This Terraform module creates the required infrastructure needed to host GitHub Actions self hosted, auto scaling runners on AWS spot instances. It provides the required logic to handle the life cycle for scaling up and down using a set of AWS Lambda functions. Runners are scaled down to zero to avoid costs when no workflows are active.
- Motivation
- Overview
- Usages
- Examples
- Sub modules
- Debugging
- Requirements
- Providers
- Inputs
- Outputs
- Contribution
- Philips Forest
GitHub Actions self hosted
runners provide a flexible option to run CI workloads on infrastructure of your choice. Currently there is no option provided to automate the creation and scaling of action runners. This module takes care of creating the AWS infrastructure to host action runners on spot instances. It provides lambda modules to orchestrate the life cycle of the action runners.
Lambda is chosen as runtime for two major reasons. First it allows to create small components with minimal access to AWS and GitHub. Secondly it provides a scalable setup with minimal costs that works on repo level and scales to organization level. The lambdas will create Linux based EC2 instances with Docker to serve CI workloads that can run on Linux and/or Docker. The main goal is to support Docker based workloads.
A logical question would be why not Kubernetes? In the current approach we stay close to the way the GitHub action runners are available today. The approach is to install the runner on a host where the required software is available. With this setup we stay quite close to the current GitHub approach. Another logical choice would be AWS Auto Scaling groups. This choice would typically require much more permissions on instance level to GitHub. And besides that, scaling up and down is not trivial.
The moment a GitHub action workflow requiring a self-hosted
runner is triggered, GitHub will try to find a runner which can execute the workload. This module reacts to GitHub's check_run
event for the triggered workflow and creates a new runner if necessary.
For receiving the check_run
event, a GitHub App needs to be created with a webhook to which the event will be published. Installing the GitHub App in a specific repository or all repositories ensures the check_run
event will be sent to the webhook.
In AWS a API gateway endpoint is created that is able to receive the GitHub webhook events via HTTP post. The gateway triggers the webhook lambda which will verify the signature of the event. This check guarantees the event is sent by the GitHub App. The lambda only handles check_run
events with status created
. The accepted events are posted on a SQS queue. Messages on this queue will be delayed for a configurable amount of seconds (default 30 seconds) to give the available runners time to pick up this build.
The "scale up runner" lambda is listening to the SQS queue and picks up events. The lambda runs various checks to decide whether a new EC2 spot instance needs to be created. For example, the instance is not created if the build is already started by an existing runner, or the maximum number of runners is reached.
The Lambda first requests a registration token from GitHub which is needed later by the runner to register itself. This avoids that the EC2 instance, which later in the process will install the agent, needs administration permissions to register the runner. Next the EC2 spot instance is created via the launch template. The launch template defines the specifications of the required instance and contains a user_data
script. This script will install the required software and configure it. The registration token for the action runner is stored in the parameter store (SSM) from which the user data script will fetch it and delete it once it has been retrieved. Once the user data script is finished the action runner should be online and the workflow will start in seconds.
Scaling down the runners is at the moment brute-forced, every configurable amount of minutes a lambda will check every runner (instance) if it is busy. In case the runner is not busy it will be removed from GitHub and the instance terminated in AWS. At the moment there seems no other option to scale down more smoothly.
Downloading the GitHub Action Runner distribution can be occasionally slow (more than 10 minutes). Therefore a lambda is introduced that synchronizes the action runner binary from GitHub to an S3 bucket. The EC2 instance will fetch the distribution from the S3 bucket instead of the internet.
Secrets and private keys which are passed to the lambdas as environment variables are encrypted by default by a KMS key managed by the module. Alternatively you can pass your own KMS key. Encryption via KMS can be complete disabled by setting encrypt_secrets
to false
.
Permission are managed on several places. Below the most important ones. For details check the Terraform sources.
- The GitHub App requires access to actions and publish
check_run
events to AWS. - The scale up lambda should have access to EC2 for creating and tagging instances.
- The scale down lambda should have access to EC2 to terminate instances.
Besides these permissions, the lambdas also need permission to CloudWatch (for logging and scheduling), SSM and S3. For more details about the required permissions see the documentation of the IAM module which uses permission boundaries.
When using the default example or top-level module, specifying an instance_type
that matches a Graviton/Graviton 2 (ARM64) architecture (e.g. a1 or any 6th-gen g
or gd
type), the sub-modules will be automatically configured to provision with ARM64 AMIs and leverage GitHub's ARM64 action runner. See below for more details.
Examples are provided in the example directory. Please ensure you have installed the following tools.
- Terraform, or tfenv.
- Bash shell or compatible
- Docker (optional, to build lambdas without node).
- AWS cli (optional)
- Node and yarn (for lambda development).
The module supports two main scenarios for creating runners. On repository level a runner will be dedicated to only one repository, no other repository can use the runner. On organization level you can use the runner(s) for all the repositories within the organization. See https://help.github.com/en/actions/hosting-your-own-runners/about-self-hosted-runners for more information. Before starting the deployment you have to choose one option.
GitHub workflows fail immediately if there is no action runner available for your builds. Since this module supports scaling down to zero, builds will fail in case there is no active runner available. We recommend to create an offline runner with matching labels to the configuration. Create this runner manually by following the GitHub instructions for adding a new runner on your local machine. If you stop the process after the step of running the config.sh
script the runner will remain offline. This offline runner ensures that builds will not fail immediately and stay queued until there is an EC2 runner to pick it up.
The setup consists of running Terraform to create all AWS resources and manually configuring the GitHub App. The Terraform module requires configuration from the GitHub App and the GitHub app requires output from Terraform. Therefore you first create the GitHub App and configure the basics, then run Terraform, and afterwards finalize the configuration of the GitHub App.
Go to GitHub and create a new app. Beware you can create apps your organization or for a user. For now we support only organization level apps.
- Create app in Github
- Choose a name
- Choose a website (mandatory, not required for the module).
- Disable the webhook for now (we will configure this later).
- Repository permissions, enable
Checks
to receive events for new builds. - Only for repo level runners! - Repository permissions,
Administration
- Read and Write (to register runner) - Only for organization level runners! - Organization permissions,
Administration
- Read and Write (to register runner) - Save the new app.
- On the General page, make a note of the "App ID" and "Client ID" parameters.
- Create a new client secret and also write it down.
- Generate a new private key and save the
app.private-key.pem
file.
To apply the terraform module, the compiled lambdas (.zip files) need to be available either locally or in an S3 bucket. They can be either downloaded from the GitHub release page or build locally.
To read the files from S3, set the lambda_s3_bucket
variable and the specific object key for each lambda.
The lambdas can be downloaded maually from the release page or using the download-lambda terraform module (requires curl
to be installed on your machine). In the download-lambda
directory, run terraform init && terraform apply
. The lambdas will be saved to the same directory.
For local development you can build all the lambdas at once using .ci/build.sh
or individually using yarn dist
.
To create spot instances the AWSServiceRoleForEC2Spot
role needs to be added to your account. You can do that manually by following the AWS docs. To use terraform for creating the role, either add the following resource or let the module manage the the service linked role by setting create_service_linked_role
to true
. Be aware this is an account global role, so maybe you don't want to mange it via a specific deployment.
resource "aws_iam_service_linked_role" "spot" {
aws_service_name = "spot.amazonaws.com"
}
Next create a second terraform workspace and initiate the module, or adapt one of the examples.
Note that github_app.key_base64
needs to be the base64-encoded .pem
file, i.e., the output of base64 app.private-key.pem
(not directly the content of app.private-key.pem
).
module "github-runner" {
source = "philips-labs/github-runner/aws"
version = "0.8.0"
aws_region = "eu-west-1"
vpc_id = "vpc-123"
subnet_ids = ["subnet-123", "subnet-456"]
environment = "gh-ci"
github_app = {
key_base64 = "base64string"
id = "1"
client_id = "c-123"
client_secret = "client_secret"
webhook_secret = "webhook_secret"
}
webhook_lambda_zip = "lambdas-download/webhook.zip"
runner_binaries_syncer_lambda_zip = "lambdas-download/runner-binaries-syncer.zip"
runners_lambda_zip = "lambdas-download/runners.zip"
enable_organization_runners = true
}
ARM64 support: Specify an a1
or *6g*
(6th-gen Graviton2) instance type to stand up an ARM64 runner, otherwise the default is x86_64.
Run terraform by using the following commands
terraform init
terraform apply
The terraform output displays the API gateway url (endpoint) and secret, which you need in the next step.
The lambda for syncing the GitHub distribution to S3 is triggered via CloudWatch (by default once per hour). After deployment the function is triggered via S3 to ensure the distribution is cached.
Go back to the GitHub App and update the following settings.
- Enable the webhook.
- Provide the webhook url, should be part of the output of terraform.
- Provide the webhook secret.
- Enable the
check_run
event for the webhook. - In the "Install App" section, install the App in your organization, either in all or in selected repositories.
You are now ready to run action workloads on self hosted runner. Remember that builds will fail if there is no (offline) runner available with matching labels.
The module support 3 scenario's to manage environment secrets and private key of the Lambda functions.
This is the default, no additional configuration is required.
You have to create an configure you KMS key. The module will use the context with key: Environment
and value var.environment
as encryption context.
resource "aws_kms_key" "github" {
is_enabled = true
}
module "runners" {
...
manage_kms_key = false
kms_key_id = aws_kms_key.github.key_id
...
Not advised but you can disable the encryption as by setting the variable encrypt_secrets
to false
.
The module will scale down to zero runners be default, by specifying a idle_config
config idle runners can be kept active. The scale down lambda checks if any of the cron expressions matches the current time with a marge of 5 seconds. When there is a match the number of runners specified in the idle config will be kept active. In case multiple cron expressions matches only the first one is taken in to account. Below an idle configuration for keeping runners active from 9 to 5 on working days.
idle_config = [{
cron = "* * 9-17 * * 1-5"
timeZone = "Europe/Amsterdam"
idleCount = 2
}]
Cron expressions are parsed by cron-parser. The supported syntax.
* * * * * *
┬ ┬ ┬ ┬ ┬ ┬
│ │ │ │ │ |
│ │ │ │ │ └ day of week (0 - 7) (0 or 7 is Sun)
│ │ │ │ └───── month (1 - 12)
│ │ │ └────────── day of month (1 - 31)
│ │ └─────────────── hour (0 - 23)
│ └──────────────────── minute (0 - 59)
└───────────────────────── second (0 - 59, optional)
For time zones please check TZ database name column for the supported values.
Examples are located in the examples directory. The following examples are provided:
- Default: The default example of the module
- Permissions boundary: Example usages of permissions boundaries.
The module contains several submodules, you can use the module via the main module or assemble your own setup by initializing the submodules yourself.
The following submodules are the core of the module and are mandatory:
- runner-binaries-syncer - Syncs the action runner distribution.
- runners - Scales the action runners up and down
- webhook - Handles GitHub webhooks
The following sub modules are optional and are provided as example or utility:
- download-lambda - Utility module to download lambda artifacts from GitHub Release
- setup-iam-permissions - Example module to setup permission boundaries
When not using the top-level module and specifying an a1
or *6g*
(6th-gen Graviton2) instance_type
, the runner-binaries-syncer
and runners
submodules need to be configured appropriately for pulling the ARM64 GitHub action runner binary and leveraging the arm64 AMI for the runners.
When configuring runner-binaries-syncer
- runner_architecture - set to
arm64
, defaults tox64
When configuring runners
- ami_filter - set to
["amzn2-ami-hvm-2*-arm64-gp2"]
, defaults to["amzn2-ami-hvm-2.*-x86_64-ebs"]
In case the setup does not work as intended follow the trace of events:
- In the GitHub App configuration, the Advanced page displays all webhook events that were sent.
- In AWS CloudWatch, every lambda has a log group. Look at the logs of the
webhook
andscale-up
lambdas. - In AWS SQS you can see messages available or in flight.
- Once an EC2 instance is running, you can connect to it in the EC2 user interface using Session Manager. Check the user data script using
cat /var/log/user-data.log
. By default several log files of the instances are streamed to AWS CloudWatch, look for a log group named<environment>/runners
. In the log group you should see at least the log streams for the user data installation and runner agent. - Registered instances should show up in the Settings - Actions page of the repository or organization (depending on the installation mode).
No requirements.
Name | Version |
---|---|
aws | n/a |
random | n/a |
Name | Description | Type | Default | Required |
---|---|---|---|---|
ami_filter | List of maps used to create the AMI filter for the action runner AMI. By default amazon linux 2 is used. | map(list(string)) |
{} |
no |
ami_owners | The list of owners used to select the AMI of action runner instances. | list(string) |
[ |
no |
aws_region | AWS region. | string |
n/a | yes |
block_device_mappings | The EC2 instance block device configuration. Takes the following keys: device_name , delete_on_termination , volume_type , volume_size , encrypted , iops |
map(string) |
{} |
no |
cloudwatch_config | (optional) to replace the module default cloudwatch log config. See https://docs.aws.amazon.com/AmazonCloudWatch/latest/monitoring/CloudWatch-Agent-Configuration-File-Details.html for details. | string |
null |
no |
create_service_linked_role_spot | (optional) create the serviced linked role for spot instances that is required by the scale-up lambda. | bool |
false |
no |
enable_cloudwatch_agent | Enabling the cloudwatch agent on the ec2 runner instances, the runner contains default config. Configuration can be overrided via cloudwatch_config . |
bool |
true |
no |
enable_organization_runners | n/a | bool |
n/a | yes |
enable_ssm_on_runners | Enable to allow access the runner instances for debugging purposes via SSM. Note that this adds additional permissions to the runner instances. | bool |
false |
no |
encrypt_secrets | Encrypt secret variables for lambda's such as secrets and private keys. | bool |
true |
no |
environment | A name that identifies the environment, used as prefix and for tagging. | string |
n/a | yes |
github_app | GitHub app parameters, see your github app. Ensure the key is the base64-encoded .pem file (the output of base64 app.private-key.pem , not the content of private-key.pem ). |
object({ |
n/a | yes |
idle_config | List of time period that can be defined as cron expression to keep a minimum amount of runners active instead of scaling down to 0. By defining this list you can ensure that in time periods that match the cron expression within 5 seconds a runner is kept idle. | list(object({ |
[] |
no |
instance_profile_path | The path that will be added to the instance_profile, if not set the environment name will be used. | string |
null |
no |
instance_type | Instance type for the action runner. | string |
"m5.large" |
no |
kms_key_id | Custom KMS key to encrypted lambda secrets, if not provided and encrypt_secrets = true a KMS key will be created by the module. Secrets will be encrypted with a context Environment = var.environment . |
string |
null |
no |
lambda_s3_bucket | S3 bucket from which to specify lambda functions. This is an alternative to providing local files directly. | any |
null |
no |
logging_retention_in_days | Specifies the number of days you want to retain log events for the lambda log group. Possible values are: 0, 1, 3, 5, 7, 14, 30, 60, 90, 120, 150, 180, 365, 400, 545, 731, 1827, and 3653. | number |
7 |
no |
manage_kms_key | Let the module manage the KMS key. | bool |
true |
no |
minimum_running_time_in_minutes | The time an ec2 action runner should be running at minimum before terminated if non busy. | number |
5 |
no |
role_path | The path that will be added to role path for created roles, if not set the environment name will be used. | string |
null |
no |
role_permissions_boundary | Permissions boundary that will be added to the created roles. | string |
null |
no |
runner_allow_prerelease_binaries | Allow the runners to update to prerelease binaries. | bool |
false |
no |
runner_as_root | Run the action runner under the root user. | bool |
false |
no |
runner_binaries_syncer_lambda_timeout | Time out of the binaries sync lambda in seconds. | number |
300 |
no |
runner_binaries_syncer_lambda_zip | File location of the binaries sync lambda zip file. | string |
null |
no |
runner_extra_labels | Extra labels for the runners (GitHub). Separate each label by a comma | string |
"" |
no |
runner_iam_role_managed_policy_arns | Attach AWS or customer-managed IAM policies (by ARN) to the runner IAM role | list(string) |
[] |
no |
runner_log_files | (optional) List of logfiles to sent to cloudwatch. | list(object({ |
[ |
no |
runners_lambda_s3_key | S3 key for runners lambda function. Required if using S3 bucket to specify lambdas. | any |
null |
no |
runners_lambda_s3_object_version | S3 object version for runners lambda function. Useful if S3 versioning is enabled on source bucket. | any |
null |
no |
runners_lambda_zip | File location of the lambda zip file for scaling runners. | string |
null |
no |
runners_maximum_count | The maximum number of runners that will be created. | number |
3 |
no |
runners_scale_down_lambda_timeout | Time out for the scale up lambda in seconds. | number |
60 |
no |
runners_scale_up_lambda_timeout | Time out for the scale down lambda in seconds. | number |
60 |
no |
scale_down_schedule_expression | Scheduler expression to check every x for scale down. | string |
"cron(*/5 * * * ? *)" |
no |
subnet_ids | List of subnets in which the action runners will be launched, the subnets needs to be subnets in the vpc_id . |
list(string) |
n/a | yes |
syncer_lambda_s3_key | S3 key for syncer lambda function. Required if using S3 bucket to specify lambdas. | any |
null |
no |
syncer_lambda_s3_object_version | S3 object version for syncer lambda function. Useful if S3 versioning is enabled on source bucket. | any |
null |
no |
tags | Map of tags that will be added to created resources. By default resources will be tagged with name and environment. | map(string) |
{} |
no |
userdata_post_install | Script to be ran after the GitHub Actions runner is installed on the EC2 instances | string |
"" |
no |
userdata_pre_install | Script to be ran before the GitHub Actions runner is installed on the EC2 instances | string |
"" |
no |
userdata_template | Alternative user-data template, replacing the default template. By providing your own user_data you have to take care of installing all required software, including the action runner. Variables userdata_pre/post_install are ignored. | string |
null |
no |
vpc_id | The VPC for security groups of the action runners. | string |
n/a | yes |
webhook_lambda_s3_key | S3 key for webhook lambda function. Required if using S3 bucket to specify lambdas. | any |
null |
no |
webhook_lambda_s3_object_version | S3 object version for webhook lambda function. Useful if S3 versioning is enabled on source bucket. | any |
null |
no |
webhook_lambda_timeout | Time out of the webhook lambda in seconds. | number |
10 |
no |
webhook_lambda_zip | File location of the webhook lambda zip file. | string |
null |
no |
Name | Description |
---|---|
binaries_syncer | n/a |
runners | n/a |
webhook | n/a |
We welcome contribution, please checkout the contribution guide. Be-aware we use pre commit hooks to update the docs.
This module is part of the Philips Forest.
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