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Create and validate custom configuration file for Prometheus metrics in Azure Monitor

In addition to the default scrape targets that Azure Monitor Prometheus agent scrapes by default, use the following steps to provide more scrape config to the agent using a configmap. The Azure Monitor Prometheus agent doesn't understand or process operator CRDs for scrape configuration, but instead uses the native Prometheus configuration as defined in Prometheus configuration.

The three configmaps that can be used for custom target scraping are -

  • ama-metrics-prometheus-config (Recommended) - When a configmap with this name is created, scrape jobs defined in it are run from the Azure monitor metrics replica pod running in the cluster.
  • ama-metrics-prometheus-config-node (Advanced) - When a configmap with this name is created, scrape jobs defined in it are run from each Linux DaemonSet pod running in the cluster. For more information, see Advanced Setup.
  • ama-metrics-prometheus-config-node-windows (Advanced) - When a configmap with this name is created, scrape jobs defined in it are run from each windows DaemonSet. For more information, see Advanced Setup.

Create Prometheus configuration file

One easier way to author Prometheus scrape configuration jobs:

  • Step:1 Use a config file (yaml) to author/define scrape jobs
  • Step:2 Validate the scrape config file using a custom tool (as specified in this article) and then convert that configfile to configmap
  • Step:3 Deploy the scrape config file as configmap to your clusters.

Doing this way is easier to author yaml config (which is extremely space sensitive), and not add unintended spaces by directly authoring scrape config inside config map.

Create a Prometheus scrape configuration file named prometheus-config. For more information, see configuration tips and examples which gives more details on authoring scrape config for Prometheus. You can also refer to Prometheus.io scrape configuration reference. Your config file lists the scrape configs under the section scrape_configs section and can optionally use the global section for setting the global scrape_interval, scrape_timeout, and external_labels.

Tip

Changes to global section will impact the default configs and the custom config.

Here is a sample Prometheus scrape config file:

global:
  scrape_interval: 30s
scrape_configs:
- job_name: my_static_config
  scrape_interval: 60s
  static_configs:
    - targets: ['my-static-service.svc.cluster.local:1234']

- job_name: prometheus_example_app
  scheme: http
  kubernetes_sd_configs:
    - role: service
  relabel_configs:
    - source_labels: [__meta_kubernetes_service_name]
      action: keep
      regex: "prometheus-example-service"

Validate the scrape config file

The agent uses a custom promconfigvalidator tool to validate the Prometheus config given to it through the configmap. If the config isn't valid, then the custom configuration given gets rejected by the addon agent. Once you have your Prometheus config file, you can optionally use the promconfigvalidator tool to validate your config before creating a configmap that the agent consumes.

The promconfigvalidator tool is shipped inside the Azure Monitor metrics addon pod(s). You can use any of the ama-metrics-node-* pods in kube-system namespace in your cluster to download the tool for validation. Use kubectl cp to download the tool and its configuration:

for podname in $(kubectl get pods -l rsName=ama-metrics -n=kube-system -o json | jq -r '.items[].metadata.name'); do kubectl cp -n=kube-system "${podname}":/opt/promconfigvalidator ./promconfigvalidator;  kubectl cp -n=kube-system "${podname}":/opt/microsoft/otelcollector/collector-config-template.yml ./collector-config-template.yml; chmod 500 promconfigvalidator; done

After copying the executable and the yaml, locate the path of your Prometheus configuration file that you authored. Then replace <config path> in the command and run the validator with the command:

./promconfigvalidator/promconfigvalidator --config "<config path>" --otelTemplate "./promconfigvalidator/collector-config-template.yml"

Running the validator generates the merged configuration file merged-otel-config.yaml if no path is provided with the optional output parameter. Don't use this autogenerated merged file as config to the metrics collector agent, as it's only used for tool validation and debugging purposes.

Deploy config file as configmap

Your custom Prometheus configuration file is consumed as a field named prometheus-config inside metrics addon configmap(s) ama-metrics-prometheus-config (or) ama-metrics-prometheus-config-node (or) ama-metrics-prometheus-config-node-windows in the kube-system namespace. You can create a configmap from the scrape config file you created above, by renaming your Prometheus configuration file to prometheus-config (with no file extension) and running one or more of the following commands, depending on which configmap you want to create for your custom scrape job(s) config.

Ex;- to create configmap to be used by replicsset

kubectl create configmap ama-metrics-prometheus-config --from-file=prometheus-config -n kube-system

This creates a configmap named ama-metrics-prometheus-config in kube-system namespace. The Azure Monitor metrics replica pod restarts in 30-60 secs to apply the new config. To see if there any issues with the config validation, processing, or merging, you can look at the ama-metrics replica pods

Ex;- to create configmap to be used by linux DaemonSet

kubectl create configmap ama-metrics-prometheus-config-node --from-file=prometheus-config -n kube-system

This creates a configmap named ama-metrics-prometheus-config-node in kube-system namespace. Every Azure Monitor metrics Linux DaemonSet pod restarts in 30-60 secs to apply the new config. To see if there any issues with the config validation, processing, or merging, you can look at the ama-metrics-node linux deamonset pods

Ex;- to create configmap to be used by windows DaemonSet

kubectl create configmap ama-metrics-prometheus-config-node-windows --from-file=prometheus-config -n kube-system

This creates a configmap named ama-metrics-prometheus-config-node-windows in kube-system namespace. Every Azure Monitor metrics Windows DaemonSet pod restarts in 30-60 secs to apply the new config. To see if there any issues with the config validation, processing, or merging, you can look at the ama-metrics-win-node windows deamonset pods

Ensure that the Prometheus config file is named prometheus-config before running the following command since the file name is used as the configmap setting name.

This creates a configmap named ama-metrics-prometheus-config in kube-system namespace. The Azure Monitor metrics pod restarts to apply the new config. To see if there any issues with the config validation, processing, or merging, you can look at the ama-metrics pods.

A sample of the ama-metrics-prometheus-config configmap is here.

Troubleshooting

If you successfully created the configmap (ama-metrics-prometheus-config or ama-metrics-prometheus-config-node) in the kube-system namespace and still don't see the custom targets being scraped, check for errors in the replica pod logs for ama-metrics-prometheus-config configmap or DaemonSet pod logs for ama-metrics-prometheus-config-node configmap) using kubectl logs and make sure there are no errors in the Start Merging Default and Custom Prometheus Config section with prefix prometheus-config-merger

Note

Advanced setup: Configure custom Prometheus scrape jobs for the DaemonSet

The ama-metrics Replica pod consumes the custom Prometheus config and scrapes the specified targets. For a cluster with a large number of nodes and pods and a large volume of metrics to scrape, some of the applicable custom scrape targets can be off-loaded from the single ama-metrics Replica pod to the ama-metrics DaemonSet pod.

The ama-metrics-prometheus-config-node configmap, is similar to the replica-set configmap, and can be created to have static scrape configs on each node. The scrape config should only target a single node and shouldn't use service discovery/pod annotations. Otherwise, each node tries to scrape all targets and makes many calls to the Kubernetes API server.

Custom scrape targets can follow the same format by using static_configs with targets and using the $NODE_IP environment variable and specifying the port to scrape. Each pod of the DaemonSet takes the config, scrapes the metrics, and sends them for that node.

Example:- The following node-exporter config is one of the default targets for the DaemonSet pods. It uses the $NODE_IP environment variable, which is already set for every ama-metrics add-on container to target a specific port on the node.

- job_name: nodesample
  scrape_interval: 30s
  scheme: http
  metrics_path: /metrics
  relabel_configs:
  - source_labels: [__metrics_path__]
    regex: (.*)
    target_label: metrics_path
  - source_labels: [__address__]
    replacement: '$NODE_NAME'
    target_label: instance
  static_configs:
  - targets: ['$NODE_IP:9100']

Next steps