to add the default setting as shown in the example CR if you want to preserve the default links.
.spec.additional_display_details[*]
.spec.additional_display_details[*].annotation
The name of the annotation whose value is a URL to additional documentation useful to the user.
.spec.additional_display_details[*].icon_annotation
The name of the annotation whose value is used to determine what icon to display. The annotation name itself can be anything, but note that the value of that annotation must be one of: rest
, grpc
, and graphql
- any other value is ignored.
.spec.additional_display_details[*].title
The title of the link that Kiali will display. The link will go to the URL specified in the value of the configured annotation
.
.spec.api
.spec.api.namespaces
Settings that control what namespaces are returned by Kiali.
.spec.api.namespaces.exclude
A list of namespaces to be excluded from the list of namespaces provided by the Kiali API and Kiali UI. Regex is supported. This does not affect explicit namespace access.
.spec.api.namespaces.exclude[*]
.spec.api.namespaces.include
A list of namespaces to be included in the list of namespaces provided by the Kiali API and Kiali UI (if those namespaces exist). Regex is supported. An undefined or empty list is ignored. This does not affect explicit namespace access.
.spec.api.namespaces.include[*]
.spec.api.namespaces.label_selector_exclude
A Kubernetes label selector (e.g. myLabel=myValue
) which is used for filtering out namespaces
when fetching the list of available namespaces. This does not affect explicit namespace access.
.spec.api.namespaces.label_selector_include
A Kubernetes label selector (e.g. myLabel=myValue
) which is used when fetching the list of
available namespaces. This does not affect explicit namespace access.
If deployment.accessible_namespaces
does not have the special value of '**'
then the Kiali operator will add a new label to all accessible namespaces - that new
label will be this label_selector_include
(this label is added regardless if the namespace matches the label_selector_exclude also).
Note that if you do not set this label_selector_include
setting but deployment.accessible_namespaces
does not have the special “all namespaces” entry of '**'
then this label_selector_include
will be set
to a default value of kiali.io/[<deployment.instance_name>.]member-of=<deployment.namespace>
where [<deployment.instance_name>.]
is the instance name assigned to the Kiali installation
if it is not the default ‘kiali’ (otherwise, this is omitted) and <deployment.namespace>
is the namespace where Kiali is to be installed.
.spec.auth
.spec.auth.openid
To learn more about these settings and how to configure the OpenId authentication strategy, read the documentation at https://kiali.io/docs/configuration/authentication/openid/
.spec.auth.openid.additional_request_params
.spec.auth.openid.allowed_domains
.spec.auth.openid.allowed_domains[*]
.spec.auth.openid.api_proxy
.spec.auth.openid.api_proxy_ca_data
.spec.auth.openid.api_token
.spec.auth.openid.authentication_timeout
.spec.auth.openid.authorization_endpoint
.spec.auth.openid.client_id
.spec.auth.openid.disable_rbac
.spec.auth.openid.http_proxy
.spec.auth.openid.https_proxy
.spec.auth.openid.insecure_skip_verify_tls
.spec.auth.openid.issuer_uri
.spec.auth.openid.scopes
.spec.auth.openid.scopes[*]
.spec.auth.openid.username_claim
.spec.auth.openshift
To learn more about these settings and how to configure the OpenShift authentication strategy, read the documentation at https://kiali.io/docs/configuration/authentication/openshift/
.spec.auth.openshift.auth_timeout
The amount of time in seconds Kiali will wait for a response from the OpenShift API server when requesting authentication results.
.spec.auth.openshift.client_id_prefix
The Route resource name and OAuthClient resource name will have this value as its prefix. This value normally should never change. The installer will ensure this value is set correctly.
.spec.auth.openshift.token_inactivity_timeout
Timeout that overrides the default OpenShift token inactivity timeout. This value represents the maximum amount of time in seconds that can occur between consecutive uses of the token. Tokens become invalid if they are not used within this temporal window. If 0, the Kiali tokens never timeout. OpenShift may have a minimum allowed value - see the OpenShift documentation specific for the version of OpenShift you are using. WARNING: existing tokens will not be affected by changing this setting.
.spec.auth.openshift.token_max_age
A time duration in seconds that overrides the default OpenShift access token max age. If 0 then there will be no expiration of tokens.
.spec.auth.strategy
Determines what authentication strategy to use when users log into Kiali.
Options are anonymous
, token
, openshift
, openid
, or header
.
- Choose
anonymous
to allow full access to Kiali without requiring any credentials. - Choose
token
to allow access to Kiali using service account tokens, which controls access based on RBAC roles assigned to the service account. - Choose
openshift
to use the OpenShift OAuth login which controls access based on the individual’s RBAC roles in OpenShift. Not valid for non-OpenShift environments. - Choose
openid
to enable OpenID Connect-based authentication. Your cluster is required to be configured to accept the tokens issued by your IdP. There are additional required configurations for this strategy. See below for the additional OpenID configuration section. - Choose
header
when Kiali is running behind a reverse proxy that will inject an Authorization header and potentially impersonation headers.
When empty, this value will default to openshift
on OpenShift and token
on other Kubernetes environments.
.spec.custom_dashboards
A list of user-defined custom monitoring dashboards that you can use to generate metrics charts for your applications. The server has some built-in dashboards; if you define a custom dashboard here with the same name as a built-in dashboard, your custom dashboard takes precedence and will overwrite the built-in dashboard. You can disable one or more of the built-in dashboards by simply defining an empty dashboard.
An example of an additional user-defined dashboard,
- name: myapp
title: My App Metrics
items:
- chart:
name: "Thread Count"
spans: 4
metricName: "thread-count"
dataType: "raw"
An example of disabling a built-in dashboard (in this case, disabling the Envoy dashboard),
- name: envoy
To learn more about custom monitoring dashboards, see the documentation at https://kiali.io/docs/configuration/custom-dashboard/
.spec.custom_dashboards[*]
.spec.deployment
.spec.deployment.accessible_namespaces
When cluster_wide_access=false
this must be set to the list of namespaces to which Kiali is to be given permissions. You can provide names using regex expressions matched against all namespaces the operator can see. If left unset it is required that cluster_wide_access
be true
, and Kiali will have permissions to all namespaces. The list of namespaces that a user can access is a subset of these namespaces, given that user’s RBAC settings.
.spec.deployment.accessible_namespaces[*]
.spec.deployment.additional_service_yaml
Additional custom yaml to add to the service definition. This is used mainly to customize the service type. For example, if the deployment.service_type
is set to ‘LoadBalancer’ and you want to set the loadBalancerIP, you can do so here with: additional_service_yaml: { 'loadBalancerIP': '78.11.24.19' }
. Another example would be if the deployment.service_type
is set to ‘ExternalName’ you will need to configure the name via: additional_service_yaml: { 'externalName': 'my.kiali.example.com' }
. A final example would be if external IPs need to be set: additional_service_yaml: { 'externalIPs': ['80.11.12.10'] }
.spec.deployment.affinity
Affinity definitions that are to be used to define the nodes where the Kiali pod should be constrained. See the Kubernetes documentation on Assigning Pods to Nodes for the proper syntax for these three different affinity types.
.spec.deployment.affinity.node
.spec.deployment.affinity.pod
.spec.deployment.affinity.pod_anti
.spec.deployment.cluster_wide_access
Determines if the Kiali server will be granted cluster-wide permissions to see all namespaces. When true, this provides more efficient caching within the Kiali server. It must be true
if deployment.accessible_namespaces
is left unset. To limit the namespaces for which Kiali has permissions, set to false
and list the desired namespaces in deployment.accessible_namespaces
. When not set, this value will default to false
if deployment.accessible_namespaces
is set to a list of namespaces; otherwise this will be true
.
.spec.deployment.configmap_annotations
Custom annotations to be created on the Kiali ConfigMap.
.spec.deployment.custom_secrets
Defines additional secrets that are to be mounted in the Kiali pod.
These are useful to contain certs that are used by Kiali to securely connect to third party systems
(for example, see external_services.tracing.auth.ca_file
).
These secrets must be created by an external mechanism. Kiali will not generate these secrets; it is assumed these secrets are externally managed. You can define 0, 1, or more secrets. An example configuration is,
custom_secrets:
- name: mysecret
mount: /mysecret-path
- name: my-other-secret
mount: /my-other-secret-location
optional: true
.spec.deployment.custom_secrets[*]
.spec.deployment.custom_secrets[*].mount
The file path location where the secret content will be mounted. The custom secret cannot be mounted on a path that the operator will use to mount its secrets. Make sure you set your custom secret mount path to a unique, unused path. Paths such as /kiali-configuration
, /kiali-cert
, /kiali-cabundle
, and /kiali-secret
should not be used as mount paths for custom secrets because the operator may want to use one of those paths.
.spec.deployment.custom_secrets[*].name
The name of the secret that is to be mounted to the Kiali pod’s file system. The name of the custom secret must not be the same name as one created by the operator. Names such as kiali
, kiali-cert-secret
, and kiali-cabundle
should not be used as a custom secret name because the operator may want to create one with one of those names.
.spec.deployment.custom_secrets[*].optional
Indicates if the secret may or may not exist at the time the Kiali pod starts. This will default to ‘false’ if not specified.
.spec.deployment.host_aliases
This is content for the Kubernetes ‘hostAliases’ setting for the Kiali server. This allows you to modify the Kiali server pod ‘/etc/hosts’ file. A typical way to configure this setting is,
host_aliases:
- ip: 192.168.1.100
hostnames:
- "foo.local"
- "bar.local"
For details on the content of this setting, see https://kubernetes.io/docs/tasks/network/customize-hosts-file-for-pods/#adding-additional-entries-with-hostaliases
.spec.deployment.host_aliases[*]
.spec.deployment.host_aliases[*].hostnames
.spec.deployment.host_aliases[*].hostnames[*]
.spec.deployment.host_aliases[*].ip
.spec.deployment.hpa
Determines what (if any) HorizontalPodAutoscaler should be created to autoscale the Kiali pod. A typical way to configure HPA for Kiali is,
hpa:
api_version: "autoscaling/v2"
spec:
maxReplicas: 2
minReplicas: 1
metrics:
- type: Resource
resource:
name: cpu
target:
type: Utilization
averageUtilization: 50
.spec.deployment.hpa.api_version
A specific HPA API version that can be specified in case there is some HPA feature you want to use that is only supported in that specific version. If value is an empty string, an attempt will be made to determine a valid version.
.spec.deployment.hpa.spec
The spec
specified here will be placed in the created HPA resource’s ‘spec’ section. If spec
is left empty, no HPA resource will be created. Note that you must not specify the ‘scaleTargetRef’ section in spec
; the Kiali Operator will populate that for you.
.spec.deployment.image_digest
If deployment.image_version
is a digest hash, this value indicates what type of digest it is. A typical value would be ‘sha256’. Note: do NOT prefix this value with a ‘@’.
.spec.deployment.image_name
Determines which Kiali image to download and install. If you set this to a specific name (i.e. you do not leave it as the default empty string), you must make sure that image is supported by the operator. If empty, the operator will use a known supported image name based on which version
was defined. Note that, as a security measure, a cluster admin may have configured the Kiali operator to ignore this setting. A cluster admin may do this to ensure the Kiali operator only installs a single, specific Kiali version, thus this setting may have no effect depending on how the operator itself was configured.
.spec.deployment.image_pull_policy
The Kubernetes pull policy for the Kiali deployment. This is overridden to be ‘Always’ if deployment.image_version
is set to ‘latest’.
.spec.deployment.image_pull_secrets
The names of the secrets to be used when container images are to be pulled.
.spec.deployment.image_pull_secrets[*]
.spec.deployment.image_version
Determines which version of Kiali to install.
Choose ‘lastrelease’ to use the last Kiali release.
Choose ‘latest’ to use the latest image (which may or may not be a released version of Kiali).
Choose ‘operator_version’ to use the image whose version is the same as the operator version.
Otherwise, you can set this to any valid Kiali version (such as ‘v1.0’) or any valid Kiali
digest hash (if you set this to a digest hash, you must indicate the digest in deployment.image_digest
).
Note that if this is set to ‘latest’ then the deployment.image_pull_policy
will be set to ‘Always’.
If you set this to a specific version (i.e. you do not leave it as the default empty string), you must make sure that image is supported by the operator.
If empty, the operator will use a known supported image version based on which ‘version’ was defined. Note that, as a security measure, a cluster admin may have configured the Kiali operator to ignore this setting. A cluster admin may do this to ensure the Kiali operator only installs a single, specific Kiali version, thus this setting may have no effect depending on how the operator itself was configured.
.spec.deployment.ingress
Configures if/how the Kiali endpoint should be exposed externally.
.spec.deployment.ingress.additional_labels
Additional labels to add to the Ingress (or Route if on OpenShift). These are added to the labels that are created by default; these do not override the default labels.
.spec.deployment.ingress.class_name
If class_name
is a non-empty string, it will be used as the ‘spec.ingressClassName’ in the created Kubernetes Ingress resource. This setting is ignored if on OpenShift. This is also ignored if override_yaml.spec
is defined (i.e. you must define the ‘ingressClassName’ directly in your override yaml).
.spec.deployment.ingress.enabled
Determines if the Kiali endpoint should be exposed externally. If ‘true’, an Ingress will be created if on Kubernetes or a Route if on OpenShift. If left undefined, this will be ‘false’ on Kubernetes and ‘true’ on OpenShift.
.spec.deployment.ingress.override_yaml
Because an Ingress into a cluster can vary wildly in its desired configuration, this setting provides a way to override complete portions of the Ingress resource configuration (Ingress on Kubernetes and Route on OpenShift). It is up to the user to ensure this override YAML configuration is valid and supports the cluster environment since the operator will blindly copy this custom configuration into the resource it creates.
This setting is not used if deployment.ingress.enabled
is set to ‘false’.
Note that only ‘metadata.annotations’ and ‘spec’ is valid and only they will
be used to override those same sections in the created resource. You can define
either one or both.
Note that override_yaml.metadata.labels
is not allowed - you cannot override the labels; to add
labels to the default set of labels, use the deployment.ingress.additional_labels
setting.
Example,
override_yaml:
metadata:
annotations:
nginx.ingress.kubernetes.io/secure-backends: "true"
nginx.ingress.kubernetes.io/backend-protocol: "HTTPS"
spec:
rules:
- http:
paths:
- path: /kiali
pathType: Prefix
backend:
service
name: "kiali"
port:
number: 20001
.spec.deployment.ingress.override_yaml.metadata
.spec.deployment.ingress.override_yaml.metadata.annotations
.spec.deployment.ingress.override_yaml.spec
.spec.deployment.instance_name
The instance name of this Kiali installation. This instance name will be the prefix prepended to the names of all Kiali resources created by the operator and will be used to label those resources as belonging to this Kiali installation instance. You cannot change this instance name after a Kiali CR is created. If you attempt to change it, the operator will abort with an error. If you want to change it, you must first delete the original Kiali CR and create a new one. Note that this does not affect the name of the auto-generated signing key secret. If you do not supply a signing key, the operator will create one for you in a secret, but that secret will always be named ‘kiali-signing-key’ and shared across all Kiali instances in the same deployment namespace. If you want a different signing key secret, you are free to create your own and tell the operator about it via login_token.signing_key
. See the docs on that setting for more details. Note also that if you are setting this value, you may also want to change the installation_tag
setting, but this is not required.
.spec.deployment.logger
Configures the logger that emits messages to the Kiali server pod logs.
.spec.deployment.logger.log_format
Indicates if the logs should be written with one log message per line or using a JSON format. Must be one of: text
or json
.
.spec.deployment.logger.log_level
The lowest priority of messages to log. Must be one of: trace
, debug
, info
, warn
, error
, or fatal
.
.spec.deployment.logger.sampler_rate
With this setting every sampler_rate-th message will be logged. By default, every message is logged. As an example, setting this to '2'
means every other message will be logged. The value of this setting is a string but must be parsable as an integer.
.spec.deployment.logger.time_field_format
The log message timestamp format. This supports a golang time format (see https://golang.org/pkg/time/)
.spec.deployment.namespace
The namespace into which Kiali is to be installed. If this is empty or not defined, the default will be the namespace where the Kiali CR is located.
.spec.deployment.node_selector
A set of node labels that dictate onto which node the Kiali pod will be deployed.
.spec.deployment.pod_annotations
Custom annotations to be created on the Kiali pod.
.spec.deployment.pod_labels
Custom labels to be created on the Kiali pod. An example use for this setting is to inject an Istio sidecar such as,
sidecar.istio.io/inject: "true"
.spec.deployment.priority_class_name
The priorityClassName used to assign the priority of the Kiali pod.
.spec.deployment.replicas
The replica count for the Kiail deployment.
.spec.deployment.resources
Defines compute resources that are to be given to the Kiali pod’s container. The value is a dict as defined by Kubernetes. See the Kubernetes documentation (https://kubernetes.io/docs/concepts/configuration/manage-compute-resources-container).
If you set this to an empty dict ({}
) then no resources will be defined in the Deployment.
If you do not set this at all, the default is,
requests:
cpu: "10m"
memory: "64Mi"
limits:
memory: "1Gi"
.spec.deployment.secret_name
The name of a secret used by the Kiali. This secret is optionally used when configuring the OpenID authentication strategy. Consult the OpenID docs for more information at https://kiali.io/docs/configuration/authentication/openid/
.spec.deployment.security_context
Custom security context to be placed on the server container. The entire security context on the container will be the value of this setting if the operator is configured to allow it. Note that, as a security measure, a cluster admin may have configured the Kiali operator to not allow portions of this override setting - in this case you can specify additional security context settings but you cannot replace existing, default ones.
.spec.deployment.service_annotations
Custom annotations to be created on the Kiali Service resource.
.spec.deployment.service_type
The Kiali service type. Kubernetes determines what values are valid. Common values are ‘NodePort’, ‘ClusterIP’, and ‘LoadBalancer’.
.spec.deployment.tolerations
A list of tolerations which declare which node taints Kiali can tolerate. See the Kubernetes documentation on Taints and Tolerations for more details.
.spec.deployment.tolerations[*]
.spec.deployment.verbose_mode
DEPRECATED! Determines which priority levels of log messages Kiali will output. Use deployment.logger
settings instead.
.spec.deployment.version_label
Kiali resources will be assigned a ‘version’ label when they are deployed. This setting determines what value those ‘version’ labels will have. When empty, its default will be determined as follows,
- If
deployment.image_version
is ‘latest’,version_label
will be fixed to ‘master’. - If
deployment.image_version
is ‘lastrelease’,version_label
will be fixed to the last Kiali release version string. - If
deployment.image_version
is anything else,version_label
will be that value, too.
.spec.deployment.view_only_mode
When true, Kiali will be in ‘view only’ mode, allowing the user to view and retrieve management and monitoring data for the service mesh, but not allow the user to modify the service mesh.
.spec.external_services
These external service configuration settings define how to connect to the external services like Prometheus, Grafana, and Jaeger.
Regarding sensitive values in the external_services ‘auth’ sections:
Some external services configured below support an ‘auth’ sub-section in order to tell Kiali
how it should authenticate with the external services. Credentials used to authenticate Kiali
to those external services can be defined in the auth.password
and auth.token
values
within the auth
sub-section. Because these are sensitive values, you may not want to declare
the actual credentials here in the Kiali CR. In this case, you may store the actual password
or token string in a Kubernetes secret. If you do, you need to set the auth.password
or
auth.token
to a value in the format secret:<secretName>:<secretKey>
where <secretName>
is the name of the secret object that Kiali can access, and <secretKey>
is the name of the
key within the named secret that contains the actual password or token string. For example,
if Grafana requires a password, you can store that password in a secret named ‘myGrafanaCredentials’
in a key named ‘myGrafanaPw’. In this case, you would set external_services.grafana.auth.password
to secret:myGrafanaCredentials:myGrafanaPw
.
.spec.external_services.custom_dashboards
Settings for enabling and discovering custom dashboards.
.spec.external_services.custom_dashboards.discovery_auto_threshold
Threshold of the number of pods, for a given Application or Workload, above which dashboards discovery will be skipped. This setting only takes effect when discovery_enabled
is set to ‘auto’.
.spec.external_services.custom_dashboards.discovery_enabled
Enable, disable or set ‘auto’ mode to the dashboards discovery process. If set to ‘true’, Kiali will always try to discover dashboards based on metrics. Note that this can generate performance penalties while discovering dashboards for workloads having many pods (thus many metrics). When set to ‘auto’, Kiali will skip dashboards discovery for workloads with more than a configured threshold of pods (see discovery_auto_threshold
). When discovery is disabled or auto/skipped, it is still possible to tie workloads with dashboards through annotations on pods (refer to the doc https://kiali.io/docs/configuration/custom-dashboard/#pod-annotations). Value must be one of: true
, false
, auto
.
.spec.external_services.custom_dashboards.enabled
Enable or disable custom dashboards, including the dashboards discovery process.
.spec.external_services.custom_dashboards.is_core
Used in the Components health feature. When true, the unhealthy scenarios will be raised as errors. Otherwise, they will be raised as a warning.
.spec.external_services.custom_dashboards.namespace_label
The Prometheus label name used for identifying namespaces in metrics for custom dashboards. The default is namespace
but you may want to use kubernetes_namespace
depending on your Prometheus configuration.
.spec.external_services.custom_dashboards.prometheus
The Prometheus configuration defined here refers to the Prometheus instance that is dedicated to fetching metrics for custom dashboards. This means you can obtain these metrics for the custom dashboards from a Prometheus instance that is different from the one that Istio uses. If this section is omitted, the same Prometheus that is used to obtain the Istio metrics will also be used for retrieving custom dashboard metrics.
.spec.external_services.custom_dashboards.prometheus.auth
Settings used to authenticate with the Prometheus instance.
.spec.external_services.custom_dashboards.prometheus.auth.ca_file
The certificate authority file to use when accessing Prometheus using https. An empty string means no extra certificate authority file is used.
.spec.external_services.custom_dashboards.prometheus.auth.insecure_skip_verify
Set true to skip verifying certificate validity when Kiali contacts Prometheus over https.
.spec.external_services.custom_dashboards.prometheus.auth.password
Password to be used when making requests to Prometheus, for basic authentication. May refer to a secret.
.spec.external_services.custom_dashboards.prometheus.auth.token
Token / API key to access Prometheus, for token-based authentication. May refer to a secret.
.spec.external_services.custom_dashboards.prometheus.auth.type
The type of authentication to use when contacting the server. Use bearer
to send the token to the Prometheus server. Use basic
to connect with username and password credentials. Use none
to not use any authentication (this is the default).
.spec.external_services.custom_dashboards.prometheus.auth.use_kiali_token
When true and if auth.type
is bearer
, Kiali Service Account token will be used for the API calls to Prometheus (in this case, auth.token
config is ignored).
.spec.external_services.custom_dashboards.prometheus.auth.username
Username to be used when making requests to Prometheus with basic
authentication.
.spec.external_services.custom_dashboards.prometheus.cache_duration
Prometheus caching duration expressed in seconds.
.spec.external_services.custom_dashboards.prometheus.cache_enabled
Enable/disable Prometheus caching used for Health services.
.spec.external_services.custom_dashboards.prometheus.cache_expiration
Prometheus caching expiration expressed in seconds.
.spec.external_services.custom_dashboards.prometheus.custom_headers
A set of name/value settings that will be passed as headers when requests are sent to Prometheus.
.spec.external_services.custom_dashboards.prometheus.health_check_url
Used in the Components health feature. This is the url which Kiali will ping to determine whether the component is reachable or not. It defaults to url
when not provided.
.spec.external_services.custom_dashboards.prometheus.is_core
Used in the Components health feature. When true, the unhealthy scenarios will be raised as errors. Otherwise, they will be raised as a warning.
.spec.external_services.custom_dashboards.prometheus.query_scope
A set of labelName/labelValue settings applied to every Prometheus query. Used to narrow unified metrics to only those scoped to the Kiali instance.
.spec.external_services.custom_dashboards.prometheus.thanos_proxy
Define this section if Prometheus is to be queried through a Thanos proxy. Kiali will still use the url
setting to query for Prometheus metrics so make sure that is set appropriately.
.spec.external_services.custom_dashboards.prometheus.thanos_proxy.enabled
Set to true when a Thanos proxy is in front of Prometheus.
.spec.external_services.custom_dashboards.prometheus.thanos_proxy.retention_period
Thanos Retention period value expresed as a string.
.spec.external_services.custom_dashboards.prometheus.thanos_proxy.scrape_interval
Thanos Scrape interval value expresed as a string.
.spec.external_services.custom_dashboards.prometheus.url
The URL used to query the Prometheus Server. This URL must be accessible from the Kiali pod. If empty, the default will assume Prometheus is in the Istio control plane namespace; e.g. http://prometheus.<istio_namespace>:9090
.
.spec.external_services.grafana
Configuration used to access the Grafana dashboards.
.spec.external_services.grafana.auth
Settings used to authenticate with the Grafana instance.
.spec.external_services.grafana.auth.ca_file
The certificate authority file to use when accessing Grafana using https. An empty string means no extra certificate authority file is used.
.spec.external_services.grafana.auth.insecure_skip_verify
Set true to skip verifying certificate validity when Kiali contacts Grafana over https.
.spec.external_services.grafana.auth.password
Password to be used when making requests to Grafana, for basic authentication. May refer to a secret.
.spec.external_services.grafana.auth.token
Token / API key to access Grafana, for token-based authentication. May refer to a secret.
.spec.external_services.grafana.auth.type
The type of authentication to use when contacting the server. Use bearer
to send the token to the Grafana server. Use basic
to connect with username and password credentials. Use none
to not use any authentication (this is the default).
.spec.external_services.grafana.auth.use_kiali_token
When true and if auth.type
is bearer
, Kiali Service Account token will be used for the API calls to Grafana (in this case, auth.token
config is ignored).
.spec.external_services.grafana.auth.username
Username to be used when making requests to Grafana with basic
authentication.
.spec.external_services.grafana.dashboards
A list of Grafana dashboards that Kiali can link to.
.spec.external_services.grafana.dashboards[*]
.spec.external_services.grafana.dashboards[*].name
The name of the Grafana dashboard.
.spec.external_services.grafana.dashboards[*].variables
.spec.external_services.grafana.dashboards[*].variables.app
The name of a variable that holds the app name, if used in that dashboard (else it must be omitted).
.spec.external_services.grafana.dashboards[*].variables.namespace
The name of a variable that holds the namespace, if used in that dashboard (else it must be omitted).
.spec.external_services.grafana.dashboards[*].variables.service
The name of a variable that holds the service name, if used in that dashboard (else it must be omitted).
.spec.external_services.grafana.dashboards[*].variables.workload
The name of a variable that holds the workload name, if used in that dashboard (else it must be omitted).
.spec.external_services.grafana.enabled
When true, Grafana support will be enabled in Kiali.
.spec.external_services.grafana.health_check_url
Used in the Components health feature. This is the URL which Kiali will ping to determine whether the component is reachable or not. It defaults to in_cluster_url
when not provided.
.spec.external_services.grafana.in_cluster_url
The URL used for in-cluster access. An example would be http://grafana.istio-system:3000
. This URL can contain query parameters if needed, such as ‘?orgId=1’. If not defined, it will default to http://grafana.<istio_namespace>:3000
.
.spec.external_services.grafana.is_core
Used in the Components health feature. When true, the unhealthy scenarios will be raised as errors. Otherwise, they will be raised as a warning.
.spec.external_services.grafana.url
The URL that Kiali uses when integrating with Grafana. This URL must be accessible to clients external to the cluster in order for the integration to work properly. If empty, an attempt to auto-discover it is made. This URL can contain query parameters if needed, such as ‘?orgId=1’.
.spec.external_services.istio
Istio configuration that Kiali needs to know about in order to observe the mesh.
.spec.external_services.istio.component_status
Istio components whose status will be monitored by Kiali.
.spec.external_services.istio.component_status.components
A specific Istio component whose status will be monitored by Kiali.
.spec.external_services.istio.component_status.components[*]
.spec.external_services.istio.component_status.components[*].app_label
Istio component pod app label.
.spec.external_services.istio.component_status.components[*].is_core
Whether the component is to be considered a core component for your deployment.
.spec.external_services.istio.component_status.components[*].is_proxy
Whether the component is a native Envoy proxy.
.spec.external_services.istio.component_status.components[*].namespace
The namespace where the component is installed. It defaults to the Istio control plane namespace (e.g. istio_namespace
) setting. Note that the Istio documentation suggests you install the ingress and egress to different namespaces, so you most likely will want to explicitly set this namespace value for the ingress and egress components.
.spec.external_services.istio.component_status.enabled
Determines if Istio component statuses will be displayed in the Kiali masthead indicator.
.spec.external_services.istio.config_map_name
The name of the istio control plane config map.
.spec.external_services.istio.envoy_admin_local_port
The port which kiali will open to fetch envoy config data information.
.spec.external_services.istio.gateway_api_classes
A list declaring all the Gateways used in Istio. If left empty or undefined, the default is a single list item whose name is Istio
and class_name is istio
.
.spec.external_services.istio.gateway_api_classes[*]
.spec.external_services.istio.gateway_api_classes[*].class_name
The name of the GatewayClass.
.spec.external_services.istio.gateway_api_classes[*].name
The name of the Gateway API implementation.
.spec.external_services.istio.istio_api_enabled
Indicates if Kiali has access to istiod. true by default.
.spec.external_services.istio.istio_canary_revision
These values are used in Canary upgrade/downgrade functionality when istio_upgrade_action
is true.
.spec.external_services.istio.istio_canary_revision.current
The currently installed Istio revision.
.spec.external_services.istio.istio_canary_revision.upgrade
The installed Istio canary revision to upgrade to.
.spec.external_services.istio.istio_identity_domain
The annotation used by Istio to identify domains.
.spec.external_services.istio.istio_injection_annotation
The name of the field that annotates a workload to indicate a sidecar should be automatically injected by Istio. This is the name of a Kubernetes annotation. Note that some Istio implementations also support labels by the same name. In other words, if a workload has a Kubernetes label with this name, that may also trigger automatic sidecar injection.
.spec.external_services.istio.istio_sidecar_annotation
The pod annotation used by Istio to identify the sidecar.
.spec.external_services.istio.istio_sidecar_injector_config_map_name
The name of the istio-sidecar-injector config map.
.spec.external_services.istio.istiod_deployment_name
The name of the istiod deployment.
.spec.external_services.istio.istiod_pod_monitoring_port
The monitoring port of the IstioD pod (not the Service).
.spec.external_services.istio.root_namespace
The namespace to treat as the administrative root namespace for Istio configuration.
.spec.external_services.istio.url_service_version
The Istio service used to determine the Istio version. If empty, assumes the URL for the well-known Istio version endpoint.
.spec.external_services.prometheus
The Prometheus configuration defined here refers to the Prometheus instance that is used by Istio to store its telemetry.
.spec.external_services.prometheus.auth
Settings used to authenticate with the Prometheus instance.
.spec.external_services.prometheus.auth.ca_file
The certificate authority file to use when accessing Prometheus using https. An empty string means no extra certificate authority file is used.
.spec.external_services.prometheus.auth.insecure_skip_verify
Set true to skip verifying certificate validity when Kiali contacts Prometheus over https.
.spec.external_services.prometheus.auth.password
Password to be used when making requests to Prometheus, for basic authentication. May refer to a secret.
.spec.external_services.prometheus.auth.token
Token / API key to access Prometheus, for token-based authentication. May refer to a secret.
.spec.external_services.prometheus.auth.type
The type of authentication to use when contacting the server. Use bearer
to send the token to the Prometheus server. Use basic
to connect with username and password credentials. Use none
to not use any authentication (this is the default).
.spec.external_services.prometheus.auth.use_kiali_token
When true and if auth.type
is bearer
, Kiali Service Account token will be used for the API calls to Prometheus (in this case, auth.token
config is ignored).
.spec.external_services.prometheus.auth.username
Username to be used when making requests to Prometheus with basic
authentication.
.spec.external_services.prometheus.cache_duration
Prometheus caching duration expressed in seconds.
.spec.external_services.prometheus.cache_enabled
Enable/disable Prometheus caching used for Health services.
.spec.external_services.prometheus.cache_expiration
Prometheus caching expiration expressed in seconds.
.spec.external_services.prometheus.custom_headers
A set of name/value settings that will be passed as headers when requests are sent to Prometheus.
.spec.external_services.prometheus.health_check_url
Used in the Components health feature. This is the url which Kiali will ping to determine whether the component is reachable or not. It defaults to url
when not provided.
.spec.external_services.prometheus.is_core
Used in the Components health feature. When true, the unhealthy scenarios will be raised as errors. Otherwise, they will be raised as a warning.
.spec.external_services.prometheus.query_scope
A set of labelName/labelValue settings applied to every Prometheus query. Used to narrow unified metrics to only those scoped to the Kiali instance.
.spec.external_services.prometheus.thanos_proxy
Define this section if Prometheus is to be queried through a Thanos proxy. Kiali will still use the url
setting to query for Prometheus metrics so make sure that is set appropriately.
.spec.external_services.prometheus.thanos_proxy.enabled
Set to true when a Thanos proxy is in front of Prometheus.
.spec.external_services.prometheus.thanos_proxy.retention_period
Thanos Retention period value expresed as a string.
.spec.external_services.prometheus.thanos_proxy.scrape_interval
Thanos Scrape interval value expresed as a string.
.spec.external_services.prometheus.url
The URL used to query the Prometheus Server. This URL must be accessible from the Kiali pod. If empty, the default will assume Prometheus is in the Istio control plane namespace; e.g. http://prometheus.<istio_namespace>:9090
.
.spec.external_services.tracing
Configuration used to access the Tracing (Jaeger or Tempo) dashboards.
.spec.external_services.tracing.auth
Settings used to authenticate with the Tracing server instance.
.spec.external_services.tracing.auth.ca_file
The certificate authority file to use when accessing the Tracing server using https. An empty string means no extra certificate authority file is used.
.spec.external_services.tracing.auth.insecure_skip_verify
Set true to skip verifying certificate validity when Kiali contacts the Tracing server over https.
.spec.external_services.tracing.auth.password
Password to be used when making requests to the Tracing server, for basic authentication. May refer to a secret.
.spec.external_services.tracing.auth.token
Token / API key to access the Tracing server, for token-based authentication. May refer to a secret.
.spec.external_services.tracing.auth.type
The type of authentication to use when contacting the server. Use bearer
to send the token to the Tracing server. Use basic
to connect with username and password credentials. Use none
to not use any authentication (this is the default).
.spec.external_services.tracing.auth.use_kiali_token
When true and if auth.type
is bearer
, Kiali Service Account token will be used for the API calls to the Tracing server (in this case, auth.token
config is ignored).
.spec.external_services.tracing.auth.username
Username to be used when making requests to the Tracing server with basic
authentication.
.spec.external_services.tracing.enabled
When true, connections to the Tracing server are enabled. in_cluster_url
and/or url
need to be provided.
.spec.external_services.tracing.in_cluster_url
Set URL for in-cluster access, which enables further integration between Kiali and Jaeger. When not provided, Kiali will only show external links using the url
setting. Note: Jaeger v1.20+ has separated ports for GRPC(16685) and HTTP(16686) requests. Make sure you use the appropriate port according to the use_grpc
value. Example: http://tracing.istio-system:16685
.spec.external_services.tracing.is_core
Used in the Components health feature. When true, the unhealthy scenarios will be raised as errors. Otherwise, they will be raised as a warning.
.spec.external_services.tracing.namespace_selector
Kiali use this boolean to find traces with a namespace selector : service.namespace.
.spec.external_services.tracing.provider
The trace provider to get the traces from. Value must be one of: jaeger
or tempo
.
.spec.external_services.tracing.query_scope
A set of tagKey/tagValue settings applied to every Jaeger query. Used to narrow unified traces to only those scoped to the Kiali instance.
.spec.external_services.tracing.query_timeout
The amount of time in seconds Kiali will wait for a response from ‘jaeger-query’ service when fetching traces.
.spec.external_services.tracing.url
The external URL that will be used to generate links to Jaeger. It must be accessible to clients external to the cluster (e.g: a browser) in order to generate valid links. If the tracing service is deployed with a QUERY_BASE_PATH set, set this URL like https://
.spec.external_services.tracing.use_grpc
Set to true in order to enable GRPC connections between Kiali and Jaeger which will speed up the queries. In some setups you might not be able to use GRPC (e.g. if Jaeger is behind some reverse proxy that doesn’t support it). If not specified, this will defalt to ‘false’ if deployed within a Maistra/OSSM+OpenShift environment, ‘true’ otherwise.
.spec.external_services.tracing.whitelist_istio_system
Kiali will get the traces of these services found in the Istio control plane namespace.
.spec.external_services.tracing.whitelist_istio_system[*]
A name of a service found in the Istio control plane namespace whose traces will be retrieved by Kiali.
.spec.health_config
This section defines what it means for nodes to be healthy. For more details, see https://kiali.io/docs/configuration/health/
.spec.health_config.rate
.spec.health_config.rate[*]
.spec.health_config.rate[*].kind
The type of resource that this configuration applies to. This is a regular expression.
.spec.health_config.rate[*].name
The name of a resource that this configuration applies to. This is a regular expression.
.spec.health_config.rate[*].namespace
The name of the namespace that this configuration applies to. This is a regular expression.
.spec.health_config.rate[*].tolerance
A list of tolerances for this configuration.
.spec.health_config.rate[*].tolerance[*]
.spec.health_config.rate[*].tolerance[*].code
The status code that applies for this tolerance. This is a regular expression.
.spec.health_config.rate[*].tolerance[*].degraded
Health will be considered degraded when the telemetry reaches this value (specified as an integer representing a percentage).
.spec.health_config.rate[*].tolerance[*].direction
The direction that applies for this tolerance (e.g. inbound or outbound). This is a regular expression.
.spec.health_config.rate[*].tolerance[*].failure
A failure status will be shown when the telemetry reaches this value (specified as an integer representing a percentage).
.spec.health_config.rate[*].tolerance[*].protocol
The protocol that applies for this tolerance (e.g. grpc or http). This is a regular expression.
.spec.identity
Settings that define the Kiali server identity.
.spec.identity.cert_file
Certificate file used to identify the Kiali server. If set, you must go over https to access Kiali. The Kiali operator will set this if it deploys Kiali behind https. When left undefined, the operator will attempt to generate a cluster-specific cert file that provides https by default (today, this auto-generation of a cluster-specific cert is only supported on OpenShift). When set to an empty string, https will be disabled.
.spec.identity.private_key_file
Private key file used to identify the Kiali server. If set, you must go over https to access Kiali. When left undefined, the Kiali operator will attempt to generate a cluster-specific private key file that provides https by default (today, this auto-generation of a cluster-specific private key is only supported on OpenShift). When set to an empty string, https will be disabled.
.spec.installation_tag
Tag used to identify a particular instance/installation of the Kiali server. This is merely a human-readable string that will be used within Kiali to help a user identify the Kiali being used (e.g. in the Kiali UI title bar). See deployment.instance_name
for the setting used to customize Kiali resource names that are created.
.spec.istio_labels
Defines specific labels used by Istio that Kiali needs to know about.
.spec.istio_labels.app_label_name
The name of the label used to define what application a workload belongs to. This is typically something like app
or app.kubernetes.io/name
.
.spec.istio_labels.injection_label_name
The name of the label used to instruct Istio to automatically inject sidecar proxies when applications are deployed.
.spec.istio_labels.injection_label_rev
The label used to identify the Istio revision.
.spec.istio_labels.version_label_name
The name of the label used to define what version of the application a workload belongs to. This is typically something like version
or app.kubernetes.io/version
.
.spec.istio_namespace
The namespace where Istio is installed. If left empty, it is assumed to be the same namespace as where Kiali is installed (i.e. deployment.namespace
).
.spec.kiali_feature_flags
Kiali features that can be enabled or disabled.
.spec.kiali_feature_flags.certificates_information_indicators
Flag to enable/disable displaying certificates information and which secrets to grant read permissions.
.spec.kiali_feature_flags.certificates_information_indicators.enabled
.spec.kiali_feature_flags.certificates_information_indicators.secrets
.spec.kiali_feature_flags.certificates_information_indicators.secrets[*]
.spec.kiali_feature_flags.clustering
Multi-cluster related features.
.spec.kiali_feature_flags.clustering.autodetect_secrets
Settings to allow cluster secrets to be auto-detected. Secrets must exist in the Kiali deployment namespace.
.spec.kiali_feature_flags.clustering.autodetect_secrets.enabled
If true then remote cluster secrets will be autodetected during the installation of the Kiali Server Deployment. Any remote cluster secrets found in the Kiali deployment namespace will be mounted to the Kiali Server’s file system. If false, you can still manually specify the remote cluster secret information in the ‘clusters’ setting if you wish to utilize multicluster features.
.spec.kiali_feature_flags.clustering.autodetect_secrets.label
The name and value of a label that exists on all remote cluster secrets. Default is ‘kiali.io/multiCluster=true’.
.spec.kiali_feature_flags.clustering.clusters
A list of clusters that the Kiali Server can access. You need to specify the remote clusters here if ‘autodetect_secrets.enabled’ is false.
.spec.kiali_feature_flags.clustering.clusters[*]
.spec.kiali_feature_flags.clustering.clusters[*].name
The name of the cluster.
.spec.kiali_feature_flags.clustering.clusters[*].secret_name
The name of the secret that contains the credentials necessary to connect to the remote cluster. This secret must exist in the Kiali deployment namespace.
.spec.kiali_feature_flags.clustering.kiali_urls
A map between cluster name, instance name and namespace to a Kiali URL. Will be used showing the Mesh page’s Kiali URLs. The Kiali service’s ‘kiali.io/external-url’ annotation will be overridden when this property is set.
.spec.kiali_feature_flags.clustering.kiali_urls[*]
.spec.kiali_feature_flags.clustering.kiali_urls[*].cluster_name
The name of the cluster.
.spec.kiali_feature_flags.clustering.kiali_urls[*].instance_name
The instance name of this Kiali installation. This should be the value used in deployment.instance_name
for Kiali resource name.
.spec.kiali_feature_flags.clustering.kiali_urls[*].namespace
The namespace into which Kiali is installed.
.spec.kiali_feature_flags.clustering.kiali_urls[*].url
The URL of Kiali in the cluster.
.spec.kiali_feature_flags.disabled_features
There may be some features that admins do not want to be accessible to users (even in ‘view only’ mode). In this case, this setting allows you to disable one or more of those features entirely.
.spec.kiali_feature_flags.disabled_features[*]
.spec.kiali_feature_flags.istio_annotation_action
Flag to enable/disable an Action to edit annotations.
.spec.kiali_feature_flags.istio_injection_action
Flag to enable/disable an Action to label a namespace for automatic Istio Sidecar injection.
.spec.kiali_feature_flags.istio_upgrade_action
Flag to activate the Kiali functionality of upgrading namespaces to point to an installed Istio Canary revision. Related Canary upgrade and current revisions of Istio should be defined in istio_canary_revision
section.
.spec.kiali_feature_flags.ui_defaults
Default settings for the UI. These defaults apply to all users.
.spec.kiali_feature_flags.ui_defaults.graph
Default settings for the Graph UI.
.spec.kiali_feature_flags.ui_defaults.graph.find_options
A list of commonly used and useful find expressions that will be provided to the user out-of-box.
.spec.kiali_feature_flags.ui_defaults.graph.find_options[*]
.spec.kiali_feature_flags.ui_defaults.graph.find_options[*].auto_select
If true this option will be selected and take effect automatically. Note that only one option in the list can have this value be set to true.
.spec.kiali_feature_flags.ui_defaults.graph.find_options[*].description
Human-readable text to let the user know what the expression does.
.spec.kiali_feature_flags.ui_defaults.graph.find_options[*].expression
The find expression.
.spec.kiali_feature_flags.ui_defaults.graph.hide_options
A list of commonly used and useful hide expressions that will be provided to the user out-of-box.
.spec.kiali_feature_flags.ui_defaults.graph.hide_options[*]
.spec.kiali_feature_flags.ui_defaults.graph.hide_options[*].auto_select
If true this option will be selected and take effect automatically. Note that only one option in the list can have this value be set to true.
.spec.kiali_feature_flags.ui_defaults.graph.hide_options[*].description
Human-readable text to let the user know what the expression does.
.spec.kiali_feature_flags.ui_defaults.graph.hide_options[*].expression
The hide expression.
.spec.kiali_feature_flags.ui_defaults.graph.traffic
These settings determine which rates are used to determine graph traffic.
.spec.kiali_feature_flags.ui_defaults.graph.traffic.grpc
gRPC traffic is measured in requests or sent/received/total messages. Value must be one of: none
, requests
, sent
, received
, or total
.
.spec.kiali_feature_flags.ui_defaults.graph.traffic.http
HTTP traffic is measured in requests. Value must be one of: none
or requests
.
.spec.kiali_feature_flags.ui_defaults.graph.traffic.tcp
TCP traffic is measured in sent/received/total bytes. Only request traffic supplies response codes. Value must be one of: none
, sent
, received
, or total
.
.spec.kiali_feature_flags.ui_defaults.list
Default settings for the List views (Apps, Workloads, etc).
.spec.kiali_feature_flags.ui_defaults.list.include_health
Include Health column (by default) for applicable list views. Setting to false can improve performance.
.spec.kiali_feature_flags.ui_defaults.list.include_istio_resources
Include Istio resources (by default) in Details column for applicable list views. Setting to false can improve performance.
.spec.kiali_feature_flags.ui_defaults.list.include_validations
Include Configuration validation column (by default) for applicable list views. Setting to false can improve performance.
.spec.kiali_feature_flags.ui_defaults.list.show_include_toggles
If true list pages display checkbox toggles for the include options, Otherwise the configured settings are applied but can not be changed by the user. Default is false.
.spec.kiali_feature_flags.ui_defaults.metrics_inbound
Additional label aggregation for inbound metric pages in detail pages. You will see these configurations in the ‘Metric Settings’ drop-down. An example,
metrics_inbound:
aggregations:
- display_name: Istio Network
label: topology_istio_io_network
- display_name: Istio Revision
label: istio_io_rev
.spec.kiali_feature_flags.ui_defaults.metrics_inbound.aggregations
.spec.kiali_feature_flags.ui_defaults.metrics_inbound.aggregations[*]
.spec.kiali_feature_flags.ui_defaults.metrics_inbound.aggregations[*].display_name
.spec.kiali_feature_flags.ui_defaults.metrics_inbound.aggregations[*].label
.spec.kiali_feature_flags.ui_defaults.metrics_outbound
Additional label aggregation for outbound metric pages in detail pages. You will see these configurations in the ‘Metric Settings’ drop-down. An example,
metrics_outbound:
aggregations:
- display_name: Istio Network
label: topology_istio_io_network
- display_name: Istio Revision
label: istio_io_rev
.spec.kiali_feature_flags.ui_defaults.metrics_outbound.aggregations
.spec.kiali_feature_flags.ui_defaults.metrics_outbound.aggregations[*]
.spec.kiali_feature_flags.ui_defaults.metrics_outbound.aggregations[*].display_name
.spec.kiali_feature_flags.ui_defaults.metrics_outbound.aggregations[*].label
.spec.kiali_feature_flags.ui_defaults.metrics_per_refresh
Duration of metrics to fetch on each refresh. Value must be one of: 1m
, 2m
, 5m
, 10m
, 30m
, 1h
, 3h
, 6h
, 12h
, 1d
, 7d
, or 30d
.spec.kiali_feature_flags.ui_defaults.namespaces
Default selections for the namespace selection dropdown. Non-existent or inaccessible namespaces will be ignored. Omit or set to an empty array for no default namespaces.
.spec.kiali_feature_flags.ui_defaults.namespaces[*]
.spec.kiali_feature_flags.ui_defaults.refresh_interval
The automatic refresh interval for pages offering automatic refresh. Value must be one of: pause
, 10s
, 15s
, 30s
, 1m
, 5m
or 15m
.spec.kiali_feature_flags.validations
Features specific to the validations subsystem.
.spec.kiali_feature_flags.validations.ignore
A list of one or more validation codes whose errors are to be ignored.
.spec.kiali_feature_flags.validations.ignore[*]
A validation code (e.g. KIA0101
) for a specific validation error that is to be ignored.
.spec.kiali_feature_flags.validations.skip_wildcard_gateway_hosts
The KIA0301 validation checks duplicity of host and port combinations across all Istio Gateways. This includes also Gateways with ‘*’ in hosts. But Istio considers such a Gateway with a wildcard in hosts as the last in order, after the Gateways with FQDN in hosts. This option is to skip Gateways with wildcards in hosts from the KIA0301 validations but still keep Gateways with FQDN hosts.
.spec.kubernetes_config
Configuration of Kiali’s access of the Kubernetes API.
.spec.kubernetes_config.burst
The Burst value of the Kubernetes client.
.spec.kubernetes_config.cache_duration
The ratio interval (expressed in seconds) used for the cache to perform a full refresh. Only used when cache_enabled
is true.
.spec.kubernetes_config.cache_token_namespace_duration
This Kiali cache is a list of namespaces per user. This is typically a short-lived cache compared with the duration of the namespace cache defined by the cache_duration
setting. This is specified in seconds.
.spec.kubernetes_config.cluster_name
The name of the cluster Kiali is deployed in. This is only used in multi cluster environments. If not set, Kiali will try to auto detect the cluster name from the Istiod deployment or use the default ‘Kubernetes’.
.spec.kubernetes_config.excluded_workloads
List of controllers that won’t be used for Workload calculation. Kiali queries Deployment, ReplicaSet, ReplicationController, DeploymentConfig, StatefulSet, Job and CronJob controllers. Deployment and ReplicaSet will be always queried, but ReplicationController, DeploymentConfig, StatefulSet, Job and CronJobs can be skipped from Kiali workloads queries if they are present in this list.
.spec.kubernetes_config.excluded_workloads[*]
.spec.kubernetes_config.qps
The QPS value of the Kubernetes client.
.spec.login_token
.spec.login_token.expiration_seconds
A user’s login token expiration specified in seconds. This is applicable to token and header auth strategies only.
.spec.login_token.signing_key
The signing key used to generate tokens for user authentication. Because this is potentially sensitive, you have the option to store this value in a secret. If you store this signing key value in a secret, you must indicate what key in what secret by setting this value to a string in the form of secret:<secretName>:<secretKey>
. If left as an empty string, a secret with a random signing key will be generated for you. The signing key must be 16, 24 or 32 byte long.
.spec.server
Configuration that controls some core components within the Kiali Server.
.spec.server.address
Where the Kiali server is bound. The console and API server are accessible on this host.
.spec.server.audit_log
When true, allows additional audit logging on write operations.
.spec.server.cors_allow_all
When true, allows the web console to send requests to other domains other than where the console came from. Typically used for development environments only.
.spec.server.gzip_enabled
When true, Kiali serves http requests with gzip enabled (if the browser supports it) when the requests are over 1400 bytes.
.spec.server.observability
Settings to enable observability into the Kiali server itself.
.spec.server.observability.metrics
Settings that control how Kiali itself emits its own metrics.
.spec.server.observability.metrics.enabled
When true, the metrics endpoint will be available for Prometheus to scrape.
.spec.server.observability.metrics.port
The port that the server will bind to in order to receive metric requests. This is the port Prometheus will need to scrape when collecting metrics from Kiali.
.spec.server.observability.tracing
Settings that control how the Kiali server itself emits its own tracing data.
.spec.server.observability.tracing.collector_type
The collector type to use. Value must be one of: jaeger
or otel
.
.spec.server.observability.tracing.collector_url
The URL used to determine where the Kiali server tracing data will be stored.
.spec.server.observability.tracing.enabled
When true, the Kiali server itself will product its own tracing data.
.spec.server.observability.tracing.otel
Specific properties when the collector type is otel
.
.spec.server.observability.tracing.otel.protocol
Protocol. Supported values are: http
, https
or grpc
.
.spec.server.port
The port that the server will bind to in order to receive console and API requests.
.spec.server.web_fqdn
Defines the public domain where Kiali is being served. This is the ‘domain’ part of the URL (usually it’s a fully-qualified domain name). For example, kiali.example.org
. When empty, Kiali will try to guess this value from HTTP headers. On non-OpenShift clusters, you must populate this value if you want to enable cross-linking between Kiali instances in a multi-cluster setup.
.spec.server.web_history_mode
Define the history mode of kiali UI. Value must be one of: browser
or hash
.
.spec.server.web_port
Defines the ingress port where the connections come from. This is usually necessary when the application responds through a proxy/ingress, and it does not forward the correct headers (when this happens, Kiali cannot guess the port). When empty, Kiali will try to guess this value from HTTP headers.
.spec.server.web_root
Defines the context root path for the Kiali console and API endpoints and readiness probes. When providing a context root path that is not /
, do not add a trailing slash (i.e. use /kiali
not /kiali/
). When empty, this will default to /
on OpenShift and /kiali
on other Kubernetes environments.
.spec.server.web_schema
Defines the public HTTP schema used to serve Kiali. Value must be one of: http
or https
. When empty, Kiali will try to guess this value from HTTP headers. On non-OpenShift clusters, you must populate this value if you want to enable cross-linking between Kiali instances in a multi-cluster setup.
.spec.version
The version of the Ansible playbook to execute in order to install that version of Kiali.
It is rare you will want to set this - if you are thinking of setting this, know what you are doing first.
The only supported value today is default
.
If not specified, a default version of Kiali will be installed which will be the most recent release of Kiali. Refer to this file to see where these values are defined in the master branch, https://github.com/kiali/kiali-operator/tree/master/playbooks/default-supported-images.yml
This version setting affects the defaults of the deployment.image_name and deployment.image_version settings. See the comments for those settings below for additional details. But in short, this version setting will dictate which version of the Kiali image will be deployed by default. Note that if you explicitly set deployment.image_name and/or deployment.image_version you are responsible for ensuring those settings are compatible with this setting (i.e. the Kiali image must be compatible with the rest of the configuration and resources the operator will install).
.status
The processing status of this CR as reported by the Kiali operator.
2.6 - Multi-cluster
Kiali has experimental support for Istio multi-cluster installations.
Before proceeding with the setup, ensure you meet the requirements.
Requirements
-
Primary-remote istio deployment. Only the primary-remote istio deployment is currently supported.
-
Aggregated metrics and traces. Kiali needs a single endpoint for metrics and a single endpoint for traces where it can consume aggregated metrics/traces across all clusters. There are many ways to aggregate metrics/traces such as prometheus federation or using OTEL collector pipelines but setting these up are outside of the scope of Kiali.
-
Anonymous or OpenID authentication strategy. The unified multi-cluster configuration currently only supports anonymous or OpenID authentication strategies. In addition, current support varies by provider for OpenID across clusters.
Setup
The unified Kiali multi-cluster setup requires the Kiali Service Account (SA) to have read access to each Kubernetes cluster in the mesh. This is separate from the user credentials that are required when a user logs into Kiali. The user credentials are used to check user access to a namespace and to perform write operations. In anonymous mode, the Kiali SA is used for all operations and write access is also required. To give the Kiali SA access to each remote cluster, a kubeconfig with credentials needs to be created and mounted into the Kiali pod. While the location of Kiali in relation to the controlplane and dataplane may change depending on your istio deployment model, the requirements will remain the same.
-
Create a remote kubeconfig secret. You can use this script to simplify this process for you. Running this script will:
- Create a Kiali Service Account in the remote cluster.
- Create a role/role-binding for this service account in the remote cluster.
- Create a kubeconfig file and save this as a secret in the namespace where Kiali is deployed. The Kiali operator will auto-detect the secret and mount it into the Kiali pod.
In order to run this script you will need adequate permissions configured in your local kubeconfig, for both the cluster on which Kiali is deployed and the remote cluster. You will need to repeat this step for each remote cluster.
curl -L -o kiali-prepare-remote-cluster.sh https://raw.githubusercontent.com/kiali/kiali/master/hack/istio/multicluster/kiali-prepare-remote-cluster.sh chmod +x kiali-prepare-remote-cluster.sh ./kiali-prepare-remote-cluster.sh --kiali-cluster-context east --remote-cluster-context west --view-only false
Adding remote kubeconfig secrets to Kiali effectively puts Kiali in “multi-cluster” mode and Kiali will begin using those credentials to communicate with the other clusters in the mesh.
- Optional - Configure tracing with cluster ID. By default, traces do not include their cluster name in the trace tags however this can be added using the istio telemetry API.
kubectl apply -f - <<EOF
apiVersion: telemetry.istio.io/v1alpha1
kind: Telemetry
metadata:
name: mesh-default
namespace: istio-system
spec:
# no selector specified, applies to all workloads
tracing:
- customTags:
cluster:
environment:
name: "ISTIO_META_CLUSTER_ID"
EOF
-
Optional - Configure user access in your OIDC provider. When using anonymous mode, the Kiali SA credentials will be used to display mesh info to the user. When not using anonymous mode, Kiali will check the user’s access to each configured cluster’s namespace before showing the user any resources from that namespace. Please refer to your OIDC provider’s instructions for configuring user access to a kube cluster for this.
-
Optional - Narrow metrics to mesh. If your unified metrics store also contains data outside of your mesh, you can limit which metrics Kiali will query for by setting the query_scope configuration.
That’s it! From here you can login to Kiali and manage your mesh across both clusters from a single Kiali instance.
2.7 - Namespace access control
Introduction
In authentication strategies other than anonymous
Kiali supports limiting the
namespaces that are accessible on a per-user basis. The anonymous
authentication strategy does not support this, although you can still limit
privileges when using an OpenShift cluster. See the access control section in
Anonymous strategy.
To authorize namespaces, the standard Roles
resources (or ClusterRoles
)
and RoleBindings
resources (or ClusterRoleBindings
) are used.
Kiali can only restrict or grant read access to namespaces as a whole. So,
keep in mind that while the RBAC capabilities of the cluster are used to give
access, Kiali won’t offer the same privilege granularity that the cluster
supports. For example, a user that does not have privileges to get Kubernetes
Deployments
via typical tools (e.g. kubectl
) would still be able to get
some details of Deployments through Kiali when listing Workloads or when
viewing detail pages, or in the
Graph.
Some features allow creating or changing resources in the cluster (for example, the Wizards). For these write operations which may be sensitive, the users will need to have the required privileges in the cluster to perform updates - i.e. the cluster RBAC takes effect.
Granting access to namespaces
In general, Kiali will give read access to namespaces where the logged in
user is allowed to “GET” its definition – i.e. the user is allowed to do a
GET
call to the api/v1/namespaces/{namespace-name}
endpoint of the cluster
API. Users granted the LIST verb would get access to all namespaces of the
cluster (that’s a GET
call to the api/v1/namespaces
endpoint of the cluster
API).
You, probably, will want to have this small ClusterRole
to help you in
authorizing individual namespaces in Kiali:
apiVersion: rbac.authorization.k8s.io/v1
kind: ClusterRole
metadata:
name: kiali-namespace-authorization
rules:
- apiGroups: [""]
resources:
- namespaces
- pods/log
verbs:
- get
- apiGroups: ["project.openshift.io"] # Only if you are using OpenShift
resources:
- projects
verbs:
- get
pods/log
privilege is needed for the pods Logs view.
Since logs are potentially sensitive, you could remove that privilege if you
don’t want users to be able to fetch pod logs.
Once you have created this ClusterRole
, you would authorize a namespace
foobar
to user john
with the following RoleBinding
:
apiVersion: rbac.authorization.k8s.io/v1
kind: RoleBinding
metadata:
name: authorize-ns-foobar-to-john
namespace: foobar
subjects:
- kind: User
name: john
apiGroup: rbac.authorization.k8s.io
roleRef:
kind: ClusterRole
name: kiali-namespace-authorization # The name of the ClusterRole created previously
apiGroup: rbac.authorization.k8s.io
User
, which is the case when
using openid
or openshift
authentication strategies. For other
authentication strategies you would need to adjust the RoleBinding
to use the
right subject kind.
If you want to authorize a user to access all namespaces in the cluster, the
most efficient way to do it is by creating a ClusterRole
with the list verb
for namespaces and bind it to the user using a ClusterRoleBinding
:
apiVersion: rbac.authorization.k8s.io/v1
kind: ClusterRole
metadata:
name: kiali-all-namespaces-authorization
rules:
- apiGroups: [""]
resources:
- namespaces
- pods/log
verbs:
- get
- list
- apiGroups: ["project.openshift.io"] # Only if you are using OpenShift
resources:
- projects
verbs:
- get
---
apiVersion: rbac.authorization.k8s.io/v1
kind: ClusterRoleBinding
metadata:
name: authorize-all-namespaces-to-john
subjects:
- kind: User
name: john
apiGroup: rbac.authorization.k8s.io
roleRef:
kind: ClusterRole
name: kiali-all-namespaces-authorization
apiGroup: rbac.authorization.k8s.io
ClusterRole
is the list
verb in the first rule.
Alternatively, you could also use the previously mentioned
kiali-namespace-authorization
rather than creating a new one with the list
privilege, and it will work. However, Kiali will perform better if you grant the
list privilege.
Granting write privileges to namespaces
Changing resources in the cluster can be a sensitive operation. Because of
this, the logged in user will need to be given the needed privileges to perform
any updates through Kiali. The following ClusterRole
contains all read and write
privileges that may be used in Kiali:
apiVersion: rbac.authorization.k8s.io/v1
kind: ClusterRole
metadata:
name: kiali-write-privileges
rules:
- apiGroups: [""]
resources:
- namespaces
- pods
- replicationcontrollers
- services
verbs:
- patch
- apiGroups: ["extensions", "apps"]
resources:
- daemonsets
- deployments
- replicasets
- statefulsets
verbs:
- patch
- apiGroups: ["batch"]
resources:
- cronjobs
- jobs
verbs:
- patch
- apiGroups:
- networking.istio.io
- security.istio.io
- extensions.istio.io
- telemetry.istio.io
- gateway.networking.k8s.io
resources: ["*"]
verbs:
- get
- list
- watch
- create
- delete
- patch
Similarly to giving access to namespaces, you can either use a RoleBinding
to
give read and write privileges only to specific namespaces, or use a
ClusterRoleBinding
to give privileges to all namespaces.
2.8 - Namespace Management
Introduction
The default Kiali installation (as mentioned in the Installation guide) gives Kiali access to all namespaces available in the cluster.
It is possible to restrict Kiali to a set of desired namespaces by providing a list of the ones you want, excluding the ones you don’t want. You can also filter namespaces by using Istio’s discovery selectors. You can use a combination of these options together.
As of Kiali 1.67, the following settings are deprecated:
- api.namespaces.exclude
- api.namespaces.include
- api.namespaces.label_selector_exclude
- api.namespaces.label_selector_include
It is recommended to instead use Istio Discovery Selectors to limit the namespaces in the mesh.
Accessible Namespaces
The “accessible namespaces” setting configures which namespaces are accessible to the Kiali server itself. The accessible namespaces are defined by a list of regex expressions that match against the namespace names visible to the Kiali operator. If left unset, the Kiali server will be given access to all namespaces in the cluster.
The list of accessible namespaces is specified in the Kiali CR via the
accessible_namespaces
setting, under the main deployment
section. As an
example, if Kiali is to be installed in the istio-system
namespace, and is
expected to monitor all namespaces prefixed with mycorp_
, the setting would
be:
spec:
deployment:
accessible_namespaces:
- istio-system
- mycorp_.*
When you set accessible_namespaces
to a list of namespaces as the example above illustrates, by default the operator will create a Role for each accessible namespace. Each Role will be assigned to the Kiali Service Account thus providing Kiali permissions to those namespaces. To change that default behavior, deployment.cluster_wide_access
can be set to true
. This will tell the operator not to create these Roles and just create a single ClusterRole and assign it to the Kiali Server (see below).
deployment.accessible_namespaces
, this may cause performance issues. To increase performance you can set deployment.cluster_wide_access
to true
when specifying a list of namespaces in accessible_namespaces
. When you do this, the Kiali Server will be given access to the entire cluster and thus it can use a single cluster watch which increases performance and efficiency. However, you must be aware that when you do this, the Kiali Server will be granted access to the cluster via a ClusterRole - individual Roles will not be created per namespace. The deployment.accessible_namespaces
will still be used to determine which namespaces to make available to users.
Note that the namespaces declared here (including any regex expressions) are evaluated and discovered by the operator at install time. Namespaces that do not exist at the time of install will not be accessible to Kiali until the operator has a chance to reconcile the Kiali CR (which should happen fairly quickly after the new namespace is created). Adding the new namespace to the list of accessible_namespaces
will also trigger the operator to reconcile the Kiali CR. When the operator reconciles the Kiali CR, the necessary Role will be created giving the Kiali Server access to the new namespace.
As mentioned earlier, if you leave accessible_namespaces
unset, this denotes that the Kiali server is given access to all namespaces in the cluster, including any namespaces that are created in the future. If you do this, individual Roles are not created per namespace; instead a single ClusterRole is created and assigned to the Kiali Service Account thus providing Kiali access to all namespaces in the cluster.
spec:
deployment: {}
accessible_namespaces
behavior, you must specify the --set clusterRoleCreator=true
flag when invoking helm install
.
When installing multiple Kiali instances into a single cluster,
accessible_namespaces
must be mutually exclusive. In other words, a namespace
set must be matched by only one Kiali CR. Regular expressions must not have
overlapping patterns.
accessible_namespaces
unset.
Maistra supports multi-tenancy and the accessible_namespaces
extends that
feature to Kiali. However, explicit naming of accessible namespaces can benefit
non-Maistra installations as well - with it Kiali does not need cluster roles
and the Kiali Operator does not need permissions to create cluster roles.
Istio Discovery Selectors
In Istio’s MeshConfig, you can provide a list of discovery selectors that Istio will consider when processing namespaces. The Kiali server will also utilize these same discovery selectors when determining which namespaces to make available to users. Therefore, these discovery selectors work in conjunction with the accessible_namespaces
setting. The accessible_namespaces
setting dictates which namespaces are accessible to the Kiali Server, and hence to users of Kiali. The Istio discovery selectors tell Kiali to make available to users those namespaces within the accessible_namespaces
list. So discovery selectors are a subset of accessible_namespaces
.
accessible_namespaces
with a list of namespaces that are equal to, or are a superset of, the namespaces that result from evaluating the Istio discovery selectors.
Included Namespaces
When accessible_namespaces
is unset, you can still limit the namespaces a user will see in Kiali. The api.namespaces.include
setting allows you to configure the subset of namespaces that Kiali will show the user. This list is specified in a way similar to accessible_namespaces
, as a list of namespaces that can include regex patterns. The difference is that this list is processed by the server, not the operator, each time the list of namespaces needs to be obtained by Kiali. This means it will handle namespaces that exist when Kiali is installed, or namespaces created later.
spec:
api:
namespaces:
include:
- istio-system
- mycorp_.*
deployment: {}
api.namespaces.include
setting is ignored if accessible_namespaces
is set.
api.namespaces.include
will implicitly include the control plane namespace (e.g. istio-system
) even if you do not explicitly specify it in the list.
Note that this setting is merely a filter and does not provide security in any way.
Excluded Namespaces
The api.namespaces.exclude
setting configures namespaces to exclude from being shown to the user. This setting can be used both when accessible_namespaces
is unset or set to an explicit list of namespaces. It can also be used regardless of whether api.namespaces.include
is defined. The exclude filter has precedence - if a namespace matches any regex pattern defined for api.namespaces.exclude
, it will not be shown in Kiali. Like api.namespaces.include
, the exclude setting is only a filter and does not provide security in any way.
For example, if the accessible_namespaces
configuration includes mycorp_.*
but it is not desirable to see test namespaces, the following configuration can be used:
spec:
api:
namespaces:
exclude:
- mycorp_test.*
deployment:
accessible_namespaces:
- istio-system
- mycorp_.*
api.namespaces.exclude
, it will be ignored.
Namespace Selectors
In addition to the Include and Exclude lists (as explained above), Kiali supports optional Kubernetes label selectors for both including and excluding namespaces.
The include label selector is defined in the Kiali CR setting api.namespaces.label_selector_include
.
The exclude label selector is defined in the Kiali CR setting api.namespaces.label_selector_exclude
.
The example below selects all namespaces that have a label kiali-enabled: true
:
spec:
api:
namespaces:
label_selector_include: kiali-enabled=true
deployment: {}
The example below hides all namespaces that have a label infrastructure: system
:
spec:
api:
namespaces:
label_selector_exclude: infrastructure=system
Important Note About label_selector_include
It is very important to understand how the api.namespaces.label_selector_include
setting is used when deployment.accessible_namespaces
is set to an explicit list of namespaces versus when it is unset.
When accessible_namespaces
is unset then label_selector_include
simply provides a filter just like api.namespaces.include
. The difference is that label_selector_include
filters by namespace label whereas include
filters by namespace name. Thus, label_selector_include
provides an additional way to limit which namespaces the Kiali user will see when accessible_namespaces
is unset.
It is recommended to leave label_selector_include
unset when accessible_namespaces
is set to an explicit list of namespaces. This is because the operator adds the configured label (name and value) to each namespace defined by accessible_namespaces
. This allows the Kiali code to use the label_selector_include
value to easily select all of the accessible_namespaces
. Unless you have a good reason to customize, the default value is highly recommended in this scenario.
api.namespaces.label_selector_include
(if defined) selects all namespaces declared in accessible_namespaces
(when unset). It is a user-error if this is not configured correctly.
For further information on how this api.namespaces.label_selector_include
interacts with deployment.accessible_namespaces
read the Kiali CR Reference documentation.
Soft Multi-Tenancy
When deploying multiple control planes in the same cluster, the label_selector_include
’s value must be unique to each control plane. This allows each Kiali instance to select only the namespaces relevant to each control plane. Thus you can have multiple control planes in the same cluster, with each control plane having its own Kiali instance. In this “soft-multitenancy” mode, deployment.accessible_namespaces
is typically set to an explicit set of namespaces. In that case, you do not have to do anything with this label_selector_include
because the default value of label_selector_include
is kiali.io/member-of: <spec.istio_namespace>
. If you set your own Kiali instance name in the Kiali CR (i.e. you set deployment.instance_name
to something other than kiali
), then the default will be kiali.io/<spec.deployment.instance_name>.member-of: <spec.istio_namespace>
.
2.9 - No Istiod Access
/debug
endpoints are not available)Introduction
Kiali makes use of the Istiod /debug
endpoints for introspection into the control plane. If this API is unavailable Kiali continues to perform, but the feature set will be degraded. The Istio API can be unavailable for various reasons:
- The Istio API has been explicitly disabled in the Istio configuration.
- The deployment model prevents access to the Istio API (firewalls, other networking concerns or limitations).
- The API is configured but for some, potentially unexpected, reason can not be reached by Kiali.
Configuration
When the Istio API is known to be inaccessible Kiali should be configured via the istio_api_enabled
configuration item.
By default, istio_api_enabled is true.
# ...
spec:
external_services:
istio:
istio_api_enabled: false
# ...
How does it affect Kiali
When the Istio API is not available there is expected feature degradation in Kiali:
- The control plane metrics won’t be available.
- The proxy status won’t be available in the workloads details view.
- The Istio validations may not be available.
- The Kiali validations will not be available.
- The Istio Registry Services that are not present in the Kubernetes list won’t be available.
Note that Istio Configurations will be available. This is because the list of Istio configurations is obtained using the Kubernetes API.
Istio Validations
The Istio validations won’t be available as this logic is provided by the Istio API. But, if the Istio Config was created when the validatingwebhookconfiguration web hook was enabled, the validation messages will be available and the Istio validations can be found:
The Kiali validations won’t be available, as they are degraded, so they have been disabled too.
Istio Registry Services
The Istio Registry Services won’t be available in the service list when the Istio API is disabled.
The following image shows a service list when Istio API is enabled:
The following image shows the same list when it is disabled:
Istio Configurations
The Istio Configurations are available in view and edit mode. It is important to know that the validations are disabled, so the configurations created or modified won’t be validated.
There is one scenario where the creation/deletion/edition could fail: If the Istio validation webhook is enabled but the Istio registry is not available. In this case, the webhook should be removed in order for this to work.
It can be checked with the following command:
kubectl get ValidatingWebhookConfiguration
2.10 - Prometheus, Jaeger, Grafana
Prometheus is a required telemetry data source for Kiali. Jaeger is a highly recommended tracing data source. Kiali also offers a simple Grafana add-on integration. This page describes how to configure Kiali to communicate with these dependencies.
Read the dedicated configuration page to learn more.
2.10.1 - Grafana
Grafana configuration
Istio provides preconfigured Grafana dashboards for the most relevant metrics of the mesh. Although Kiali offers similar views in its metrics dashboards, it is not in Kiali’s goals to provide the advanced querying options, nor the highly customizable settings, that are available in Grafana. Thus, it is recommended that you use Grafana if you need those advanced options.
Kiali can provide a direct link from its metric dashboards to the equivalent or most similar Grafana dashboard, which is convenient if you need the powerful Grafana options. For these links to appear in Kiali you need to manually configure the Grafana URL and the dashboards that come preconfigured with Istio, like in the following example:
spec:
external_services:
grafana:
enabled: true
# Grafana service name is "grafana" and is in the "telemetry" namespace.
in_cluster_url: 'http://grafana.telemetry:3000/'
# Public facing URL of Grafana
url: 'http://my-ingress-host/grafana'
dashboards:
- name: "Istio Service Dashboard"
variables:
namespace: "var-namespace"
service: "var-service"
- name: "Istio Workload Dashboard"
variables:
namespace: "var-namespace"
workload: "var-workload"
- name: "Istio Mesh Dashboard"
- name: "Istio Control Plane Dashboard"
- name: "Istio Performance Dashboard"
- name: "Istio Wasm Extension Dashboard"
2.10.2 - Prometheus
Prometheus configuration
Kiali requires Prometheus to generate the topology graph, show metrics, calculate health and for several other features. If Prometheus is missing or Kiali can’t reach it, Kiali won’t work properly.
By default, Kiali assumes that Prometheus is available at the URL of the form
http://prometheus.<istio_namespace_name>:9090
, which is the usual case if you
are using the Prometheus Istio
add-on.
If your Prometheus instance has a different service name or is installed in a
different namespace, you must manually provide the endpoint where it is
available, like in the following example:
spec:
external_services:
prometheus:
# Prometheus service name is "metrics" and is in the "telemetry" namespace
url: "http://metrics.telemetry:9090/"
Kiali maintains an internal cache of some Prometheus queries to improve performance (mainly, the queries to calculate Health indicators). It would be very rare to see data delays, but should you notice any delays you may tune caching parameters to values that work better for your environment.
See the Kiali CR reference page for the current default values.
Compatibility with Prometheus-like servers
Although Kiali assumes a Prometheus server and is tested against it, there are TSDBs that can be used as a Prometheus replacement despite not implementing the full Prometheus API.
Community users have faced two issues when using Prometheus-like TSDBs:
- Kiali may report that the TSDB is unreachable, and/or
- Kiali may show empty metrics if the TSBD does not implement the
/api/v1/status/config
.
To fix these issues, you may need to provide a custom health check endpoint for
the TSDB and/or manually provide the configurations that Kiali reads from the
/api/v1/status/config
API endpoint:
spec:
external_services:
prometheus:
# Fix the "Unreachable" metrics server warning.
health_check_url: "http://custom-tsdb-health-check-url"
# Fix for the empty metrics dashboards
thanos_proxy:
enabled: true
retention_period: "7d"
scrape_interval: "30s"
Prometheus Tuning
Production environments should not be using the Istio Prometheus add-on, or carrying over its configuration settings. That is useful only for small, or demo installations. Instead, Prometheus should have been installed in a production-oriented way, following the Prometheus documentation.
This section is primarily for users where Prometheus is being used specifically for Kiali, and possible optimizations that can be made knowing that Kiali does not utilize all of the default Istio and Envoy telemetry.
Metric Thinning
Istio and Envoy generate a large amount of telemetry for analysis and troubleshooting. This can result in significant resources being required to ingest and store the telemetry, and to support queries into the data. If you use the telemetry specifically to support Kiali, it is possible to drop unnecessary metrics and unnecessary labels on required metrics. This FAQ Entry displays the metrics and attributes required for Kiali to operate.
To reduce the default telemetry to only what is needed by Kiali1 users can add the following snippet to their Prometheus configuration. Because things can change with different versions, it is recommended to ensure you use the correct version of this documentation based on your Kiali/Istio version.
The metric_relabel_configs:
attribute should be added under each job name defined to scrape Istio or Envoy metrics. Below we show it under the kubernetes-pods
job, but you should adapt as needed. Be careful of indentation.
- job_name: kubernetes-pods
metric_relabel_configs:
- action: drop
source_labels: [__name__]
regex: istio_agent_.*|istiod_.*|istio_build|citadel_.*|galley_.*|pilot_[^p].*|envoy_cluster_[^u].*|envoy_cluster_update.*|envoy_listener_[^dh].*|envoy_server_[^mu].*|envoy_wasm_.*
- action: labeldrop
regex: chart|destination_app|destination_version|heritage|.*operator.*|istio.*|release|security_istio_io_.*|service_istio_io_.*|sidecar_istio_io_inject|source_app|source_version
Applying this configuration should reduce the number of stored metrics by about 20%, as well as reducing the number of attributes stored on many remaining metrics.
Metric Thinning with Crippling
The section above drops metrics unused by Kiali. As such, making those configuration changes should not negatively impact Kiali behavior in any way. But some very heavy metrics remain. These metrics can also be dropped, but their removal will impact the behavior of Kiali. This may be OK if you don’t use the affected features of Kiali, or if you are willing to sacrifice the feature for the associated metric savings. In particular, these are “Histogram” metrics. Istio is planning to make some improvements to help users better configure these metrics, but as of this writing they are still defined with fairly inefficient default “buckets”, making the number of associated time-series quite large, and the overhead of maintaining and querying the metrics, intensive. Each histogram actually is comprised of 3 stored metrics. For example, a histogram named xxx
would result in the following metrics stored into Prometheus:
xxx_bucket
- The most intensive metric, and is required to calculate percentile values.
xxx_count
- Required to calculate ‘avg’ values.
xxx_sum
- Required to calculate rates over time, and for ‘avg’ values.
When considering whether to thin the Histogram metrics, one of the following three approaches is recommended:
- If the relevant Kiali reporting is needed, keep the histogram as-is.
- If the relevant Kiali reporting is not needed, or not worth the additional metric overhead, drop the entire histogram.
- If the metric chart percentiles are not required, drop only the xxx_bucket metric. This removes the majority of the histogram overhead while keeping rate and average (non-percentile) values in Kiali.
These are the relevant Histogram metrics:
istio_request_bytes
This metric is used to produce the Request Size
chart on the metric tabs. It also supports Request Throughput
edge labels on the graph.
- Appending
|istio_request_bytes_.*
to thedrop
regex above would drop all associated metrics and would prevent any request size/throughput reporting in Kiali. - Appending
|istio_request_bytes_bucket
to thedrop
regex above, would prevent any request size percentile reporting in the Kiali metric charts.
istio_response_bytes
This metric is used to produce the Response Size
chart on the metric tabs. And also supports Response Throughput
edge labels on the graph
- Appending
|istio_response_bytes_.*
to thedrop
regex above would drop all associated metrics and would prevent any response size/throughput reporting in Kiali. - Appending
|istio_response_bytes_bucket
to thedrop
regex above would prevent any response size percentile reporting in the Kiali metric charts.
istio_request_duration_milliseconds
This metric is used to produce the Request Duration
chart on the metric tabs. It also supports Response Time
edge labels on the graph.
- Appending
|istio_request_duration_milliseconds_.*
to thedrop
regex above would drop all associated metrics and would prevent any request duration/response time reporting in Kiali. - Appending
|istio_request_duration_milliseconds_bucket
to thedrop
regex above would prevent any request duration/response time percentile reporting in the Kiali metric charts or graph edge labels.
Scrape Interval
The Prometheus globalScrapeInterval
is an important configuration option2. The scrape interval can have a significant effect on metrics collection overhead as it takes effort to pull all of those configured metrics and update the relevant time-series. And although it doesn’t affect time-series cardinality, it does affect storage for the data-points, as well as having impact when computing query results (the more data-points, the more processing and aggregation).
Users should think carefully about their configured scrape interval. Note that the Istio addon for prometheus configures it to 15s. This is great for demos but may be too frequent for production scenarios. The prometheus helm charts set a default of 1m, which is more reasonable for most installations, but may not be the desired frequency for any particular setup.
The recommendation for Kiali is to set the longest interval possible, while still providing a useful granularity. The longer the interval the less data points scraped, thus reducing processing, storage, and computational overhead. But the impact on Kiali should be understood. It is important to realize that request rates (or byte rates, message rates, etc) require a minumum of two data points:
rate = (dp2 - dp1) / timePeriod
That means for Kiali to show anything useful in the graph, or anywhere rates are used (many places), the minimum duration must be >= 2 x globalScrapeInterval
. Kiali will eliminate invalid Duration options given the globalScrapeInterval.
Kiali does a lot of aggregation and querying over time periods. As such, the number of data points will affect query performance, especially for larger time periods.
For more information, see the Prometheus documentation.
TSDB retention time
The Prometheus tsdbRetentionTime
is an important configuration option. It has a significant effect on metrics storage, as Prometheus will keep each reported data-point for that period of time, performing compaction as needed. The larger the retention time, the larger the required storage. Note also that Kiali queries against large time periods, and very large data-sets, may result in poor performance or timeouts.
The recommendation for Kiali is to set the shortest retention time that meets your needs and/or operational limits. In some cases users may want to offload older data to a secondary store. Kiali will eliminate invalid Duration options given the tsdbRetentionTime.
For more information, see the Prometheus documentation.
-
Some non-essential telemetry remains in order to not over-complicate the configuration change. The remaining telemetry is typically negligible. ↩︎
-
Note that Prometheus can be configured such that individual scrape points can override the global setting, but Kiali is not currently concerned with this corner case. ↩︎
2.10.3 - Tracing
Jaeger is the default tracing provider for Kiali. From Kiali version 1.74, Tempo support is also included. This page describes how to configure Jaeger and Grafana Tempo in Kiali.
2.10.3.1 - Jaeger
Jaeger configuration
Jaeger is a highly recommended service because Kiali uses distributed tracing data for several features, providing an enhanced experience.
By default, Kiali will try to reach Jaeger at the GRPC-enabled URL of the form
http://tracing.<istio_namespace_name>:16685/jaeger
, which is the usual case
if you are using the Jaeger Istio
add-on.
If this endpoint is unreachable, Kiali will disable features that use
distributed tracing data.
If your Jaeger instance has a different service name or is installed to a different namespace, you must manually provide the endpoint where it is available, like in the following example:
spec:
external_services:
tracing:
# Enabled by default. Kiali will anyway fallback to disabled if
# Jaeger is unreachable.
enabled: true
# Jaeger service name is "tracing" and is in the "telemetry" namespace.
# Make sure the URL you provide corresponds to the non-GRPC enabled endpoint
# if you set "use_grpc" to false.
in_cluster_url: "http://tracing.telemetry:16685/jaeger"
use_grpc: true
# Public facing URL of Jaeger
url: "http://my-jaeger-host/jaeger"
Minimally, you must provide spec.external_services.tracing.in_cluster_url
to
enable Kiali features that use distributed tracing data. However, Kiali can
provide contextual links that users can use to jump to the Jaeger console to
inspect tracing data more in depth. For these links to be available you need to
set the spec.external_services.tracing.url
to the URL where you
expose Jaeger outside the cluster.
2.10.3.2 - Grafana Tempo
Grafana Tempo Configuration
There are two possibilities to integrate Kiali with Grafana Tempo:
- Using the Tempo API: This option returns the traces from the Tempo API in OpenTelemetry format.
- Using the Jaeger frontend with the Grafana Tempo backend.
Use Tempo API
This is a configuration example to setup Kiali tracing with Grafana Tempo:
spec:
external_services:
tracing:
# Enabled by default. Kiali will anyway fallback to disabled if
# Tempo is unreachable.
enabled: true
# Jaeger service name is "tracing" and is in the "telemetry" namespace.
# Make sure the URL you provide corresponds to the non-GRPC enabled endpoint
# if you set "use_grpc" to false.
in_cluster_url: "http://tracing.telemetry:3200"
provider: "tempo"
use_grpc: true
# Public facing URL of Grafana with the Tempo Datasource
# Note this is not fully integrated
url: "http://my-tempo-host/explore?left=%7B%22datasource%22:%22Tempo%22,%22queries%22:%5B%7B%22refId%22:%22A%22,%22queryType%22:%22traceId%22,%22query%22:%22%22%7D%5D,%22range%22:%7B%22from%22:%22now-1h%22,%22to%22:%22now%22%7D%7D&orgId=1"
Use Jaeger frontend with Grafana Tempo tracing backend
It is possible to use the Grafana Tempo tracing backend exposing the Jaeger API. tempo-query is a Jaeger storage plugin. It accepts the full Jaeger query API and translates these requests into Tempo queries.
Since Tempo is not yet part of the built-in addons that are part of Istio, you need to manage your Tempo instance.
Tanka
The official Grafana Tempo documentation explains how to deploy a Tempo instance using Tanka. You will need to tweak the settings from the default Tanka configuration to:
- Expose the Zipkin collector
- Expose the GRPC Jaeger Query port
When the Tempo instance is deployed with the needed configurations, you have to
set
meshConfig.defaultConfig.tracing.zipkin.address
from Istio to the Tempo Distributor service and the Zipkin port. Tanka will deploy
the service in distributor.tempo.svc.cluster.local:9411
.
The in_cluster_url
Kiali option needs to be set to'
http://query-frontend.tempo.svc.cluster.local:16685
.
Tempo Operator
The Tempo Operator for Kubernetes provides a native Kubernetes solution to deploy Tempo easily in your system.
After installing the Tempo Operator in your cluster, you can create a new Tempo instance with the following CR:
kubectl create namespace tempo
kubectl apply -n tempo -f - <<EOF
apiVersion: tempo.grafana.com/v1alpha1
kind: TempoStack
metadata:
name: smm
spec:
storageSize: 1Gi
storage:
secret:
type: s3
name: object-storage
resources:
total:
limits:
memory: 2Gi
cpu: 2000m
template:
queryFrontend:
jaegerQuery:
enabled: true
ingress:
type: ingress
EOF
Note the name of the bucket where the traces will be stored in our example is
called object-storage
. Check the
Tempo Operator
documentation to know more about what storages are supported and how to create
the secret properly to provide it to your Tempo instance.
Now, you are ready to configure the
meshConfig.defaultConfig.tracing.zipkin.address
field in your Istio installation. It needs to be set to the 9411
port of the
Tempo Distributor service. For the previous example, this value will be
tempo-smm-distributor.tempo.svc.cluster.local:9411
.
Now, you need to configure the in_cluster_url
setting from Kiali to access
the Jaeger API. You can point to the 16685
port to use GRPC or 16686
if not.
For the given example, the value would be
http://tempo-ssm-query-frontend.tempo.svc.cluster.local:16685
.
There is a related tutorial with detailed instructions to setup Kiali and Grafana Tempo with the Operator.
2.11 - Traffic Health
There are times when Kiali’s default thresholds for traffic health do not work well for a particular situation. For example, at times 404 response codes are expected. Kiali has the ability to set powerful, fine-grained overrides for health configuration.
Default Configuration
By default Kiali uses the traffic rate configuration shown below. Application errors have minimal tolerance while client errors have a higher tolerance reflecting that some level of client errors is often normal (e.g. 404 Not Found):
- For http protocol 4xx are client errors and 5xx codes are application errors.
- For grpc protocol all 1-16 are errors (0 is success).
So, for example, if the rate of application errors is >= 0.1% Kiali will show Degraded
health and if > 10% will show Failure
health.
# ...
health_config:
rate:
- namespace: ".*"
kind: ".*"
name: ".*"
tolerance:
- code: "^5\\d\\d$"
direction: ".*"
protocol: "http"
degraded: 0
failure: 10
- code: "^4\\d\\d$"
direction: ".*"
protocol: "http"
degraded: 10
failure: 20
- code: "^[1-9]$|^1[0-6]$"
direction: ".*"
protocol: "grpc"
degraded: 0
failure: 10
# ...
Custom Configuration
Custom health configuration is specified in the Kiali CR. To see the supported configuration syntax for health_config
see the Kiali CR Reference.
Kiali applies the first matching rate configuration (namespace, kind, etc) and calculates the status for each tolerance. The reported health will be the status with highest priority (see below).
Rate Option | Definition | Default | |||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
namespace | Matching Namespaces (regex) | .* (match all) | |||||||||||||||
kind | Matching Resource Types (workload|app|service) (regex) | .* (match all) | |||||||||||||||
name | Matching Resource Names (regex) | .* (match all) | |||||||||||||||
tolerance | Array of tolerances to apply. | ||||||||||||||||
Tolerance Option | Definition | Default |
---|---|---|
code | Matching Response Status Codes (regex) [1] | required |
direction | Matching Request Directions (inbound|outbound) (regex) | .* (match all) |
protocol | Matching Request Protocols (http|grpc) (regex) | .* (match all) |
degraded | Degraded Threshold(% matching requests >= value) | 0 |
failure | Failure Threshold (% matching requests >= value) | 0 |
[1] The status code typically depends on the request protocol. The special code -, a single dash, is used for requests that don’t receive a response, and therefore no response code.
Kiali reports traffic health with the following top-down status priority :
Priority | Rule (value=% matching requests) | Status |
---|---|---|
1 | value >= FAILURE threshold | FAILURE |
2 | value >= DEGRADED threshold AND value < FAILURE threshold | DEGRADED |
3 | value > 0 AND value < DEGRADED threshold | HEALTHY |
4 | value = 0 | HEALTHY |
5 | No traffic | No Health Information |
Examples
These examples use the repo https://github.com/kiali/demos/tree/master/error-rates.
In this repo we can see 2 namespaces: alpha and beta (Demo design).
Alpha |
Where nodes return the responses (You can configure responses here):
App (alpha/beta) | Code | Rate |
---|---|---|
x-server | 200 | 9 |
x-server | 404 | 1 |
y-server | 200 | 9 |
y-server | 500 | 1 |
z-server | 200 | 8 |
z-server | 201 | 1 |
z-server | 201 | 1 |
The applied traffic rate configuration is:
# ...
health_config:
rate:
- namespace: "alpha"
tolerance:
- code: "404"
failure: 10
protocol: "http"
- code: "[45]\\d[^\\D4]"
protocol: "http"
- namespace: "beta"
tolerance:
- code: "[4]\\d\\d"
degraded: 30
failure: 40
protocol: "http"
- code: "[5]\\d\\d"
protocol: "http"
# ...
After Kiali adds default configuration we have the following (Debug Info Kiali):
{
"healthConfig": {
"rate": [
{
"namespace": "/alpha/",
"kind": "/.*/",
"name": "/.*/",
"tolerance": [
{
"code": "/404/",
"degraded": 0,
"failure": 10,
"protocol": "/http/",
"direction": "/.*/"
},
{
"code": "/[45]\\d[^\\D4]/",
"degraded": 0,
"failure": 0,
"protocol": "/http/",
"direction": "/.*/"
}
]
},
{
"namespace": "/beta/",
"kind": "/.*/",
"name": "/.*/",
"tolerance": [
{
"code": "/[4]\\d\\d/",
"degraded": 30,
"failure": 40,
"protocol": "/http/",
"direction": "/.*/"
},
{
"code": "/[5]\\d\\d/",
"degraded": 0,
"failure": 0,
"protocol": "/http/",
"direction": "/.*/"
}
]
},
{
"namespace": "/.*/",
"kind": "/.*/",
"name": "/.*/",
"tolerance": [
{
"code": "/^5\\d\\d$/",
"degraded": 0,
"failure": 10,
"protocol": "/http/",
"direction": "/.*/"
},
{
"code": "/^4\\d\\d$/",
"degraded": 10,
"failure": 20,
"protocol": "/http/",
"direction": "/.*/"
},
{
"code": "/^[1-9]$|^1[0-6]$/",
"degraded": 0,
"failure": 10,
"protocol": "/grpc/",
"direction": "/.*/"
}
]
}
]
}
}
What are we applying?
-
For namespace alpha, all resources
-
Protocol http if % requests with error code 404 are >= 10 then FAILURE, if they are > 0 then DEGRADED
-
Protocol http if % requests with others error codes are> 0 then FAILURE.
-
For namespace beta, all resources
-
Protocol http if % requests with error code 4xx are >= 40 then FAILURE, if they are >= 30 then DEGRADED
-
Protocol http if % requests with error code 5xx are > 0 then FAILURE
-
For other namespaces Kiali will apply the defaults.
-
Protocol http if % requests with error code 5xx are >= 20 then FAILURE, if they are >= 0.1 then DEGRADED
-
Protocol grpc if % requests with error code match /^[1-9]$|^1[0-6]$/ are >= 20 then FAILURE, if they are >= 0.1 then DEGRADED
Alpha | Beta |
2.12 - Virtual Machine workloads
Introduction
Kiali graph visualizes both Virtual Machine workloads (WorkloadEntry) and pod-based workloads, running inside a Kubernetes cluster. You must ensure that the Istio Proxy is running, and correctly configured, on the Virtual Machine. Also, Prometheus must be able to scrape the metrics endpoint of the Istio Proxy running on the VM. Kiali will then be able to read the traffic telemetry for the Virtual Machine workloads, and incorporate the VM workloads into the graph.
Configuring Prometheus to scrape VM-based Istio Proxy
Once the Istio Proxy is running on a Virtual Machine, configuring Prometheus to scrape the VM’s Istio Proxy metrics endpoint is the only configuration Kiali needs to display traffic for the VM-based workload. Configuring Prometheus will vary between environments. Here is a very simple example of a Prometheus configuration that includes a job to scrape VM based workloads:
- job_name: bookinfo-vms
honor_timestamps: true
scrape_interval: 15s
scrape_timeout: 10s
metrics_path: /stats/prometheus
scheme: http
follow_redirects: true
static_configs:
- targets:
- details-v1:15020
- productpage-v1:15020
- ratings-v1:15020
- reviews-v1:15020
- reviews-v2:15020
- reviews-v3:15020
3 - Features
3.1 - Application Wizards
Istio Application Wizards
Kiali provides Actions to create, update and delete Istio configuration, driven by wizards.
Actions can be applied to a Service
Actions can also be applied to a Workload
And, actions are available for an entire Namespace
Service Actions
Kiali offers a robust set of service actions, with accompanying wizards.
Traffic Management: Request Routing
The Request Routing Wizard allows creating multiple routing rules.
- Every rule is composed of a Request Matching and a Routes To section.
- The Request Matching section can add multiple filters using HEADERS, URI, SCHEME, METHOD or AUTHORITY HTTP parameters.
- The Request Matching section can be empty, in this case any HTTP request received is matched against this rule.
- The Routes To section can specify the percentage of traffic that is routed to a specific workload.
Istio applies routing rules in order, meaning that the first rule matching an HTTP request (top-down) performs the routing. The Matching Routing Wizard allows changing the rule order.
Traffic Management: Fault Injection
The Fault Injection Wizard allows injecting faults to test the resiliency of a Service.
- HTTP Delay specification is used to inject latency into the request forwarding path.
- HTTP Abort specification is used to immediately abort a request and return a pre-specified status code.
Traffic Management: Traffic Shifting
The Traffic Shifting Wizard allows selecting the percentage of traffic that is routed to a specific workload.
Traffic Management: Request Timeouts
The Request Timeouts Wizard sets up request timeouts in Envoy, using Istio.
- HTTP Timeout defines the timeout for a request.
- HTTP Retry describes the retry policy to use when an HTTP request fails.
Traffic Management: Gateways
Traffic Management Wizards have an Advanced Options section that can be used to extend the scenario.
One available Advanced Option is to expose a Service to external traffic through an existing Gateway or to create a new Gateway for this Service.
Traffic Management: Circuit Breaker
Traffic Management Wizards allows defining Circuit Breakers on Services as part of the available Advanced Options.
- Connection Pool defines the connection limits for an upstream host.
- Outlier Detection implements the Circuit Breaker based on the consecutive errors reported.
Security: Traffic Policy
Traffic Management Advanced Options allows defining Security and Load Balancing settings.
- TLS related settings for connections to the upstream service.
- Automatically generate a PeerAuthentication resource for this Service.
- Load balancing policies to apply for a specific destination.
Workload Actions
Automatic Sidecar Injection
A Workload can be individually managed to control the Sidecar Injection.
A default scenario is to indicate this at Namespace level but there can be cases where a Workload shouldn’t be part of the Mesh or vice versa.
Kiali allows users to alter the Deployment template and propagate this configuration into the Pods.
Namespace Actions
The Kiali Overview page offers several Namespace actions, in any of its views: Expanded, Compacted or Table.
Show
Show actions navigate from a Namespace to its specific Graph, Applications, Workloads, Services or Istio Config pages.
Automatic Sidecar Injection
When Automatic Sidecar Injection is enabled in the cluster, a Namespace can be labeled to enable/disable the injection webhook, controlling whether new deployments will automatically have a sidecar.
Canary Istio upgrade
When Istio Canary revision is installed, a Namespace can be labeled to that canary revision, so the sidecar of canary revision will be injected into workloads of the namespace.
Security: Traffic Policies
Kiali can generate Traffic Policies based on the traffic for a namespace.
For example, at some point a namespace presents a traffic graph like this:
And a user may want to add Traffic Policies to secure that communication. In other words, to prevent traffic other than that currently reflected in the Graph’s Services and Workloads.
Using the Create Traffic Policies action on a namespace, Kiali will generate AuthorizationPolicy resources per every Workload in the Namespace.
3.2 - Detail Views
Kiali provides filtered list views of all your service mesh definitions. Each view provides health, details, YAML definitions and links to help you visualize your mesh. There are list and detail views for:
- Applications
- Istio Configuration
- Services
- Workloads
Selecting an object from the list will bring you to its detail page. For Istio Config, Kiali will present its YAML, along with contextual validation information. Other mesh components present a variety of Tabs.
Overview Tab
Overview is the default Tab for any detail page. The overview tab provides detailed information, including health status, and a detailed mini-graph of the current traffic involving the component. The full set of tabs, as well as the detailed information, varies based on the component type.
Each Overview provides:
- links to related components and linked Istio configuration.
- health status.
- validation information.
- an Action menu for actions that can be taken on the component.
- several Wizards are available.
And also type-specfic information. For example:
- Service detail includes Network information.
- Workload detail provides backing Pod information.
Both Workload and Service detail can be customized to some extent, by adding additional details supplied as annotations. This is done through the additional_display_details
field in the Kiali CR.
Traffic
The Traffic Tab presents a service, app, or workload’s Inbound and Outbound traffic in a table-oriented way:
Logs
Workload detail offers a special Logs tab. Kiali offers a special unified logs view that lets users correlate app and proxy logs. It can also add-in trace span information to help identify important traces based on associated logging. More powerful features include substring or regex Show/Hide, full-screen, and the ability to set proxy log level without a pod restart.
Metrics
Each detail view provides Inbound Metrics and/or Outbound Metrics tabs, offering predefined metric dashboards. The dashboards provided are tailored to the relevant application, workload or service level. Application and workload detail views show request and response metrics such as volume, duration, size, or tcp traffic. The service detail view shows request and response metrics for inbound traffic only.
Kiali allows the user to customize the charts by choosing the charted dimensions. It can also present metrics reported by either source or destination proxy metrics. And for troublshooting it can overlay trace spans.
Traces
Each detail view provides a Traces tab with a native integration with Jaeger. For more, see Tracing.
Dashboards
Kiali will display additional tabs for each applicable Built-In Dashboard or Custom Dashboard.
Built-in dashboards
Kiali comes with built-in dashboards for several runtimes, including Envoy, Go, Node.js, and others.
Envoy
The most important built-in dashboard is for Envoy. Kiali offers the Envoy tab for many workloads. The Envoy tab is actually a Built-In Dashboard, but it is very common as it applies to any workload injected with, or that is itself, an Envoy proxy. Being able to inspect the Envoy proxy is invaluable when troublshooting your mesh. The Envoy tab itself offers five subtabs, exposing a wealth of information.
Istio’s Envoy sidecars supply some internal metrics, that can be viewed in Kiali. They are different than the metrics reported by Istio Telemetry, which Kiali uses extensively. Some of Envoy’s metrics may be redundant.
Note that the enabled Envoy metrics can be tuned, as explained in the Istio documentation: it’s possible to get more metrics using the statsInclusionPrefixes
annotation. Make sure you include cluster_manager
and listener_manager
as they are required.
For example, sidecar.istio.io/statsInclusionPrefixes: cluster_manager,listener_manager,listener
will add listener
metrics for more inbound traffic information. You can then customize the Envoy dashboard of Kiali according to the collected metrics.
Go
Contains metrics such as the number of threads, goroutines, and heap usage. The expected metrics are provided by the Prometheus Go client.
Example to expose built-in Go metrics:
http.Handle("/metrics", promhttp.Handler())
http.ListenAndServe(":2112", nil)
As an example and for self-monitoring purpose Kiali itself exposes Go metrics.
The pod annotation for Kiali is: kiali.io/dashboards: go
Kiali
Kiali has its own built-in dashboard that helps you observe performance of the Kiali server itself. To view this dashboard, navigate to either the application or workload view of the Kiali server and select the Kiali Internal Metrics
tab to see Kiali’s own internal metrics:
Node.js
Contains metrics such as active handles, event loop lag, and heap usage. The expected metrics are provided by prom-client.
Example of Node.js metrics for Prometheus:
const client = require('prom-client');
client.collectDefaultMetrics();
// ...
app.get('/metrics', (request, response) => {
response.set('Content-Type', client.register.contentType);
response.send(client.register.metrics());
});
Full working example: https://github.com/jotak/bookinfo-runtimes/tree/master/ratings
The pod annotation for Kiali is: kiali.io/dashboards: nodejs
Quarkus
Contains JVM-related, GC usage metrics. The expected metrics can be provided by SmallRye Metrics, a MicroProfile Metrics implementation. Example with maven:
<dependency>
<groupId>io.quarkus</groupId>
<artifactId>quarkus-smallrye-metrics</artifactId>
</dependency>
The pod annotation for Kiali is: kiali.io/dashboards: quarkus
Spring Boot
Three dashboards are provided: one for JVM memory / threads, another for JVM buffer pools and the last one for Tomcat metrics. The expected metrics come from Spring Boot Actuator for Prometheus. Example with maven:
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-actuator</artifactId>
</dependency>
<dependency>
<groupId>io.micrometer</groupId>
<artifactId>micrometer-core</artifactId>
</dependency>
<dependency>
<groupId>io.micrometer</groupId>
<artifactId>micrometer-registry-prometheus</artifactId>
</dependency>
Full working example: https://github.com/jotak/bookinfo-runtimes/tree/master/details
The pod annotation for Kiali with the full list of dashboards is: kiali.io/dashboards: springboot-jvm,springboot-jvm-pool,springboot-tomcat
By default, the metrics are exposed on path /actuator/prometheus, so it must be specified in the corresponding annotation: prometheus.io/path: "/actuator/prometheus"
Thorntail
Contains mostly JVM-related metrics such as loaded classes count, memory usage, etc. The expected metrics are provided by the MicroProfile Metrics module. Example with maven:
<dependency>
<groupId>io.thorntail</groupId>
<artifactId>microprofile-metrics</artifactId>
</dependency>
Full working example: https://github.com/jotak/bookinfo-runtimes/tree/master/productpage
The pod annotation for Kiali is: kiali.io/dashboards: thorntail
Vert.x
Several dashboards are provided, related to different components in Vert.x: HTTP client/server metrics, Net client/server metrics, Pools usage, Eventbus metrics and JVM. The expected metrics are provided by the vertx-micrometer-metrics module. Example with maven:
<dependency>
<groupId>io.vertx</groupId>
<artifactId>vertx-micrometer-metrics</artifactId>
</dependency>
<dependency>
<groupId>io.micrometer</groupId>
<artifactId>micrometer-registry-prometheus</artifactId>
</dependency>
Init example of Vert.x metrics, starting a dedicated server (other options are possible):
VertxOptions opts = new VertxOptions().setMetricsOptions(new MicrometerMetricsOptions()
.setPrometheusOptions(new VertxPrometheusOptions()
.setStartEmbeddedServer(true)
.setEmbeddedServerOptions(new HttpServerOptions().setPort(9090))
.setPublishQuantiles(true)
.setEnabled(true))
.setEnabled(true));
Full working example: https://github.com/jotak/bookinfo-runtimes/tree/master/reviews
The pod annotation for Kiali with the full list of dashboards is: kiali.io/dashboards: vertx-client,vertx-server,vertx-eventbus,vertx-pool,vertx-jvm
Custom Dashboards
When the built-in dashboards don’t offer what you need, it’s possible to create your own. See Custom Dashboard Configuration for more information.
3.3 - Health
Kiali help users know whether their service mesh is healthy. This includes the health of the mesh infrastructure itself, and the deployed application services.
Service Mesh Infrastructure Health
Users can quickly confirm the health of their infrastructure by looking at the Kiali Masthead. If Kiali detects any health issues with the infrastructure of the mesh it will show an indication in the masthead, severity will be reflected via color, and hovring will show the detail:
For more detail on how Kiali tracks the Istio infrastructure status, see the Istio Status Feature.
Overview Health
The default Kiali page is an Overview Dashboard. This view will quickly allow you to identify namespaces with issues. It provides a summary of configuration health, component health and request traffic health. The component health is selectable via a dropdown and the page offers various filter, sort and presentation options:
Graph Health
The Kiali Graph offers a rich visualization of your service mesh traffic. The health of Nodes and Edges is represented via a standard color system using shades of orange and red to reflect degraded and failure-level traffic health. Red or orange nodes or edges may need attention. The color of an edge represents the request health between the relevant nodes. Note that node shape indicates the type of component, such as service, workload, or app.
The health of nodes and edges is refreshed automatically based on the user’s preference. The graph can also be paused to examine a particular state, or replayed to re-examine a particular time period.
Health Configuration
Kiali calculates health by combining the individual health of several indicators, such as pods and request traffic. The global health of a resource reflects the most severe health of its indicators.
Health Indicators
The table below lists the current health indicators and whether the indicator supports custom configuration for its health calculation.
Indicator | Supports Configuration |
---|---|
Pod Status | No |
Traffic Health | Yes |
Icons and colors
Kiali uses icons and colors to indicate the health of resources and associated request traffic.
- No Health Information (NA)
- Healthy
- Degraded
- Failure
Custom Request Health
There are times when Kiali’s default thresholds for traffic health do not work well for a particular situation. For example, at times 404 response codes are expected. Kiali has the ability to set powerful, fine-grained overrides for health configuration. For details, see Traffic Health Configuration.
3.4 - Istio Configuration
Kiali is more than observability, it also helps you to configure, update and validate your Istio service mesh.
The Istio configuration view provides advanced filtering and navigation for Istio configuration objects, such as Virtual Services and Gateways. Kiali provides inline config editing and powerful semantic validation for Istio resources.
Validations
Kiali performs a set of validations on your Istio Objects, such as Destination Rules, Service Entries, and Virtual Services. Kiali’s validations go above and beyond what Istio offers. Where Istio offers mainly static checks for well-formed definitions, Kiali performs semantic validations to ensure that the definitions make sense, across objects, and in some cases even across namespaces. Kiali validations are based on the runtime status of your service mesh.
Check the complete list of validations for further information.
Wizards
Kiali Wizards provide a way to apply an Istio service mesh pattern, letting Kiali generate the Istio Configuration. Wizards are launched from Kiali’s Action menus, located across the UI on relevant pages. Wizards can create and update Istio Config for Routing, Gateways, Security scenarios and more.
Istio Config Page Wizards
These Create Actions are available on the Istio Config page:
Authorization Wizards
Kiali allows creation of Istio AuthorizationPolicy resources:
Istio PeerAuthentication resources:
Istio RequestAuthentication resources:
Traffic Wizards
Kiali also allows creation of Istio Gateway resources.
Istio ServiceEntry resources:
Istio Sidecar resources:
Other Kiali Wizards
Kiali also has Wizards available from the Overview page, and many details pages, such as Service Detail to create routing rules. The Kiali Travel Tutorial goes into several of these wizards.
Overview Wizards
The Overview page has namespace-specific actions for creating traffic policies:
Service Wizards
The Service Detail page offers several wizards to create traffic control config:
3.5 - Istio Infrastructure Status
A service mesh simplifies application services by deferring the non-business logic to the mesh. But for healthy applications the service mesh infrastructure must also be running normally. Kiali monitors the multiple components that make up the service mesh, letting you know if there is an underlying problem.
A component status will be one of: Not found
, Not ready
, Unreachable
, Not healthy
and Healthy
. Not found
means that Kiali is not able to find the deployment. Not ready
means no pods are running. Unreachable
means that Kiali hasn’t been successfully able to communicate with the component (Prometheus, Grafana and Jaeger). Not healthy
means that the deployment doesn’t have the desired amount of replicas running. Otherwise, the component is Healthy
and it won’t be shown in the list.
Regarding the severity of each component, there are only two options: core
or add-on
. The core
components are those shown as errors (in red) whereas the add-ons
are displayed as warnings (in orange).
By default, Kiali checks that the core
components “istiod”, “ingress”, and “egress” are installed and running in the control plane namespace, and that the add-ons
“prometheus”, “grafana” and “jaeger” are available.
Certificate Information Indicators
In some situations, it is useful to get information about the certificates used by internal mTLS, for example:
- Know whether the default CA is used or if there is another CA configured.
- Check the certificates issuer and their validity timestamps to troubleshoot any issue with certificates.
The certificates shown depends on how Istio is configured. The following cases are possible:
- Using Istio CA certificates (default), the information shown is from a secret named istio-ca-secret.
- Using Plug in CA certificates, the information shown is from a secret named cacerts.
- Using DNS certificates, the information shown is from reading many secrets found in Istio configuration.
The following is an example of viewing the default case:
Note that displaying this configuration requires permissions to read secrets (istio-ca-secret by default, possibly cacerts or any secret configured when using DNS certificates).
Having these permissions may concern users. For this reason, this feature is implemented as a feature flag and not only can be disabled, avoiding any extra permissions to read secrets, but also a list of secrets can be configured to explicitly grant read permissions for some secrets in the control plane namespace. By default, this feature is enabled with a Kiali CR configuration equivalent to the following:
spec:
kiali_feature_flags:
certificates_information_indicators:
enabled: true
secrets:
- cacerts
- istio-ca-secret
You can extend this default configuration with additional secrets, remove secrets you don’t want, or disable the feature.
If you add additional secrets, the Kiali operator also needs the same privileges in order to configure Kiali successfully. If you used the Helm Charts to install the operator, specify the secretReader
value with the required secrets:
$ helm install \
--namespace kiali-operator \
--create-namespace \
--set "secretReader={cacerts,istio-ca-secret}"
kiali-operator \
kiali/kiali-operator
If you installed the operator via the OperatorHub you need to update the operator privileges as a post-installation step, as follows:
$ kubectl patch $(kubectl get clusterroles -o name | grep kiali-operator) --type "json" -p '[{"op":"add","path":"/rules/0","value":{"apiGroups":[""],"resources":["secrets"],"verbs":["get"],"resourceNames":["secret-name-to-be-read"]}}]'
Replace secret-name-to-be-read
with the secret name you want the operator to read and restart the Kiali operator pod after running the previous command.
3.6 - Multi-cluster
A basic Istio mesh deployment has a single control plane with a single data plane, deployed on a single Kubernetes cluster. But Istio supports a variety of advanced deployment models. It allows a mesh to span multiple primary (control plane) and/or remote (data plane only) clusters, and can use a single or multi-network approach. The only strict rule is that within a mesh service names are unique. A non-basic mesh deployment generally involves multiple clusters. See installation instructions for more detail on installing advanced mesh deployments.
A single Kiali install can currently work with at most one mesh, one istiod, one metric store and one trace store but it can be configured for “single cluster” or “multi-cluster”. All clusters must be part of the same mesh, have data planes controlled by the single istiod (control plane), and report to the same metric and trace store, whether directly or via some sort of aggregator. See the multi-cluster configuration page for more information on requirements.
For multi-cluster configurations, Kiali provides a unified view and management of your mesh across clusters.
Graph View: Cluster and Namespace Boxing
Istio provides cluster names in the traffic telemetry for multi-cluster installations. The Kiali graph can use this information to better visualize clusters and namespaces. The Display menu offers two multi-cluster related options: Cluster Boxes and Namespace Boxes. When enabled, either separately or together, the graph will generate boxes to help identify the relevant nodes and edges, and to see traffic traveling between them.
Each box type supports selection and provides a side-panel summary of traffic. Below we see a Bookinfo traffic graph for when Bookinfo services are deployed across the East and West clusters. The West cluster box is selected. You see traffic for all services and workloads across both clusters. Single cluster configurations will show some traffic across clusters but not all.
List View: Mesh Discovery
Kiali will show cluster information for all clusters in the mesh. It will identify the home cluster, meaning the cluster on which it is installed and from which it presents its traffic, traces and Istio config. In the following example there are two clusters defined in the mesh, East and West. East is identified as the home cluster in three places: the browser tab (not shown), the masthead, and with a star icon in the clusters list:
Unified Multi-cluster configuration
Unlike single-cluster configurations, multi-cluster configurations show list/details pages across all clusters.
List Views: Aggregated mesh view
With a multi-cluster Kiali configuration, you can view all apps, workloads, services, and Istio config in your mesh from a single place. Istio configuration is currently read only for remote clusters.
Detail Views: Dig into details across clusters
The detail pages provide the same functionality across all clusters that you have access to for a single cluster, including viewing logs, metrics, traces, envoy details, and more.
Overview: Cross cluster namespace info
The overview page shows namespace information across all configured clusters.
Roadmap
See this issue to see the multi-cluster roadmap for Kiali.
3.7 - Security
Kiali gives support to better understand how mTLS is used in Istio meshes. Find those helpers in the graph, the masthead menu, the overview page and specific validations.
Masthead indicator
At the right side of the Masthead, Kiali shows a lock when the mesh has strictly enabled mTLS
for the whole service mesh. It means that all the communications in the mesh uses mTLS
.
Kiali shows a hollow lock when either the mesh is configured in PERMISSIVE
mode or there is a misconfiguration in the mesh-wide mTLS
configuration.
Overview locks
The overview page shows all the available namespaces with aggregated data. Besides the health and validations, Kiali shows also the mTLS
status at namespace-wide. Similar to the masthead, it shows a lock when strict mTLS
is enabled or a hollow lock when permissive.
Graph
The mTLS
method is used to establish communication between microservices. In the graph, Kiali has the option to show which edges are using mTLS
and with what percentatge during the selected period. When an edge shows a lock icon it means at least one request with mTLS enabled is present. In case there are both mTLS and non-mTLS requests, the side-panel will show the percentage of requests using mTLS
.
Enable the option in the Display
dropdown, select the security
badge.
Validations
Kiali has different validations to help troubleshoot configurations related to mTLS
such as DestinationRules
and PeerAuthentications
.
3.8 - Topology
Kiali offers multiple ways for users to examine their mesh Topology. Each combines several information types to help users quickly evaluate the health of their service architecture.
Overview
Kiali’s default page is the topology Overview. It presents a high-level view of the namespaces accessible to Kiali, for this user. It combines service and application information, along with telemetry, validations and health, to provide a holistic summary of system behvior. The Overview page provides numerous filtering, sorting and presentation options. From here users can perform namespace-level Actions, or quickly navigate to more detailed views.
Graph
The Kiali Graph offers a powerful visualization of your mesh traffic. The topology combines real-time request traffic with your Istio configuration information to present immediate insight into the behavior of service mesh, allowing you to quickly pinpoint issues. Multiple Graph Types allow you to visualize traffic as a high-level service topology, a low-level workload topology, or as an application-level topology.
Graph nodes are decorated with a variety of information, pointing out various route routing options like virtual services and service entries, as well as special configuration like fault-injection and circuit breakers. It can identify mTLS issues, latency issues, error traffic and more. The Graph is highly configurable, can show traffic animation, and has powerful Find and Hide abilities.
You can configure the graph to show the namespaces and data that are important to you, and display it in the way that best meets your needs.
Health
Colors in the graph represent the health of your service mesh. A node colored red or orange might need attention. The color of an edge between components represents the health of the requests between those components. The node shape indicates the type of component such as services, workloads, or apps.
The health of nodes and edges is refreshed automatically based on the user’s preference. The graph can also be paused to examine a particular state, or replayed to re-examine a particular time period.
Side-Panel
The collapsible side-panel summarizes the current graph selection, or the graph as a whole. A single-click will select the node, edge, or box of interest. The side panel provides:
- Charts showing traffic and response times.
- Health details.
- Links to fully-detailed pages.
- Response Code and Host breakdowns.
- Traces involving the selected component.
Node Detail
A single-click selects a graph node. A double-click drills in to show the node’s Detail Graph. The node detail graph visualizes traffic from the point-of-view of that node, meaning it shows only the traffic reported by that node’s Istio proxy.
You can return back to the main graph, or double-click to change to a different node’s detail graph.
Traffic Animation
Kiali offers several display options for the graph, including traffic animation.
For HTTP traffic, circles represent successful requests while red diamonds represent errors. The more dense the circles and diamonds the higher the request rate. The faster the animation the faster the response times.
TCP traffic is represented by offset circles where the speed of the circles indicates the traffic speed.
Ranking
Nodes can be ranked in the graph based on pre-defined criteria such as ‘number of inbound edges’. Combined with the find/hide feature, this allows you to quickly highlight or filter for important workloads, services, and applications.
Rankings are normalized to fit between 1..100 and nodes may tie with each other in rank. Ranking starts at 1 for the top ranked nodes so when ranking nodes based on ‘number of inbound edges’, the node(s) with the most inbound edges would have rank 1. Node(s) with the second most inbound edges would have rank 2. Each selected criteria contributes equally to a node’s ranking. Although 100 rankings are possible, only the required number of rankings are assigned, starting at 1.
Graph Types
Kiali offers four different traffic-graph renderings:
-
The workload graph provides the a detailed view of communication between workloads.
-
The app graph aggregates the workloads with the same app labeling, which provides a more logical view.
-
The versioned app graph aggregates by app, but breaks out the different versions providing traffic breakdowns that are version-specific.
-
The service graph provides a high-level view, which aggregates all traffic for defined services.
Replay
Graph replay allows you to replay traffic from a selected past time-period. This gives you a chance to thoroughly examine a time period of interest, or share it with a co-worker. The graph is fully bookmarkable, including replay.
Operation Nodes
Istio v1.6 introduced Request Classification. This powerful feature allows users to classify requests into aggregates, called “Operations” by convention, to better understand how a service is being used. If configured in Istio the Kiali graph can show these as Operation nodes. The user needs only to enable the “Operation Nodes” display option. Operations can span services, for example, “VIP” may be configured for both CarRental and HotelRental services. To see total “VIP” traffic then display operation nodes without service nodes. To see “VIP” traffic specific to each service then also enable the “Service Nodes” display option.
When selected, an Operation node also provides a side-panel view. And when double-clicked a node detail graph is also provided.
Because operation nodes represent aggregate traffic they are not compatible with Service graphs, which themselves are already logical aggregates. For similar reasons response time information is not available on edges leading into or out of operation nodes. But by selecting the edge the response time information is available in the side panel (if configured).
Operation nodes are represented as pentagons in the Kiali graph:
3.9 - Tracing
Kiali offers a native integration with Jaeger for Distributed Tracing. As such, users can access Jaeger’s trace visualizations. But more than that, Kiali incorporates tracing into several correlated views, making your investment in trace data even more valuable.
For a quick glimpse at Kiali tracing features, see below. For a detailed explanation of tracing in Kiali, see this 3-part Trace my mesh blog series,
Workload detail
When investigating a workload, click the Traces tab to visualize your traces in a chart. When selecting a trace Kiali presents a tab for trace detail, and a tab for span details. Kiali always tries to surface problem areas, Kiali uses a heatmap approach to help the user identify problem traces or spans.
Heatmaps
A heatmap that you see in the Workload’s Tracing tab is a matrix that compares a specific trace’s request duration against duration metrics aggregated over time.
Each trace has a corresponding heatmap matrix. Each cell in the matrix corresponds to a specific metric aggregate; the value and color of a cell represents the difference between that metric and the duration of the matrix’s associated trace.
For example, the top-right cell of the heatmap above shows that the duration of the request represented by the trace (5.96ms) was 17.5ms faster than the 99th percentile of all inbound requests to the workload within the last 10 minutes.
The color of a cell will range between red and green; the more green a cell is, the faster the duration of the trace was compared to the aggregate metric data. A red cell indicates the associated trace was much slower compared to the aggregate metric data and so examining that trace could help detect a potential bottleneck or problem.
Metric Correlation
Kiali offers span overlays on Metric charts. The user can simply enable the spans
option to generate the overlay. Clicking any
span will navigate back to the Traces tab, focused on the trace of interest.
Graph Correlation
Kiali users often use the Graph Feature to visualize their mesh traffic. In the side panel, When selecting a graph node, the user will be presented with a Traces tab, which lists available traces for the time period. When selecting a trace the graph will display an overlay for the trace’s spans. And the side panel will display span details and offer links back to the trace detail views.
Logs Correlation
Kiali works to correlate the standard pillars of observability: traces, metrics and logs. Kiali can present a unified view of
log and trace information, in this way letting users use logs to identify traces of interest. When enabling the spans
option
Kiali adds trace entries to the workload logs view. Below, in time-sorted order, the user is presented with a unified view of application
logs (in white), Envoy proxy logs (in gold), and trace spaces (in blue). Clicking a span of interest brings you to the detail
view for the trace of interest.
3.10 - Validation
Kiali performs a set of validations on your Istio Objects, such as Destination Rules, Service Entries, and Virtual Services. Kiali’s validations go above and beyond what Istio offers. Where Istio offers mainly static checks for well-formed definitions, Kiali performs semantic validations to ensure that the definitions make sense, across objects, and in some cases even across namespaces. Kiali validations are based on the runtime status of your service mesh.
The complete list of validations:
AuthorizationPolicy
KIA0101 - Namespace not found for this rule
AuthorizationPolicy enables access control on workloads. Each policy effects only to a group of request. For instance, all requests started from a workload on a list of namespaces. The present validation points out those rules referencing a namespace that don’t exist in the cluster.
Resolution
Either remove the namespace from the list, correct if there is any typo or create a new namespace.
Severity
Warning
Example
apiVersion: security.istio.io/v1beta1
kind: AuthorizationPolicy
metadata:
name: httpbin
namespace: default
spec:
selector:
matchLabels:
app: httpbin
version: v1
rules:
- from:
- source:
principals: ["cluster.local/ns/default/sa/sleep"]
- source:
namespaces:
- default
- non-existing # warning
- unexisting # warning
to:
- operation:
methods: ["GET"]
paths: ["/info*"]
- operation:
methods: ["POST"]
paths: ["/data"]
when:
- key: request.auth.claims[iss]
values: ["https://accounts.google.com"]
See Also
KIA0102 - Only HTTP methods and fully-qualified gRPC names are allowed
An AuthorizationPolicy has an Operation field where is defined the oprations allowed for a request. In the method field are listed all the allowed methods that request can have. This validation appears when a problem is found in there. The only methods accepted are: either HTTP valid methods or fully-qualified names of gRPC service in the form of “/package.service/method”
Resolution
Either change or remove the violating method. It has to be either a HTTP valid method or a fully-qualified names of a gRPC service in the form of “/package.service/method”
Severity
Warning
Example
apiVersion: security.istio.io/v1beta1
kind: AuthorizationPolicy
metadata:
name: httpbin
namespace: default
spec:
selector:
matchLabels:
app: httpbin
version: v1
rules:
- from:
- source:
principals: ["cluster.local/ns/default/sa/sleep"]
- source:
namespaces:
- default
to:
- operation:
methods:
- "GET"
- "/package.service/method"
- "WRONG" # Warning
- "non-fully-qualified-grpc" # Warning
paths: ["/info*"]
- operation:
methods: ["POST"]
paths: ["/data"]
when:
- key: request.auth.claims[iss]
values: ["https://accounts.google.com"]
See Also
KIA0104 - This host has no matching entry in the service registry
AuthorizationPolicy enables access control on workloads. Each policy effects only to a group of request going to a specific destination. For instance, allow all the request going to details
host.
The present validation points out those rules referencing a host that don’t exist in the authorization policy namespace. Kiali considers services, virtual services and service entries. Those hosts that refers to hosts outside of the object namespace will be presented with an unknown error.
Resolution
Either remove the host from the list, correct if there is any typo or deploy a new service, service entry or a virtual service pointing to that host.
Severity
Error
Example
apiVersion: security.istio.io/v1beta1
kind: AuthorizationPolicy
metadata:
name: httpbin
namespace: default
spec:
selector:
matchLabels:
app: httpbin
version: v1
rules:
- from:
- source:
principals: ["cluster.local/ns/default/sa/sleep"]
- source:
namespaces:
- default
to:
- operation:
hosts:
- wrong # Error
- ratings
- details.default
- reviews.default.svc.cluster.local
- productpage.outside # Unknown
- google.com # Service Entry present. No error
- google.org # Service Entry not present, wrong domain. Error.
methods:
- "GET"
- "/package.service/method"
paths: ["/info*"]
- operation:
methods: ["POST"]
paths: ["/data"]
when:
- key: request.auth.claims[iss]
values: ["https://accounts.google.com"]
See Also
- Validator source code
- AuthorizationPolicy documentation
- Definition of the operations field
- Service association requirement
KIA0105 - This field requires mTLS to be enabled
AuthorizationPolicy has a Source field, where specifies the source identities of a request. In a Source field it accepts the principals and the namespaces, which requires mTLS enabled.
A validation Error message on a principals or namespaces fields means, that mTLS is not enabled.
This validation appears only when autoMtls is disabled.
Resolution
Either remove this field or enable autoMtls.
Severity
Error
Example
apiVersion: security.istio.io/v1beta1
kind: AuthorizationPolicy
metadata:
name: httpbin
namespace: bookinfo
spec:
selector:
matchLabels:
app: httpbin
version: v1
rules:
- from:
- source:
principals: ["cluster.local/ns/default/sa/sleep"]
- source:
namespaces:
- default
to:
- operation:
methods: ["GET"]
paths: ["/info*"]
- operation:
methods: ["POST"]
paths: ["/data"]
when:
- key: request.auth.claims[iss]
values: ["https://accounts.google.com"]
See Also
- AuthorizationPolicy documentation
- Definition of the Source field
- Service association requirement
- Globally enabling Istio mutual TLS
KIA0106 - Service Account not found for this principal
AuthorizationPolicy has a Source field, where specifies the source identities of a request.
In a Source field it accepts the principals, a list of peer identities derived from the peer certificate. The peer identity is in the format of <TRUST_DOMAIN>/ns/<NAMESPACE>/sa/<SERVICE_ACCOUNT>
, for example, cluster.local/ns/default/sa/productpage
.
A validation Error message on a principal value means, that the specified Service Account was not found in a given Namespace.
Resolution
Correct the principal to refer to existing Service Account, make sure that the value is in correct format without a typo.
Severity
Error
Example
apiVersion: security.istio.io/v1beta1
kind: AuthorizationPolicy
metadata:
name: httpbin
namespace: default
spec:
selector:
matchLabels:
app: httpbin
version: v1
rules:
- from:
- source:
principals: ["cluster.local/ns/default/sa/sleep"]
- source:
namespaces:
- default
to:
- operation:
hosts:
- ratings
- details.default
- reviews.default.svc.cluster.local
methods:
- "GET"
paths: ["/info*"]
- operation:
methods: ["POST"]
when:
- key: request.auth.claims[iss]
values: ["https://accounts.google.com"]
See Also
Destination rules
KIA0201 - More than one DestinationRules for the same host subset combination
Istio applies traffic rules for services after the routing has happened. These can include different settings such as connection pooling, circuit breakers, load balancing, and detection. Istio can define the same rules for all services under a host or different rules for different versions of the service.
This validation warning could be a result of duplicate definition of the same subsets as well as from rules that apply to all subsets. Also, a combination of one Destination Rule (DR) applying to all subsets and another defining behavior for only some subsets triggers this validation warning.
Istio silently ignores the duplicate subsets and merge these destination rules without letting the user know. Only the first seen rule (by Istio) per subset is used and information from multiple definitions is not merged. While the routing might work correctly, this is most likely a configuration error. It may lead to a undesired behavior if one of the offending rules is removed or modified and that is probably not the intention of the deployer of this service. Also, if the two offending destination rules have different policies for traffic routing the wrong one might be used.
Resolution
Either merge the settings to a single DR or split the subsets in such a way that they do not interleave. This ensures that the routing behavior stays consistent.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews-dr1
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
- name: v2
labels:
version: v2
- name: v3
labels:
version: v3
---
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews-dr2
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
See Also
- Validator source code
- Destination rule documentation
- Istio source code for merging
- Istio documentation: Split large virtual services and destination rules into multiple resources
KIA0202 - This host has no matching entry in the service registry (service, workload or service entries)
Istio applies traffic rules for services after the routing has happened. These can include different settings such as connection pooling, circuit breakers, load balancing, and detection. Istio can define the same rules for all services under a host or different rules for different versions of the service. The host must have a service that is defined in the platform’s service registry or as a ServiceEntry. Short names are extended to include ‘.namespace.cluster’ using the namespace of the destination rule, not the service itself. FQDN is evaluated as is. It is recommended to use the FQDN to prevent any confusion.
If the host is not found, Istio ignores the defined rules.
Resolution
Correct the host to point to a correct service, in this namespace or with FQDN to other namespaces, or deploy the missing service to the mesh.
Severity
Error
There is an exception to the severity level: It will be shown as a Warning when OutboundTrafficPolicy Mode for MeshConfig is set to ALLOW_ANY.
Example
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews
spec:
host: notpresent
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
- name: v2
labels:
version: v2
- name: v3
labels:
version: v3
See Also
KIA0203 - This subset’s labels are not found in any matching host
Istio applies traffic rules for services after the routing has happened. These can include different settings such as connection pooling, circuit breakers, load balancing, and detection. Istio can define the same rules for all services under a host or different rules for different versions of the service. The host must a service that is defined in the platform’s service registry or as a ServiceEntry. Short names are extended to include ‘.namespace.cluster’ using the namespace of the destination rule, not the service itself. FQDN is evaluated as is. It is recommended to use the FQDN to prevent any confusion.
Subsets can override the global settings defined in the DR for a host.
If the host is not found, Istio ignores the defined rules.
If the not found subset is not referenced in any Virtual Service, the severity of this error is changed to Info.
Resolution
Correct the host to point to a correct service, in this namespace or with FQDN to other namespaces, or deploy the missing service to the mesh. If the hostname is equal to the one used otherwise in the DR, consider removing the duplicate host resolution.
Also, verify that the labels are correctly matching a workload with the intended service.
Severity
Error
Example
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v10
- name: v2
labels:
notfoundlabel: v2
- name: v3
labels:
version: v3
See Also
KIA0204 - mTLS settings of a non-local Destination Rule are overridden
Istio allows you to define DestinationRule at three different levels: mesh, namespace and service level. A mesh may have multiple DRs. In case of having two DestinationRules on the first one is at a lower level than the second one, the first one overrides the TLS values of the second one.
Resolution
This validation aims to warn Kiali users that they may be disabling/enabling mTLS from the higher DestinationRule. Merging the TLS settings to one of the DestinationRules is the only way to fix this validation. However, this is a valid scenario so it might be impossible to remove this warning.
Severity
Warning
Example
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "default"
namespace: "istio-system"
spec:
host: "*.local"
trafficPolicy:
tls:
mode: ISTIO_MUTUAL
---
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
- name: v2
labels:
version: v2
- name: v3
labels:
version: v3
See Also
KIA0205 - PeerAuthentication enabling mTLS at mesh level is missing
Istio has the ability to define mTLS communications at mesh level. In order to do that, Istio needs one DestinationRule and one PeerAuthentication. The DestinationRule configures all the clients of the mesh to use mTLS protocol on their connections. The PeerAuthentication defines what authentication methods that can be accepted on the workload of the whole mesh. If the PeerAuthentication is not found or doesn’t exist and the mesh-wide DestinationRule is on ISTIO_MUTUAL mode, all the communication returns 500 errors.
Resolution
Add a PeerAuthentication within the istio-system
namespace without specifying targets but setting peers mtls mode to STRICT or PERMISSIVE. The PeerAuthentication should be like this.
Severity
Error
Example
# AutoMtls disabled, no PeerAuthentication at mesh-level defined
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "default"
namespace: "istio-system"
spec:
host: "*.local"
trafficPolicy:
tls:
mode: ISTIO_MUTUAL
See Also
KIA0206 - PeerAuthentication enabling namespace-wide mTLS is missing
Istio has the ability to define mTLS communications at namespace level. In order to do that, Istio needs both a DestinationRule and a PeerAuthentication targeting all the clients/workloads of the specific namespace. The PeerAuthentication allows mTLS authentication method for all the workloads within a namespace. The DestinationRule defines all the clients within the namespace to start communications in mTLS mode. If the PeerAuthentication is not found and the DestinationRule is on STRICT mode in that namespace but there is the DestinationRule enabling mTLS, all the communications within that namespace returns 500 errors.
Resolution
A PeerAuthentication enabling mTLS method is needed for the workloads in the namespace. Otherwise all the clients start mTLS connections that those workloads won’t be ready to manage. Add a PeerAuthentication without specifying targets but setting mTLS mode to STRICT or PERMISSIVE in the same namespace as the DestinationRule.
Severity
Error
Example
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "enable-mtls"
namespace: "bookinfo"
spec:
host: "*.bookinfo.svc.cluster.local"
trafficPolicy:
tls:
mode: ISTIO_MUTUAL
See Also
KIA0207 - PeerAuthentication with TLS strict mode found, it should be permissive
Istio needs both a DestinationRule and PeerAuthentication to enable mTLS communications. The PeerAuthentication configures the authentication method accepted for all the targeted workloads. The DestinationRule defines which is the authentication method that the clients of specific workloads has to start communications with.
Resolution
Kiali has found that there is a DestinationRule sending traffic without mTLS authentication method. There are two different ways to fix this situation. You can either change the PeerAuthentication applying to PERMISSIVE mode or change the DestinationRule to start communications using mTLS.
Severity
Error
Example
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "disable-mtls"
namespace: "bookinfo"
spec:
host: "*.bookinfo.svc.cluster.local"
trafficPolicy:
tls:
mode: DISABLE
---
apiVersion: "authentication.istio.io/v1alpha1"
kind: "Policy"
metadata:
name: "default"
namespace: "bookinfo"
spec:
peers:
- mtls:
mode: STRICT
See Also
KIA0208 - PeerAuthentication enabling mTLS found, permissive mode needed
Istio needs both a DestinationRule and PeerAuthentication to enable mTLS communications. The PeerAuthentication configures the authentication method accepted for all the targeted workloads. The DestinationRule defines which is the authentication method that the clients of specific workloads has to start communications with.
Kiali found a DestinationRule starting communications without TLS but there was a PeerAuthentication allowing all services in the mesh to accept only requests in mTLS.
Resolution
There are two ways to fix this situation. You can either change the PeerAuthentication to enable PERMISSIVE mode to all the workloads in the mesh or change the DestinatonRule to enable mTLS instead of disabling it (change the mode to ISTIO_MUTUAL).
Severity
Error
Example
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "default"
namespace: "bookinfo"
spec:
host: "*.bookinfo.svc.cluster.local"
trafficPolicy:
tls:
mode: DISABLE
---
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "istio-system"
spec:
mtls:
mode: STRICT
See Also
KIA0209 - DestinationRule Subset has not labels
A DestinationRule subset without labels may miss the destination endpoint linked with a specific workload.
If there is any other subset with valid labels, the severity of this warning is changed to Info.
Resolution
Validate that a subset is properly configured.
Severity
Warning
See Also
Gateways
KIA0301 - More than one Gateway for the same host port combination
Gateway creates a proxy that forwards the inbound traffic for the exposed ports. If two different gateways expose the same ports for the same host, this creates ambiguity inside Istio as either of these gateways could handle the traffic. This is most likely a configuration error. This check is done across all namespaces the user has access to.
There is one exception: when both gateways points to a different ingress. Then the ambiguity doesn’t exist and, in consequence, no validation is shown. Kiali considers that two gateways points to the same ingress if they share the exact same selector.
Resolution
Remove the duplicate gateway entries or merge the two gateway definitions into a single one.
OR
When one of the duplicate Gateways has a wildcard in hosts, there is an option ‘skip_wildcard_gateway_hosts’ in Kiali CR, by setting it to ‘true’, it will ignore Gateways with wildcards in hosts during validation. As Istio considers such a Gateway with a wildcard in hosts as the last in order, after the Gateways with FQDN in hosts.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: Gateway
metadata:
name: bookinfo-gateway # Validation shown
namespace: bookinfo
spec:
selector:
istio: ingressgateway # use istio default controller
servers:
- port:
number: 80
name: http
protocol: HTTP
hosts:
- "*"
---
apiVersion: networking.istio.io/v1alpha3
kind: Gateway
metadata:
name: bookinfo-gateway-copy # Validation shown
namespace: bookinfo2
spec:
selector:
istio: ingressgateway # use istio default controller
servers:
- port:
number: 80
name: http
protocol: HTTP
hosts:
- "*"
---
apiVersion: networking.istio.io/v1alpha3
kind: Gateway
metadata:
name: bookinfo-gateway-diff-ingress # No validations shown
namespace: bookinfo
spec:
selector:
istio: ingressgateway-pub # Using different ingress
servers:
- port:
number: 80
name: http
protocol: HTTP
hosts:
- "*"
---
See Also
KIA0302 - No matching workload found for gateway selector in this namespace
This validation checks the current namespace for matching workloads as this is recommended, and potentially in the future required, by the Istio. Excluded from this check are the default “istio-ingressgateway” and “istio-egressgateway” workloads which are included in Istio by default.
Although your traffic might be correctly routed to a workload in other namespace, this is not a guaranteed behavior and thus a warning is flagged in such cases also.
Resolution
Deploy the missing workload or fix the selector to target a correct location.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: Gateway
metadata:
name: bookinfo-gateway
namespace: bookinfo
spec:
selector:
app: nonexisting # workload doesn't exist in the namespace
servers:
- port:
number: 80
name: http
protocol: HTTP
hosts:
- "*"
See Also
Mesh Policies
KIA0401 - Mesh-wide Destination Rule enabling mTLS is missing
Istio has the ability to define mTLS communications at mesh level. In order to do that, Istio needs one DestinationRule and one PeerAuthentication. The DestinationRule configures all the clients of the mesh to use mTLS protocol on their connections. The PeerAuthentication defines what authentication methods can be accepted on the workload of the whole mesh. If the DestinationRule is not found or doesn’t exist and the PeerAuthentication is on STRICT mode, all the communication returns 500 errors.
Resolution
Add a DestinationRule with “*.cluster” host and ISTIO_MUTUAL as tls trafficPolicy mode. The DestinationRule should be like this.
Severity
Error
Example
# Make sure there isn't any DestinationRule enabling meshwide mTLS
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "istio-system"
spec:
mtls:
mode: STRICT
See Also
PeerAuthentication
KIA0501 - Destination Rule enabling namespace-wide mTLS is missing
Istio has the ability to define mTLS communications at namespace level. In order to do that, Istio needs one DestinationRule and one PeerAuthentication. The DestinationRule configures all the clients of the namespace to use mTLS protocol on their connections. The PeerAuthentication defines what authentication methods can be accepted on a specific group of workloads. PeerAuthentications without target field specified will target all the workloads within its namespace. If the DestinationRule is not found or doesn’t exist in the namespace and the namespace-wide PeerAuthentication is on STRICT mode, all the communication will return 500 errors.
Resolution
Add a DestinationRule with “*.namespace.svc.cluster.local” host and ISTIO_MUTUAL as tls trafficPolicy mode. The DestinationRule should be like this.
Severity
Error
Example
# Make sure there isn't any DestinationRule enabling meshwide mTLS
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "bookinfo"
spec:
mtls:
mode: STRICT
See Also
KIA0505 - Destination Rule disabling namespace-wide mTLS is missing
PeerAuthentication objects are used to define the authentication methods that a set of workloads can accept: Mutual, Istio Mutual, Simple or Disabled.
This validation warns the scenario where there is one PeerAuthentication at namespace level with DISABLE
mode but there is DestinationRule at namespace or mesh level enabling mTLS. With this scenario, all the traffic flowing between the services in that namespace will fail.
Resolution
You can either change the namespace/mesh-wide Destination Rule to DISABLE
mode or change the current PeerAuthentication to allow mTLS (mode STRICT
or PERMISSIVE
).
Severity
Error
Example
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "bookinfo"
spec:
mtls:
mode: DISABLE
---
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "enable-mtls"
namespace: bookinfo
spec:
host: "*.bookinfo.svc.cluster.local"
trafficPolicy:
tls:
mode: ISTIO_MUTUAL
See Also
KIA0506 - Destination Rule disabling mesh-wide mTLS is missing
PeerAuthentication objects are used to define the authentication methods that a set of workloads can accept: Mutual, Istio Mutual, Simple or Disabled.
This validation warns the scenario where there is one PeerAuthentication at mesh level with DISABLE
mode but there is DestinationRule at mesh level enabling mTLS. With this scenario, all the traffic flowing between the services in that namespace will fail.
Resolution
You can either change the mesh-wide Destination Rule to DISABLE
mode or change the current PeerAuthentication to allow mTLS (mode STRICT
or PERMISSIVE
).
Severity
Error
Example
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "istio-system"
spec:
mtls:
mode: DISABLE
---
apiVersion: "networking.istio.io/v1alpha3"
kind: "DestinationRule"
metadata:
name: "enable-mtls"
namespace: bookinfo
spec:
host: "*.local"
trafficPolicy:
tls:
mode: ISTIO_MUTUAL
See Also
Ports
KIA0601 - Port name must follow [-suffix] form
Istio requires the service ports to follow the naming form of ‘protocol-suffix’ where the ‘-suffix’ part is optional. If the naming does not match this form (or is undefined), Istio treats all the traffic TCP instead of the defined protocol in the definition. Dash is a required character between protocol and suffix. For example, ‘http2foo’ is not valid, while ‘http2-foo’ is (for http2 protocol).
Resolution
Rename the service port name field to follow the form and the traffic flows correctly.
Severity
Error
Example
apiVersion: v1
kind: Service
metadata:
name: ratings-java-svc
namespace: bookinfo
labels:
app: ratings
service: ratings-svc
spec:
ports:
- port: 9080
name: wrong-http
selector:
app: ratings-java
version: v1
See Also
KIA0602 - Port appProtocol must follow form
Istio also optionally supports the appProtocol in service ports, following the form of ‘protocol’. When port name field does not contain the protocol the appProtocol field is considered as a protocol. If the naming does not match this form, Istio treats all the traffic TCP instead of the defined protocol in the definition.
Resolution
Rename the service port appProtocol field to follow the form and the traffic flows correctly.
Severity
Error
Example
apiVersion: v1
kind: Service
metadata:
name: ratings-java-svc
namespace: bookinfo
labels:
app: ratings
service: ratings-svc
spec:
ports:
- port: 3306
name: database
appProtocol: wrong-mysql
selector:
app: ratings-java
version: v1
See Also
Services
KIA0701 - Deployment exposing same port as Service not found
Service definition has a combination of labels and port definitions that are not matching to any workloads. This means the deployment will be unsuccessful and no traffic can flow between these two resources. The port is read from the Service ‘TargetPort’ definition first and if undefined, the ‘Port’ field is used as Kubernetes defaults the ‘TargetPort’ to ‘Port’. If the ‘TargetPort’ is using a integer, the port numbers are compared and if the ‘TargetPort’ is a string, the deployment’s portName is used for comparison.
Resolution
Fix the port definitions in the workload or in the service definition to ensure they match.
Severity
Warning
Example
Invalid example with port definitions unmatched:
apiVersion: v1
kind: Service
metadata:
name: ratings-java-svc
namespace: ratings-java
labels:
app: ratings
service: ratings-svc
spec:
ports:
- port: 9080
name: http
selector:
app: ratings-java
version: v1
---
apiVersion: extensions/v1beta1
kind: Deployment
metadata:
name: ratings-java
namespace: ratings-java
labels:
app: ratings-java
version: v1
spec:
replicas: 1
template:
metadata:
annotations:
sidecar.istio.io/inject: "true"
labels:
app: ratings-java
version: v1
spec:
containers:
- name: ratings-java
image: pilhuhn/ratings-java:f
imagePullPolicy: IfNotPresent
ports:
- containerPort: 8080
Valid example using targetPort definition matching:
apiVersion: v1
kind: Service
metadata:
name: ratings-java-svc
namespace: ratings-java
labels:
app: ratings
service: ratings-svc
spec:
ports:
- port: 9080
targetPort: 8080
name: http
selector:
app: ratings-java
version: v1
---
apiVersion: extensions/v1beta1
kind: Deployment
metadata:
name: ratings-java
namespace: ratings-java
labels:
app: ratings-java
version: v1
spec:
replicas: 1
template:
metadata:
annotations:
sidecar.istio.io/inject: "true"
labels:
app: ratings-java
version: v1
spec:
containers:
- name: ratings-java
image: pilhuhn/ratings-java:f
imagePullPolicy: IfNotPresent
ports:
- containerPort: 8080
See Also
Sidecars
KIA1004 - This host has no matching entry in the service registry
The Sidecar resources are used for configuring the sidecar proxies in the service mesh. IstioEgressListener specifies the properties of an outbound traffic listener on the sidecar proxy attached to a workload instance.
In the hosts field, there is the list of hosts exposed to the workload. Each host in the list have the namespace/dnsName
format where both namespace and dnsName may have non-obvious values. namespace
may be either .
, ~
, *
or an actual namespace name. dnsName
has to be a FQDN representing a service, virtual service or a service entry. This FQDN may use the wildcard character.
See more information about the syntax of both namespace
and dnsName
into istio documentation.
Resolution
Make sure there is a service, virtual service or service entry matching with the host.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: Sidecar
metadata:
name: servicenotfound
namespace: bookinfo
spec:
workloadSelector:
labels:
app: reviews
egress:
- port:
number: 3306
protocol: MYSQL
name: egressmysql
captureMode: NONE
bind: 127.0.0.1
hosts:
- "bookinfo/*.bookinfo.svc.cluster.local" # Bookinfo running into bookinfo ns
- "default/kiali.io" # Service entry present in the namespace
- "bookinfo/bogus.bookinfo.svc.cluster.local" # Bogus service into bookinfo doesn't exist
- "bogus-ns/reviews.bookinfo.svc.cluster.local" # Cross-namespace validation: unable to verify validity
See Also
KIA1006 - Global default sidecar should not have workloadSelector
The Sidecar resources are used for configuring the sidecar proxies in the service mesh. By default, all the sidecars are configured with the default sidecar instance specified in the control plane namespace (usually istio-system). In case there are sidecar resources in the namespaces where your applications are, this default sidecar resource won’t be considered. The sidecar in your namespace will be applied.
Having workloadSelector
in your global default sidecar won’t make any effect in the other sidecars living outside of the control plane namespace.
Resolution
Make sure you don’t have the workloadSelector
in this global sidecar resource. In case you need specific settings for specific workloads, move those settings to the sidecar resources in your application namespaces.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: Sidecar
metadata:
name: default
namespace: istio-system
spec:
workloadSelector: # Default sidecar can't have labels
labels:
version: v1
egress:
- port:
number: 3306
protocol: MYSQL
name: egressmysql
captureMode: NONE
bind: 127.0.0.1
hosts:
- "bookinfo/reviews.bookinfo.svc.cluster.local"
- "bookinfo/details.bookinfo.svc.cluster.local"
See Also
KIA1007 - OutboundTrafficPolicy shown with empty mode value is ambiguous
Due to issues with the Istio client and the protobuf library it uses, the way some defaults are handled becomes ambiguous. When a Sidecar resource spec.outboundTrafficPolicy.mode
is left unset or is explicitly set to REGISTRY_ONLY, the Kiali UI will show the value as unset (e.g. if nothing is set inside outboundTrafficPolicy
, its value will be shown as {}
). In this case, you are not guaranteed to know what the value of mode
truly is. So in the case where Kiali UI shows mode
as empty, you cannot know if Istio will be using a value of REGISTRY_ONLY or ALLOW_ANY.
Resolution
You cannot determine the value of mode
using the Kiali UI when this condition arises. You must inspect the Sidecar object using other means to determine the value (e.g. use kubectl get sidecar your-side-car-name -o jsonpath='{.spec.outboundTrafficPolicy.mode}'
).
Severity
Informational
Example
Both of these Sidecar resources will show mode
as unset/empty in the Kiali UI YAML editor:
apiVersion: networking.istio.io/v1beta1
kind: Sidecar
...
spec:
outboundTrafficPolicy:
mode: REGISTRY_ONLY
apiVersion: networking.istio.io/v1beta1
kind: Sidecar
...
spec:
# according to Istio documentation, the default will be ALLOW_ANY
outboundTrafficPolicy: {}
See Also
VirtualServices
KIA1101 - DestinationWeight on route doesn’t have a valid service (host not found)
VirtualService routes matching requests to a service inside your mesh. Routing can also match a subset of traffic to a certain version of it for example. Any service inside the mesh must be targeted by its name, the IP address are only allowed for hosts defined through a Gateway. Host must be in a short name or FQDN format. Short name will evaluate to VS' namespace, regardless of where the actual service might be placed.
If the host is not found, Istio ignores the defined rules. However, if a subset with a Destination Rule is not found it affects all the subsets and all the routings. As such, care must be taken that the Destination rule is available before deploying the Virtual Service.
Resolution
Correct the host to point to a correct service (in this namespace or with FQDN to other namespaces), deploy the missing service to the mesh or remove the configuration linking to that non-existing service.
Severity
Error
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: details
spec:
hosts:
- details
http:
- route:
- destination:
host: nonexistentsvc
subset: v2
See Also
KIA1102 - VirtualService is pointing to a non-existent gateway
By default, VirtualService routes apply to sidecars inside the mesh. The gateway field allows to override that default and if anything is defined, the VS applies to those selected. ‘mesh’ is a reserved gateway name and means all the sidecars in the mesh. If one wishes to apply the VS to gateways as well as the sidecars, the ‘mesh’ keyword must be used as one of the gateways. Incorrect gateways mean that the VS is not applied correctly.
Resolution
Fix the possible gateway field to target all necessary gateways or remove the field if the default ‘mesh’ is enough.
Severity
Error
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: details
spec:
hosts:
- details
gateways:
- non-existent-gateway
http:
- route:
- destination:
host: details
subset: v1
See Also
KIA1104 - The weight is assumed to be 100 because there is only one route destination
Istio assumes the weight to be 100 when there is only one HTTPRouteDestination or RouteDestination. The warning is present because there is one route with a weight less than 100.
Resolution
Either remove the weight field or you might want to add another RouteDestination with an specific weight.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: reviews
spec:
hosts:
- reviews
http:
- route:
- destination:
host: reviews
subset: v1
weight: 10
See Also
- Istio documentation about HTTP Route Destination struct
- Istio documentation about Route Destination struct
- Validator source code
KIA1105 - This host subset combination is already referenced in another route destination
Istio allows you to apply rules over the traffic targetting to a specific service. In order to achieve that, it is necessary to add those rules into either http, tcp or tls fields in a VirtualService. In each field it is possible to specify rules for redirection or forwarding traffic. Those rules are the RouteDestination and HTTPRouteDestination structs. Each structs defines where the traffic is shifted to using host and subset fields. This warning message refers to the fact of referencing one host subset combination more than one time within the same route. Galley, Istio module in charge of configuration validation, allows host subset combination duplicity. However, the mesh it might become broken when there are different duplicates. Also, the presented warning might help spoting a typo.
Resolution
Make sure there is only one reference to the same host subset combination for each RouteDestination. Either HTTPRouteDestination or RouteDestination.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: reviews
spec:
hosts:
- reviews
http:
- route:
- destination:
host: reviews
subset: v1
weight: 80
- destination:
host: reviews
subset: v2 # duplicate
weight: 10
- destination:
host: reviews
subset: v2 # duplicate
weight: 10
See Also
- Istio documentation about HTTP Route Destination struct
- Istio documentation about Route Destination struct
- Validator source code
KIA1106 - More than one Virtual Service for same host
A VirtualService defines a set of traffic routing rules to apply when a host is addressed. Each routing rule defines matching criteria for traffic of a specific protocol. If the traffic is matched, then it is sent to a named destination service (or subset/version of it) defined in the registry.
Resolution
This is a valid configuration only if two VirtualServices share the same host but are bound to a different gateways, sidecars do not accept this behavior. There are several caveats when using this method and defining the same parts in multiple Virtual Service definitions is not recommended. While Istio will merge the configuration, it does not guarantee any ordering for cross-resource merging and only the first seen configuration is applied (rest ignored). As recommended, each VS definition should have a ‘catch-all’ situation, but this can only be defined in a definition affecting the same host.
Severity
Warning
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: reviews
spec:
hosts:
- reviews
http:
- route:
- destination:
host: reviews
subset: v1
weight: 90
- destination:
host: reviews
subset: v2
weight: 10
---
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: reviews-cp
spec:
hosts:
- reviews
http:
- route:
- destination:
host: reviews
subset: v1
weight: 90
- destination:
host: reviews
subset: v2
weight: 10
See Also
- Istio documentation: Split large virtual services and destination rules into multiple resources
- Validator source code
KIA1107 - Subset not found
VirtualService routes matching requests to a service inside your mesh. Routing can also match a subset of traffic to a certain version of it for example. The subsets referred in a VirtualService have to be defined in one DestinationRule.
If one route in the VirtualService points to a subset that doesn’t exist Istio won’t be able to send traffic to a service.
Resolution
Fix the routes that points to a non existing subsets. It might be fixing a typo in the subset’s name or defining the missing subset in a DestinationRule.
Severity
Error
Example
apiVersion: networking.istio.io/v1alpha3
kind: VirtualService
metadata:
name: reviews
spec:
hosts:
- reviews
http:
- route:
- destination:
host: reviews
subset: nosubset
weight: 90
- destination:
host: reviews
subset: v2
weight: 10
See Also
KIA1108 - Preferred nomenclature: /
A virtual service may include a list of gateways which the defined routes should be applied to. Gateways in other namespaces may be referred to by
Resolution
Move the nomenclature of the gateways into the supported Istio form:
Example
kind: VirtualService
apiVersion: networking.istio.io/v1alpha3
metadata:
name: bookinfo
namespace: bookinfo
spec:
hosts:
- '*'
gateways:
- bookinfo-gateway.bookinfo.svc.cluster.local # unsupported format
- bookinfo/bookinfo-gateway # works
http:
- match:
- uri:
exact: /productpage
- uri:
prefix: /static
- uri:
exact: /login
- uri:
exact: /logout
- uri:
prefix: /api/v1/products
route:
- destination:
host: productpage
port:
number: 9080
---
kind: Gateway
apiVersion: networking.istio.io/v1alpha3
metadata:
name: bookinfo-gateway
namespace: bookinfo
spec:
servers:
- hosts:
- '*'
port:
name: http
number: 80
protocol: HTTP
selector:
istio: ingressgateway
See Also
WorkloadEntries
KIA1201 - Missing one or more addresses from matching WorkloadEntries
This validation shows, that the address field’s value of Workload Entry is not matching to any address of Service Entry.
Resolution
Add missing Service Entry which address will match the Workload Entry’s address.
Severity
Warning
Example
apiVersion: networking.istio.io/v1beta1
kind: WorkloadEntry
metadata:
name: ratings-v1
namespace: bookinfo
spec:
serviceAccount: ratings-vm
address: 3.3.3.3
labels:
app: ratings
version: v1
ports:
http: 9080
---
apiVersion: networking.istio.io/v1beta1
kind: ServiceEntry
metadata:
name: ratings-unmatching-address
namespace: bookinfo
spec:
addresses:
- 4.4.4.4 # This IP is not in any WorkloadEntry. It needs 3.3.3.3 to work.
hosts:
- ratings
location: MESH_INTERNAL
resolution: STATIC
ports:
- number: 9080
name: http
protocol: HTTP
targetPort: 9080
workloadSelector:
labels:
app: ratings-unmatching
See Also
K8s HTTPRoutes
KIA1401 - HTTPRoute is pointing to a non-existent K8s gateway
Gateway API HTTPRoute could be pointing to a [k8s] Gateway that the Route wants to be attached to. When the namespace field is not specified it takes Gateways from the current HTTPRoute’s namespace. Here the error indicates that the referenced Gateway is not found in the provided namespace.
Resolution
Fix the parentRefs field to target to an existing gateway.
Severity
Error
Example
kind: HTTPRoute
apiVersion: gateway.networking.k8s.io/v1alpha2
metadata:
name: httproute
namespace: bookinfo
spec:
parentRefs:
- group: gateway.networking.k8s.io
kind: Gateway
namespace: istio-system
name: gatewayapi
hostnames:
- details
See Also
KIA1402 - BackendRef on rule doesn’t have a valid service (host not found)
Gateway API HTTPRoute could be pointing to a Service inside your mesh the Route sends the traffic to. This Service can be a certain version of a parent Service, but in that case a separate Service is required to be created. When the namespace field is not specified it takes Service from the current HTTPRoute’s namespace. Here the error indicates that the referenced Service is not found in the provided namespace.
Resolution
Correct the backendRefs name to point to a correct Service (in this namespace or to other namespaces), deploy the missing Service to the mesh or remove the configuration linking to that non-existing Service.
Severity
Error
Example
kind: HTTPRoute
apiVersion: gateway.networking.k8s.io/v1alpha2
metadata:
name: httproute
namespace: bookinfo
spec:
parentRefs:
- group: gateway.networking.k8s.io
kind: Gateway
namespace: istio-system
name: gatewayapi
hostnames:
- reviews
rules:
- matches:
- path:
type: PathPrefix
value: /get
backendRefs:
- group: ''
kind: Service
name: reviews-v1
port: 9080
See Also
Workloads
KIA1301 - This workload is not covered by any authorization policy
Istio Authorization Policy enables access control on workloads in the mesh. Auth Policy selector will match with workloads in the same namespace as the authorization policy. If the authorization policy is in the root namespace, the selector will additionally match with workloads in all namespaces. This validation shows, that the selector match did not happen.
Resolution
Add Autorization Policy which selector matches with Workload’s label selector.
Severity
Warning
See Also
Generic
KIA0002 - More than one selector-less object in the same namespace
This validation refers to the usage of the selector
. Selector-less Istio objects are those objects that don’t have the selector
field specified. Therefore, objects that apply to all the workloads of a namespace (or whole mesh if the namespace is the same as the control plane namespace).
This validation warns you that you have two different objects living in the same namespace. This may leave an non-deterministic or unexpected behavior on the workloads of the namespace.
Resolution
The natural solution is to merge both objects. In case there are different behaviors you want to apply, consider to define the selector
field targeting a specific set of workloads.
Severity
Error
Example
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "default"
namespace: "bookinfo"
spec:
mtls:
mode: STRICT
---
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "duplicate"
namespace: "bookinfo"
spec:
mtls:
mode: STRICT
See Also
KIA0003 - More than one object applied to the same workload
This validation refers to the usage of the selector
. In this field are defined the labels of the workloads that this object will be applied to. It might be one or more workloads in the same namespace.
This validation warns the scenario where there are two different objects applying to the same workload(s). This may leave an undeterministic or unexpected behavior on the workloads of the namespace.
Resolution
There isn’t a standard solution for that. It is a good practice not to have multiple rules of the same kind applying to the same workloads. Otherwise you would end up having interferences between objects and having troubles when debugging. The first approach would be to merge both objects into one if possible. The second approach would be to reorganize the objects of the same kind in a way that each one only applies to a different set of workloads. Applying no change into the objects is also an option although not desiderable.
Severity
Error
Example
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "productpage"
namespace: "bookinfo"
spec:
selector:
matchLabels:
app: productpage
mtls:
mode: STRICT
---
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "productpage-disable-80"
namespace: "bookinfo"
spec:
selector:
matchLabels:
app: productpage
version: v1
mtls:
mode: STRICT
portLevelMtls:
80:
mode: DISABLE
See Also
KIA0004 - No matching workload found for the selector in this namespace
This validation warns the scenario where there are not workloads matching with the selector
labels. In other terms, this object doesn’t have any implication into the mesh.
Resolution
There are three scenarios: either change the labels to match an existing workload (useful with typos), deploy a workload that match with those labels or safely remove this object.
Severity
Warning
Example
apiVersion: "security.istio.io/v1beta1"
kind: "PeerAuthentication"
metadata:
name: "nomatchingworkloads"
namespace: "bookinfo"
spec:
selector:
matchLabels:
app: wrong-typo
version: v1
mtls:
mode: STRICT
portLevelMtls:
80:
mode: DISABLE
See Also
KIA0005 - No matching namespace found or namespace is not accessible
This validation error shows that the namespace where the config object is exported is not accessible or does not exist.
Resolution
Choose existing and accessible namespace to export to.
Severity
Error
K8s Gateway
KIA1501 - More than one K8s Gateway for the same host and port combination
A k8s Gateway defines a point where traffic can be translated to Services, within the cluster. This is defined through listeners or addresses. This validation warns when finding multiple Listener definitions for the same port and host combination, in different k8s Gateways. In this case the traffic handling can be in conflict.
The exception to this rule is where the listeners specify different handlers. That is the reason why the severity is a warning.
Resolution
Remove or merge the duplicate k8s gateway entries.
Severity
Warning
Example
kind: Gateway
apiVersion: gateway.networking.k8s.io/v1alpha2
spec:
gatewayClassName: istio
listeners:
- name: default
hostname: host.com
port: 80
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: {}
---
kind: Gateway
apiVersion: gateway.networking.k8s.io/v1alpha2
spec:
gatewayClassName: istio
listeners:
- name: primary
hostname: host.com
port: 80
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: {}
KIA1502 - More than one K8s Gateway for the address and type combination
A k8s Gateway defines a point where traffic can be translated to Services within the cluster. This is defined through listeners or addresses. This validation warns when finding more than one address (type and value) in different k8s Gateways, where the traffic handling can be in conflict.
Resolution
Remove or merge the duplicate k8s gateway entries.
Severity
Warning
Example
kind: Gateway
apiVersion: gateway.networking.k8s.io/v1alpha2
spec:
gatewayClassName: istio
listeners:
- name: default
hostname: example.com
port: 80
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: {}
addresses:
- type: Hostname
value: example.com
---
kind: Gateway
apiVersion: gateway.networking.k8s.io/v1alpha2
spec:
gatewayClassName: istio
listeners:
- name: secondary
hostname: secondary.com
port: 9080
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: {}
addresses:
- type: Hostname
value: example.com
KIA1503 - Each listener must have a unique combination of Hostname, Port, and Protocol
A k8s Gateway cannot have more than one listener with the same Hostname, Port and Protocol.
Resolution
Update the hostname, port or protocol to another valid service so there are no more than one listener for the reported combination.
Severity
Error
Example
kind: Gateway
apiVersion: gateway.networking.k8s.io/v1alpha2
spec:
gatewayClassName: istio
listeners:
- name: default
hostname: example.com
port: 80
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: {}
- name: secondary
hostname: example.com
port: 80
protocol: HTTP
allowedRoutes:
namespaces:
from: Same
selector: { }
KIA1504 - Gateway API Class not found in Kiali configuration
A k8s Gateway is referencing to a GatewayClass which is not configured in Kiali CR.
Resolution
Change the gatewayClassName
field to reference to existing configured GatewayClass or add the missing GatewayClass into gateway_api_classes
configuration of Kiali CR. More info about configuring K8s Gateway API implementations can be found in Gateway API Implementations
Severity
Error
GWAPI - Gateway API status
The Gateway object provides a GatewayStatus to provide the status relative to the state represented in the spec. The validations under the GWAPI rule are generic and will highlight any invalid status created by the Gateway.
Resolution
This is a generic rule implemented by the Gateway, and each particular error should be fixed in the spec. The status should not be changed.
Severity
Warning
4 - Tutorials
The following tutorials are designed to help users understand how to use Istio with Kiali, features, configuration, etc. They are highly recommended!
4.1 - Kiali and Grafana Tempo Query integration
This tutorial goes throw the process to setup up Grafana Tempo Query as the Kiali default distribution tracing system.
4.1.1 - Introduction
Introduction
Kiali uses Jaeger as a default distributed tracing backend. In this tutorial, we will replace it for Grafana Tempo.
We will setup a local environment in minikube, and install Kiali with Tempo as a distributed backend. This is a simplified architecture diagram:
- We will install Tempo with the Tempo Operator and enable Jaeger query frontend to be compatible with Kiali in order to query traces.
- We will setup Istio to send traces to the Tempo collector using the zipkin protocol. It is enabled by default from version 3.0 or higher of the Tempo Operator.
- We will install MinIO and setup it up as object store, S3 compatible.
Environment
We use the following environment:
- Istio 1.18.1
- Kiali 1.72
- Minikube 1.30
- Tempo operator TempoStack v3.0
There are different installation methods for Grafana Tempo, but in this tutorial we will use the Tempo operator.
4.1.2 - Kiali and Tempo setup
Steps to install Kiali and Grafana Tempo
We will start minikube:
minikube start
It is a requirement to have cert-manager installed:
kubectl apply -f https://github.com/cert-manager/cert-manager/releases/download/v1.12.0/cert-manager.yaml
Install the operator. It is important to download a version 3.0 or higher. In previous versions, the zipkin collector was not exposed, there was no way to change it as it was not defined in the CRD.
kubectl apply -f https://github.com/grafana/tempo-operator/releases/download/v0.3.0/tempo-operator.yaml
We will create the tempo namespace:
kubectl create namespace tempo
We will deploy minio, this is a sample minio.yaml:
apiVersion: v1
kind: PersistentVolumeClaim
metadata:
# This name uniquely identifies the PVC. Will be used in deployment below.
name: minio-pv-claim
labels:
app: minio-storage-claim
spec:
# Read more about access modes here: http://kubernetes.io/docs/user-guide/persistent-volumes/#access-modes
accessModes:
- ReadWriteOnce
resources:
# This is the request for storage. Should be available in the cluster.
requests:
storage: 5Gi
---
apiVersion: apps/v1
kind: Deployment
metadata:
name: minio
spec:
selector:
matchLabels:
app: minio
strategy:
type: Recreate
template:
metadata:
labels:
# Label is used as selector in the service.
app: minio
spec:
# Refer to the PVC created earlier
volumes:
- name: storage
persistentVolumeClaim:
# Name of the PVC created earlier
claimName: minio-pv-claim
initContainers:
- name: create-buckets
image: busybox:1.28
command:
- "sh"
- "-c"
- "mkdir -p /storage/tempo-data"
volumeMounts:
- name: storage # must match the volume name, above
mountPath: "/storage"
containers:
- name: minio
# Pulls the default Minio image from Docker Hub
image: minio/minio:latest
args:
- server
- /storage
- --console-address
- ":9001"
env:
# Minio access key and secret key
- name: MINIO_ACCESS_KEY
value: "minio"
- name: MINIO_SECRET_KEY
value: "minio123"
ports:
- containerPort: 9000
- containerPort: 9001
volumeMounts:
- name: storage # must match the volume name, above
mountPath: "/storage"
---
apiVersion: v1
kind: Service
metadata:
name: minio
spec:
type: ClusterIP
ports:
- port: 9000
targetPort: 9000
protocol: TCP
name: api
- port: 9001
targetPort: 9001
protocol: TCP
name: console
selector:
app: minio
And apply the yaml:
kubectl apply -n tempo -f minio.yaml
We will create a secret to access minio:
kubectl create secret generic -n tempo tempostack-dev-minio \
--from-literal=bucket="tempo-data" \
--from-literal=endpoint="http://minio:9000" \
--from-literal=access_key_id="minio" \
--from-literal=access_key_secret="minio123"
Install Grafana tempo with the operator. We will use the secret created in the previous step:
kubectl apply -n tempo -f - <<EOF
apiVersion: tempo.grafana.com/v1alpha1
kind: TempoStack
metadata:
name: smm
spec:
storageSize: 1Gi
storage:
secret:
type: s3
name: tempostack-dev-minio
resources:
total:
limits:
memory: 2Gi
cpu: 2000m
template:
queryFrontend:
jaegerQuery:
enabled: true
ingress:
type: ingress
EOF
As an optional step, we can check if all the deployments have started correctly, and the services distributor has the port 9411 and the query frontend 16686:
kubectl get all -n tempo
(Optional) We can test if minio is working with a batch job to send some traces, in this case, to the open telemetry collector:
kubectl apply -f - <<EOF
apiVersion: batch/v1
kind: Job
metadata:
name: tracegen
spec:
template:
spec:
containers:
- name: tracegen
image: ghcr.io/open-telemetry/opentelemetry-collector-contrib/tracegen:latest
command:
- "./tracegen"
args:
- -otlp-endpoint=tempo-smm-distributor.tempo.svc.cluster.local:4317
- -otlp-insecure
- -duration=30s
- -workers=1
restartPolicy: Never
backoffLimit: 4
EOF
And access the minio console:
kubectl port-forward --namespace istio-system service/minio 9001:9001
Install Istio with helm (Option I)
Istio can be installed with Helm following the instructions. The zipkin address needs to be set:
--set values.meshConfig.defaultConfig.tracing.zipkin.address="tempo-smm-distributor.tempo:9411"
And then, install Jaeger as Istio addon.
Install Istio using Kiali source code (Option II)
For development purposes, if we have Kiali source code, we can use the kiali hack scripts:
hack/istio/install-istio-via-istioctl.sh -c kubectl -a "prometheus grafana" -s values.meshConfig.defaultConfig.tracing.zipkin.address="tempo-smm-distributor.tempo:9411"
Install Kiali and bookinfo demo with some traffic generation
Install kiali:
helm install \
--namespace istio-system \
--set external_services.tracing.in_cluster_url=http://tempo-smm-query-frontend.tempo:16685 \
--set external_services.tracing.url=http://localhost:16686 \
--set auth.strategy=anonymous \
kiali-server \
kiali/kiali-server
Install bookinfo with traffic generator
curl -L -o install-bookinfo.sh https://raw.githubusercontent.com/kiali/kiali/master/hack/istio/install-bookinfo-demo.sh
chmod +x install-bookinfo.sh
./install-bookinfo.sh -c kubectl -tg -id ${ISTIO_DIR}
And access Kiali:
kubectl port-forward svc/kiali 20001:20001 -n istio-system
4.2 - Travels Demo - Multicluster
This tutorial will demonstrate Kiali capabilities for Istio multicluster, particulary for the primary-remote cluster model.
For more information, check our documentation for multicluster.
4.2.1 - Introduction
So far, we know how good Kiali can be to understand applications, their relationships with each other and with external applications.
In the previous tutorial, Kiali was setup to observe just a single cluster. Now, we will expand its capabilities to observe more than one cluster. The extra clusters are remotes, meaning that there is not a control plane on them, they only have user applications.
This topology is called primary-remote and it is very useful to spread applications into different clusters having just one primary cluster, which is where Istio and Kiali are installed.
This scenario is a good choice when as an application administrator or architect, you want to give a different set of clusters to different sets of developers and you also want all these applications to belong to the same mesh. This scenario is also very helpful to give applications high availability capabilities while keeping the observability together (we are referring to just applications in terms of high availability, for Istio, we might want to install a multi-primary deployment model, which is on the roadmap for the multicluster journey for Kiali).
In this tutorial we will be deploying Istio in a primary-remote deployment. At first, we will install the “east” cluster with Istio, then we will add the “west” remote cluster and join it to the mesh. Then we will see how Kiali allows us to observe and manage both clusters and their applications. Metrics will be aggregated into the “east” cluster using Prometheus federation and a single Kiali will be deployed on the “east” cluster.
If you already have a primary-remote deployment, you can skip to instaliing Kiali.
4.2.2 - Prerequisites
This tutorial is a walkthrough guide to install everything. For this reason, we will need:
- minikube
- istioctl
- helm
This tutorial was tested on:
- Minikube v1.30.1
- Istio v1.18.1
- Kiali v1.70
Clusters are provided by minikube instances, but this tutorial should work on on any Kubernetes environment.
We will set up some environment variables for the following commands:
CLUSTER_EAST="east"
CLUSTER_WEST="west"
ISTIO_DIR="absolute-path-to-istio-folder"
As Istio will be installed on more than one cluster and needs to communicate between clusters, we need to create certificates for the Istio installation. We will follow the Istio documentation related to certificates to achieve this:
mkdir -p certs
pushd certs
make -f $ISTIO_DIR/tools/certs/Makefile.selfsigned.mk root-ca
make -f $ISTIO_DIR/tools/certs/Makefile.selfsigned.mk $CLUSTER_EAST-cacerts
make -f $ISTIO_DIR/tools/certs/Makefile.selfsigned.mk $CLUSTER_WEST-cacerts
popd
The result is two certificates for then use when installing Istio in the future.
4.2.3 - Deploy East cluster
Run the following commands to deploy the first cluster:
minikube start -p $CLUSTER_EAST --network istio --memory 8g --cpus 4
For both clusters, we need to configure MetalLB, which is a load balancer. This is because we need to assign an external IP to the required ingress gateways to enable cross cluster communication between Istio and the applications installed.
minikube addons enable metallb -p $CLUSTER_EAST
We set up some environment variables with IP ranges that MetalLB will then assign to the services:
MINIKUBE_IP=$(minikube ip -p $CLUSTER_EAST)
MINIKUBE_IP_NETWORK=$(echo $MINIKUBE_IP | sed -E 's/([0-9]+\.[0-9]+\.[0-9]+)\.[0-9]+/\1/')
MINIKUBE_LB_RANGE="${MINIKUBE_IP_NETWORK}.20-${MINIKUBE_IP_NETWORK}.29"
cat <<EOF | kubectl --context $CLUSTER_EAST apply -f -
apiVersion: v1
kind: ConfigMap
metadata:
namespace: metallb-system
name: config
data:
config: |
address-pools:
- name: default
protocol: layer2
addresses: [${MINIKUBE_LB_RANGE}]
EOF
We should have the first cluster deployed and ready to use.
4.2.4 - Install Istio on East cluster
The east cluster is the primary one, consequently is where the istiod process will be installed alongside other applications like Kiali.
Run the following commands to install Istio:
kubectl create namespace istio-system --context $CLUSTER_EAST
kubectl create secret generic cacerts -n istio-system --context $CLUSTER_EAST \
--from-file=certs/$CLUSTER_EAST/ca-cert.pem \
--from-file=certs/$CLUSTER_EAST/ca-key.pem \
--from-file=certs/$CLUSTER_EAST/root-cert.pem \
--from-file=certs/$CLUSTER_EAST/cert-chain.pem
kubectl --context=$CLUSTER_EAST label namespace istio-system topology.istio.io/network=network1
cat <<EOF > $CLUSTER_EAST.yaml
apiVersion: install.istio.io/v1alpha1
kind: IstioOperator
spec:
values:
global:
meshID: mesh1
multiCluster:
clusterName: $CLUSTER_EAST
network: network1
EOF
istioctl install -y --set values.pilot.env.EXTERNAL_ISTIOD=true --context=$CLUSTER_EAST -f $CLUSTER_EAST.yaml
After the installation, we need to create what we called an “east-west” gateway. It’s an ingress gateway just for the cross cluster configuration as we are opting to use the installation for different networks (this will be the case in the majority of the production scenarios).
$ISTIO_DIR/samples/multicluster/gen-eastwest-gateway.sh \
--mesh mesh1 --cluster $CLUSTER_EAST --network network1 | \
istioctl --context=$CLUSTER_EAST install -y -f -
Then, we need to expose the istiod service as well as the applications for the cross cluster communication:
kubectl apply --context=$CLUSTER_EAST -n istio-system -f \
$ISTIO_DIR/samples/multicluster/expose-istiod.yaml
kubectl --context=$CLUSTER_EAST apply -n istio-system -f \
$ISTIO_DIR/samples/multicluster/expose-services.yaml
export DISCOVERY_ADDRESS=$(kubectl \
--context=$CLUSTER_EAST \
-n istio-system get svc istio-eastwestgateway \
-o jsonpath='{.status.loadBalancer.ingress[0].ip}')
Finally, we need to install Prometheus, which is important and required for Kiali to operate:
kubectl --context $CLUSTER_EAST -n istio-system apply -f $ISTIO_DIR/samples/addons/prometheus.yaml
4.2.5 - Install Kiali
Run the following command to install Kiali using the Kiali operator:
kubectl config use-context $CLUSTER_EAST
helm upgrade --install --namespace istio-system --set auth.strategy=anonymous --set deployment.logger.log_level=debug --set deployment.ingress.enabled=true --repo https://kiali.org/helm-charts kiali-server kiali-server
Verify that Kiali is running with the following command:
istioctl dashboard kiali
There are other alternatives to expose Kiali or other Addons in Istio. Check Remotely Accessing Telemetry Addons for more information.
4.2.6 - Install Travels on East cluster
Run the following commands to install Travels application on east cluster:
kubectl create namespace travel-agency --context $CLUSTER_EAST
kubectl create namespace travel-portal --context $CLUSTER_EAST
kubectl create namespace travel-control --context $CLUSTER_EAST
kubectl label namespace travel-agency istio-injection=enabled --context $CLUSTER_EAST
kubectl label namespace travel-portal istio-injection=enabled --context $CLUSTER_EAST
kubectl label namespace travel-control istio-injection=enabled --context $CLUSTER_EAST
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_agency.yaml) -n travel-agency --context $CLUSTER_EAST
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_portal.yaml) -n travel-portal --context $CLUSTER_EAST
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_control.yaml) -n travel-control --context $CLUSTER_EAST
After the installation, we can see that the Travels application is running on the east cluster:
It is important to note that Kiali only observes one istio-system namespace as we did not configure it for multicluster yet.
Go to the Graph page and select the three namespaces related to the Travels demo in the namespace dropdown menu. This shows you the in-cluster traffic:
So far, we installed everything on one cluster, similarly to the Travels tutorial for a single cluster.
Now we will expand this topology to include a remote cluster. As we commented this situation can be very common in a production scenario, either because we might want to split some applications into different clusters, generally because they are maintained by different developers or for high availability or just making applications available in other zones to reduce latencies.
4.2.7 - Deploy West cluster
Run the following commands to deploy the second cluster:
minikube start -p $CLUSTER_WEST --network istio --memory 8g --cpus 4
Similar to the east cluster, we configure MetalLB:
minikube addons enable metallb -p $CLUSTER_WEST
MINIKUBE_IP=$(minikube ip -p $CLUSTER_WEST)
MINIKUBE_IP_NETWORK=$(echo $MINIKUBE_IP | sed -E 's/([0-9]+\.[0-9]+\.[0-9]+)\.[0-9]+/\1/')
MINIKUBE_LB_RANGE="${MINIKUBE_IP_NETWORK}.30-${MINIKUBE_IP_NETWORK}.39"
cat <<EOF | kubectl --context $CLUSTER_WEST apply -f -
apiVersion: v1
kind: ConfigMap
metadata:
namespace: metallb-system
name: config
data:
config: |
address-pools:
- name: default
protocol: layer2
addresses: [${MINIKUBE_LB_RANGE}]
EOF
4.2.8 - Install Istio on West cluster
This installation will be different as this cluster will be a remote. In a remote cluster, it won’t be an Istio control plane. Istio will install some resources that allows the primary control plane to configure the workloads in the remote cluster like injecting the sidecars and configuring the low level routing.
kubectl create namespace istio-system --context $CLUSTER_WEST
kubectl create secret generic cacerts -n istio-system --context $CLUSTER_WEST \
--from-file=certs/$CLUSTER_WEST/ca-cert.pem \
--from-file=certs/$CLUSTER_WEST/ca-key.pem \
--from-file=certs/$CLUSTER_WEST/root-cert.pem \
--from-file=certs/$CLUSTER_WEST/cert-chain.pem
kubectl --context=$CLUSTER_WEST annotate namespace istio-system topology.istio.io/controlPlaneClusters=$CLUSTER_EAST
kubectl --context=$CLUSTER_WEST label namespace istio-system topology.istio.io/network=network2
cat <<EOF > $CLUSTER_WEST.yaml
apiVersion: install.istio.io/v1alpha1
kind: IstioOperator
spec:
profile: remote
values:
istiodRemote:
injectionPath: /inject/cluster/$CLUSTER_WEST/net/network2
global:
remotePilotAddress: ${DISCOVERY_ADDRESS}
EOF
istioctl install -y --context=$CLUSTER_WEST -f $CLUSTER_WEST.yaml
We will also install a Prometheus instance on the remote. We will federate both Prometheus, with the east’s one being the place where all metrics will be gathered together:
kubectl apply -f $ISTIO_DIR/samples/addons/prometheus.yaml --context $CLUSTER_WEST
An important step is to create a secret on east cluster allowing it to fetch information of the remote cluster:
istioctl x create-remote-secret \
--context=$CLUSTER_WEST \
--name=$CLUSTER_WEST | \
kubectl apply -f - --context=$CLUSTER_EAST
Finally, we create the east-west gateway
$ISTIO_DIR/samples/multicluster/gen-eastwest-gateway.sh \
--mesh mesh1 --cluster $CLUSTER_WEST --network network2 | \
istioctl --context=$CLUSTER_WEST install -y -f -
Prometheus federation
Kiali requires unified metrics from a single Prometheus endpoint for all clusters, even in a multi-cluster environment. In this tutorial, we will federate the two Prometheus instances, meaning that all the remote’s metrics should be fetched by the main Prometheus.
We will configure east’s Prometheus to fetch west’s metrics:
kubectl patch svc prometheus -n istio-system --context $CLUSTER_WEST -p "{\"spec\": {\"type\": \"LoadBalancer\"}}"
WEST_PROMETHEUS_ADDRESS=$(kubectl --context=$CLUSTER_WEST -n istio-system get svc prometheus -o jsonpath='{.status.loadBalancer.ingress[0].ip}')
curl -L -o prometheus.yaml https://raw.githubusercontent.com/kiali/kiali/master/hack/istio/multicluster/prometheus.yaml
sed -i "s/WEST_PROMETHEUS_ADDRESS/$WEST_PROMETHEUS_ADDRESS/g" prometheus.yaml
kubectl --context=$CLUSTER_EAST apply -f prometheus.yaml -n istio-system
4.2.9 - Configure Kiali for multicluster
We will configure Kiali to access the remote cluster. This will require a secret (similar to the Istio secret) containing the credentials for Kiali to fetch information from the remote cluster:
curl -L -o kiali-prepare-remote-cluster.sh https://raw.githubusercontent.com/kiali/kiali/master/hack/istio/multicluster/kiali-prepare-remote-cluster.sh
chmod +x kiali-prepare-remote-cluster.sh
./kiali-prepare-remote-cluster.sh --kiali-cluster-context $CLUSTER_EAST --remote-cluster-context $CLUSTER_WEST
Finally, upgrade the installation for Kiali to pick up the secret:
kubectl config use-context $CLUSTER_EAST
helm upgrade --install --namespace istio-system --set auth.strategy=anonymous --set deployment.logger.log_level=debug --set deployment.ingress.enabled=true --repo https://kiali.org/helm-charts kiali-server kiali-server
As result, we can quickly see that a new namespace appear in the Overview, the istio-system namespace from west cluster:
4.2.10 - Install Travels on West cluster
We are going to deploy two new services just to distribute traffic on the new cluster. These services are travels v2 and v3:
kubectl create ns travel-agency --context $CLUSTER_WEST
kubectl label namespace travel-agency istio-injection=enabled --context $CLUSTER_WEST
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travels-v2.yaml) -n travel-agency --context $CLUSTER_WEST
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travels-v3.yaml) -n travel-agency --context $CLUSTER_WEST
cat <<EOF | kubectl -n travel-agency --context $CLUSTER_WEST apply -f -
apiVersion: v1
kind: Service
metadata:
name: travels
labels:
app: travels
spec:
ports:
- name: http
port: 8000
selector:
app: travels
---
apiVersion: v1
kind: Service
metadata:
name: insurances
labels:
app: insurances
spec:
ports:
- name: http
port: 8000
selector:
app: insurances
---
apiVersion: v1
kind: Service
metadata:
name: hotels
labels:
app: hotels
spec:
ports:
- name: http
port: 8000
selector:
app: hotels
---
apiVersion: v1
kind: Service
metadata:
name: flights
labels:
app: flights
spec:
ports:
- name: http
port: 8000
selector:
app: flights
---
apiVersion: v1
kind: Service
metadata:
name: discounts
labels:
app: discounts
spec:
ports:
- name: http
port: 8000
selector:
app: discounts
---
apiVersion: v1
kind: Service
metadata:
name: cars
labels:
app: cars
spec:
ports:
- name: http
port: 8000
selector:
app: cars
EOF
After the installation, we can see that traffic is flowing to the remote cluster too:
This is happening automatically, Istio balances the traffic to both services. The key thing to notice here is that there is a concept called namespace sameness in Istio that is very important when planning our multicluster setup.
In both clusters, we can see that we have the same namespaces. They are called the same in both. Also, we can see that the services in both clusters need to exist and be called the same.
When we created the west’s namespaces, they are called the same, and also notice that even if we do not have instances of insurances or cars, we created the services. This is because travel services from the cluster will try to communicate with these services, not caring at all if the applications are in the west or east cluster. Istio will handle the routing in the back.
From this moment, we can start playing with Kiali to introduce some scenarios previously seen in the Travels tutorial.
4.3 - Travels Demo Tutorial
This tutorial uses the Kiali Travels Demo to teach Kiali and Istio features.
4.3.1 - Prerequisites
Platform Setup
This tutorial assumes you will have access to a Kubernetes cluster with Istio installed.
This tutorial has been tested using:
Tip
Platform dependent tasks will be indicated with a special note like this.This tutorial has been tested using:
- minikube v1.16.0, istio 1.8.1 and kiali v1.28.0
- openshift v4.8.3, istio 1.11.0 and kiali v1.39.0
Install Istio
Once you have your Kubernetes cluster ready, follow the Istio Getting Started to install and setup a demo profile that will be used in this tutorial.
DNS entries can be added in a basic way to the /etc/hosts
file but you can use any other DNS service that allows to resolve a domain with the external Ingress IP.
Minikube
This tutorial uses Minikube tunnel feature for external Ingress IP.OpenShift
This tutorial uses a route for external Ingress IP.Update Kiali
Istio defines a specific Kiali version as an addon.
In this tutorial we are going to update Kiali to the latest release version.
Assuming you have installed the addons following the Istio Getting Started guide, you can uninstall Kiali with the command:
kubectl delete -f ${ISTIO_HOME}/samples/addons/kiali.yaml --ignore-not-found
There are multiple ways to install a recent version of Kiali, this tutorial follows the Quick Start using Helm Chart.
helm install \
--namespace istio-system \
--set auth.strategy="anonymous" \
--repo https://kiali.org/helm-charts \
kiali-server \
kiali-server
Access the Kiali UI
The Istio istioctl
client has an easy method to expose and access Kiali:
${ISTIO_HOME}/bin/istioctl dashboard kiali
There are other alternatives to expose Kiali or other Addons in Istio. Check Remotely Accessing Telemetry Addons for more information.
After the Prerequisites you should be able to access Kiali. Verify its version by clicking the “?” icon and selecting “About”:
4.3.2 - Install Travel Demo
Deploy the Travel Demo
This demo application will deploy several services grouped into three namespaces.
Note that at this step we are going to deploy the application without any reference to Istio.
We will join services to the ServiceMesh in a following step.
To create and deploy the namespaces perform the following commands:
OpenShift
OpenShift users can substituteoc
for kubectl
. OpenShift users will need
to add the necessary NetworkAttachmentDefinition to each namespace. Also, the necessary SecurityContextConstraints
for the service accounts defined in the namespace (minimally, default).
kubectl create namespace travel-agency
kubectl create namespace travel-portal
kubectl create namespace travel-control
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_agency.yaml) -n travel-agency
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_portal.yaml) -n travel-portal
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_control.yaml) -n travel-control
Check that all deployments rolled out as expected:
$ kubectl get deployments -n travel-control
NAME READY UP-TO-DATE AVAILABLE AGE
control 1/1 1 1 85s
$ kubectl get deployments -n travel-portal
NAME READY UP-TO-DATE AVAILABLE AGE
travels 1/1 1 1 91s
viaggi 1/1 1 1 91s
voyages 1/1 1 1 91s
$ kubectl get deployments -n travel-agency
NAME READY UP-TO-DATE AVAILABLE AGE
cars-v1 1/1 1 1 96s
discounts-v1 1/1 1 1 96s
flights-v1 1/1 1 1 96s
hotels-v1 1/1 1 1 96s
insurances-v1 1/1 1 1 96s
mysqldb-v1 1/1 1 1 96s
travels-v1 1/1 1 1 96s
Understanding the demo application
Travel Portal namespace
The Travel Demo application simulates two business domains organized in different namespaces.
In a first namespace called travel-portal there will be deployed several travel shops, where users can search for and book flights, hotels, cars or insurance.
The shop applications can behave differently based on request characteristics like channel (web or mobile) or user (new or existing).
These workloads may generate different types of traffic to imitate different real scenarios.
All the portals consume a service called travels deployed in the travel-agency namespace.
Travel Agency namespace
A second namespace called travel-agency will host a set of services created to provide quotes for travel.
A main travels service will be the business entry point for the travel agency. It receives a destination city and a user as parameters and it calculates all elements that compose a travel budget: airfare, lodging, car reservation and travel insurance.
Each service can provide an independent quote and the travels service must then aggregate them into a single response.
Additionally, some users, like registered users, can have access to special discounts, managed as well by an external service.
Service relations between namespaces can be described in the following diagram:
Travel Portal and Travel Agency flow
A typical flow consists of the following steps:
. A portal queries the travels service for available destinations. . Travels service queries the available hotels and returns to the portal shop. . A user selects a destination and a type of travel, which may include a flight and/or a car, hotel and insurance. . Cars, Hotels and Flights may have available discounts depending on user type.
Travel Control namespace
The travel-control namespace runs a business dashboard with two key features:
- Allow setting changes for every travel shop simulator (traffic ratio, device, user and type of travel).
- Provide a business view of the total requests generated from the travel-portal namespace to the travel-agency services, organized by business criteria as grouped per shop, per type of traffic and per city.
4.3.3 - First Steps
Missing Sidecars
The Travel Demo has been deployed in the previous step but without installing any Istio sidecar proxy.
In that case, the application won’t connect to the control plane and won’t take advantage of Istio’s features.
In Kiali, we will see the new namespaces in the overview page:
But we won’t see any traffic in the graph page for any of these new namespaces:
If we examine the Applications, Workloads or Services page, it will confirm that there are missing sidecars:
Enable Sidecars
In this tutorial, we will add namespaces and workloads into the ServiceMesh individually step by step.
This will help you to understand how Istio sidecar proxies work and how applications can use Istio’s features.
We are going to start with the control workload deployed into the travel-control namespace:
Step 1
Enable Auto Injection on the travel-control namespaceStep 2
Enable Auto Injection for control workloadUnderstanding what happened:
(ii) Automatic Sidecar Injection
Open Travel Demo to Outside Traffic
The control workload now has an Istio sidecar proxy injected but this application is not accessible from the outside.
In this step we are going to expose the control service using an Istio Ingress Gateway which will map a path to a route at the edge of the mesh.
Step 1
Create a DNS entry for the control service associated with the External IP of the Istio IngressMinikube
Kubernetes Service EXTERNAL-IP for “LoadBalancer” TYPE is provided in minikube plaform using the minikube tunnel tool.For minikube we will check the External IP of the Ingress gateway:
$ kubectl get services/istio-ingressgateway -n istio-system
NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE
istio-ingressgateway LoadBalancer 10.101.6.144 10.101.6.144 15021:30757/TCP,80:32647/TCP,443:30900/TCP,31400:30427/TCP,15443:31072/TCP 19h
And we will add a simple entry to the /etc/hosts
of the tutorial machine with the desired DNS entry:
...
10.101.6.144 control.travel-control.istio-cluster.org
...
Then, from this machine, the url control.travel-control.istio-cluster.org
will resolve to the External IP of the Ingress Gateway of Istio.
OpenShift
OpenShift does not provide the Kubernetes Service EXTERNAL-IP for “LoadBalancer” TYPE. Instead, you can expose the istio-ingressgateway service.For OpenShift we will expose the Ingress gateway as a service:
$ oc expose service istio-ingressgateway -n istio-system
$ oc get routes -n istio-system
NAME HOST/PORT PATH SERVICES PORT TERMINATION WILDCARD
istio-ingressgateway <YOUR_ROUTE_HOST> istio-ingressgateway http2 None
Then, from this machine, the host <YOUR_ROUTE_HOST> will resolve to the External IP of the Ingress Gateway of Istio. For OpenShift we will
not define a DNS entry, instead, where you see control.travel-control.istio-cluster.org
in the steps below, subsitute the value of <YOUR_ROUTE_HOST>.
Step 2
Use the Request Routing Wizard on the control service to generate a traffic ruleUse “Add Route Rule” button to add a default rule where any request will be routed to the control workload.
Use the Advanced Options and add a gateway with host control.travel-control.istio-cluster.org
and create the Istio config.
Verify the Istio configuration generated.
Step 3
Test the control service by pointing your browser to\http://control.travel-control.istio-cluster.org
Step 4
Review travel-control namespace in KialiUnderstanding what happened:
- External traffic enters into the cluster through a Gateway
- Traffic is routed to the control service through a VirtualService
- Kiali Graph visualizes the traffic telemetry reported from the control sidecar proxy
- Only the travel-control namespace is part of the mesh
4.3.4 - Observe
Enable Sidecars in all workloads
An Istio sidecar proxy adds a workload into the mesh.
Proxies connect with the control plane and provide Service Mesh functionality.
Automatically providing metrics, logs and traces is a major feature of the sidecar.
In the previous steps we have added a sidecar only in the travel-control namespace’s control workload.
We have added new powerful features but the application is still missing visibility from other workloads.
Step 1
Switch to the Workload graph and select multiple namespaces to identify missing sidecars in the Travel Demo applicationThat control workload provides good visibility of its traffic, but telemetry is partially enabled, as travel-portal and travel-agency workloads don’t have sidecar proxies.
Step 2
Enable proxy injection in travel-portal and travel-agency namespacesIn the First Steps of this tutorial we didn’t inject the sidecar proxies on purpose to show a scenario where only some workloads may have sidecars.
Typically, Istio users annotate namespaces before the deployment to allow Istio to automatically add the sidecar when the application is rolled out into the cluster. Perform the following commands:
kubectl label namespace travel-agency istio-injection=enabled
kubectl label namespace travel-portal istio-injection=enabled
kubectl rollout restart deploy -n travel-portal
kubectl rollout restart deploy -n travel-agency
Verify that travel-control, travel-portal and travel-agency workloads have sidecars deployed:
Step 3
Verify updated telemetry for travel-portal and travel-agency namespacesGraph walkthrough
The graph provides a powerful set of Graph Features to visualize the traffic topology of the service mesh.
In this step, we will show how to use the Graph to show relevant information in the context of the Travel Demo application.
Our goal will be to identify the most critical service of the demo application.
Step 1
Select all travel- namespaces in the graph and enable Traffic Distribution edge labels in the Display Options:Review the status of the mesh, everything seems healthy, but also note that hotels service has more load compared to other services inlcuded in the travel-agency namespace.
Step 2
Select the hotels service, use the graph side-panel to select a trace from the Traces tab:Combining telemetry and tracing information will show that there are traces started from a portal that involve multiple services but also other traces that only consume the hotels service.
Step 3
Select the main travels application and double-click to zoom inThe graph can focus on an element to study a particular context in detail. Note that a contextual menu is available using right-click, to easily shortcut the navigation to other sections.
Application details
Kiali provides Detail Views to navigate into applications, workloads and services.
These views provide information about the structure, health, metrics, logs, traces and Istio configuration for any application component.
In this tutorial we are going to learn how to use them to examine the main travels application of our example.
Step 1
Navigate to the travels applicationAn application is an abstract group of workloads and services labeled with the same “application” name.
From Service Mesh perspective this concept is significant as telemetry and tracing signals are mainly grouped by “application” even if multiple workloads are involved.
At this point of the tutorial, the travels application is quite simple, just a travels-v1 workload exposed through the travels service. Navigate to the travels-v1 workload detail by clicking the link in the travels application overview.
Step 2
Examine Outbound Metrics of travels-v1 workloadThe Metrics tab provides a powerful visualization of telemetry collected by the Istio proxy sidecar. It presents a dashboard of charts, each of which can be expanded for closer inspection. Expand the Request volume chart:
Metrics Settings provides multiple predefined criteria out-of-the-box. Additionally, enable the spans checkbox to correlate metrics and tracing spans in a single chart.
We can see in the context of the Travels application, the hotels service request volume differs from that of the other travel-agency services.
By examining the Request Duration chart also shows that there is no suspicious delay, so probably this asymmetric volume is part of the application business' logic.
Step 3
Review Logs of travels-v1 workloadThe Logs tab provides a unified view of application container logs with the Istio sidecar proxy logs. It also offers a spans checkbox, providing a correlated view of both logs and tracing, helping identify spans of interest.
From the application container log we can spot that there are two main business methods: GetDestinations and GetTravelQuote.
In the Istio sidecar proxy log we see that GetDestinations invokes a GET /hotels
request without parameters.
However, GetTravelQuote invokes multiple requests to other services using a specific city as a parameter.
Then, as discussed in the Travel Demo design, an initial query returns all available hotels before letting the user choose one and then get specific quotes for other destination services.
That scenario is shown in the increase of the hotels service utilization.
Step 4
Review Traces of workload-v1Now we have identified that the hotels service has more use than other travel-agency services.
The next step is to get more context to answer if some particular service is acting slower than expected.
The Traces tab allows comparison between traces and metrics histograms, letting the user determine if a particular spike is expected in the context of average values.
In the same context, individual spans can be compared in more detail, helping to identify a problematic step in the broader scenario.
4.3.5 - Connect
Request Routing
The Travel Demo application has several portals deployed on the travel-portal namespace consuming the travels service deployed on the travel-agency namespace.
The travels service is backed by a single workload called travels-v1 that receives requests from all portal workloads.
At a moment of the lifecycle the business needs of the portals may differ and new versions of the travels service may be necessary.
This step will show how to route requests dynamically to multiple versions of the travels service.
Step 1
Deploy travels-v2 and travels-v3 workloadskubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travels-v2.yaml) -n travel-agency
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travels-v3.yaml) -n travel-agency
As there is no specific routing defined, when there are multiple workloads for travels service the requests are uniformly distributed.
Step 2
Investigate the http headers used by the Travel Demo applicationIn our scenario we would like to perform the following routing logic:
- All traffic from travels.uk routed to travels-v1
- All traffic from viaggi.it routed to travels-v2
- All traffic from voyages.fr routed to travels-v3
Portal workloads use HTTP/1.1 protocols to call the travels service, so one strategy could be to use the HTTP headers to define the matching condition.
But, where to find the HTTP headers ? That information typically belongs to the application domain and we should examine the code, documentation or dynamically trace a request to understand which headers are being used in this context.
There are multiple possibilities. The Travel Demo application uses an Istio Annotation feature to add an annotation into the Deployment descriptor, which adds additional Istio configuration into the proxy.
In our example the HTTP Headers are added as part of the trace context.
Then tracing will populate custom tags with the portal, device, user and travel used.
Step 3
Use the Request Routing Wizard on travels service to generate a traffic ruleWe will define three “Request Matching” rules as part of this request routing. Define all three rules before clicking the Create button.
In the first rule, we will add a request match for when the portal header has the value of travels.uk.
Define the exact match, like below, and click the “Add Match” button to update the “Matching selected” for this rule.
Move to “Route To” tab and update the destination for this “Request Matching” rule. Then use the “Add Route Rule” to create the first rule.
Add similar rules to route traffic from viaggi.it to travels-v2 workload and from voyages.fr to travels-v3 workload.
When the three rules are defined you can use “Create” button to generate all Istio configurations needed for this scenario. Note that the rule ordering does not matter in this scenario.
The Istio config for a given service is found on the “Istio Config” card, on the Service Details page.
Step 4
Verify that the Request Routing is working from the travels-portal GraphOnce the Request Routing is working we can verify that outbound traffic from every portal goes to the single travels workload. To see this clearly use a “Workload Graph” for the “travel-portal” namespace, enable “Traffic Distribution” edge labels and disable the “Service Nodes” Display option:
Note that no distribution label on an edge implies 100% of traffic.
Examining the “Inbound Traffic” for any of the travels workloads will show a similar pattern in the telemetry.
Using a custom time range to select a large interval, we can see how the workload initially received traffic from all portals but then only a single portal after the Request Routing scenarios were defined.
Step 5
Update or delete Istio ConfigurationKiali Wizards allow you to define high level Service Mesh scenarios and will generate the Istio Configuration needed for its implementation (VirtualServices, DestinationRules, Gateways and PeerRequests). These scenarios can be updated or deleted from the “Actions” menu of a given service.
To experiment further you can navigate to the travels service and update your configuration by selecting “Request Routing”, as shown below. When you have finished experimenting with Routing Request scenarios then use the “Actions” menu to delete the generated Istio config.
Fault Injection
The Observe step has spotted that the hotels service has additional traffic compared with other services deployed in the travel-agency namespace.
Also, this service becomes critical in the main business logic. It is responsible for querying all available destinations, presenting them to the user, and getting a quote for the selected destination.
This also means that the hotels service may be one of the weakest points of the Travel Demo application.
This step will show how to test the resilience of the Travel Demo application by injecting faults into the hotels service and then observing how the application reacts to this scenario.
Step 1
Use the Fault Injection Wizard on hotels service to inject a delaySelect an HTTP Delay and specify the “Delay percentage” and “Fixed Delay” values. The default values will introduce a 5 seconds delay into 100% of received requests.
Step 2
Understanding source and destination metricsTelemetry is collected from proxies and it is labeled with information about the source and destination workloads.
In our example, let’s say that travels service (“Service A” in the Istio diagram below) invokes the hotels service (“Service B” in the diagram). Travels is the “source” workload and hotels is the “destination” workload. The travels proxy will report telemetry from the source perspective and hotels proxy will report telemetry from the destination perspective. Let’s look at the latency reporting from both perspectives.
The travels workload proxy has the Fault Injection configuration so it will perform the call to the hotels service and will apply the delay on the travels workload side (this is reported as source telemetry).
We can see in the hotels telemetry reported by the source (the travels proxy) that there is a visible gap showing 5 second delay in the request duration.
But as the Fault Injection delay is applied on the source proxy (travels), the destination proxy (hotels) is unaffected and its destination telemetry show no delay.
Step 3
Study the impact of the travels service delayThe injected delay is propagated from the travels service to the downstream services deployed on travel-portal namespace, degrading the overall response time. But the downstream services are unaware, operate normally, and show a green status.
Step 4
Update or delete Istio ConfigurationAs part of this step you can update the Fault Injection scenario to test different delays. When finished, you can delete the generated Istio config for the hotels service.
Traffic Shifting
In the previous Request Routing step we have deployed two new versions of the travels service using the travels-v2 and travels-v3 workloads.
That scenario showed how Istio can route specific requests to specific workloads. It was configured such that each portal deployed in the travel-portal namespace (travels.uk, viaggi.it and voyages.fr) were routed to a specific travels workload (travels-v1, travels-v2 and travels-v3).
This Traffic Shifting step will simulate a new scenario: the new travels-v2 and travels-v3 workloads will represent new improvements for the travels service that will be used by all requests.
These new improvements implemented in travels-v2 and travels-v3 represent two alternative ways to address a specific problem. Our goal is to test them before deciding which one to use as a next version.
At the beginning we will send 80% of the traffic into the original travels-v1 workload, and will split 10% of the traffic each on travels-v2 and travels-v3.
Step 1
Use the Traffic Shifting Wizard on travels serviceCreate a scenario with 80% of the traffic distributed to travels-v1 workload and 10% of the traffic distributed each to travels-v2 and travels-v3.
Step 2
Examine Traffic Shifting distribution from the travels-agency GraphStep 3
Compare travels workload and assess new changes proposed in travels-v2 and travels-v3Istio Telemetry is grouped per logical application. That has the advantage of easily comparing different but related workloads, for one or more services.
In our example, we can use the “Inbound Metrics” and “Outbound Metrics” tabs in the travels application details, group by “Local version” and compare how travels-v2 and travels-v3 are working.
The charts show that the Traffic distribution is working accordingly and 80% is being distributed to travels-v1 workload and they also show no big differences between travels-v2 and travels-v3 in terms of request duration.
Step 4
Update or delete Istio ConfigurationAs part of this step you can update the Traffic Shifting scenario to test different distributions. When finished, you can delete the generated Istio config for the travels service.
TCP Traffic Shifting
The Travel Demo application has a database service used by several services deployed in the travel-agency namespace.
At some point in the lifecycle of the application the telemetry shows that the database service degrades and starts to increase the average response time.
This is a common situation. In this case, a database specialist suggests an update of the original indexes due to the data growth.
Our database specialist is suggesting two approaches and proposes to prepare two versions of the database service to test which may work better.
This step will show how the “Traffic Shifting” strategy can be applied to TCP services to test which new database indexing strategy works better.
Step 1
Deploy mysqldb-v2 and mysqldb-v3 workloadsTo deploy the new versions of the mysqldb service execute the commands:
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/mysql-v2.yaml) -n travel-agency
kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/mysql-v3.yaml) -n travel-agency
Step 2
Use the TCP Traffic Shifting Wizard on mysqldb serviceCreate a scenario with 80% of the traffic distributed to mysqldb-v1 workload and 10% of the traffic distributed each to mysqldb-v2 and mysqldb-v3.
Step 3
Examine Traffic Shifting distribution from the travels-agency GraphNote that TCP telemetry has different types of metrics, as “Traffic Distribution” is only available for HTTP/gRPC services, for this service we need to use “Traffic Rate” to evaluate the distribution of data (bytes-per-second) between mysqldb workloads.
Step 4
Compare mysqldb workload and study new indexes proposed in mysqldb-v2 and mysqldb-v3TCP services have different telemetry but it’s still grouped by versions, allowing the user to compare and study pattern differences for mysqldb-v2 and mysqldb-v3.
The charts show more peaks in mysqldb-v2 compared to mysqldb-v3 but overall a similar behavior, so it’s probably safe to choose either strategy to shift all traffic.
Step 5
Update or delete Istio ConfigurationAs part of this step you can update the TCP Traffic Shifting scenario to test a different distribution. When finished, you can delete the generated Istio config for the mysqldb service.
Request Timeouts
In the Fault Injection step we showed how we could introduce a delay in the critical hotels service and test the resilience of the application.
The delay was propagated across services and Kiali showed how services accepted the delay without creating errors on the system.
But in real scenarios delays may have important consequences. Services may prefer to fail sooner, and recover, rather than propagating a delay across services.
This step will show how to add a request timeout for one of the portals deployed in travel-portal namespace. The travel.uk and viaggi.it portals will accept delays but voyages.fr will timeout and fail.
Step 1
Use the Fault Injection Wizard on hotels service to inject a delayRepeat the Fault Injection step to add delay on hotels service.
Step 2
Use the Request Routing Wizard on travels service to add a route rule with delay for voyages.frAdd a rule to add a request timeout only on requests coming from voyages.fr portal:
- Use the Request Matching tab to add a matching condition for the portal header with voyages.fr value.
- Use the Request Timeouts tab to add an HTTP Timeout for this rule.
- Add the rule to the scenario.
A first rule should be added to the list like:
Add a second rule to match any request and create the scenario. With this configuration, requests coming from voyages.fr will match the first rule and all others will match the second rule.
Step 3
Review the impact of the request timeout in the travels serviceCreate the rule. The Graph will show how requests coming from voyages.fr start to fail, due to the request timeout introduced.
Requests coming from other portals work without failures but are degraded by the hotels delay.
This scenario can be visualized in detail if we examine the “Inbound Metrics” and we group by “Remote app” and “Response code”.
As expected, the requests coming from voyages.fr don’t propagate the delay and they fail in the 2 seconds range, meanwhile requests from other portals don’t fail but they propagate the delay introduced in the hotels service.
Step 4
Update or delete Istio ConfigurationAs part of this step you can update the scenarios defined around hotels and travels services to experiment with more conditions, or you can delete the generated Istio config in both services.
Circuit Breaking
Distributed systems will benefit from failing quickly and applying back pressure, as opposed to propagating delays and errors through the system.
Circuit breaking is an important technique used to limit the impact of failures, latency spikes, and other types of network problems.
This step will show how to apply a Circuit Breaker into the travels service in order to limit the number of concurrent requests and connections.
Step 1
Deploy a new loadtester portal in the travel-portal namespaceIn this example we are going to deploy a new workload that will simulate an important increase in the load of the system.
OpenShift
OpenShift users may need to also add the associated loadtester serviceaccount to the necessary securitycontextcontraints.kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_loadtester.yaml) -n travel-portal
The loadtester workload will try to create 50 concurrent connections to the travels service, adding considerable pressure to the travels-agency namespace.
The Travel Demo application is capable of handling this load and in a first look it doesn’t show unhealthy status.
But in a real scenario an unexpected increase in the load of a service like this may have a significant impact in the overall system status.
Step 2
Use the Traffic Shifting Wizard on travels service to generate a traffic ruleUse the “Traffic Shifting” Wizard to distribute traffic (evenly) to the travels workloads and use the “Advanced Options” to add a “Circuit Breaker” to the scenario.
The “Connection Pool” settings will indicate that the proxy sidecar will reject requests when the number of concurrent connections and requests exceeds more than one.
The “Outlier Detection” will eject a host from the connection pool if there is more than one consecutive error.
Step 3
Study the behavior of the Circuit Breaker in the travels serviceIn the loadtester versioned-app Graph we can see that the travels service’s Circuit Breaker accepts some, but fails most, connections.
Remember, that these connections are stopped by the proxy on the loadtester side. That “fail sooner” pattern prevents overloading the network.
Using the Graph we can select the failed edge, check the Flags tab, and see that those requests are closed by the Circuit breaker.
If we examine the “Request volume” metric from the “Outbound Metrics” tab we can see the evolution of the requests, and how the introduction of the Circuit Breaker made the proxy reduce the request volume.
Step 4
Update or delete Istio ConfigurationAs part of this step you can update the scenarios defined around the travels service to experiment with more Circuit Breaker settings, or you can delete the generated Istio config in the service.
Understanding what happened:
(iii) Connection Pool Settings
(iv) Envoy’s Circuit breaking Architecture
Mirroring
This tutorial has shown several scenarios where Istio can route traffic to different versions in order to compare versions and evaluate which one works best.
The Traffic Shifting step was focused on travels service adding a new travels-v2 and travels-v3 workloads and the TCP Traffic Shifting showed how this scenario can be used on TCP services like mysqldb service.
Mirroring (or shadowing) is a particular case of the Traffic Shifting scenario where the proxy sends a copy of live traffic to a mirrored service.
The mirrored traffic happens out of band of the primary request path. It allows for testing of alternate services, in production environments, with minimal risk.
Istio mirrored traffic is only supported for HTTP/gRPC protocols.
This step will show how to apply mirrored traffic into the travels service.
Step 1
Use the Traffic Shifting Wizard on travels serviceWe will simulate the following:
- travels-v1 is the original traffic and it will keep 80% of the traffic
- travels-v2 is the new version to deploy, it’s being evaluated and it will get 20% of the traffic to compare against travels-v1
- But travels-v3 will be considered as a new, experimental version for testing outside of the regular request path. It will be defined as a mirrored workload on 50% of the original requests.
Step 2
Examine Traffic Shifting distribution from the travels-agency GraphNote that Istio does not report mirrored traffic telemetry from the source proxy. It is reported from the destination proxy, although it is not flagged as mirrored, and therefore an edge from travels to the travels-v3 workload will appear in the graph. Note the traffic rates reflect the expected ratio of 80/20 between travels-v1 and travels-v2, with travels-v3 at about half of that total.
This can be examined better using the “Source” and “Destination” metrics from the “Inbound Metrics” tab.
The “Source” proxy, in this case the proxies injected into the workloads of travel-portal namespace, won’t report telemetry for travels-v3 mirrored workload.
But the “Destination” proxy, in this case the proxy injected in the travels-v3 workload, will collect the telemetry from the mirrored traffic.
Step 3
Update or delete Istio ConfigurationAs part of this step you can update the Mirroring scenario to test different mirrored distributions.
When finished you can delete the generated Istio config for the travels service.
4.3.6 - Secure
Authorization Policies and Sidecars
Security is one of the main pillars of Istio features.
The Istio Security High Level Architecture provides a comprehensive solution to design and implement multiple security scenarios.
In this tutorial we will show how Kiali can use telemetry information to create security policies for the workloads deployed in a given namespace.
Istio telemetry aggregates the ServiceAccount information used in the workloads communication. This information can be used to define authorization policies that deny and allow actions on future live traffic communication status.
Additionally, Istio sidecars can be created to limit the hosts with which a given workload can communicate. This improves traffic control, and also reduces the memory footprint of the proxies.
This step will show how we can define authorization policies for the travel-agency namespace, in the Travel Demo application, for all existing traffic in a given time period.
Once authorization policies are defined, a new workload will be rejected if it doesn’t match the security rules defined.
Step 1
Undeploy the loadtester workload from travel-portal namespaceIn this example we will use the loadtester workload as the “intruder” in our security rules.
If we have followed the previous tutorial steps, we need to undeploy it from the system.
kubectl delete -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_loadtester.yaml) -n travel-portal
We should validate that telemetry has updated the travel-portal namespace and “Security” can be enabled in the Graph Display options.
Step 2
Create Authorization Policies, and Istio Sidecars, for current traffic for travel-agency namespaceEvery workload in the cluster uses a Service Account.
travels.uk, viaggi.it and voyages.fr workloads use the default cluster.local/ns/travel-portal/sa/default ServiceAccount defined automatically per namespace.
This information is propagated into the Istio Telemetry and Kiali can use it to define a set of AuthorizationPolicy rules, and Istio Sidecars.
The Sidecars restrict the list of hosts with which each workload can communicate, based on the current traffic.
The “Create Traffic Policies” action, located in the Overview page, will create these definitions.
This will generate a main DENY ALL rule to protect the whole namespace, and an individual ALLOW rule per workload identified in the telemetry.
It will create also an individual Sidecar per workload, each of them containing the set of hosts.
As an example, we can see that for the travels-v1 workload, the following list of hosts are added to the sidecar.
Step 3
Deploy the loadtester portal in the travel-portal namespaceIf the loadtester workload uses a different ServiceAccount then, when it’s deployed, it won’t comply with the AuthorizationPolicy rules defined in the previous step.
OpenShift
OpenShift users may need to also add the associated loadtester serviceaccount to the necessary securitycontextcontraints.kubectl apply -f <(curl -L https://raw.githubusercontent.com/kiali/demos/master/travels/travel_loadtester.yaml) -n travel-portal
Now, travels workload will reject requests made by loadtester workload and that situation will be reflected in Graph:
This can also be verified in the details page using the Outbound Metrics tab grouped by response code (only the 403 line is present).
Inspecting the Logs tab confirms that loadtester workload is getting a HTTP 403 Forbidden response from travels workloads, as expected.
Step 4
Update travels-v1 AuthorizationPolicy to allow loadtester ServiceAccountAuthorizationPolicy resources are defined per workload using matching selectors.
As part of the example, we can show how a ServiceAccount can be added into an existing rule to allow traffic from loadtester workload into the travels-v1 workload only.
As expected, now we can see that travels-v1 workload accepts requests from all travel-portal namespace workloads, but travels-v2 and travels-v3 continue rejecting requests from loadtester source.
Using “Outbound Metrics” tab from the loadtester workload we can group per “Remote version” and “Response code” to get a detailed view of this AuthorizationPolicy change.
Step 5
Verify the proxies clusters list is limited by the SidecarsAccording to Istio Sidecar documentation, Istio configures all mesh sidecar proxies to reach every mesh workload. After the sidecars are created, the list of hosts is reduced according to the current traffic. To verify this, we can look for the clusters configured in each proxy.
As an example, looking into the cars-v1 workload, we can see that there is a reduced number of clusters with which the proxy can communicate.
Step 6
Update or delete Istio ConfigurationAs part of this step, you can update the AuthorizationPolicies and Istio Sidecars generated for the travel-agency namespace, and experiment with more security rules. Or, you can delete the generated Istio config for the namespace.
4.3.7 - Uninstall Travel Demo
To uninstall the Travel Demo application perform the following commands:
kubectl delete namespace travel-agency
kubectl delete namespace travel-portal
kubectl delete namespace travel-control
5 - Architecture and Terms
5.1 - Architecture
Kiali architecture
Kiali is composed of two components: a back-end application running in the container application platform, and a user-facing front-end application. Kiali depends on external services and components provided by the container application platform and Istio.
The following diagram illustrates the components involved in Kiali and its interactions:
Kiali back-end
The back-end is the application that runs in the container application platform. It’s written in Go. The code can be found at kiali/kiali GitHub repository.
This is the component that communicates with Istio parts, retrieves and processes data, and exposes this data to the front-end.
The back-end doesn’t need storage. The back-end configuration is managed via the Kiali CR when Kiali is installed via the Kiali operator, or via a configmap when installed via Helm.
Kiali front-end
The front-end is a single page web application, built using Patternfly, React, Typescript and Redux. The code can be found at kiali/kiali frontend folder.
In a standard deployment, the back-end serves the front-end. Then, the front-end queries the Kiali back-end in order to get data and present it to the user.
There are limited options for personalization, the front-end is mainly stateless. Some data may be persisted, such as session credentials, but this data is stored in the browser and won’t be available in other browsers nor other devices.
Istio Service Mesh
Kiali is a console for Istio, and as such, Istio is a requirement. It provides and controls the service mesh. Kiali and Istio are installed separately.
Kiali needs to retrieve Istio data and configurations, which are exposed through Prometheus, the Kubernetes API, and istiod. For environments where istiod is inaccessible, Kiali’s communication with istiod can be disabled.
Prometheus
Prometheus is an Istio dependency. When Istio telemetry is enabled, metrics data is stored in Prometheus. Kiali uses the data stored in Prometheus to figure out the mesh topology, show metrics, calculate health, show possible problems, etc.
Kiali communicates directly with Prometheus and assumes the metrics used by Istio Telemetery. It’s a hard dependency for Kiali, and many Kiali features will not work without it.
Currently, Kiali relies on Istio’s default metrics set. Make sure that these default metrics are always in place. Some metric customization is possible as long as the Kiali requirements are still met. For the current list of required metrics see this FAQ entry.
Kubernetes API
Kiali uses the API of the container application platform in order to fetch and resolve service mesh configurations.
Container application platforms where Kiali is known to work are OKD and Kubernetes. Kiali should also work on the derivatives of these platforms.
Kiali queries the Kubernetes API to retrieve, for example, definitions for namespaces, services, deployments, pods, and other entities. Kiali also makes queries to resolve relationships between the different cluster entities.
The Kubernetes API is also queried to retrieve Istio configurations like virtual services, destination rules, route rules, gateways, and quotas.
Jaeger
Jaeger is optional. When available, Kiali will be able to direct the user to Jaeger’s tracing data. If you need this feature, make sure Kiali is properly configured for Jaeger integration.
Tracing data will be available only if Istio’s distributed tracing is enabled.
Grafana
Grafana is optional. When available, the metrics pages of Kiali will show a link to direct the user to the same metric in Grafana. If you need this feature, make sure Kiali is properly configured for Grafana integration.
Kiali has basic metric capabilities. It can show the default Istio metrics for workloads, apps and services. It allows to apply some groupings to the provided metrics and fetch metrics for different time ranges. However, Kiali doesn’t allow to customize the views nor customize the Prometheus queries. If you need these capabilities, you’ll want to install Grafana. Follow the Istio documentation to install Grafana if you need it.
5.2 - Terminology
5.2.1 - Concepts
Application
Is a logical grouping of Workloads defined by the application labels that users apply to an object. In Istio it is defined by the Label App. See Istio Label Requirements.
Application Name
It’s the name of the Application deployed in your environment. This name is provided by the Label App on the Workload.
Envoy
A proxy that Istio starts for each pod in the service mesh. For more information see the Istio Envoy Documentation.
Envoy Health
A health check performed by Envoy proxies, for inbound and outbound traffic: see membership_healthy and membership_total from Envoy documentation.
Istio object/configuration Type
This is the type specified in the Istio Config. This could be any of the following types: Gateway, Virtual Service, DestinationRule, ServiceEntry, Rule, Quota or QuotaSpecBinding.
Istio Sidecar
For more information see the Istio Sidecar definition in Istio Sidecar Documentation.
Label
It’s a user-created tag to identify a set of objects.
An empty label selector (that is, one with zero requirements) selects every object in the collection.
A null label selector (which is only possible for optional selector fields) selects no objects.
For example, Istio uses the Label App & Label Version on a Workload to specify the version and the application.
Label App
This is the ‘app’ label on an object. For more information, see Istio Label Requirements.
Label Version
This is the ‘version’ label on an object. For more information, see Istio Label Requirements.
Namespace
Namespaces are intended for use in environments with many users spread across multiple teams, or projects.
Namespaces are a way to divide cluster resources between multiple users.
Quota
A limited or fixed number or amount of resources.
ReplicaSet
Ensures that a specified number of pod replicas are running at any one time.
Service
A Service is an abstraction which defines a logical set of Pods and a policy by which to access them. A Service is determined by a Label.
Service Entry
For more information see the Service Entry definition in Istio Service Entry Documentation.
Virtual Service
For more information see the Virtual Service definition in Istio VirtualService Documentation.
Workload
For more information see the Istio Workload definition.
5.2.2 - Networking
Destination
For more information see the Destination definition in the Istio Glossary.
Destination Rule
For more information see the Istio Destination Rule Documentation.
Endpoint
A communication endpoint is a type of communication network node. It is an interface exposed by a communicating party or by a communication channel.
Error Rate
It’s the percentage of errors in the traffic to a specific object for a Rate Interval.
Gateway
For more information see the Gateway definition in the Istio Gateway Documentation.
Inbound Metrics
Metrics on requests received by a given Workload, Service or Application.
Outbound Metrics
Metrics on requests emitted by a given Workload or Application.
Port
For more information see the Istio Port Documentation.
Rate Interval
It’s an amount of time. By Default in Kiali last 10 minutes.
Rule
It’s an object that manages external access to the services in a cluster, typically HTTP.
Source
For more information see the Source definition in the Istio Glossary.
Subset
For more information see the Istio Subset Documentation.
6 - FAQ
6.1 - Authentication
How to obtain a token when logging in via token auth strategy
When configuring Kiali to use the token
auth strategy, it requires users to log into Kiali as a specific user via the user’s service account token. Thus, in order to log into Kiali you must provide a valid Kubernetes token.
Note that the following examples assume you installed Kiali in the istio-system
namespace.
For Kubernetes prior to v1.24
You can extract a service account’s token from the secret that was created for you when you created the service account.
For example, if you want to log into Kiali using Kiali’s own service account, you can get the token like this:
kubectl get secret -n istio-system $(kubectl get sa kiali-service-account -n istio-system -o "jsonpath={.secrets[0].name}") -o jsonpath={.data.token} | base64 -d
For Kubernetes v1.24+
You can request a short lived token for a service account by issuing the following command:
kubectl -n istio-system create token kiali-service-account
Using the token
Once you obtain the token, you can go to the Kiali login page and copy-and-paste that token into the token field. At this point, you have logged into Kiali with the same permissions as that of the Kiali server itself (note: this gives the user the permission to see everything).
Create different service accounts with different permissions for your users to use. Each user should only have access to their own service accounts and tokens.
How to configure the originating port when Kiali is served behind a proxy (OpenID support)
When using OpenID strategy for authentication and deploying Kiali behind a reverse proxy or a load balancer, Kiali needs to know the originating port of client requests. You may need to setup your proxy to inject a X-Forwarded-Port
HTTP header when forwarding the request to Kiali.
For example, when using an Istio Gateway and VirtualService to expose Kiali, you could use the headers property of the route:
spec:
gateways:
- istio-ingressgateway.istio-system.svc.cluster.local
hosts:
- kiali.abccorp.net
http:
- headers:
request:
set:
X-Forwarded-Port: "443"
route:
- destination:
host: kiali
port:
number: 20001
6.2 - Distributed Tracing
Why is Jaeger unreachable or Kiali showing the error “Could not fetch traces”?
Istio components status indicator shows “Jaeger unreachable”:
While on any Tracing page, error “Could not fetch traces” is displayed:
Apparently, Kiali is unable to connect to Jaeger. Make sure tracing is correctly configured in the Kiali CR.
tracing:
auth:
type: none
enabled: true
in_cluster_url: 'http://tracing.istio-system/jaeger'
url: 'http://jaeger.example.com/'
use_grpc: true
You need especially to pay attention to the in_cluster_url
field, which is how Kiali backend contacts the Jaeger service. In general, this URL is written using Kubernetes domain names in the form of http://service.namespace
, plus a path.
If you’re not sure about this URL, try to find your Jaeger service and its exposed ports:
$ kubectl get services -n istio-system
...
tracing ClusterIP 10.108.216.102 <none> 80/TCP 47m
...
To validate this URL, you can try to curl
its API via Kiali pod, by appending /api/traces
to the configured URL (in the following, replace with the appropriate Kiali pod):
$ kubectl exec -n istio-system -it kiali-556fdb8ff5-p6l2n -- curl http://tracing.istio-system/jaeger/api/traces
{"data":null,"total":0,"limit":0,"offset":0,"errors":[{"code":400,"msg":"parameter 'service' is required"}]}
If you see some returning JSON as in the above example, that should be the URL that you must configure.
If instead of that you see some blocks of mixed HTML/Javascript mentioning JaegerUI, then probably the host+port are correct but the path isn’t.
A common mistake is to forget the /jaeger
suffix, which is often used in Jaeger deployments.
It may also happen that you have a service named jaeger-query
, exposing port 16686
, instead of the more common tracing
service on port 80
. In that situation, set in_cluster_url
to http://jaeger-query.istio-system:16686/jaeger
.
If Jaeger needs an authentication, make sure to correctly configure the auth
section.
Note that in general, Kiali will connect to Jaeger via GRPC, which provides better performances. If for some reason it cannot be done (e.g. Jaeger being behind a reverse-proxy that doesn’t support GRPC, or that needs more configuration in that purpose), it is possible to switch back to using the http/json API of Jaeger by setting use_grpc
to false
.
If for some reason the GRPC connection fails and you think it shouldn’t (e.g. your reverse-proxy supports it, and the non-grpc config works fine), please get in touch with us.
Why can’t I see any external link to Jaeger?
In addition to the embedded integration that Kiali provides with Jaeger, it is possible to show external links to the Jaeger UI. To do so, the external URL must be configured in the Kiali CR.
tracing:
# ...
url: "http://jaeger.example.com/"
When configured, this URL will be used to generate a couple of links to Jaeger within Kiali. It’s also visible in the About modal:
Why do I see an external link instead of Kiali’s own Tracing page?
On the Application detail page, the Traces tab might redirect to Jaeger via an external link instead of showing the Kiali Tracing view. It happens when you have the url
field configured, but not in_cluster_url
, which means the Kiali backend will not be able to connect to Jaeger.
To fix it, configure in_cluster_url
in the Kiali CR.
Why do I see “Missing root span” for the root span of some span details on Traces tab?
In Traces tab, while clicking on a trace, it shows the details of that trace and information about spans. These details also include the root span information. But for the traces for traffic that is not comming from ingress-gateway, the root span information is not available in Jaeger, thus Kiali is displaying “Missing root span” for those traces' details and tooltips in Traces tab and in Graph pages.
6.3 - General
How do I determine what version I am running?
There are several components within the Istio/Kiali infrastructure that have version information.
- Go to the Help dropdown menu found at the top-right of the Kiali Console window and select “About”. This will pop up the About box that will display all version information for Kiali, Istio, and other third-party components like Prometheus.
Help dropdown menu:
The Kiali About box:
- You can also get this same version information in JSON format from the command line by running something like
curl
to obtain the version information from the/api
endpoint. For example, expose Kiali via port-forwarding socurl
can access it:
kubectl port-forward -n istio-system deploy/kiali 20001:20001
And then request the version information via curl
:
curl http://localhost:20001/kiali/api
The version information will be provided in a JSON format such as this:
{
"status": {
"Kiali commit hash": "c17d0550cfb033900c392ff5813368c1185954f1",
"Kiali container version": "v1.74.0",
"Kiali state": "running",
"Kiali version": "v1.74.0",
"Mesh name": "Istio",
"Mesh version": "1.19.0"
},
"externalServices": [
{
"name": "Istio",
"version": "1.19.0"
},
{
"name": "Prometheus",
"version": "2.41.0"
},
{
"name": "Kubernetes",
"version": "v1.27.3"
},
{
"name": "Grafana"
},
{
"name": "Jaeger"
}
],
"warningMessages": [],
"istioEnvironment": {
"isMaistra": false,
"istioAPIEnabled": true
}
}
- Obtain the container image being used by the Kiali Server pod:
kubectl get pods --all-namespaces -l app.kubernetes.io/name=kiali -o jsonpath='{.items..spec.containers[*].image}{"\n"}'
This will result in something like: quay.io/kiali/kiali:v1.74.0
- Obtain the container image being used by the Kiali Operator pod:
kubectl get pods --all-namespaces -l app.kubernetes.io/name=kiali-operator -o jsonpath='{.items..spec.containers[*].image}{"\n"}'
This will result in something like: quay.io/kiali/kiali-operator:v1.74.0
- Obtain the container image being used by the istiod pod:
kubectl get pods --all-namespaces -l app=istiod -o jsonpath='{.items..spec.containers[*].image}{"\n"}'
This will result in something like: gcr.io/istio-release/pilot:1.19.0
- If Kiali and/or Istio are installed via helm charts, obtain the helm chart version information:
helm list --all-namespaces
As an example, if you installed Kiali Operator via helm, this will result in something like:
NAME NAMESPACE REVISION UPDATED STATUS CHART APP VERSION
kiali-operator kiali-operator 1 2023-09-26 09:52:21.266593138 -0400 EDT deployed kiali-operator-1.74.0 v1.74.0
Why is the Workload or Application Detail page so slow or not responding?
We have identified a performance issue that happens while visiting the Workload or Application detail page, related to discovering metrics in order to show custom dashboards. Both Kiali and Prometheus may run out of memory.
The immediate workaround is to disable dashboards discovery:
spec:
external_services:
custom_dashboards:
discovery_enabled: "false"
It’s also recommended to consider a more robust setup for Prometheus, like the one described in this Istio guide (see also this Kiali blog post), in order to decrease the metrics cardinality.
What do I need to run Kiali in a private cluster?
Private clusters have higher network restrictions. Kiali needs your cluster to allow TCP
traffic between the Kubernetes API service and the Istio Control Plane namespace, for both the 8080
and 15000
ports. This is required for features such as Health and Envoy Dump to work as expected.
Make sure that the firewalls in your cluster allow the connections mentioned above.
Check section Google Kubernetes Engine (GKE) Private Cluster requirements in the Installation Guide.
Does Kiali support Internet Explorer?
No version of Internet Explorer is supported with Kiali. Users may experience some issues when using Kiali through this browser.
Kiali does not work - What do i do?
If you are hitting a problem, whether it is listed here or not, do not hesitate to open a GitHub Discussion to ask about your situation. If you are hitting a bug, or need a feature, you can vote (using emojis) for any existing bug or feature request found in the GitHub Issues. This will help us prioritize the most needed fixes or enhancements. You can also create a new issue.
See also the Community page which lists more contact channels.
How do I obtain the logs for Kiali?
Kiali operator logs can be obtained from within the Kiali operator pod. For example, if the operator is installed in the kiali-operator
namespace:
KIALI_OPERATOR_NAMESPACE="kiali-operator"
kubectl logs -n ${KIALI_OPERATOR_NAMESPACE} $(kubectl get pod -l app=kiali-operator -n ${KIALI_OPERATOR_NAMESPACE} -o name)
Kiali server logs can be obtained from within the Kiali server pod. For example, if the Kiali server is installed in the istio-system
namespace:
KIALI_SERVER_NAMESPACE="istio-system"
kubectl logs -n ${KIALI_SERVER_NAMESPACE} $(kubectl get pod -l app=kiali -n ${KIALI_SERVER_NAMESPACE} -o name)
Note that you can configure the logger in the Kiali Server.
Which Istio metrics and attributes are required by Kiali?
To reduce Prometheus storage some users want to customize the metrics generated by Istio. This can break Kiali if the pruned metrics and/or attributes are used by Kiali in its graph or metric features.
Kiali currently requires the following metrics and attributes:
Metric | Notes |
---|---|
container_cpu_usage_seconds_total | used to graph cpu usage in the control plane overview card |
container_memory_working_set_bytes | used to graph memory usage in the control plane overview card |
process_cpu_seconds_total | used to graph cpu usage in the control plane overview card (if the container metric is not available) |
process_resident_memory_bytes | used to graph memory usage in the control plane overview card (if the container metric is not available) |
Istio metrics and attributes:
Metric | Notes |
---|---|
istio_requests_total | used throughout Kiali and the primary metric for http/grpc request traffic |
istio_request_bytes_bucket | used in metric displays to calculate throughput percentiles |
istio_request_bytes_count | used in metric displays to calculate throughput avg |
istio_request_bytes_sum | used throughout Kiali for throughput calculation |
istio_request_duration_milliseconds_bucket | used throughout Kiali for response-time calculation |
istio_request_duration_milliseconds_count | used throughout Kiali for response-time calculation |
istio_request_duration_milliseconds_sum | used throughout Kiali for response-time calculation |
istio_request_messages_total | used throughout Kiali for grpc sent message traffic |
istio_response_bytes_bucket | used in metric displays to calculate throughput percentiles |
istio_response_bytes_count | used in metric displays to calculate throughput avg |
istio_response_bytes_sum | used throughout Kiali for throughput calculation |
istio_response_messages_total | used throughout Kiali for grpc received message traffic |
istio_tcp_connections_closed_total | used in metric displays |
istio_tcp_connections_opened_total | used in metric displays |
istio_tcp_received_bytes_total | used throughout Kiali for tcp received traffic |
istio_tcp_sent_bytes_total | used throughout Kiali for tcp sent traffic |
pilot_proxy_convergence_time_sum | used in control plane overview card to show the average proxy push time |
pilot_proxy_convergence_time_count | used in control plane overview card to show the average proxy push time |
Attribute | Metric | Notes |
---|---|---|
connection_security_policy | istio_requests_total | used only when graph Security display option is enabled |
istio_tcp_received_bytes_total | used only when graph Security display option is enabled | |
istio_tcp_sent_bytes_total | used only when graph Security display option is enabled | |
destination_canonical_revision | all | |
destination_canonical_service | all | |
destination_cluster | all | |
destination_principal | istio_requests_total | used only when graph Security display option is enabled |
istio_request_messages_total | ||
istio_response_messages_total | ||
istio_tcp_received_bytes_total | ||
istio_tcp_sent_bytes_total | ||
destination_service | all | |
destination_service_name | all | |
destination_service_namespace | all | |
destination_workload | all | |
destination_workload_namespace | all | |
grpc_response_status | istio_requests_total | used only when request_protocol=“grpc” |
istio_request_bytes_sum | ||
istio_request_duration_milliseconds_bucket | ||
istio_request_duration_milliseconds_sum | ||
istio_response_bytes_sum | ||
reporter | all | both “source” and “destination” metrics are used by Kiali |
request_operation | istio_requests_total | used only when request classification is configured. “request_operation” is the default attribute, it is configurable. |
istio_request_bytes_sum | ||
istio_response_bytes_sum | ||
request_protocol | istio_requests_total | |
istio_request_bytes_sum | ||
istio_response_bytes_sum | ||
response_code | istio_requests_total | |
istio_request_bytes_sum | ||
istio_request_duration_milliseconds_bucket | ||
istio_request_duration_milliseconds_sum | ||
istio_response_bytes_sum | ||
response_flags | istio_requests_total | |
istio_request_bytes_sum | ||
istio_request_duration_milliseconds_bucket | ||
istio_request_duration_milliseconds_sum | ||
istio_response_bytes_sum | ||
source_canonical_revision | all | |
source_canonical_service | all | |
source_cluster | all | |
source_principal | istio_requests_total | |
istio_request_messages_total | ||
istio_response_messages_total | ||
istio_tcp_received_bytes_total | ||
istio_tcp_sent_bytes_total | ||
source_workload | all | |
source_workload_namespace | all |
Envoy metrics:
Metric | Notes |
---|---|
envoy_cluster_upstream_cx_active | used in workload details |
envoy_cluster_upstream_rq_total | used in workload details |
envoy_listener_downstream_cx_active | used in workload details |
envoy_listener_http_downstream_rq | used in workload details |
envoy_server_memory_allocated | used in workload details |
envoy_server_memory_heap_size | used in workload details |
envoy_server_uptime | used in workload details |
What is the License?
See here for the Kiali license.
Why isn’t my namespace in the Namespace Selection dropdown?
When deploying Kiali with the Kiali operator, by default some namespaces are excluded from the list of namespaces provided by the API and UI. Kiali filters out these namespaces and you will not see them in the Namespace Selection dropdown. You can adjust which namespaces are excluded by setting the spec.api.namespaces.exclude
field on the Kiali CR.
In addition, you must ensure that Kiali has access to the namespaces you are interested in by setting the spec.deployment.accessible_namespaces
field on the Kiali CR accordingly. Setting spec.api.namespaces.exclude
alone does not give Kiali access to the namespaces. See the Namespace Management guide for more information.
Kiali also caches namespaces by default for 10 seconds. If the cache is enabled, it might take up to the spec.kubernetes_config.cache_token_namespace_duration
in order for a newly added namespace to be seen by Kiali.
Finally, Kiali utilizes the Istio MeshConfig setting discoverySelectors
- any namespace that does not match the discoverySelectors will not be available to Kiali users.
Workload “is not found as” messages
Kiali queries Deployment ,ReplicaSet, ReplicationController, DeploymentConfig, StatefulSet, Job and CronJob controllers. Deployment, ReplicaSet and StatefulSet are always queried, but ReplicationController, DeploymentConfig, Job and CronJobs are excluded by default for performance reasons.
To include them, update the list of excluded_workloads from the Kiali config.
# ---
# excluded_workloads:
# - "CronJob"
# - "DeploymentConfig"
# - "Job"
# - "ReplicationController"
#
An empty list will tell Kiali to query all type of known controllers.
Why Health is not available for services using TCP protocol?
Health for Services is calculated based on success rate of traffic. The traffic of HTTP and GRPC protocols is request based and it is possible to inspect each request to check and extract response codes to determine how many requests succeeded and how many erred.
However, HTTP is a widely known protocol. Applications may use other less known protocols to communicate. For these cases, Istio logs the traffic as raw TCP (an opaque sequence of bytes) and is not analyzed. Thus, for Kiali it is not possible to know if any traffic have failed or succeeded and reports Health as unavailable.
Why are the control plane metrics missing from the control plane card?
The control plane metrics are fetched from the Prometheus configured in Kiali.
Kiali will fetch the memory and the CPU metrics related to the Istiod container (discovery) first and will fallback to the metrics related to the istiod process if it couldn’t find the container metrics. If the required metrics are not found then Kiali can not display the related charts or data.
The metrics used are:
Metric | Notes |
---|---|
container_cpu_usage_seconds_total | used for Istiod’s discovery container CPU metric |
container_memory_working_set_bytes | used for Istiod’s discovery container memory metric |
process_cpu_seconds_total | used for Istiod process CPU metric |
process_resident_memory_bytes | used for Istiod process memory metric |
6.4 - Graph
Why is my graph empty?
There are several reasons why a graph may be empty. First, make sure you have selected at least one namespace. Kiali will look for traffic into, out of, and within the selected namespaces. Another reason is that Istio is not actually generating the expected telemetry. This is typically an indication that workload pods have not been injected with the Istio sidecar proxy (Envoy proxy). But it can also mean that there is an issue with Prometheus configuration, and it is not scraping metrics as expected. To verify that telemetry is being reported to Prometheus, see this FAQ entry.
The primary reason a graph is empty is just that there is no measurable request traffic for the selected namespaces, for the selected time period. Note that to generate a request rate, at least two requests must be recorded, and that Kiali only records request rates >= .01 request-per-minute. Check your selection in the Duration dropdown, if it is small, like 1m, you may need to increase the time period to 5m or higher.
You can enable the “Idle Edges” Display option to include request edges that previously had traffic, but not during the requested time period. This is disabled by default to present a cleaner graph, but can be enabled to get a full picture of current and previous traffic.
Older versions of Kiali may show an empty graph for shorter duration options, depending on the Prometheus globalScrapeInterval
configuration setting. For more, see this FAQ entry.
Why is my Duration dropdown menu missing entries?
The Duration menu for the graph, and also other pages, does not display invalid options based on the Prometheus configuration. Options greater than the tsdbRetentionTime
do not make sense. For example, if Prometheus stores 7 days of metrics then Kiali will not show Duration options greater than 7 days.
More recently, Kiali also considers globalScrapeInterval
. Because request-rate calculation requires a minimum of two data-points, Duration options less than 2 times the globalScrapeInterval
will not be shown. For example, if Prometheus scrapes every 1m, the 1m Duration option will not be shown. Note that the default globalScrapeInterval
for Helm installs of Prometheus is 1m (at the time of this writing).
Why are my TCP requests disconnected in the graph?
Some users are surprised when requests are not connected in the graph. This is normal Istio telemetry for TCP requests if mTLS is not enabled. For HTTP requests, the requests will be connected even without MTLS, because Istio uses headers to exchange workload metadata between source and destination. With the disconnected telemetry you will see an edge from a workload to a terminal service node. That’s the first hop. And then another edge from “Unknown” to the expected destination service/workload. In the graph below, this can be seen for the requests from myapp to redis and mongodb:
Why is my external HTTPS traffic showing as TCP?
Istio can’t recognize HTTPS request that go directly to the service, the reason is that these requests are encrypted and are recognized as TCP traffic.
You can however configure your mesh to use TLS origination for your egress traffic. This will allow to see your traffic as HTTP instead of TCP.
Why is the graph badly laid out?
The layout for Kiali Graph may render differently, depending on the data to display (number of graph nodes and their interactions) and it’s sometimes difficult, not to say impossible, to have a single layout that renders nicely in every situation. That’s why Kiali offers a choice of several layout algorithms. However, we may still find some scenarios where none of the proposed algorithms offer a satisfying display. If Kiali doesn’t render your graph layout in a satisfactory manner please switch to another layout option. This can be done from the Graph Toolbar located on the bottom left of the graph. Note that you can select different layouts for the whole graph, and for inside the namespace boxes.
If Kiali doesn’t produce a good graph for you, don’t hesitate to open an issue in GitHub or reach out via the usual channels.
Why are there many unknown nodes in the graph?
In some situations you can see a lot of connections from an “Unknown” node to your services in the graph, because some software external to your mesh might be periodically pinging or fetching data. This is typically the case when you setup Kubernetes liveness probes, or have some application metrics pushed or exposed to a monitoring system such as Prometheus. Perhaps you wouldn’t like to see these connections because they make the graph harder to read.
From the Graph page, you can filter them out by typing node = unknown
in the Graph Hide input box.
For a more definitive solution, you could have these endpoints (like /health
or /metrics
) exposed on a different port and server than your main application, and to not declare this port in your Pod’s container definition as containerPort. This way, the requests will be completely ignored by the Istio proxy, as mentioned in Istio documentation (at the bottom of that page).
Why do I have missing edges?
Kiali builds the graph from Istio’s telemetry. If you don’t see what you expect it probably means that it has not been reported in Prometheus. This usually means that:
1- The requests are not actually sent.
2- Sidecars are missing.
3- Requests are leaving the mesh and are not configured for telemetry.
For example, If you don’t see traffic going from node A to node B, but you are sure there is traffic, the first thing you should be doing is checking the telemetry by querying the metrics, for example, if you know that MyWorkload-v1 is sending requests to ServiceA try looking for metrics of the type:
istio_requests_total{destination_service="ServiceA"}
If telemetry is missing then it may be better to take it up with Istio.
Which lock icons should I see when I enable the Kiali Graph Security Display option?
Sometimes the Kiali Graph Security Display option causes confusion. The option is disabled by default for optimal performance, but enabling the option typically adds nominal time to the graph rendering. When enabled, Kiali will determine the percentage of mutual TLS (mTLS) traffic on each edge. Kiali will only show lock icons on edges with traffic for edges that have > 0% mTLS traffic.
Kiali determines the mTLS percentage for the edges via the connection_security_policy
attribute in the
Prometheus telemetry. Note that this is destination telemetry (i.e. reporter="destination"
).
Why can’t I see traffic leaving the mesh?
See Why do I have missing edges?, and additionally consider whether you need to create a ServiceEntry (or several) to allow the requests to be mapped correctly.
You can check this article on how to visualize your external traffic in Kiali for more information.
Why do I see traffic to PassthroughCluster?
Requests going to PassthroughCluster (or BlackHoleCluster) are requests that did not get routed to a defined service or service entry, and instead end up at one of these built-in Istio request handlers. See Monitoring Blocked and Passthrough External Service Traffic for more information.
Unexpected routing to these nodes does not indicate a Kiali problem, you’re seeing the actual routing being performed by Istio. In general it is due to a misconfiguration and/or missing Istio sidecar. Less often but possible is an actual issue with the mesh, like a sync issue or evicted pod.
Use Kiali’s Workloads list view to ensure sidecars are not missing. Use Kiali’s Istio Config list view to look for any config validation errors.
How do I inspect the underlying metrics used to generate the Kiali Graph?
It is not uncommon for the Kiali graph to show traffic that surprises the user. Often the thought is that Kiali may have a bug. But in general Kiali is just visualizing the metrics generated by Istio. The next thought is that the Istio telemetry generation may have a bug. But in general Istio is generating the expected metrics given the defined configuration for the application.
To determine whether there is an actual bug it can be useful to look directly at the metrics collected by and stored in the Prometheus database. Prometheus provides a basic console that can be opened using the istioctl dashboard command:
> istioctl dashboard prometheus
The above command, assuming Istio and Prometheus are in the default istio-system namespace, should open the Prometheus console in your browser.
Kiali uses a variety of metrics but the primary request traffic metrics for graph generation are these:
- istio_requests_total
- istio_tcp_sent_bytes_total
The Prometheus query language is very rich but a few basic queries is often enough to gather time-series of interest.
Here is a query that returns time-series for HTTP or GRPC requests to the reviews service in Istio’s BookInfo sample demo:
istio_requests_total{reporter="source", destination_service_name="reviews"}
And here is an example of the results:
The query above is good for dumping all of the attributes but it can be useful to aggregate results by desired attributes. The next query will get the request counts for the reviews service broken down by source and destination workloads:
sum(istio_requests_total{reporter="source", destination_service_name="reviews"}) by (source_workload, destination_workload)
The first step to explaining your Kiali graph is to inspect the metrics used to generate the graph. Kiali devs may ask for this info when working with you to solve a problem, so it is useful to know how to get to the Prometheus console.
Why don’t I see response times on my service graph?
Users can select Response Time to label their edges with 95th percentile response times. The response time indicates the amount of time it took for the destination workload to handle the request. In the Kiali graph the edges leading to service nodes represent the request itself, in other words, the routing. Kiali can show the request rate for a service but response time is not applicable to be shown on the incoming edge. Only edges to app, workload, or service entry nodes show response time because only those nodes represent the actual work done to handle the request. This is why a Service graph will typically not show any response time information, even when the Response Time option is selected.
Because Service graphs can show Service Entry nodes the Response Time option is still a valid choice. Edges to Service Entry nodes represent externally handled requests, which do report the response time for the external handling.
Why does my workload graph show service nodes?
Even when Display Service Nodes
is disabled a workload graph can show service nodes. Display Service Nodes
ensures that you will see the service nodes between two other nodes,
providing an edge to the destination service node, and a subsequent edge to the node handling the request. This option injects service nodes where they previously would not be
shown. But Kiali will always show a terminal service node when the request itself fails to be routed to a destination workload. This ensures the graph visualizes problem areas.
This can happen in a workload or app graph. Of course in a service graph the Display Service Nodes
option is simply ignored.
6.5 - Installation
Operator fails due to cannot list resource "clusterroles"
error
When the Kiali Operator installs a Kiali Server, the Operator will assign the Kiali Server the proper roles/rolebindings so the Kiali Server can access the appropriate namespaces.
The Kiali Operator will check to see if the Kiali CR setting deployment.accessible_namespaces
is unset. If it is, this means the Kiali Server is to be given access to all namespaces in the cluster, including namespaces that will be created in the future. In this case, the Kiali Operator will create and assign ClusterRole/ClusterRoleBinding resources to the Kiali Server. But in order to do this, the Kiali Operator must itself be given permission to create those ClusterRole and ClusterRoleBinding resources. When you install the Kiali Operator via OLM, these permissions are automatically granted. However, if you installed the Kiali Operator with the Operator Helm Chart, and if you did so with the value clusterRoleCreator
set to false
then the Kiali Operator will not be given permission to create cluster roles. In this case, you will be unable to install a Kiali Server if your Kiali
CR does not have deployment.accessible_namespaces
set to a list of namespaces. - you will get an error similar to this:
Failed to list rbac.authorization.k8s.io/v1, Kind=ClusterRole:
clusterroles.rbac.authorization.k8s.io is forbidden:
User "system:serviceaccount:kiali-operator:kiali-operator"
cannot list resource "clusterroles" in API group
"rbac.authorization.k8s.io" at the cluster scope
Thus, if you do not give the Kiali Operator the permission to create cluster roles, you must tell the Operator which specific namespaces the Kiali Server can access. When specific namespaces are specified in deployment.accessible_namespaces
, the Kiali Operator will create Role and RoleBindings (not the “Cluster” kinds) and assign them to the Kiali Server.
What values can be set in the Kiali CR?
A Kiali CR is used to tell the Kiali Operator how and where to install a Kiali Server in your cluster. You can install one or more Kiali Servers by creating one Kiali CR for each Kiali Server you want the Operator to install and manage. Deleting a Kiali CR will uninstall its associted Kiali Server.
Most options are described in the pages of the Installation and Configuration sections of the documentation.
If you cannot find some configuration, check the Kiali CR Reference, which briefly describes all available options along with an example CR and all default values. If you are using a specific version of the Operator prior to 1.46, the Kiali CR that is valid for that version can be found in the version tag within the github repository (e.g. Operator v1.25.0 supported these Kiali CR settings).
How to configure some operator features at runtime
Once the Kiali Operator is installed, you can change some of its configuration at runtime in order to utilize certain features that the Kiali Operator provides. These features are configured via environment variables defined in the operator’s deployment.
Perform the following steps to configure these features in the Kiali Operator:
- Determine the namespace where your operator is located and store that namespace name in
$OPERATOR_NAMESPACE
. If you installed the operator via helm, it may bekiali-operator
. If you installed the operator via OLM, it may beopenshift-operators
. If you are not sure, you can perform a query to find it:
OPERATOR_NAMESPACE="$(kubectl get deployments --all-namespaces | grep kiali-operator | cut -d ' ' -f 1)"
- Determine the name of the environment variable you need to change in order to configure the feature you are interested in. Here is a list of currently supported environment variables you can set:
ALLOW_AD_HOC_KIALI_NAMESPACE
: must betrue
orfalse
. Iftrue
, the operator will be allowed to install the Kiali Server in any namespace, regardless of which namespace the Kiali CR is created. Iffalse
, the operator will only install the Kiali Server in the same namespace where the Kiali CR is created - any attempt to do otherwise will cause the operator to abort the Kiali Server installation.ALLOW_AD_HOC_KIALI_IMAGE
: must betrue
orfalse
. Iftrue
, the operator will be allowed to install the Kiali Server with a custom container image as defined in the Kiali CR’sspec.deployment.image_name
and/orspec.deployment.image_version
. Iffalse
, the operator will only install the Kiali Server with the default image. If a Kiali CR is created withspec.deployment.image_name
orspec.deployment.image_version
defined, the operator will abort the Kiali Server installation.ALLOW_SECURITY_CONTEXT_OVERRIDE
: must betrue
orfalse
. Iftrue
, the operator will be allowed to install the Kiali Server container with a fully customizable securityContext as defined by the user in the Kial CR. Iffalse
, the operator will only allow the user to add settings to the securityContext; any attempt to override the default settings in the securityContext will be ignored.ALLOW_ALL_ACCESSIBLE_NAMESPACES
: must betrue
orfalse
. Iftrue
, the operator will allow the user to configure Kiali to access all namespaces in the cluster by not requiring the Kiali CR settingspec.deployment.accessible_namespaces
to be set to a list of namespaces. If false, the Kiali CR must specify a specific list of namespace names.ACCESSIBLE_NAMESPACES_LABEL
: must be an empty string (""
) or a label name (e.g.myLabelName
) or a label name and value (e.g.myLabelName=myLabelValue
). If just a label name is specified, the label value will default to the value in the Kiali CRspec.istio_namespace
setting. When not an empty string, this will instruct the operator to restrict the namespaces that a user can add to the Kiali CRspec.deployment.accessible_namespaces
setting. Only namespaces that have the given label name and value will be permitted in the Kiali CRspec.deployment.accessible_namespaces
setting. Any namespace not labeled properly but specified inspec.deployment.accessible_namespaces
will cause the operator to abort the Kiali installation.ANSIBLE_DEBUG_LOGS
: must betrue
orfalse
. Whentrue
, turns on debug logging within the Operator SDK. For details, see the docs here.ANSIBLE_VERBOSITY_KIALI_KIALI_IO
: Controls how verbose the operator logs are - the higher the value the more output is logged. For details, see the docs here.ANSIBLE_CONFIG
: must be/etc/ansible/ansible.cfg
or/opt/ansible/ansible-profiler.cfg
. If set to/opt/ansible/ansible-profiler.cfg
a profiler report will be dumped in the operator logs after each reconciliation run.
- Store the name of the environment variable you want to change in
$ENV_NAME
:
ENV_NAME="ANSIBLE_CONFIG"
- Store the new value of the environment variable in
$ENV_VALUE
:
ENV_VALUE="/opt/ansible/ansible-profiler.cfg"
- The final step depends on how you installed the Kiali Operator:
oc
. If you are using a non-OpenShift Kubernetes environment, simply substitute all the oc
references to kubectl
.
- If you installed the operator via helm, simply set the environment variable on the operator deployment directly:
oc -n ${OPERATOR_NAMESPACE} set env deploy/kiali-operator "${ENV_NAME}=${ENV_VALUE}"
- If you installed the operator via OLM, you must set this environment variable within the operator’s CSV and let OLM propagate the new environment variable value down to the operator deployment:
oc -n ${OPERATOR_NAMESPACE} patch $(oc -n ${OPERATOR_NAMESPACE} get csv -o name | grep kiali) --type=json -p "[{'op':'replace','path':"/spec/install/spec/deployments/0/spec/template/spec/containers/0/env/$(oc -n ${OPERATOR_NAMESPACE} get $(oc -n ${OPERATOR_NAMESPACE} get csv -o name | grep kiali) -o jsonpath='{.spec.install.spec.deployments[0].spec.template.spec.containers[0].env[*].name}' | tr ' ' '\n' | cat --number | grep ${ENV_NAME} | cut -f 1 | xargs echo -n | cat - <(echo "-1") | bc)/value",'value':"\"${ENV_VALUE}\""}]"
How can I inject an Istio sidecar in the Kiali pod?
By default, Kiali will not have an Istio sidecar. If you wish to deploy the Kiali pod with a sidecar,
you have to define the sidecar.istio.io/inject=true
label in the spec.deployment.pod_labels
setting in the Kiali CR. For example:
spec:
deployment:
pod_labels:
sidecar.istio.io/inject: "true"
If you are utilizing CNI in your Istio environment (for example, on OpenShift), Istio will not allow sidecars to work when injected in pods deployed in the control plane namespace, e.g. istio-system
. (1) (2) (3). In this case, you must deploy Kiali in its own separate namespace. On OpenShift, you can do this using the following instructions.
Determine what namespace you want to install Kiali and create it. Give the proper permissions to Kiali. Create the necessary NetworkAttachmentDefinition. Finally, create the Kiali CR that will tell the operator to install Kiali in this new namespace, making sure to add the proper sidecar injection label as explained earlier.
NAMESPACE="kialins"
oc create namespace ${NAMESPACE}
oc adm policy add-scc-to-group privileged system:serviceaccounts:${NAMESPACE}
cat <<EOM | oc apply -f -
apiVersion: k8s.cni.cncf.io/v1
kind: NetworkAttachmentDefinition
metadata:
name: istio-cni
namespace: ${NAMESPACE}
EOM
cat <<EOM | oc apply -f -
apiVersion: kiali.io/v1alpha1
kind: Kiali
metadata:
name: kiali
namespace: ${NAMESPACE}
spec:
istio_namespace: istio-system
auth:
strategy: anonymous
deployment:
pod_labels:
sidecar.istio.io/inject: "true"
EOM
After the operator installs Kiali, confirm you have two containers in your pod. This indicates your Kiali pod has its proxy sidecar successfully injected.
$ oc get pods -n ${NAMESPACE}
NAME READY STATUS RESTARTS AGE
kiali-56bbfd644-nkhlw 2/2 Running 0 43s
How Can I Specify a Container Image Digest Hash When Installing Kiali Server and Kiali Operator?
To tell the operator to install a specific container image using a digest hash, you must use the deployment.image_digest
setting in conjunction with the deployment.image_version
setting. deployment.image_version
is simply the digest hash code and deployment.image_digest
is the type of digest (most likely you want to set this value to sha256
). So for example, in your Kiali CR you will want something like this:
spec:
deployment:
image_version: 63fdb9a9a1aa8fea00015c32cd6dbb63166046ddd087762d0fb53a04611e896d
image_digest: sha256
Leaving deployment.image_digest
unset or setting it to an empty string will tell the operator to assume the deployment.image_version
is a tag.
For those that opt not to use the operator to install the server but instead use the server helm chart, the same deployment.image_version
and deployment.image_digest
values are supported by the Kiali server helm chart.
As for the operator itself, when installing the operator using its helm chart, the values image.tag
and image.digest
are used in the same manner as the deployment.image_version
and deployment.image_digest
as explained above. So if you wish to install the operator using a container image digest hash, you will want to use the image.tag
and image.digest
in a similar way:
helm install --set image.tag=7336eb77199a4d737435a8bf395e1666b7085cc7f0ad8b4cf9456b7649b7d6ad --set image.digest=sha256 ...and the rest of the helm install options...
6.6 - Istio Component Status
How can I add one component to the list?
If you are interested in adding one more component to the Istio Component Status tooltip, you have the option to add one new component into the
Kiali CR, under the spec.external_services.istio.component_status
field.
For each component there, you will need to specify the app
label of the deployment’s pods, the namespace and whether is a core component or add-on.
One component is ‘Not found’ but I can see it running. What can I do?
The first thing you should do is check the Kiali CR for the spec.external_services.istio.component_status
field (see the reference documentation here)
Kiali looks for a Deployment for which its pods have the app
label with the specified value in the CR, and lives in that namespace.
The app
label name may be changed from the default (app) and it is specified in the spec.istio_labels.app_label_name
in the Kiali CR.
Ensure that you have specified correctly the namespace and that the deployment’s pod template has the specified label.
One component is ‘Unreachable’ but I can see it running. What can I do?
Kiali considers one component as Unreachable
when the component responds to a GET request with a 4xx or 5xx response code.
The URL where Kiali sends a GET request to is the same as it is used for the component consumption. However, Kiali allows you to set a specific URL for health check purposes: the health_check_url
setting.
In this example, Kiali uses the Prometheus url
for both metrics consumption and health checks.
external_services:
prometheus:
url: "http://prometheus.istio-system:9090"
In case that the prometheus.url
endpoint doesn’t return 2XX/3XX to GET requests, you can use the following settings to specify which health check URL Kiali should use:
external_services:
prometheus:
health_check_url: "http://prometheus.istio-system:9090/healthz"
url: "http://prometheus.istio-system:9090"
Please read the Kiali CR Reference for more information. Each external service component has its own health_check_url
and is_core
setting to tailor the experience in the Istio Component Status feature.
6.7 - Validations
Which formats does Kiali support for specifying hosts?
Istio highly recommends that you always use fully qualified domain names (FQDN) for hosts in DestinationRules. However, Istio does allow you to use other formats like short names (details or details.bookinfo). Kiali only supports FQDN and simple service names as host formats: for example details.bookinfo.svc.cluster.local or details. Validations using the details.bookinfo format might not be accurate.
In the following example it should show the validation of “More than one Destination Rule for the same host subset combination”. Because of the usage of the short name reviews.bookinfo Kiali won’t show the warning message on both destination rules.
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews-dr1
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
- name: v2
labels:
version: v2
- name: v3
labels:
version: v3
---
apiVersion: networking.istio.io/v1alpha3
kind: DestinationRule
metadata:
name: reviews-dr2
spec:
host: reviews
trafficPolicy:
loadBalancer:
simple: RANDOM
subsets:
- name: v1
labels:
version: v1
See the recomendation Istio gives regarding host format: “To avoid potential misconfigurations, it is recommended to always use fully qualified domain names over short names."
For best results with Kiali, you should use fully qualified domain names when specifying hosts.
7 - Contribution Guidelines
7.1 - How to Contribute
Contributing to the Docs
To contribute to the kiali.io docs see kiali.io on github.
In short you will:
- Fork the kiali.io repo on GitHub.
- Make your changes and send a pull request (PR).
- If you’re not yet ready for a review, add “WIP” to the PR name to indicate it’s a work in progress.
- Don’t add the Hugo property “draft = true” to the page front matter, it prevents auto-deployment of the content preview.
- Wait for the automated PR workflow to do some checks. When it’s ready, you should see a comment like this: deploy/netlify — Deploy preview ready!
- Click Details to the right of “Deploy preview ready” to see a preview of your updates.
- Continue updating your doc and pushing your changes until you’re happy with the content.
Updating a single page
If you’ve just spotted something you’d like to change while using the docs, there is a shortcut for you:
- Click Edit this page in the top right hand corner of the page.
- If you don’t already have an up to date fork of the project repo, you are prompted to get one:
- Click Fork this repository and propose changes or Update your Fork to get an up to date version of the project to edit.
- The appropriate page in your fork is displayed in edit mode.
- Follow the steps above to make, preview, and propose your changes.
Creating an issue
If you’ve found a problem in the docs, but you’re not sure how to fix it yourself, please create an issue in the kiali.io repo. You can also create an issue about a specific page by clicking the Create Documentation Issue button in the top right hand corner of the page.
Contributing to the Code
For code contribution see the kiali project’s CONTRIBUTING page.
7.2 - Development Environment
Introduction
In this section it is explained how to set up a development environment:
- As described in Architecture, we would need to have the Kiali dependencies running in an OpenShift or Kubernetes
- We will use a port forward to access those services outside the cluster.
- We will have the project source running locally. In this case we will set up an IDE.
- Bookinfo application example will also be running on our cluster.
Prerequisites
- Development tools are installed:
- Kiali source code: We will fork the 3 kiali repositories, and then, clone them in a local folder:
- Istio and the required services are running in Minikube or OpenShift. To install it following the above schema, it is possible to use the following scripts (From the Kiali repository):
hack/istio/install-istio-via-istioctl.sh
: Installs the latest Istio release into istio-system namespace along with the Prometheus, Grafana, and Jaeger addons.hack/istio/install-bookinfo-demo.sh
: Installs the Bookinfo demo that is found in the Istio release that was installed via the hack/istio/install-istio-via-istioctl.sh hack script.- Pass in
-tg
to also install a traffic generator that will send messages periodically into the Bookinfo demo. - If using Minikube and the
-tg
option, make sure you pass in the Minikube profile name via-mp
if the profile name is notminikube
.
- Pass in
Port forward
Before the setup, we will need to do a port-forward of the services that kiali is using.
We can use the hack/run-kiali.sh
script for this purpose. It can work without any options. Pass –help to see the options it takes.
An example to run it following the above schema:
./run-kiali.sh -pg 13000:3000 -pp 19090:9090 -app 8080 -es false -iu http://127.0.0.1:15014
Local Configuration File
The go process will require a configuration to point to these services and other specific configurations. This file will be places in ~/kiali/config.yaml, and referenced later by the GO local process.
api:
namespaces:
exclude:
- istio-operator
- kube.*
- openshift.*
- ibm.*
- kiali-operator
label_selector: ""
server:
address: localhost
port: 8000
static_content_root_directory: /home/userTests/kiali-static-files
in_cluster: false
deployment:
accessible_namespaces: [ "**" ]
extensions:
iter_8:
enabled: true
external_services:
istio:
istio_canary_revision:
current: prod
upgrade: canary
url_service_version: http://localhost:15014/version
config_map_name: istio
istio_identity_domain: svc.cluster.local
prometheus:
url: http://localhost:19090
cache_enabled: true
tracing:
enabled: true
in_cluster_url: http://localhost:16685/jaeger
url: http://localhost:16686/jaeger
use_grpc: false
whitelist_istio_system:
- jaeger-query
- istio-ingressgateway
namespace: istio-system
port: 443
service: tracing
auth:
insecure_skip_verify: false
password: cTSM/77tNZ0yGw/ZJXkO7IObbemLJjFkCp4GuqLzXIgE8RWrJvWjFViv9Dpu0SguxD3N/oCUPJnyreoHuSCNZ9kFTrHgRl033waUpTAYZPCEzMPw9Rui5C3/o5x4bclHq0IQ8OGr5LuN2L1WCXrEo9iUntPMovbsP1Alqwh0LZ79ztIkObNBNniX1tuo0fM9O53QKSAjGBnK13LFjHC7wXo+mWw1fzHf9x4jib6UDbeuzHfugDS0Mtj4E9QDRHjpPUrh66dVib4kCJ4nMO19BuiIk+OgbNdhBhg3wn1fn7F6+d/i6Mbq/C/OJylSL6ewUVwIvIAmcRM/jdTqdz0w
type: basic
use_kiali_token: false
username: internal
grafana:
in_cluster_url: http://localhost:13000
url: http://localhost:13000
dashboards:
- name: "Istio Service Dashboard"
variables:
namespace: "var-namespace"
service: "var-service"
- name: "Istio Workload Dashboard"
variables:
namespace: "var-namespace"
workload: "var-workload"
custom_dashboards:
enabled: false
#health_config:
# rate:
# - namespace: "alpha"
# tolerance:
# - code: "4XX"
# degraded: 30
# failure: 50
# protocol: "http"
# - code: "5XX"
# degraded: 30
# failure: 50
# protocol: "http"
# - namespace: "beta"
# tolerance:
# - code: "[4]\\d\\d"
# degraded: 30
# failure: 40
# protocol: "http"
# - code: "[5]\\d\\d"
# protocol: "http"
auth:
strategy: anonymous
login_token:
signing_key: test
kubernetes_config:
cache_enabled: true
cache_duration: 300
cache_namespaces:
- bookinfo
- istio-system
cache_token_namespace_duration: 120
excluded_workloads: []
kiali_feature_flags:
istio_injection_action: true
istio_upgrade_action: false
istio_labels:
app_label_name: app
injection_label_name: istio-injection
injection_label_rev: istio.io/rev
version_label_name: version
Local Processes
In this section we will start the 3 local processes for kiali:
- kiali-core: The backend Go process
- kiali-ui: The frontend React process
- browser: The Javascript debugger process.
In this example, we will create the configurations in the Jetbrains Golang IDE.
kiali-core
To run the Kiali backend.
kiali-ui
In order to forward the requests to the backend propertly, we will need to add the following line in kiali/frontend/package.json:
"proxy": "http://localhost:8000",
browser
This process is required to debug the frontend.
After running the 3 processes, we should be able to access Kiali GUI in localhost:3000
Using VisualStudio Code
To run kiali in a debugger, a file “launch.json” should be created in your local kiali local repo’s .vscode directory (e.g. home/source/kiali/kiali/.vscode/launch.json). The file should look like:
{
"version": "0.2.0",
"configurations": [
{
"name": "Launch Kiali to use hack script services",
"type": "go",
"request": "launch",
"mode": "debug",
"program": "${workspaceRoot}/kiali.go",
"cwd": "${env:HOME}/tmp/run-kiali",
"args": ["-config", "${env:HOME}/tmp/run-kiali/run-kiali-config.yaml"],
"env": {
"KUBERNETES_SERVICE_HOST": "127.0.0.1",
"KUBERNETES_SERVICE_PORT": "8001",
"LOG_LEVEL": "trace"
}
}
]
}
run-kiali.sh should be started like this:
hack/run-kiali.sh --tmp-root-dir $HOME/tmp --enable-server false
8 - Kiali Integrations
8.1 - OSSM Console
OpenShift Service Mesh Console (OSSMC) is a Kiali integration for OpenShift console based in OpenShift dynamic plugins technology. It integrates part of the Kiali functionality into the OpenShift console, providing visibility of the Service Mesh.
OSSMC was first released in September 2022 as a developer preview. Please give it a try, provide feedback and let us know of any issues!