Automatically adjust pod resource levels with the vertical pod autoscaler

The OKD Vertical Pod Autoscaler Operator (VPA) automatically reviews the historic and current CPU and memory resources for containers in pods and can update the resource limits and requests based on the usage values it learns. The VPA uses individual custom resources (CR) to update all of the pods associated with a workload object, such as a Deployment, DeploymentConfig, StatefulSet, Job, DaemonSet, ReplicaSet, or ReplicationController, in a project.

The VPA helps you to understand the optimal CPU and memory usage for your pods and can automatically maintain pod resources through the pod lifecycle.

vertical pod autoscaler 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/.

About the Vertical Pod Autoscaler Operator

The Vertical Pod Autoscaler Operator (VPA) is implemented as an API resource and a custom resource (CR). The CR determines the actions the Vertical Pod Autoscaler Operator should take with the pods associated with a specific workload object, such as a daemon set, replication controller, and so forth, in a project.

The VPA automatically computes historic and current CPU and memory usage for the containers in those pods and uses this data to determine optimized resource limits and requests to ensure that these pods are operating efficiently at all times. For example, the VPA reduces resources for pods that are requesting more resources than they are using and increases resources for pods that are not requesting enough.

The VPA automatically deletes any pods that are out of alignment with its recommendations one at a time, so that your applications can continue to serve requests with no downtime. The workload objects then re-deploy the pods with the original resource limits and requests. The VPA uses a mutating admission webhook to update the pods with optimized resource limits and requests before the pods are admitted to a node. If you do not want the VPA to delete pods, you can view the VPA resource limits and requests and manually update the pods as needed.

For example, if you have a pod that uses 50% of the CPU but only requests 10%, the VPA determines that the pod is consuming more CPU than requested and deletes the pod. The workload object, such as replica set, restarts the pods and the VPA updates the new pod with its recommended resources.

For developers, you can use the VPA to help ensure your pods stay up during periods of high demand by scheduling pods onto nodes that have appropriate resources for each pod.

Administrators can use the VPA to better utilize cluster resources, such as preventing pods from reserving more CPU resources than needed. The VPA monitors the resources that workloads are actually using and adjusts the resource requirements so capacity is available to other workloads. The VPA also maintains the ratios between limits and requests that are specified in initial container configuration.

If you stop running the VPA or delete a specific VPA CR in your cluster, the resource requests for the pods already modified by the VPA do not change. Any new pods get the resources defined in the workload object, not the previous recommendations made by the VPA.

Installing the Vertical Pod Autoscaler Operator

You can use the OKD web console to install the Vertical Pod Autoscaler Operator (VPA).

Prerequisites

  • Ensure that you have downloaded the pull secret from the Red Hat OpenShift Cluster Manager site as shown in Obtaining the installation program in the installation documentation for your platform.

    If you have the pull secret, add the redhat-operators catalog to the OperatorHub custom resource (CR) as shown in Configuring OKD to use Red Hat Operators.

Procedure

  1. In the OKD web console, click OperatorsOperatorHub.

  2. Choose VerticalPodAutoscaler from the list of available Operators, and click Install.

  3. On the Install Operator page, ensure that the Operator recommended namespace option is selected. This installs the Operator in the mandatory openshift-vertical-pod-autoscaler namespace, which is automatically created if it does not exist.

  4. Click Install.

  5. Verify the installation by listing the VPA Operator components:

    1. Navigate to WorkloadsPods.

    2. Select the openshift-vertical-pod-autoscaler project from the drop-down menu and verify that there are four pods running.

    3. Navigate to WorkloadsDeployments to verify that there are four deployments running.

  6. Optional. Verify the installation in the OKD CLI using the following command:

    1. $ oc get all -n openshift-vertical-pod-autoscaler

    The output shows four pods and four deplyoments:

    Example output

    1. NAME READY STATUS RESTARTS AGE
    2. pod/vertical-pod-autoscaler-operator-85b4569c47-2gmhc 1/1 Running 0 3m13s
    3. pod/vpa-admission-plugin-default-67644fc87f-xq7k9 1/1 Running 0 2m56s
    4. pod/vpa-recommender-default-7c54764b59-8gckt 1/1 Running 0 2m56s
    5. pod/vpa-updater-default-7f6cc87858-47vw9 1/1 Running 0 2m56s
    6. NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE
    7. service/vpa-webhook ClusterIP 172.30.53.206 <none> 443/TCP 2m56s
    8. NAME READY UP-TO-DATE AVAILABLE AGE
    9. deployment.apps/vertical-pod-autoscaler-operator 1/1 1 1 3m13s
    10. deployment.apps/vpa-admission-plugin-default 1/1 1 1 2m56s
    11. deployment.apps/vpa-recommender-default 1/1 1 1 2m56s
    12. deployment.apps/vpa-updater-default 1/1 1 1 2m56s
    13. NAME DESIRED CURRENT READY AGE
    14. replicaset.apps/vertical-pod-autoscaler-operator-85b4569c47 1 1 1 3m13s
    15. replicaset.apps/vpa-admission-plugin-default-67644fc87f 1 1 1 2m56s
    16. replicaset.apps/vpa-recommender-default-7c54764b59 1 1 1 2m56s
    17. replicaset.apps/vpa-updater-default-7f6cc87858 1 1 1 2m56s

About Using the Vertical Pod Autoscaler Operator

To use the Vertical Pod Autoscaler Operator (VPA), you create a VPA custom resource (CR) for a workload object in your cluster. The VPA learns and applies the optimal CPU and memory resources for the pods associated with that workload object. You can use a VPA with a deployment, stateful set, job, daemon set, replica set, or replication controller workload object. The VPA CR must be in the same project as the pods you want to monitor.

You use the VPA CR to associate a workload object and specify which mode the VPA operates in:

  • The Auto and Recreate modes automatically apply the VPA CPU and memory recommendations throughout the pod lifetime. The VPA deletes any pods in the project that are out of alignment with its recommendations. When redeployed by the workload object, the VPA updates the new pods with its recommendations.

  • The Initial mode automatically applies VPA recommendations only at pod creation.

  • The Off mode only provides recommended resource limits and requests, allowing you to manually apply the recommendations. The off mode does not update pods.

You can also use the CR to opt-out certain containers from VPA evaluation and updates.

For example, a pod has the following limits and requests:

  1. resources:
  2. limits:
  3. cpu: 1
  4. memory: 500Mi
  5. requests:
  6. cpu: 500m
  7. memory: 100Mi

After creating a VPA that is set to auto, the VPA learns the resource usage and deletes the pod. When redeployed, the pod uses the new resource limits and requests:

  1. resources:
  2. limits:
  3. cpu: 50m
  4. memory: 1250Mi
  5. requests:
  6. cpu: 25m
  7. memory: 262144k

You can view the VPA recommendations using the following command:

  1. $ oc get vpa <vpa-name> --output yaml

After a few minutes, the output shows the recommendations for CPU and memory requests, similar to the following:

Example output

  1. ...
  2. status:
  3. ...
  4. recommendation:
  5. containerRecommendations:
  6. - containerName: frontend
  7. lowerBound:
  8. cpu: 25m
  9. memory: 262144k
  10. target:
  11. cpu: 25m
  12. memory: 262144k
  13. uncappedTarget:
  14. cpu: 25m
  15. memory: 262144k
  16. upperBound:
  17. cpu: 262m
  18. memory: "274357142"
  19. - containerName: backend
  20. lowerBound:
  21. cpu: 12m
  22. memory: 131072k
  23. target:
  24. cpu: 12m
  25. memory: 131072k
  26. uncappedTarget:
  27. cpu: 12m
  28. memory: 131072k
  29. upperBound:
  30. cpu: 476m
  31. memory: "498558823"
  32. ...

The output shows the recommended resources, target, the minimum recommended resources, lowerBound, the highest recommended resources, upperBound, and the most recent resource recommendations, uncappedTarget.

The VPA uses the lowerBound and upperBound values to determine if a pod needs to be updated. If a pod has resource requests below the lowerBound values or above the upperBound values, the VPA terminates and recreates the pod with the target values.

Automatically applying VPA recommendations

To use the VPA to automatically update pods, create a VPA CR for a specific workload object with updateMode set to Auto or Recreate.

When the pods are created for the workload object, the VPA constantly monitors the containers to analyze their CPU and memory needs. The VPA deletes any pods that do not meet the VPA recommendations for CPU and memory. When redeployed, the pods use the new resource limits and requests based on the VPA recommendations, honoring any pod disruption budget set for your applications. The recommendations are added to the status field of the VPA CR for reference.

The workload object must specify a minimum of two replicas in order for the VPA to monitor and update the pods. If the workload object specifies one replica, the VPA does not delete the pod to prevent application downtime. You can manually delete the pod to use the recommended resources.

Example VPA CR for the Auto mode

  1. apiVersion: autoscaling.k8s.io/v1
  2. kind: VerticalPodAutoscaler
  3. metadata:
  4. name: vpa-recommender
  5. spec:
  6. targetRef:
  7. apiVersion: "apps/v1"
  8. kind: Deployment (1)
  9. name: frontend (2)
  10. updatePolicy:
  11. updateMode: "Auto" (3)
1The type of workload object you want this VPA CR to manage.
2The name of the workload object you want this VPA CR to manage.
3Set the mode to Auto or Recreate:
  • Auto. The VPA assigns resource requests on pod creation and updates the existing pods by terminating them when the requested resources differ significantly from the new recommendation.

  • Recreate. The VPA assigns resource requests on pod creation and updates the existing pods by terminating them when the requested resources differ significantly from the new recommendation. This mode should be used rarely, only if you need to ensure that the pods are restarted whenever the resource request changes.

There must be operating pods in the project before the VPA can determine recommended resources and apply the recommendations to new pods.

Automatically applying VPA recommendations on pod creation

To use the VPA to apply the recommended resources only when a pod is first deployed, create a VPA CR for a specific workload object with updateMode set to Initial.

Then, manually delete any pods associated with the workload object that you want to use the VPA recommendations. In the Initial mode, the VPA does not delete pods and does not update the pods as it learns new resource recommendations.

Example VPA CR for the Initial mode

  1. apiVersion: autoscaling.k8s.io/v1
  2. kind: VerticalPodAutoscaler
  3. metadata:
  4. name: vpa-recommender
  5. spec:
  6. targetRef:
  7. apiVersion: "apps/v1"
  8. kind: Deployment (1)
  9. name: frontend (2)
  10. updatePolicy:
  11. updateMode: "Initial" (3)
1The type of workload object you want this VPA CR to manage.
2The name of the workload object you want this VPA CR to manage.
3Set the mode to Initial. The VPA assigns resources when pods are created and does not change the resources during the lifetime of the pod.

There must be operating pods in the project before a VPA can determine recommended resources and apply the recommendations to new pods.

Manually applying VPA recommendations

To use the VPA to only determine the recommended CPU and memory values, create a VPA CR for a specific workload object with updateMode set to off.

When the pods are created for that workload object, the VPA analyzes the CPU and memory needs of the containers and records those recommendations in the status field of the VPA CR. The VPA does not update the pods as it determines new resource recommendations.

Example VPA CR for the Off mode

  1. apiVersion: autoscaling.k8s.io/v1
  2. kind: VerticalPodAutoscaler
  3. metadata:
  4. name: vpa-recommender
  5. spec:
  6. targetRef:
  7. apiVersion: "apps/v1"
  8. kind: Deployment (1)
  9. name: frontend (2)
  10. updatePolicy:
  11. updateMode: "Off" (3)
1The type of workload object you want this VPA CR to manage.
2The name of the workload object you want this VPA CR to manage.
3Set the mode to Off.

You can view the recommendations using the following command.

  1. $ oc get vpa <vpa-name> --output yaml

With the recommendations, you can edit the workload object to add CPU and memory requests, then delete and redeploy the pods using the recommended resources.

There must be operating pods in the project before a VPA can determine recommended resources.

Exempting containers from applying VPA recommendations

If your workload object has multiple containers and you do not want the VPA to evaluate and act on all of the containers, create a VPA CR for a specific workload object and add a resourcePolicy to opt-out specific containers.

When the VPA updates the pods with recommended resources, any containers with a resourcePolicy are not updated and the VPA does not present recommendations for those containers in the pod.

  1. apiVersion: autoscaling.k8s.io/v1
  2. kind: VerticalPodAutoscaler
  3. metadata:
  4. name: vpa-recommender
  5. spec:
  6. targetRef:
  7. apiVersion: "apps/v1"
  8. kind: Deployment (1)
  9. name: frontend (2)
  10. updatePolicy:
  11. updateMode: "Auto" (3)
  12. resourcePolicy: (4)
  13. containerPolicies:
  14. - containerName: my-opt-sidecar
  15. mode: "Off"
1The type of workload object you want this VPA CR to manage.
2The name of the workload object you want this VPA CR to manage.
3Set the mode to Auto, Recreate, or Off. The Recreate mode should be used rarely, only if you need to ensure that the pods are restarted whenever the resource request changes.
4Specify the containers you want to opt-out and set mode to Off.

For example, a pod has two containers, the same resource requests and limits:

  1. # ...
  2. spec:
  3. containers:
  4. - name: frontend
  5. resources:
  6. limits:
  7. cpu: 1
  8. memory: 500Mi
  9. requests:
  10. cpu: 500m
  11. memory: 100Mi
  12. - name: backend
  13. resources:
  14. limits:
  15. cpu: "1"
  16. memory: 500Mi
  17. requests:
  18. cpu: 500m
  19. memory: 100Mi
  20. # ...

After launching a VPA CR with the backend container set to opt-out, the VPA terminates and recreates the pod with the recommended resources applied only to the frontend container:

  1. ...
  2. spec:
  3. containers:
  4. name: frontend
  5. resources:
  6. limits:
  7. cpu: 50m
  8. memory: 1250Mi
  9. requests:
  10. cpu: 25m
  11. memory: 262144k
  12. ...
  13. name: backend
  14. resources:
  15. limits:
  16. cpu: "1"
  17. memory: 500Mi
  18. requests:
  19. cpu: 500m
  20. memory: 100Mi
  21. ...

Using the Vertical Pod Autoscaler Operator

You can use the Vertical Pod Autoscaler Operator (VPA) by creating a VPA custom resource (CR). The CR indicates which pods it should analyze and determines the actions the VPA should take with those pods.

Procedure

To create a VPA CR for a specific workload object:

  1. Change to the project where the workload object you want to scale is located.

    1. Create a VPA CR YAML file:

      1. apiVersion: autoscaling.k8s.io/v1
      2. kind: VerticalPodAutoscaler
      3. metadata:
      4. name: vpa-recommender
      5. spec:
      6. targetRef:
      7. apiVersion: "apps/v1"
      8. kind: Deployment (1)
      9. name: frontend (2)
      10. updatePolicy:
      11. updateMode: "Auto" (3)
      12. resourcePolicy: (4)
      13. containerPolicies:
      14. - containerName: my-opt-sidecar
      15. mode: "Off"
      1Specify the type of workload object you want this VPA to manage: Deployment, StatefulSet, Job, DaemonSet, ReplicaSet, or ReplicationController.
      2Specify the name of an existing workload object you want this VPA to manage.
      3Specify the VPA mode:
      • auto to automatically apply the recommended resources on pods associated with the controller. The VPA terminates existing pods and creates new pods with the recommended resource limits and requests.

      • recreate to automatically apply the recommended resources on pods associated with the workload object. The VPA terminates existing pods and creates new pods with the recommended resource limits and requests. The recreate mode should be used rarely, only if you need to ensure that the pods are restarted whenever the resource request changes.

      • initial to automatically apply the recommended resources when pods associated with the workload object are created. The VPA does not update the pods as it learns new resource recommendations.

      • off to only generate resource recommendations for the pods associated with the workload object. The VPA does not update the pods as it learns new resource recommendations and does not apply the recommendations to new pods.

      4Optional. Specify the containers you want to opt-out and set the mode to Off.
    2. Create the VPA CR:

      1. $ oc create -f <file-name>.yaml

      After a few moments, the VPA learns the resource usage of the containers in the pods associated with the workload object.

      You can view the VPA recommendations using the following command:

      1. $ oc get vpa <vpa-name> --output yaml

      The output shows the recommendations for CPU and memory requests, similar to the following:

      Example output

      1. ...
      2. status:
      3. ...
      4. recommendation:
      5. containerRecommendations:
      6. - containerName: frontend
      7. lowerBound: (1)
      8. cpu: 25m
      9. memory: 262144k
      10. target: (2)
      11. cpu: 25m
      12. memory: 262144k
      13. uncappedTarget: (3)
      14. cpu: 25m
      15. memory: 262144k
      16. upperBound: (4)
      17. cpu: 262m
      18. memory: "274357142"
      19. - containerName: backend
      20. lowerBound:
      21. cpu: 12m
      22. memory: 131072k
      23. target:
      24. cpu: 12m
      25. memory: 131072k
      26. uncappedTarget:
      27. cpu: 12m
      28. memory: 131072k
      29. upperBound:
      30. cpu: 476m
      31. memory: "498558823"
      32. ...
      1lowerBound is the minimum recommended resource levels.
      2target is the recommended resource levels.
      3upperBound is the highest recommended resource levels.
      4uncappedTarget is the most recent resource recommendations.

Uninstalling the Vertical Pod Autoscaler Operator

You can remove the Vertical Pod Autoscaler Operator (VPA) from your OKD cluster. After uninstalling, the resource requests for the pods already modified by an existing VPA CR do not change. Any new pods get the resources defined in the workload object, not the previous recommendations made by the Vertical Pod Autoscaler Operator.

You can remove a specific VPA using the oc delete vpa <vpa-name> command. The same actions apply for resource requests as uninstalling the vertical pod autoscaler.

This action removes the Operator as well as the Operator deployments and pods. Any Operands, and resources managed by the Operator, including CRDs and CRs, are not removed. To remove these after uninstalling the Operator, you might need to manually delete them.

Prerequisites

  • The Vertical Pod Autoscaler Operator must be installed.

Procedure

  1. In the OKD web console, click OperatorsInstalled Operators.

  2. Switch to the openshift-vertical-pod-autoscaler project.

  3. Find the VerticalPodAutoscaler Operator and click the Options menu. Select Uninstall Operator.

  4. In the dialog box, click Uninstall.