This tutorial walks cluster administrators through setting up W&B Launch on a Kubernetes cluster so ML engineers can submit and manage training workloads directly from W&B. You can use W&B Launch to push ML workloads to a Kubernetes cluster, giving ML engineers an interface right in W&B to use the resources you already manage with Kubernetes. W&B maintains an official Launch agent image that you can deploy to your cluster with a Helm chart that W&B maintains. W&B uses the Kaniko builder to let the Launch agent build Docker images in a Kubernetes cluster. To learn more about how to set up Kaniko for the Launch agent, or how to turn off job building and only use prebuilt Docker images, see Advanced agent setup.Documentation Index
Fetch the complete documentation index at: https://wb-21fd5541-update-reference-docs-34.mintlify.app/llms.txt
Use this file to discover all available pages before exploring further.
To install Helm and apply or upgrade the W&B Launch agent Helm chart, you must have
kubectl access to the cluster with sufficient permissions to create, update, and delete Kubernetes resources. Typically, this requires a user with cluster-admin or a custom role with equivalent permissions.Configure a queue for Kubernetes
A Launch queue defines the Kubernetes workload spec that the agent uses to run each job. The Launch queue configuration for a Kubernetes target resource resembles either a Kubernetes job spec or a Kubernetes custom resource spec. You can control any aspect of the Kubernetes workload resource spec when you create a Launch queue.- Kubernetes job spec
- Custom resource spec
securityContextbackOffLimitttlSecondsAfterFinished
example-spec.yaml
Create a queue
Create a queue in the W&B App that uses Kubernetes as its compute resource:- Navigate to the Launch page.
- Click the Create Queue button.
- Select the Entity in which you want to create the queue.
- Provide a name for your queue in the Name field.
- Select Kubernetes as the Resource.
- Within the Configuration field, provide the Kubernetes job workflow spec or custom resource spec you configured in Configure a queue for Kubernetes.
Configure a Launch agent with Helm
With a queue in place, you next deploy the Launch agent that pulls jobs from the queue and runs them on your cluster. Use the Helm chart provided by W&B to deploy the Launch agent into your Kubernetes cluster. Control the behavior of the Launch agent with thevalues.yaml file.
Within the launchConfig key in the values.yaml file, specify the contents that you would normally define in your Launch agent config file (~/.config/wandb/launch-config.yaml).
For example, suppose you have a Launch agent config that lets you run a Launch agent in EKS that uses the Kaniko Docker image builder. Replace [QUEUE-NAME], [MAX-CONCURRENT-JOBS], [MY-REGISTRY-URI], and [S3-BUCKET-URI] with your own values:
launch-config.yaml
values.yaml file, this might look like the following. Replace [QUEUE-NAME], [MAX-CONCURRENT-JOBS], [AWS-REGION], [MY-REGISTRY-URI], and [S3-BUCKET-URI] with your own values:
values.yaml