Skip to content

A toolkit to run Ray applications on Kubernetes

License

Notifications You must be signed in to change notification settings

BonsaiAI/kuberay

 
 

Repository files navigation

KubeRay

Build Status Go Report Card

KubeRay is an open source toolkit to run Ray applications on Kubernetes. It provides several tools to simplify managing Ray clusters on Kubernetes.

  • Ray Operator
  • Backend services to create/delete cluster resources
  • Kubectl plugin/CLI to operate CRD objects
  • Native Job and Serving integration with Clusters
  • Data Scientist centric workspace for fast prototyping (incubating)
  • Kubernetes event dumper for ray clusters/pod/services (future work)
  • Operator Integration with Kubernetes node problem detector (future work)

Documentation

You can view detailed documentation and guides at https://ray-project.github.io/kuberay/.

We also recommend checking out the official Ray guides for deploying on Kubernetes at https://docs.ray.io/en/latest/cluster/kubernetes/index.html.

Quick Start

Please choose the version you would like to install. The examples below use the latest stable version v0.4.0.

Version Stable Suggested Kubernetes Version
master N v1.19 - v1.25
v0.4.0 Y v1.19 - v1.25

Use YAML

Make sure your Kubernetes and Kubectl versions are both within the suggested range. Once you have connected to a Kubernetes cluster, run the following commands to deploy the KubeRay Operator.

# case 1: kubectl >= v1.22.0
export KUBERAY_VERSION=v0.4.0
kubectl create -k "github.com/ray-project/kuberay/ray-operator/config/default?ref=${KUBERAY_VERSION}&timeout=90s"

# case 2: kubectl < v1.22.0
# Clone KubeRay repository and checkout to the desired branch e.g. `release-0.4`.
kubectl create -k ray-operator/config/default

To deploy both the KubeRay Operator and the optional KubeRay API Server run the following commands.

# case 1: kubectl >= v1.22.0
export KUBERAY_VERSION=v0.4.0
kubectl create -k "github.com/ray-project/kuberay/manifests/cluster-scope-resources?ref=${KUBERAY_VERSION}&timeout=90s"
kubectl apply -k "github.com/ray-project/kuberay/manifests/base?ref=${KUBERAY_VERSION}&timeout=90s"

# case 2: kubectl < v1.22.0
# Clone KubeRay repository and checkout to the desired branch e.g. `release-0.4`.
kubectl create -k manifests/cluster-scope-resources
kubectl apply -k manifests/base

Observe that we must use kubectl create to install cluster-scoped resources. The corresponding kubectl apply command will not work. See KubeRay issue #271.

Use Helm (Helm v3+)

A Helm chart is a collection of files that describe a related set of Kubernetes resources. It can help users to deploy the KubeRay Operator and Ray clusters conveniently. Please read kuberay-operator to deploy the operator and ray-cluster to deploy a configurable Ray cluster. To deploy the optional KubeRay API Server, see kuberay-apiserver.

helm repo add kuberay https://ray-project.github.io/kuberay-helm/

# Install both CRDs and KubeRay operator v0.4.0.
helm install kuberay-operator kuberay/kuberay-operator --version 0.4.0

# Check the KubeRay operator Pod in `default` namespace
kubectl get pods
# NAME                                READY   STATUS    RESTARTS   AGE
# kuberay-operator-6fcbb94f64-mbfnr   1/1     Running   0          17s

Development

Please read our CONTRIBUTING guide before making a pull request. Refer to our DEVELOPMENT to build and run tests locally.

Security

If you discover a potential security issue in this project, or think you may have discovered a security issue, we ask that you notify KubeRay Security via our Slack Channel. Please do not create a public GitHub issue.

License

This project is licensed under the Apache-2.0 License.

About

A toolkit to run Ray applications on Kubernetes

Resources

License

Code of conduct

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Go 87.4%
  • Python 8.8%
  • Makefile 1.3%
  • Shell 1.0%
  • Mustache 0.6%
  • Dockerfile 0.6%
  • Smarty 0.3%