Monitor Node Health

Node Problem Detector is a daemon for monitoring and reporting about a node's health. You can run Node Problem Detector as a DaemonSet or as a standalone daemon. Node Problem Detector collects information about node problems from various daemons and reports these conditions to the API server as Node Conditions or as Events.

To learn how to install and use Node Problem Detector, see Node Problem Detector project documentation.

Before you begin

You need to have a Kubernetes cluster, and the kubectl command-line tool must be configured to communicate with your cluster. It is recommended to run this tutorial on a cluster with at least two nodes that are not acting as control plane hosts. If you do not already have a cluster, you can create one by using minikube or you can use one of these Kubernetes playgrounds:

Limitations

Enabling Node Problem Detector

Some cloud providers enable Node Problem Detector as an Addon. You can also enable Node Problem Detector with kubectl or by creating an Addon DaemonSet.

Using kubectl to enable Node Problem Detector

kubectl provides the most flexible management of Node Problem Detector. You can overwrite the default configuration to fit it into your environment or to detect customized node problems. For example:

  1. Create a Node Problem Detector configuration similar to node-problem-detector.yaml:

    apiVersion: apps/v1
    kind: DaemonSet
    metadata:
      name: node-problem-detector-v0.1
      namespace: kube-system
      labels:
        k8s-app: node-problem-detector
        version: v0.1
        kubernetes.io/cluster-service: "true"
    spec:
      selector:
        matchLabels:
          k8s-app: node-problem-detector  
          version: v0.1
          kubernetes.io/cluster-service: "true"
      template:
        metadata:
          labels:
            k8s-app: node-problem-detector
            version: v0.1
            kubernetes.io/cluster-service: "true"
        spec:
          hostNetwork: true
          containers:
          - name: node-problem-detector
            image: registry.k8s.io/node-problem-detector:v0.1
            securityContext:
              privileged: true
            resources:
              limits:
                cpu: "200m"
                memory: "100Mi"
              requests:
                cpu: "20m"
                memory: "20Mi"
            volumeMounts:
            - name: log
              mountPath: /log
              readOnly: true
          volumes:
          - name: log
            hostPath:
              path: /var/log/
  2. Start node problem detector with kubectl:

    kubectl apply -f https://k8s.io/examples/debug/node-problem-detector.yaml
    

Using an Addon pod to enable Node Problem Detector

If you are using a custom cluster bootstrap solution and don't need to overwrite the default configuration, you can leverage the Addon pod to further automate the deployment.

Create node-problem-detector.yaml, and save the configuration in the Addon pod's directory /etc/kubernetes/addons/node-problem-detector on a control plane node.

Overwrite the configuration

The default configuration is embedded when building the Docker image of Node Problem Detector.

However, you can use a ConfigMap to overwrite the configuration:

  1. Change the configuration files in config/

  2. Create the ConfigMap node-problem-detector-config:

    kubectl create configmap node-problem-detector-config --from-file=config/
    
  3. Change the node-problem-detector.yaml to use the ConfigMap:

    apiVersion: apps/v1
    kind: DaemonSet
    metadata:
      name: node-problem-detector-v0.1
      namespace: kube-system
      labels:
        k8s-app: node-problem-detector
        version: v0.1
        kubernetes.io/cluster-service: "true"
    spec:
      selector:
        matchLabels:
          k8s-app: node-problem-detector  
          version: v0.1
          kubernetes.io/cluster-service: "true"
      template:
        metadata:
          labels:
            k8s-app: node-problem-detector
            version: v0.1
            kubernetes.io/cluster-service: "true"
        spec:
          hostNetwork: true
          containers:
          - name: node-problem-detector
            image: registry.k8s.io/node-problem-detector:v0.1
            securityContext:
              privileged: true
            resources:
              limits:
                cpu: "200m"
                memory: "100Mi"
              requests:
                cpu: "20m"
                memory: "20Mi"
            volumeMounts:
            - name: log
              mountPath: /log
              readOnly: true
            - name: config # Overwrite the config/ directory with ConfigMap volume
              mountPath: /config
              readOnly: true
          volumes:
          - name: log
            hostPath:
              path: /var/log/
          - name: config # Define ConfigMap volume
            configMap:
              name: node-problem-detector-config
  4. Recreate the Node Problem Detector with the new configuration file:

    # If you have a node-problem-detector running, delete before recreating
    kubectl delete -f https://k8s.io/examples/debug/node-problem-detector.yaml
    kubectl apply -f https://k8s.io/examples/debug/node-problem-detector-configmap.yaml
    

Overwriting a configuration is not supported if a Node Problem Detector runs as a cluster Addon. The Addon manager does not support ConfigMap.

Problem Daemons

A problem daemon is a sub-daemon of the Node Problem Detector. It monitors specific kinds of node problems and reports them to the Node Problem Detector. There are several types of supported problem daemons.

  • A SystemLogMonitor type of daemon monitors the system logs and reports problems and metrics according to predefined rules. You can customize the configurations for different log sources such as filelog, kmsg, kernel, abrt, and systemd.

  • A SystemStatsMonitor type of daemon collects various health-related system stats as metrics. You can customize its behavior by updating its configuration file.

  • A CustomPluginMonitor type of daemon invokes and checks various node problems by running user-defined scripts. You can use different custom plugin monitors to monitor different problems and customize the daemon behavior by updating the configuration file.

  • A HealthChecker type of daemon checks the health of the kubelet and container runtime on a node.

Adding support for other log format

The system log monitor currently supports file-based logs, journald, and kmsg. Additional sources can be added by implementing a new log watcher.

Adding custom plugin monitors

You can extend the Node Problem Detector to execute any monitor scripts written in any language by developing a custom plugin. The monitor scripts must conform to the plugin protocol in exit code and standard output. For more information, please refer to the plugin interface proposal.

Exporter

An exporter reports the node problems and/or metrics to certain backends. The following exporters are supported:

  • Kubernetes exporter: this exporter reports node problems to the Kubernetes API server. Temporary problems are reported as Events and permanent problems are reported as Node Conditions.

  • Prometheus exporter: this exporter reports node problems and metrics locally as Prometheus (or OpenMetrics) metrics. You can specify the IP address and port for the exporter using command line arguments.

  • Stackdriver exporter: this exporter reports node problems and metrics to the Stackdriver Monitoring API. The exporting behavior can be customized using a configuration file.

Recommendations and restrictions

It is recommended to run the Node Problem Detector in your cluster to monitor node health. When running the Node Problem Detector, you can expect extra resource overhead on each node. Usually this is fine, because:

  • The kernel log grows relatively slowly.
  • A resource limit is set for the Node Problem Detector.
  • Even under high load, the resource usage is acceptable. For more information, see the Node Problem Detector benchmark result.
Last modified August 24, 2023 at 6:38 PM PST: Use code_sample shortcode instead of code shortcode (e8b136c3b3)