Custom Dashboards
Kiali can display custom dashboards to monitor application metrics. They are available for Applications and Workloads.
To display custom dashboards, Kiali expects some Kubernetes labels to be set on your pods: the app label to identify the application, and the version label, combined with app, to identify a workload (their names can be configured). These labels are necessary for Kiali to identify the sources of the metrics.
1. 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
.
1.1. Using another Prometheus instance
You can use a different instance of Prometheus for these metrics, as opposed to Istio metrics. It can be configured from the Kiali CR when using the Kiali operator, or ConfigMap otherwise:
# ...
external_services:
custom_dashboards:
prometheus:
url: URL_TO_SERVER
namespace_label: kubernetes_namespace
# ...
For more details on this configuration, such as Prometheus authentication options, check this 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
2. Pods 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 dashboards that Kiali will look for. It must match the name of the custom resource.
3. Default dashboards
Kiali comes with a set of default dashboards for various runtimes.
3.1. 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 default 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
3.2. Envoy
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.
Unlike the other custom dashboards, there is no automatic discovery configured for Envoy. You must explicitly enable the Envoy dashboard with the pod annotation kiali.io/dashboards: envoy
.
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.
3.3. 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
3.4. 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
3.5. 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"
3.6. 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
3.7. 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
4. Create new dashboards
The default dashboards described above are just examples of what we can have. It’s pretty easy to create new ones.
When installing Kiali, a new CRD is installed in the system: monitoringdashboard.monitoring.kiali.io. It declares the resource kind MonitoringDashboard. Here’s what this resource looks like:
apiVersion: "monitoring.kiali.io/v1alpha1"
kind: MonitoringDashboard
metadata:
name: vertx-custom
spec:
runtime: Vert.x
title: Vert.x Metrics
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 (from metadata) corresponds to what you can set in pods annotation kiali.io/runtimes
.
Spec fields 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"
).
-
-
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.
-
Label clash: you should try to avoid labels clashes within a dashboard. 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.
Dashboard resources are added in Kubernetes just like any other resource:
kubectl apply -f mydashboard.yml
Or for OpenShift:
oc apply -f mydashboard.yml
To make the dashboard resources available cluster-wide, just create them in Kiali namespace (usually istio-system). Else, they will be available only for applications or workloads of the same namespace. In the case where the same dashboard name exists in a specific namespace and in Kiali namespace, the former takes precedence.
5. 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
.