$ oc -n openshift-monitoring edit configmap cluster-monitoring-config
You can use OpenShift Monitoring for your own services in addition to monitoring the cluster. This way, you do not need to use an additional monitoring solution. This helps keeping monitoring centralized. Additionally, you can extend the access to the metrics of your services beyond cluster administrators. This enables developers and arbitrary users to access these metrics.
Custom Prometheus instances and the Prometheus Operator installed through Operator Lifecycle Manager (OLM) can cause issues with user-defined workload monitoring if it is enabled. Custom Prometheus instances are not supported in OpenShift Container Platform. |
Monitoring your own services is a Technology Preview feature only. Technology Preview features are not supported with Red Hat production service level agreements (SLAs) and might not be functionally complete. Red Hat does not recommend using them in production. These features provide early access to upcoming product features, enabling customers to test functionality and provide feedback during the development process. For more information about the support scope of Red Hat Technology Preview features, see https://access.redhat.com/support/offerings/techpreview/. |
You can enable monitoring your own services by setting the techPreviewUserWorkload/enabled
flag in the cluster monitoring config map.
You have access to the cluster as a user with the cluster-admin
role.
You have installed the OpenShift CLI (oc).
You have created the cluster-monitoring-config
configmap
object.
Start editing the cluster-monitoring-config
configmap
object:
$ oc -n openshift-monitoring edit configmap cluster-monitoring-config
Set the techPreviewUserWorkload
setting to true
under data/config.yaml
:
apiVersion: v1
kind: configmap
metadata:
name: cluster-monitoring-config
namespace: openshift-monitoring
data:
config.yaml: |
techPreviewUserWorkload:
enabled: true
Save the file to apply the changes. Monitoring your own services is enabled automatically.
Optional: You can check that the prometheus-user-workload
pods were created:
$ oc -n openshift-user-workload-monitoring get pod
NAME READY STATUS RESTARTS AGE
prometheus-operator-85bbb7b64d-7jwjd 1/1 Running 0 3m24s
prometheus-user-workload-0 5/5 Running 1 3m13s
prometheus-user-workload-1 5/5 Running 1 3m13s
See Creating a cluster monitoring config map to learn how to create the cluster-monitoring-config
configmap
object.
To test monitoring your own services, you can deploy a sample service.
Create a YAML file for the service configuration. In this example, it is called prometheus-example-app.yaml
.
Fill the file with the configuration for deploying the service:
apiVersion: v1
kind: Namespace
metadata:
name: ns1
---
apiVersion: apps/v1
kind: Deployment
metadata:
labels:
app: prometheus-example-app
name: prometheus-example-app
namespace: ns1
spec:
replicas: 1
selector:
matchLabels:
app: prometheus-example-app
template:
metadata:
labels:
app: prometheus-example-app
spec:
containers:
- image: quay.io/brancz/prometheus-example-app:v0.2.0
imagePullPolicy: IfNotPresent
name: prometheus-example-app
---
apiVersion: v1
kind: Service
metadata:
labels:
app: prometheus-example-app
name: prometheus-example-app
namespace: ns1
spec:
ports:
- port: 8080
protocol: TCP
targetPort: 8080
name: web
selector:
app: prometheus-example-app
type: ClusterIP
This configuration deploys a service named prometheus-example-app
in the ns1
project. This service exposes the custom version
metric.
Apply the configuration file to the cluster:
$ oc apply -f prometheus-example-app.yaml
It will take some time to deploy the service.
You can check that the service is running:
$ oc -n ns1 get pod
NAME READY STATUS RESTARTS AGE
prometheus-example-app-7857545cb7-sbgwq 1/1 Running 0 81m
This procedure shows how to create a role that allows a user to set up metrics collection for a service as described in "Setting up metrics collection".
Create a YAML file for the new role. In this example, it is called custom-metrics-role.yaml
.
Fill the file with the configuration for the monitor-crd-edit
role:
kind: ClusterRole
apiVersion: rbac.authorization.k8s.io/v1
metadata:
name: monitor-crd-edit
rules:
- apiGroups: ["monitoring.coreos.com"]
resources: ["prometheusrules", "servicemonitors", "podmonitors"]
verbs: ["get", "list", "watch", "create", "update", "patch", "delete"]
This role enables a user to set up metrics collection for services.
Apply the configuration file to the cluster:
$ oc apply -f custom-metrics-role.yaml
Now the role is created.
This procedure shows how to assign the monitor-crd-edit
role to a user.
You need to have a user created.
You need to have the monitor-crd-edit
role described in "Creating a role for setting up metrics collection" created.
In the Web console, navigate to User Management → Role Bindings → Create Binding.
In Binding Type, select the "Namespace Role Binding" type.
In Name, enter a name for the binding.
In Namespace, select the namespace where you want to grant the access.
In Role Name, enter monitor-crd-edit
.
In Subject, select User.
In Subject Name, enter name of the user, for example johnsmith
.
Confirm the role binding. Now the user has been assigned the monitor-crd-edit
role, which allows him to set up metrics collection for a service in the namespace.
To use the metrics exposed by your service, you need to configure OpenShift Monitoring to scrape metrics from the /metrics
endpoint. You can do this using a ServiceMonitor
custom resource definition (CRD) that specifies how a service should be monitored, or a PodMonitor
CRD that specifies how a pod should be monitored. The former requires a Service
object, while the latter does not, allowing Prometheus to directly scrape metrics from the metrics endpoint exposed by a Pod.
This procedure shows how to create a ServiceMonitor
resource for the service.
Log in as a cluster administrator or a user with the monitor-crd-edit
role.
Create a YAML file for the ServiceMonitor
resource configuration. In this example, the file is called example-app-service-monitor.yaml
.
Fill the file with the configuration for creating the ServiceMonitor
resource:
apiVersion: monitoring.coreos.com/v1
kind: ServiceMonitor
metadata:
labels:
k8s-app: prometheus-example-monitor
name: prometheus-example-monitor
namespace: ns1
spec:
endpoints:
- interval: 30s
port: web
scheme: http
selector:
matchLabels:
app: prometheus-example-app
This configuration makes OpenShift Monitoring scrape the metrics exposed by the sample service deployed in "Deploying a sample service", which includes the single version
metric.
Apply the configuration file to the cluster:
$ oc apply -f example-app-service-monitor.yaml
It will take some time to deploy the ServiceMonitor
resource.
You can check that the ServiceMonitor
resource is running:
$ oc -n ns1 get servicemonitor
NAME AGE
prometheus-example-monitor 81m
See the Prometheus Operator API documentation for more information on ServiceMonitor
and PodMonitor
resources.
You can create alerting rules, which will fire alerts based on values of chosen metrics of the service.
In the current version of the Technology Preview, only administrators can access alerting rules using the Prometheus UI and the Web Console. |
Create a YAML file for alerting rules. In this example, it is called example-app-alerting-rule.yaml
.
Fill the file with the configuration for the alerting rules:
The expression can only reference metrics exposed by your own services. Currently it is not possible to correlate existing cluster metrics. |
apiVersion: monitoring.coreos.com/v1
kind: PrometheusRule
metadata:
name: example-alert
namespace: ns1
spec:
groups:
- name: example
rules:
- alert: VersionAlert
expr: version{job="prometheus-example-app"} == 0
This configuration creates an alerting rule named example-alert
, which fires an alert when the version
metric exposed by the sample service becomes 0
.
Apply the configuration file to the cluster:
$ oc apply -f example-app-alerting-rule.yaml
It will take some time to create the alerting rules.
By default, only cluster administrator users and developers have access to metrics from your services. This procedure shows how to grant metrics access to a particular project to an arbitrary user.
You need to have a user created.
You need to log in as a cluster administrator.
Run this command to give a user access to all metrics of your services in a defined namespace:
$ oc policy add-role-to-user view <user> -n <namespace>
For example, to give view access to the ns1
namespace to user bobwilliams
, run:
$ oc policy add-role-to-user view bobwilliams -n ns1
Alternatively, in the Web console, switch to the Developer Perspective, and click Advanced → Project Access. From there, you can select the correct namespace and assign the view
role to a user.
Once you have enabled monitoring your own services, deployed a service, and set up metrics collection for it, you can access the metrics of the service as a cluster administrator, as a developer, or as a user with view permissions for the project.
The Grafana instance shipped within OpenShift Container Platform Monitoring is read-only and displays only infrastructure-related dashboards. |
You need to deploy the service that you want to monitor.
You need to enable monitoring of your own services.
You need to have metrics scraping set up for the service.
You need to log in as a cluster administrator, a developer, or as a user with view permissions for the project.
Access the Prometheus web interface:
To access the metrics as a cluster administrator, go to the OpenShift Container Platform web console, switch to the Administrator Perspective, and click Monitoring → Metrics.
Cluster administrators, when using the Administrator Perspective, have access to all cluster metrics and to custom service metrics from all projects. |
Only cluster administrators have access to the Alertmanager and Prometheus UIs. |
To access the metrics as a developer or a user with permissions, go to the OpenShift Container Platform web console, switch to the Developer Perspective, then click Advanced → Metrics. Select the project you want to see the metrics for.
Developers can only use the Developer Perspective. They can only query metrics from a single project. |
Use the PromQL interface to run queries for your services.