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actions-runner-controller's Introduction

actions-runner-controller

awesome-runners

This controller operates self-hosted runners for GitHub Actions on your Kubernetes cluster.

ToC:

Motivation

GitHub Actions is a very useful tool for automating development. GitHub Actions jobs are run in the cloud by default, but you may want to run your jobs in your environment. Self-hosted runner can be used for such use cases, but requires the provisioning and configuration of a virtual machine instance. Instead if you already have a Kubernetes cluster, it makes more sense to run the self-hosted runner on top of it.

actions-runner-controller makes that possible. Just create a Runner resource on your Kubernetes, and it will run and operate the self-hosted runner for the specified repository. Combined with Kubernetes RBAC, you can also build simple Self-hosted runners as a Service.

Installation

actions-runner-controller uses cert-manager for certificate management of Admission Webhook. Make sure you have already installed cert-manager before you install. The installation instructions for cert-manager can be found below.

Install the custom resource and actions-runner-controller with kubectl or helm. This will create actions-runner-system namespace in your Kubernetes and deploy the required resources.

Kubectl Deployment:

# REPLACE "v0.18.2" with the version you wish to deploy
kubectl apply -f https://github.com/actions-runner-controller/actions-runner-controller/releases/download/v0.18.2/actions-runner-controller.yaml

Helm Deployment:

Note: For all configuration options for the Helm chart see the chart's README

helm repo add actions-runner-controller https://actions-runner-controller.github.io/actions-runner-controller
helm upgrade --install --namespace actions-runner-system --create-namespace \
             --wait actions-runner-controller actions-runner-controller/actions-runner-controller

GitHub Enterprise Support

The solution supports both GitHub Enterprise Cloud and Server editions as well as regular GitHub. Both PAT (personal access token) and GitHub App authentication works for installations that will be deploying either repository level and / or organization level runners. If you need to deploy enterprise level runners then you are restricted to PAT based authentication as GitHub doesn't support GitHub App based authentication for enterprise runners currently.

If you are deploying this solution into a GitHub Enterprise Server environment then you will need version >= 3.0.0.

When deploying the solution for a GitHub Enterprise Server environment you need to provide an additional environment variable as part of the controller deployment:

kubectl set env deploy controller-manager -c manager GITHUB_ENTERPRISE_URL=<GHEC/S URL> --namespace actions-runner-system

Note: The repository maintainers do not have an enterprise environment (cloud or server). Support for the enterprise specific feature set is community driven and on a best effort basis. PRs from the community are welcomed to add features and maintain support.

Setting Up Authentication with GitHub API

There are two ways for actions-runner-controller to authenticate with the GitHub API (only 1 can be configured at a time however):

  1. Using a GitHub App (not supported for enterprise level runners due to lack of support from GitHub)
  2. Using a PAT

Functionality wise, there isn't much of a difference between the 2 authentication methods. The primarily benefit of authenticating via a GitHub App is an increased API quota.

If you are deploying the solution for a GitHub Enterprise Server environment you are able to configure your rate limit settings making the main benefit irrelevant. If you're deploying the solution for a GitHub Enterprise Cloud or regular GitHub environment and you run into rate limit issues, consider deploying the solution using the GitHub App authentication method instead.

Deploying Using GitHub App Authentication

You can create a GitHub App for either your user account or any organization, below are the app permissions required for each supported type of runner:

Note: Links are provided further down to create an app for your logged in user account or an organisation with the permissions for all runner types set in each link's query string

Required Permissions for Repository Runners:
Repository Permissions

Required Permissions for Organisation Runners:
Repository Permissions

  • Actions (read)
  • Metadata (read)

Organization Permissions

  • Self-hosted runners (read / write)

Subscribe to events

Note: All API routes mapped to their permissions can be found here if you wish to review


Setup Steps

If you want to create a GitHub App for your account, open the following link to the creation page, enter any unique name in the "GitHub App name" field, and hit the "Create GitHub App" button at the bottom of the page.

If you want to create a GitHub App for your organization, replace the :org part of the following URL with your organization name before opening it. Then enter any unique name in the "GitHub App name" field, and hit the "Create GitHub App" button at the bottom of the page to create a GitHub App.

You will see an App ID on the page of the GitHub App you created as follows, the value of this App ID will be used later.

App ID

Download the private key file by pushing the "Generate a private key" button at the bottom of the GitHub App page. This file will also be used later.

Generate a private key

Go to the "Install App" tab on the left side of the page and install the GitHub App that you created for your account or organization.

Install App

When the installation is complete, you will be taken to a URL in one of the following formats, the last number of the URL will be used as the Installation ID later (For example, if the URL ends in settings/installations/12345, then the Installation ID is 12345).

  • https://github.com/settings/installations/${INSTALLATION_ID}
  • https://github.com/organizations/eventreactor/settings/installations/${INSTALLATION_ID}

Finally, register the App ID (APP_ID), Installation ID (INSTALLATION_ID), and downloaded private key file (PRIVATE_KEY_FILE_PATH) to Kubernetes as Secret.

Kubectl Deployment:

$ kubectl create secret generic controller-manager \
    -n actions-runner-system \
    --from-literal=github_app_id=${APP_ID} \
    --from-literal=github_app_installation_id=${INSTALLATION_ID} \
    --from-file=github_app_private_key=${PRIVATE_KEY_FILE_PATH}

Helm Deployment:

Configure your values.yaml, see the chart's README for deploying the secret via Helm

Deploying Using PAT Authentication

Personal Access Tokens can be used to register a self-hosted runner by actions-runner-controller.

Log-in to a GitHub account that has admin privileges for the repository, and create a personal access token with the appropriate scopes listed below:

Required Scopes for Repository Runners

  • repo (Full control)

Required Scopes for Organization Runners

  • repo (Full control)
  • admin:org (Full control)
  • admin:public_key (read:public_key)
  • admin:repo_hook (read:repo_hook)
  • admin:org_hook (Full control)
  • notifications (Full control)
  • workflow (Full control)

Required Scopes for Enterprise Runners

  • admin:enterprise (Full control)

Note: When you deploy enterprise runners they will get access to organisations, however, access to the repositories themselves is NOT allowed by default. Each GitHub organisation must allow enterprise runner groups to be used in repositories as an initial one time configuration step, this only needs to be done once after which it is permanent for that runner group.


Once you have created the appropriate token, deploy it as a secret to your Kubernetes cluster that you are going to deploy the solution on:

Kubectl Deployment:

kubectl create secret generic controller-manager \
    -n actions-runner-system \
    --from-literal=github_token=${GITHUB_TOKEN}

Helm Deployment:

Configure your values.yaml, see the chart's README for deploying the secret via Helm

Usage

GitHub self-hosted runners can be deployed at various levels in a management hierarchy:

  • The repository level
  • The organization level
  • The enterprise level

There are two ways to use this controller:

  • Manage runners one by one with Runner.
  • Manage a set of runners with RunnerDeployment.

Repository Runners

To launch a single self-hosted runner, you need to create a manifest file includes Runner resource as follows. This example launches a self-hosted runner with name example-runner for the actions-runner-controller/actions-runner-controller repository.

# runner.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: Runner
metadata:
  name: example-runner
spec:
  repository: actions-runner-controller/actions-runner-controller
  env: []

Apply the created manifest file to your Kubernetes.

$ kubectl apply -f runner.yaml
runner.actions.summerwind.dev/example-runner created

You can see that the Runner resource has been created.

$ kubectl get runners
NAME             REPOSITORY                             STATUS
example-runner   actions-runner-controller/actions-runner-controller   Running

You can also see that the runner pod has been running.

$ kubectl get pods
NAME           READY   STATUS    RESTARTS   AGE
example-runner 2/2     Running   0          1m

The runner you created has been registered to your repository.

Actions tab in your repository settings

Now you can use your self-hosted runner. See the official documentation on how to run a job with it.

Organization Runners

To add the runner to an organization, you only need to replace the repository field with organization, so the runner will register itself to the organization.

# runner.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: Runner
metadata:
  name: example-org-runner
spec:
  organization: your-organization-name

Now you can see the runner on the organization level (if you have organization owner permissions).

Enterprise Runners

To add the runner to an enterprise, you only need to replace the repository field with enterprise, so the runner will register itself to the enterprise.

# runner.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: Runner
metadata:
  name: example-enterprise-runner
spec:
  enterprise: your-enterprise-name

Now you can see the runner on the enterprise level (if you have enterprise access permissions).

RunnerDeployments

There are RunnerReplicaSet and RunnerDeployment that corresponds to ReplicaSet and Deployment but for Runner.

You usually need only RunnerDeployment rather than RunnerReplicaSet as the former is for managing the latter.

# runnerdeployment.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-runnerdeploy
spec:
  replicas: 2
  template:
    spec:
      repository: mumoshu/actions-runner-controller-ci
      env: []

Apply the manifest file to your cluster:

$ kubectl apply -f runnerdeployment.yaml
runnerdeployment.actions.summerwind.dev/example-runnerdeploy created

You can see that 2 runners have been created as specified by replicas: 2:

$ kubectl get runners
NAME                             REPOSITORY                             STATUS
example-runnerdeploy2475h595fr   mumoshu/actions-runner-controller-ci   Running
example-runnerdeploy2475ht2qbr   mumoshu/actions-runner-controller-ci   Running
Note on scaling to/from 0

This feature is available since actions-runner-controller v0.19.0

You can either delete the runner deployment, or update it to have replicas: 0, so that there will be 0 runner pods in the cluster. This, in combination with e.g. cluster-autoscaler, enables you to save your infrastructure cost when there's no need to run Actions jobs.

# runnerdeployment.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-runnerdeploy
spec:
  replicas: 0

The implication of setting replicas: 0 instead of deleting the runner deployment is that you can let GitHub Actions queue jobs until there will be one or more runners. See #465 for more information.

Also note that the controller creates a "registration-only" runner per RunnerReplicaSet on it's being scaled to zero, and retains it until there are one or more runners available.

This, in combination with a correctly configured HorizontalRunnerAutoscaler, allows you to automatically scale to/from 0

Autoscaling

IMPORTANT : Due to limitations / a bug with GitHub's routing engine autoscaling does NOT work correctly with RunnerDeployments that target the enterprise level. Scaling activity works as expected however jobs fail to get assigned to the scaled out replicas. This was explored in issue #470. Once GitHub resolves the issue with their backend service we expect the solution to be able to support autoscaled enterprise runnerdeploments without any additional changes.

NOTE: Once workflow_job webhook events are released on GitHub, the webhook-based autoscaling is the preferred way of autoscaling, because it is easy to configure and has the ability to accurately detect which runners to scale. See Example 3: Scale on each workflow_job event

A RunnerDeployment (excluding enterprise runners) can scale the number of runners between minReplicas and maxReplicas fields based the chosen scaling metric as defined in the metrics attribute

Scaling Metrics

TotalNumberOfQueuedAndInProgressWorkflowRuns

In the below example, actions-runner will poll GitHub for all pending workflows with the poll period defined by the sync period configuration. It will then scale to e.g. 3 if there're 3 pending jobs at sync time. With this scaling metric we are required to define a list of repositories within our metric.

The scale out performance is controlled via the manager containers startup --sync-period argument. The default value is set to 10 minutes to prevent default deployments rate limiting themselves from the GitHub API.

Kustomize Config : The period can be customised in the config/default/manager_auth_proxy_patch.yaml patch

Benefits of this metric

  1. Supports named repositories allowing you to restrict the runner to a specified set of repositories server side.
  2. Scales the runner count based on the actual queue depth of the jobs meaning a more 1:1 scaling of runners to queued jobs (caveat, see drawback #4)
  3. Like all scaling metrics, you can manage workflow allocation to the RunnerDeployment through the use of GitHub labels.

Drawbacks of this metric

  1. Repositories must be named within the scaling metric, maintaining a list of repositories may not be viable in larger environments or self-serve environments.
  2. May not scale quick enough for some users needs. This metric is pull based and so the queue depth is polled as configured by the sync period, as a result scaling performance is bound by this sync period meaning there is a lag to scaling activity.
  3. Relatively large amounts of API requests required to maintain this metric, you may run in API rate limit issues depending on the size of your environment and how aggressive your sync period configuration is
  4. The GitHub API doesn't provide a way to filter workflow jobs to just those targeting self-hosted runners. If your environment's workflows target both self-hosted and GitHub hosted runners then the queue depth this metric scales against isn't a true 1:1 mapping of queue depth to required runner count. As a result of this, this metric may scale too aggressively for your actual self-hosted runner count needs.

Example RunnerDeployment backed by a HorizontalRunnerAutoscaler:

Important!!! We no longer include the attribute replicas in our RunnerDeployment if we are configuring autoscaling!

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-runner-deployment
spec:
  template:
    spec:
      repository: actions-runner-controller/actions-runner-controller
---
apiVersion: actions.summerwind.dev/v1alpha1
kind: HorizontalRunnerAutoscaler
metadata:
  name: example-runner-deployment-autoscaler
spec:
  scaleTargetRef:
    name: example-runner-deployment
  minReplicas: 1
  maxReplicas: 3
  metrics:
  - type: TotalNumberOfQueuedAndInProgressWorkflowRuns
    repositoryNames:
    - actions-runner-controller/actions-runner-controller

Additionally, the HorizontalRunnerAutoscaler also has an anti-flapping option that prevents periodic loop of scaling up and down. By default, it doesn't scale down until the grace period of 10 minutes passes after a scale up. The grace period can be configured however by adding the setting scaleDownDelaySecondsAfterScaleOut in the HorizontalRunnerAutoscaler spec:

spec:
  scaleDownDelaySecondsAfterScaleOut: 60

PercentageRunnersBusy

The HorizontalRunnerAutoscaler will poll GitHub based on the configuration sync period for the number of busy runners which live in the RunnerDeployment's namespace and scale based on the settings

Kustomize Config : The period can be customised in the config/default/manager_auth_proxy_patch.yaml patch

Benefits of this metric

  1. Supports named repositories server side the same as the TotalNumberOfQueuedAndInProgressWorkflowRuns metric #313
  2. Supports GitHub organization wide scaling without maintaining an explicit list of repositories, this is especially useful for those that are working at a larger scale. #223
  3. Like all scaling metrics, you can manage workflow allocation to the RunnerDeployment through the use of GitHub labels
  4. Supports scaling desired runner count on both a percentage increase / decrease basis as well as on a fixed increase / decrease count basis #223 #315

Drawbacks of this metric

  1. May not scale quick enough for some users needs. This metric is pull based and so the number of busy runners are polled as configured by the sync period, as a result scaling performance is bound by this sync period meaning there is a lag to scaling activity.
  2. We are scaling up and down based on indicative information rather than a count of the actual number of queued jobs and so the desired runner count is likely to under provision new runners or overprovision them relative to actual job queue depth, this may or may not be a problem for you.

Examples of each scaling type implemented with a RunnerDeployment backed by a HorizontalRunnerAutoscaler:

Important!!! We no longer include the attribute replicas in our RunnerDeployment if we are configuring autoscaling!

---
apiVersion: actions.summerwind.dev/v1alpha1
kind: HorizontalRunnerAutoscaler
metadata:
  name: example-runner-deployment-autoscaler
spec:
  scaleTargetRef:
    name: example-runner-deployment
  minReplicas: 1
  maxReplicas: 3
  metrics:
  - type: PercentageRunnersBusy
    scaleUpThreshold: '0.75'    # The percentage of busy runners at which the number of desired runners are re-evaluated to scale up
    scaleDownThreshold: '0.3'   # The percentage of busy runners at which the number of desired runners are re-evaluated to scale down
    scaleUpFactor: '1.4'        # The scale up multiplier factor applied to desired count
    scaleDownFactor: '0.7'      # The scale down multiplier factor applied to desired count
---
apiVersion: actions.summerwind.dev/v1alpha1
kind: HorizontalRunnerAutoscaler
metadata:
  name: example-runner-deployment-autoscaler
spec:
  scaleTargetRef:
    name: example-runner-deployment
  minReplicas: 1
  maxReplicas: 3
  metrics:
  - type: PercentageRunnersBusy
    scaleUpThreshold: '0.75'    # The percentage of busy runners at which the number of desired runners are re-evaluated to scale up
    scaleDownThreshold: '0.3'   # The percentage of busy runners at which the number of desired runners are re-evaluated to scale down
    scaleUpAdjustment: 2        # The scale up runner count added to desired count
    scaleDownAdjustment: 1      # The scale down runner count subtracted from the desired count

Like the previous metric, the scale down factor respects the anti-flapping configuration is applied to the HorizontalRunnerAutoscaler as mentioned previously:

spec:
  scaleDownDelaySecondsAfterScaleOut: 60

Faster Autoscaling with GitHub Webhook

IMPORTANT : Due to missing webhook events, webhook based scaling is not available for enterprise level RunnerDeployments. This was explored in issue #470.

This feature is an ADVANCED feature which may require more work to set up. Please get prepared to put some time and effort to learn and leverage this feature!

actions-runner-controller has an optional Webhook server that receives GitHub Webhook events and scale RunnerDeployments by updating corresponding HorizontalRunnerAutoscalers.

Today, the Webhook server can be configured to respond GitHub check_run, pull_request, and push events by scaling up the matching HorizontalRunnerAutoscaler by N replica(s), where N is configurable within HorizontalRunnerAutoscaler's Spec.

More concretely, you can configure the targeted GitHub event types and the N in scaleUpTriggers:

kind: HorizontalRunnerAutoscaler
spec:
  scaleTargetRef:
    name: myrunners
  scaleUpTriggers:
  - githubEvent:
      checkRun:
        types: ["created"]
        status: "queued"
    amount: 1
    duration: "5m"

With the above example, the webhook server scales myrunners by 1 replica for 5 minutes on each check_run event with the type of created and the status of queued received.

The primary benefit of autoscaling on Webhook compared to the standard autoscaling is that this one allows you to immediately add "resource slack" for future GitHub Actions job runs.

In contrast, the standard autoscaling requires you to wait next sync period to add insufficient runners. You can definitely shorten the sync period to make the standard autoscaling more responsive. But doing so eventually results in the controller not being functional due to it being rated limited by the GitHub API.

You can learn the implementation details in #282

To enable this feature, you firstly need to install the webhook server.

Currently, only our Helm chart has the ability install it.

$ helm --upgrade install actions-runner-controller/actions-runner-controller \
  githubWebhookServer.enabled=true \
  githubWebhookServer.ports[0].nodePort=33080

The above command will result in exposing the node port 33080 for Webhook events. Usually, you need to create an external loadbalancer targeted to the node port, and register the hostname or the IP address of the external loadbalancer to the GitHub Webhook.

Once you were able to confirm that the Webhook server is ready and running from GitHub - this is usually verified by the GitHub sending PING events to the Webhook server - create or update your HorizontalRunnerAutoscaler resources by learning the following configuration examples.

Example 1: Scale up on each check_run event

Note: This should work almost like https://github.com/philips-labs/terraform-aws-github-runner

To scale up replicas of the runners for example/myrepo by 1 for 5 minutes on each check_run, you write manifests like the below:

kind: RunnerDeployment
metadata:
   name: myrunners
spec:
  repository: example/myrepo
---
kind: HorizontalRunnerAutoscaler
spec:
  scaleTargetRef:
    name: myrunners
  scaleUpTriggers:
  - githubEvent:
      checkRun:
        types: ["created"]
        status: "queued"
    amount: 1
    duration: "5m"
Example 2: Scale on each pull_request event against develop or main branches
kind: RunnerDeployment
metadata:
   name: myrunners
spec:
  repository: example/myrepo
---
kind: HorizontalRunnerAutoscaler
spec:
  scaleTargetRef:
    name: myrunners
  scaleUpTriggers:
  - githubEvent:
      pullRequest:
        types: ["synchronize"]
        branches: ["main", "develop"]
    amount: 1
    duration: "5m"

See "activity types" for the list of valid values for scaleUpTriggers[].githubEvent.pullRequest.types.

Example 3: Scale on each workflow_job event

This feature depends on an unreleased GitHub feature

kind: RunnerDeployment
metadata:
   name: myrunners
spec:
  repository: example/myrepo
---
kind: HorizontalRunnerAutoscaler
spec:
  scaleTargetRef:
    name: myrunners
  scaleUpTriggers:
  - githubEvent: {}
    duration: "30m"

You can configure your GitHub webhook settings to only include Workflows Job events, so that it sends us three kinds of workflow_job events per a job run.

Each kind has a status of queued, in_progress and completed. With the above configuration, actions-runner-controller adds one runner for a workflow_job event whose status is queued. Similarly, it removes one runner for a workflow_job event whose status is completed.

Beware that a scale-down after a scale-up is deferred until scaleDownDelaySecondsAfterScaleOut elapses. Let's say you had configured scaleDownDelaySecondsAfterScaleOut of 60 seconds, 2 consequtive workflow jobs will result in immediately adding 2 runners. The 2 runners are removed only after 60 seconds. This basically gives you 60 seconds of a "grace period" that makes it possible for self-hosted runners to immediately run additional workflow jobs enqueued in that 60 seconds.

You must not include spec.metrics like PercentageRunnersBusy when using this feature, as it is unnecessary. That is, if you've configured the webhook for workflow_job, it should be enough for all the scale-out need.

Autoscaling to/from 0

This feature is available since actions-runner-controller v0.19.0

Previously, we've discussed about how to scale a RunnerDeployment to/from 0

To automate the process of scaling to/from 0, you can use HorizontalRunnerAutoscaler with a caveat.

That is, you need to choose one of the following configuration for metrics and triggers:

  • TotalNumberOfQueuedAndInProgressWorkflowRuns
  • PercentageRunnersBusy + TotalNumberOfQueuedAndInProgressWorkflowRuns
  • PercentageRunnersBusy + Webhook-based autoscaling

This is due to that PercentageRunnersBusy, by its definition, needs one or more GitHub runners that can become busy, which cannot happen at all when you have 0 active runners.

If and only if HorizontalRunnerAutoscaler is configured to have a secondary metric of TotalNumberOfQueuedAndInProgressWorkflowRuns and the controller sees the primary metric of PercentageRunnersBusy returned 0 desired replicas, it uses the secondary metric for calculating the desired replicas once again.

A correctly configured TotalNumberOfQueuedAndInProgressWorkflowRuns can return non-zero desired replicas even when there are no runners other than registration-only runners, hence the PercentageRunnersBusy + TotalNumberOfQueuedAndInProgressWorkflowRuns configuration makes scaling from zero possible.

Similarly, Webhook-based autoscaling works regardless of there are active runners, hence PercentageRunnersBusy + Webhook-based autoscaling configuration makes scaling from zero, too.

Scheduled Overrides

This feature is available since actions-runner-controller v0.19.0

Scheduled Overrides allows you to configure HorizontalRunnerAutoscaler so that its Spec gets updated only during a certain period of time.

usually, this feature is used for following scenarios:

  • You want to pay for your infrastructure cost running runners only in business hours
  • You want to prepare for scheduled spikes in workloads

For the first scenario, you might consider configuration like the below:

apiVersion: actions.summerwind.dev/v1alpha1
kind: HorizontalRunnerAutoscaler
metadata:
  name: example-runner-deployment-autoscaler
spec:
  scaleTargetRef:
    name: example-runner-deployment
  scheduledOverrides:
  # Override minReplicas to 0 only between 0am sat to 0am mon
  - startTime: "2021-05-01T00:00:00+09:00"
    endTime: "2021-05-03T00:00:00+09:00"
    recurrenceRule:
      frequency: Weekly
      untilTime: "2022-05-01T00:00:00+09:00"
    minReplicas: 0
  minReplicas: 1

For the second scenario, you might consider something like the below:

apiVersion: actions.summerwind.dev/v1alpha1
kind: HorizontalRunnerAutoscaler
metadata:
  name: example-runner-deployment-autoscaler
spec:
  scaleTargetRef:
    name: example-runner-deployment
  scheduledOverrides:
  # Override minReplicas to 100 only between 2021-06-01T00:00:00+09:00 and 2021-06-03T00:00:00+09:00
  - startTime: "2021-06-01T00:00:00+09:00"
    endTime: "2021-06-03T00:00:00+09:00"
    minReplicas: 100
  minReplicas: 1

The most basic usage of this feature is actually the second scenario mentioned above. A scheduled override without recurrenceRule is considered a one-off override, that is active between startTime and endTime. In the second scenario, it overrides minReplicas to 100 only between 2021-06-01T00:00:00+09:00 and 2021-06-03T00:00:00+09:00.

A scheduled override with recurrenceRule is considered a recurring override. A recurring override is initially active between startTime and endTime, and then it repeatedly get activated after a certain period of time denoted by frequency.

frequecy can take one of the following values:

  • Daily
  • Weekly
  • Monthly
  • Yearly

By default, a scheduled override repeats forever. If you want it to repeat until a specific point in time, define untilTime. The controller create the last recurrence of the override until the recurrence's startTime is equal or earlier than untilTime.

Do note that you have enough slack for untilTime, so that a delayed or offline actions-runner-controller is much less likely to miss the last recurrence. For example, you might want to set untilTime to M minutes after the last recurrence's startTime, so that actions-runner-controller being offline up to M minutes doesn't miss the last recurrence.

Combining Multiple Scheduled Overrides:

In case you have a more complex scenarios, try writing two or more entries under scheduledOverrides.

The earlier entry is prioritized higher than later entries. So you usually define one-time overrides in the top of your list, then yearly, monthly, weekly, and lastly daily overrides.

Runner with DinD

When using default runner, runner pod starts up 2 containers: runner and DinD (Docker-in-Docker). This might create issues if there's LimitRange set to namespace.

# dindrunnerdeployment.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-dindrunnerdeploy
spec:
  replicas: 2
  template:
    spec:
      image: summerwind/actions-runner-dind
      dockerdWithinRunnerContainer: true
      repository: mumoshu/actions-runner-controller-ci
      env: []

This also helps with resources, as you don't need to give resources separately to docker and runner.

Additional Tweaks

You can pass details through the spec selector. Here's an eg. of what you may like to do:

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: actions-runner
  namespace: default
spec:
  replicas: 2
  template:
    metadata:
      annotations:
        cluster-autoscaler.kubernetes.io/safe-to-evict: "true"
    spec:
      nodeSelector:
        node-role.kubernetes.io/test: ""

      securityContext:
        #All level/role/type/user values will vary based on your SELinux policies.
        #See https://access.redhat.com/documentation/en-us/red_hat_enterprise_linux_atomic_host/7/html/container_security_guide/docker_selinux_security_policy for information about SELinux with containers
        seLinuxOptions:
          level: "s0"
          role: "system_r"
          type: "super_t"
          user: "system_u"

      tolerations:
      - effect: NoSchedule
        key: node-role.kubernetes.io/test
        operator: Exists

      repository: mumoshu/actions-runner-controller-ci
      # The default "summerwind/actions-runner" images are available at DockerHub:
      #  https://hub.docker.com/r/summerwind/actions-runner
      # You can also build your own and specify it like the below:
      image: custom-image/actions-runner:latest
      imagePullPolicy: Always
      resources:
        limits:
          cpu: "4.0"
          memory: "8Gi"
        requests:
          cpu: "2.0"
          memory: "4Gi"
      # Timeout after a node crashed or became unreachable to evict your pods somewhere else (default 5mins)
      tolerations:
        - key: "node.kubernetes.io/unreachable"
          operator: "Exists"
          effect: "NoExecute"
          tolerationSeconds: 10
      # true (default) = The runner restarts after running jobs, to ensure a clean and reproducible build environment
      # false = The runner is persistent across jobs and doesn't automatically restart
      # This directly controls the behaviour of `--once` flag provided to the github runner
      ephemeral: false
      # true (default) = A privileged docker sidecar container is included in the runner pod.
      # false = A docker sidecar container is not included in the runner pod and you can't use docker.
      # If set to false, there are no privileged container and you cannot use docker.
      dockerEnabled: false
      # Optional Docker containers network MTU
      # If your network card MTU is smaller than Docker's default 1500, you might encounter Docker networking issues.
      # To fix these issues, you should setup Docker MTU smaller than or equal to that on the outgoing network card.
      # More information:
      # - https://mlohr.com/docker-mtu/
      dockerMTU: 1500
      # Optional Docker registry mirror
      # Docker Hub has an aggressive rate-limit configuration for free plans.
      # To avoid disruptions in your CI/CD pipelines, you might want to setup an external or on-premises Docker registry mirror.
      # More information:
      # - https://docs.docker.com/docker-hub/download-rate-limit/
      # - https://cloud.google.com/container-registry/docs/pulling-cached-images
      dockerRegistryMirror: https://mirror.gcr.io/
      # false (default) = Docker support is provided by a sidecar container deployed in the runner pod.
      # true = No docker sidecar container is deployed in the runner pod but docker can be used within the runner container instead. The image summerwind/actions-runner-dind is used by default.
      dockerdWithinRunnerContainer: true
      # Docker sidecar container image tweaks examples below, only applicable if dockerdWithinRunnerContainer = false
      dockerdContainerResources:
        limits:
          cpu: "4.0"
          memory: "8Gi"
        requests:
          cpu: "2.0"
          memory: "4Gi"
      # Additional N number of sidecar containers
      sidecarContainers:
        - name: mysql
          image: mysql:5.7
          env:
            - name: MYSQL_ROOT_PASSWORD
              value: abcd1234
          securityContext:
            runAsUser: 0
      # workDir if not specified (default = /runner/_work)
      # You can customise this setting allowing you to change the default working directory location
      # for example, the below setting is the same as on the ubuntu-18.04 image
      workDir: /home/runner/work
      # You can mount some of the shared volumes to the dind container using dockerVolumeMounts, like any other volume mounting.
      # NOTE: in case you want to use an hostPath like the following example, make sure that Kubernetes doesn't schedule more than one runner
      # per physical host. You can achieve that by setting pod anti-affinity rules and/or resource requests/limits.
      volumes:
        - name: docker-extra
          hostPath:
            path: /mnt/docker-extra
            type: DirectoryOrCreate
        - name: repo
          hostPath:
            path: /mnt/repo
            type: DirectoryOrCreate
      dockerVolumeMounts:
        - mountPath: /var/lib/docker
          name: docker-extra
      # You can mount some of the shared volumes to the runner container using volumeMounts.
      # NOTE: Do not try to mount the volume onto the runner workdir itself as it will not work. You could mount it however on a sub directory in the runner workdir
      # Please see https://github.com/actions-runner-controller/actions-runner-controller/issues/630#issuecomment-862087323 for more information.
      volumeMounts:
        - mountPath: /home/runner/work/repo
          name: repo
      # Optional storage medium type of runner volume mount.
      # More info: https://kubernetes.io/docs/concepts/storage/volumes/#emptydir
      # "" (default) = Node's default medium
      # Memory = RAM-backed filesystem (tmpfs)
      # NOTE: Using RAM-backed filesystem gives you fastest possible storage on your host nodes.
      volumeStorageMedium: ""
      # Total amount of local storage resources required for runner volume mount.
      # The default limit is undefined.
      # NOTE: You can make sure that nodes' resources are never exceeded by limiting used storage size per runner pod.
      # You can even disable the runner mount completely by setting limit to zero if dockerdWithinRunnerContainer = true.
      # Please see https://github.com/actions-runner-controller/actions-runner-controller/pull/674 for more information.
      volumeSizeLimit: 4Gi
      # Optional name of the container runtime configuration that should be used for pods.
      # This must match the name of a RuntimeClass resource available on the cluster.
      # More info: https://kubernetes.io/docs/concepts/containers/runtime-class
      runtimeClassName: "runc"

Runner Labels

To run a workflow job on a self-hosted runner, you can use the following syntax in your workflow:

jobs:
  release:
    runs-on: self-hosted

When you have multiple kinds of self-hosted runners, you can distinguish between them using labels. In order to do so, you can specify one or more labels in your Runner or RunnerDeployment spec.

# runnerdeployment.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: custom-runner
spec:
  replicas: 1
  template:
    spec:
      repository: actions-runner-controller/actions-runner-controller
      labels:
        - custom-runner

Once this spec is applied, you can observe the labels for your runner from the repository or organization in the GitHub settings page for the repository or organization. You can now select a specific runner from your workflow by using the label in runs-on:

jobs:
  release:
    runs-on: custom-runner

Note that if you specify self-hosted in your workflow, then this will run your job on any self-hosted runner, regardless of the labels that they have.

Runner Groups

Runner groups can be used to limit which repositories are able to use the GitHub Runner at an organization level. Runner groups have to be created in GitHub first before they can be referenced.

To add the runner to the group NewGroup, specify the group in your Runner or RunnerDeployment spec.

# runnerdeployment.yaml
apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: custom-runner
spec:
  replicas: 1
  template:
    spec:
      group: NewGroup

Using IRSA (IAM Roles for Service Accounts) in EKS

actions-runner-controller v0.15.0 or later has support for IRSA in EKS.

As similar as for regular pods and deployments, you firstly need an existing service account with the IAM role associated. Create one using e.g. eksctl. You can refer to the EKS documentation for more details.

Once you set up the service account, all you need is to add serviceAccountName and fsGroup to any pods that uses the IAM-role enabled service account.

For RunnerDeployment, you can set those two fields under the runner spec at RunnerDeployment.Spec.Template:

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-runnerdeploy
spec:
  template:
    spec:
      repository: USER/REO
      serviceAccountName: my-service-account
      securityContext:
        fsGroup: 1000

Use with Istio

Istio 1.7.0 or greater has holdApplicationUntilProxyStarts added in istio/istio#24737, which enables you to delay the runner container startup until the injected istio-proxy container finish starting. Try using it if you need to use Istio. Otherwise the runner is unlikely to work, because it fails to call any GitHub API to register itself due to istio-proxy being not up and running yet.

Note that there's no official Istio integration in actions-runner-controller. It should work, but it isn't covered by our acceptance test(contribution is welcomed). In addition to that, none of the actions-runner-controller maintainers use Istio daily. If you need more information, or have any issues using it, refer to the following links:

Stateful Runners

This is a documentation about a unreleased version of actions-runner-controller.

It would be great if you could try building the latest controller image following https://github.com/actions-runner-controller/actions-runner-controller#contributing if you are eager to test it early and help developers by reporting any bugs ๐Ÿ˜„

actions-runner-controller supports RunnerSet API that let you deploy stateful runners. A stateful runner is designed to be able to store some data persists across GitHub Actions workflow and job runs. You might find it useful, for example, to speed up your docker builds by persisting the docker layer cache.

A basic RunnerSet would look like this:

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerSet
metadata:
  name: example
spec:
  ephemeral: false
  replicas: 2
  repository: mumoshu/actions-runner-controller-ci
  # Other mandatory fields from StatefulSet
  selector:
    matchLabels:
      app: example
  serviceName: example
  template:
    metadata:
      labels:
        app: example

As it is based on StatefulSet, selector and template.medatada.labels needs to be defined and have the exact same set of labels. serviceName must be set to some non-empty string as it is also required by StatefulSet.

Runner-related fields like ephemeral, repository, organization, enterprise, and so on should be written directly under spec.

Fields like volumeClaimTemplates that originates from StatefulSet should also be written directly under spec.

Pod-related fields like security contexts and volumes are written under spec.template.spec like StatefulSet.

Similarly, container-related fields like resource requests and limits, container image names and tags, security context, and so on are written under spec.template.spec.containers. There are two reserved container name, runner and docker. The former is for the container that runs actions runner and the latter is for the container that runs a dockerd.

For a more complex example, see the below:

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerSet
metadata:
  name: example
spec:
  # NOTE: RunnerSet supports non-ephemeral runners only today
  ephemeral: false
  replicas: 2
  repository: mumoshu/actions-runner-controller-ci
  dockerdWithinRunnerContainer: true
  template:
    spec:
      securityContext:
        #All level/role/type/user values will vary based on your SELinux policies.
        #See https://access.redhat.com/documentation/en-us/red_hat_enterprise_linux_atomic_host/7/html/container_security_guide/docker_selinux_security_policy for information about SELinux with containers
        seLinuxOptions: 
          level: "s0"
          role: "system_r"
          type: "super_t"
          user: "system_u"
      containers:
      - name: runner
        env: []
        resources:
          limits:
            cpu: "4.0"
            memory: "8Gi"
          requests:
            cpu: "2.0"
            memory: "4Gi"
      - name: docker
        resources:
          limits:
            cpu: "4.0"
            memory: "8Gi"
          requests:
            cpu: "2.0"
            memory: "4Gi"

You can also read the design and usage documentation written in the original pull request that introduced RunnerSet for more information.

actions#629

Under the hood, RunnerSet relies on Kubernetes's StatefulSet and Mutating Webhook. A statefulset is used to create a number of pods that has stable names and dynamically provisioned persistent volumes, so that each statefulset-managed pod gets the same persistent volume even after restarting. A mutating webhook is used to dynamically inject a runner's "registration token" which is used to call GitHub's "Create Runner" API.

We envision that RunnerSet will eventually replace RunnerDeployment, as RunnerSet provides a more standard API that is easy to learn and use because it is based on StatefulSet, and it has a support for volumeClaimTemplates which is crucial to manage dynamically provisioned persistent volumes.

Limitations

A known down-side of RunnerSet compared to RunnerDeployment is that it is uanble to create a registration-only pod on scaling-down to zero. To workaround that, you need to create a RunnerDeployment with spec.repliacs set to 0 with spec.repository, spec.organization, or spec.enterprise, and spec.labels and spec.groups as same values as your RunnerSet, so that you can keep the registration-only runner regardless of the number of RunnerSet-managed runners.

A known down-side of relying on StatefulSet is that it misses a support for maxUnavailable. A StatefulSet basically works like maxUnavailable: 1 in Deployment, which means that it can take down only one pod concurrently while doing a rolling-update of pods. Kubernetes 1.22 doesn't support customizing it yet so probably it takes more releases to arrive. See kubernetes/kubernetes#68397 for more information.

Ephemeral Runners

Both RunnerDeployment and RunnerSet has ability to configure ephemeral: true in the spec.

When it is configured, it passes a --once flag to every runner.

--once is an experimental actions/runner feature that instructs the runner to stop after the first job run. But it is a known race issue that may fetch a job even when it's being terminated. If a runner fetched a job while terminating, the job is very likely to fail because the terminating runner doesn't wait for the job to complete. This is tracked in #466.

The below feature depends on an unreleased GitHub feature

GitHub seems to be adding an another flag called --ephemeral that is race-free. The pull request to add it to actions/runner can be found at actions/runner#660.

actions-runner-controller has a feature flag backend by an environment variable to enable using --ephemeral instead of --once. The environment variable is RUNNER_FEATURE_FLAG_EPHEMERAL. You can se it to true on runner containers in your runner pods to enable the feature.

At the time of writing this, you need to wait until GitHub rolls out the server-side feature for --ephemeral, AND you need to include your own actions/runner binary built from actions/runner#660 into the runner container image to test this feature.

Please see comments in runner/Dockerfile for more information about how to build a custom image using your own actions/runner binary.

For example, a RunnerSet config with the flag enabled looks like:

kind: RunnerSet
metadata:
  name: example-runnerset
spec:
  # ...
  template:
    metadata:
      labels:
        app: example-runnerset
    spec:
      containers:
      - name: runner
        imagePullPolicy: IfNotPresent
        env:
        - name: RUNNER_FEATURE_FLAG_EPHEMERAL
          value: "true"

Note that once actions/runner#660 becomes generally available on GitHub, you no longer need to build a custom runner image to use this feature. Just set RUNNER_FEATURE_FLAG_EPHEMERAL and it should use --ephemeral.

In the future, --once might get removed in actions/runner. actions-runner-controller will make --ephemeral the default option for ephemeral: true runners until the legacy flag is removed.

Software Installed in the Runner Image

Cloud Tooling
The project supports being deployed on the various cloud Kubernetes platforms (e.g. EKS), it does not however aim to go beyond that. No cloud specific tooling is bundled in the base runner, this is an active decision to keep the overhead of maintaining the solution manageable.

Bundled Software
The GitHub hosted runners include a large amount of pre-installed software packages. GitHub maintain a list in README files at https://github.com/actions/virtual-environments/tree/main/images/linux

This solution maintains a few runner images with latest aligning with GitHub's Ubuntu version. Older images are maintained whilst GitHub also provides them as an option. These images do not contain all of the software installed on the GitHub runners. It contains the following subset of packages from the GitHub runners:

  • Basic CLI packages
  • git
  • docker
  • build-essentials

The virtual environments from GitHub contain a lot more software packages (different versions of Java, Node.js, Golang, .NET, etc) which are not provided in the runner image. Most of these have dedicated setup actions which allow the tools to be installed on-demand in a workflow, for example: actions/setup-java or actions/setup-node

If there is a need to include packages in the runner image for which there is no setup action, then this can be achieved by building a custom container image for the runner. The easiest way is to start with the summerwind/actions-runner image and installing the extra dependencies directly in the docker image:

FROM summerwind/actions-runner:latest

RUN sudo apt update -y \
  && sudo apt install YOUR_PACKAGE
  && sudo rm -rf /var/lib/apt/lists/*

You can then configure the runner to use a custom docker image by configuring the image field of a Runner or RunnerDeployment:

apiVersion: actions.summerwind.dev/v1alpha1
kind: Runner
metadata:
  name: custom-runner
spec:
  repository: actions-runner-controller/actions-runner-controller
  image: YOUR_CUSTOM_DOCKER_IMAGE

Common Errors

invalid header field value

2020-11-12T22:17:30.693Z	ERROR	controller-runtime.controller	Reconciler error	
{
  "controller": "runner",
  "request": "actions-runner-system/runner-deployment-dk7q8-dk5c9",
  "error": "failed to create registration token: Post \"https://api.github.com/orgs/$YOUR_ORG_HERE/actions/runners/registration-token\": net/http: invalid header field value \"Bearer $YOUR_TOKEN_HERE\\n\" for key Authorization"
}

Solution

Your base64'ed PAT token has a new line at the end, it needs to be created without a \n added, either:

  • echo -n $TOKEN | base64
  • Create the secret as described in the docs using the shell and documented flags

Runner coming up before network available

If you're running your action runners on a service mesh like Istio, you might have problems with runner configuration accompanied by logs like:

....
runner Starting Runner listener with startup type: service
runner Started listener process
runner An error occurred: Not configured
runner Runner listener exited with error code 2
runner Runner listener exit with retryable error, re-launch runner in 5 seconds.
....

This is because the istio-proxy has not completed configuring itself when the configuration script tries to communicate with the network.

Solution

Added originally to help users with older istio instances. Newer Istio instances can use Istio's holdApplicationUntilProxyStarts attribute (istio/istio#11130) to avoid having to delay starting up the runner. Please read the discussion in #592 for more information.

Note: Prior to the runner version v2.279.0, the environment variable referenced below was called STARTUP_DELAY.

You can add a delay to the runner's entrypoint script by setting the STARTUP_DELAY_IN_SECONDS environment variable for the runner pod. This will cause the script to sleep X seconds, this works with any runner kind.

Example RunnerDeployment with a 2 second startup delay:

apiVersion: actions.summerwind.dev/v1alpha1
kind: RunnerDeployment
metadata:
  name: example-runnerdeployment-with-sleep
spec:
  template:
    spec:
      env:
        - name: STARTUP_DELAY_IN_SECONDS
          value: "2" # Remember! env var values must be strings.

Contributing

For more details on contributing to the project (including requirements) please check out Getting Started with Contributing.

actions-runner-controller's People

Contributors

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