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Styx

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A batch job scheduler for Kubernetes

Description

Styx is a service that is used to trigger periodic invocations of Docker containers. The information needed to schedule such invocations, is read from a set of files on disk or an external service providing such information. The service takes responsibility for triggering and possibly also re-triggering invocations until a successful exit status has been emitted or some other limit has been reached. Styx is built using the Apollo framework and uses Kubernetes for container orchestration.

Styx can optionally provide some dynamic arguments to container executions that indicates which time period a particular invocation belongs to. For example an hourly job for the first hour of 2016-01-01 might have the dynamic argument 2016-01-01T00 appended to the container invocation.

The envisioned main use case for Styx is to execute data processing job, possibly long running processes that transform data periodically. Its initial use case is to run workflows of jobs orchestrated using Luigi, but it does not have any intrinsic ties to Luigi. Styx can just as well execute a container with some simple bash scripts.

Styx was built to function smoothly on Google Cloud Platform, thus it makes use of Google products such as Google Cloud Datastore, Google Cloud Bigtable and Google Container Engine. However, the integrations with these products are all done through clear interfaces and other backends can easily be added.

Key concepts

The key concept that Styx concerns itself with is Workflows. A Workflow is either enabled or disabled and has a Schedule. A Schedule specifies how often a Workflow should be triggered, which Docker image to run and which arguments to pass to it on each execution. Each time a Workflow is triggered, a Workflow Instance is created. The Workflow instance is tracked as 'active' until at least one execution of the Docker image returns with a 0 exit code. Styx keeps track of Workflow Instance executions and provides information about them via the API.

Development status

Styx is actively being developed and deployed internally at Spotify where it is being used to run around 2200 production workflows. Because of how we build and integrate infrastructure components at Spotify, this repository does not contain a GUI at the time of writing, while we do have one internally. The goal is to break out more of these components into open source projects that complement each other.

More docs

Usage

Setup

A fully functional Service can be found in styx-standalone-service. This packaging contains both the API and Scheduler service in one artifact. This is how you build and run it.

The following configuration keys in styx-standalone.conf have to be specified for the service to work:

# Google Container Engine (GKE) cluster
styx.gke.default.project-id = ""
styx.gke.default.cluster-zone = ""
styx.gke.default.cluster-id = ""

# Google Cloud Bigtable instance
styx.bigtable.project-id = ""
styx.bigtable.instance-id = ""

# Google Cloud Datastore config
styx.datastore.project-id = ""
styx.datastore.namespace = ""

Build the project:

> mvn package

Run the service:

> java -jar styx-standalone-service/target/styx-standalone-service.jar

Workflow configuration

Refer to API Specification for how to deploy a workflow.

id: my-workflow
docker_image: my-workflow:0.1
docker_args: ['./run.sh', '{}']
schedule: hourly
offset: PT1H
secret:
  name: my-secret
  mount_path: /etc/my-keys
service_account: [email protected]

id [string]

A unique identifier for the workflow (lower-case-hyphenated). This identifier is used to refer to the workflow through the API.

docker_image [string]:

The Docker image that should be executed.

docker_args [string]

The list of arguments passed to the Docker container.

This list should only contain strings. Any occurrences of the {} placeholder argument will be replaced with the current partition date or datehour. Note that it must be quoted in the yaml file in order not to be interpreted as an object.

Example arguments for the supported schedule values:

- hourly - 2016-04-01T14, 2016-04-01T15, ... (UTC hours)
- daily  - 2016-04-01,    2016-04-02,    ...
- weekly - 2016-04-04,    2016-04-11,    ... (Mondays)

schedule [string]

How often the workflow should be triggered and what the {} placeholder will be replaced with in docker_args.

Supports cron syntax, along with a set of human readable aliases:

@hourly,   hourly   = 0 * * * *
@daily,    daily    = 0 0 * * *
@weekly,   weekly   = 0 0 * * MON
@monthly,  monthly  = 0 0 1 * *
@yearly,   yearly   = 0 0 1 1 *
@annually, annually = 0 0 1 1 *

offset [string]

An ISO 8601 Duration specification for offsetting the cron schedule.

This is useful for when setting up a schedule that needs to be offset in time relative to the schedule timestamps. For instance, an hourly schedule that needs to process a bucket of data for each hour will not be able to run until at the end of that hour. We can then use an offset value of PT1H. The injected placeholder would reflect the logical time of the schedule (00, 01, 02, ...), but it would actually run one hour later (01, 02, 03, ...). This is specially useful for irregular schedules.

In fact, it is so common that we need to use a "last hour" parameter in jobs that we've set the default offset for all the well known (aliased) schedules to +1 period. E.g for an @hourly schedule, the default offset is PT1H, and for a @daily schedule the offset is P1D

Example: a job needs to run daily at 2 AM but the partition argument needs to be midnight

schedule: '@daily'
offset: P1DT2H

At 2017-06-30T02 the execution for 2017-06-29 will be triggered.

secret [secret]

Secret is used to mount keys stored in Kubernetes Secrets into the container.

  • .name [string]

    Name of the secret stored in Kubernetes

  • .mount_path [string]

    Where the keys of the secret will be appearing in the container

service_account [email address]

The Service Account email address belonging to a project in Google Cloud Platform.

If the workflow intends to use keys of a Service Account, Styx will create both JSON and p12 keys for the specified service_account, rotate keys on daily basis, and garbage collect unused keys older than 48h.

Styx stores the created keys in Kubernetes Secrets and mounts them under /etc/styx-wf-sa-keys/ in the container.

Styx injects an environment variable to the container named as GOOGLE_APPLICATION_CREDENTIALS pointing to the JSON key file.

It is allowed and perfectly fine to have both secret and service_account configured for a workflow. However users need to make sure secret.mount_path doesn't point to /etc/styx-wf-sa-keys/; otherwise Styx will refuse to trigger the workflow.

In order for Styx to be able to create/delete keys for the service_account of a workflow, the Service Account that Styx itself runs as should be granted Service Account Key Admin role for the service_account of the workflow. This can be done by following Granting Roles to Service Accounts.

Triggering and executions

Each time a Workflow Schedule is triggered, Styx will treat that trigger as a first class entity. Each Trigger will have at least one Execution which can potentially take a long time to execute. If another Trigger happens during this time, both triggers will be active, each with one running container. Because Styx treats each Trigger individually, it can ensure that each one of them complete successfully.

Styx does not assume anything about what is executed in the container, it only cares about the exit code. Any execution returning a non-zero exit code will either cause a re-try to be scheduled, or be interpreted as a permanent failure of the workflow instance. For detailed description of exit codes, please refer to Workflow state graph section in Styx design.

Injected environment variables

For each execution, Styx will inject a set of environment variables into the Docker container.

Variable Name Description
STYX_COMPONENT_ID The component id of the workflow. This will be the filename of the file which defines the workflow schedule.
STYX_WORKFLOW_ID The workflow id of the workflow. This is the id field specified in the workflow schedule.
STYX_PARAMETER The parameter argument. See section about docker_args above.
STYX_SERVICE_ACCOUNT The service account.
STYX_COMMIT_SHA The commit-sha of the workflow.
STYX_DOCKER_ARGS The arguments passed to the container.
STYX_DOCKER_IMAGE The docker image.
STYX_TRIGGER_ID The ID of the trigger.
STYX_TRIGGER_TYPE The type of the trigger. Possible values are: natural, adhoc, backfill and unknown
STYX_EXECUTION_ID A unique identifier for the execution. This is the execution id used to identify execution attempts of a trigger.
STYX_EXECUTION_COUNTER to be implemented - A counter indicating which execution this is. Goes from 0..N per trigger.

Development

Code Coverage

An aggregate code coverage report for the entire project is created by the report submodule.

> mvn clean verify
> open report/target/site/jacoco-aggregate/index.html

CircleCI builds submit code coverage reports to codecov.io. In addition, the aggregate JaCoCo report can be viewed under the Artifacts tab in the CircleCI build view.


This project adheres to the Open Code of Conduct. By participating, you are expected to honor this code.

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