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Operator for installation and lifecycle management of CodeFlare distributed workload stack, starting with MCAD and InstaScale

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codeflare-operator

Operator for installation and lifecycle management of CodeFlare distributed workload stack.

CodeFlare Stack Compatibility Matrix

Component Version
CodeFlare Operator v1.5.0
CodeFlare-SDK v0.17.0
AppWrapper v0.20.2
KubeRay v1.1.0
Kueue v0.7.0

Development

Requirements:

  • GNU sed - sed is used in several Makefile command. Using macOS default sed is incompatible, so GNU sed is needed for correct execution of these commands. When you have a version of the GNU sed installed on a macOS you may specify the binary using
    # brew install gnu-sed
    make install -e SED=/usr/local/bin/gsed

Testing

The e2e tests can be executed locally by running the following commands:

  1. Use an existing cluster, or set up a test cluster, e.g.:

    # Create a KinD cluster
    make kind-e2e
    # Install the CRDs
    make install

    [!NOTE] Some e2e tests cover the access to services via Ingresses, as end-users would do, which requires access to the Ingress controller load balancer by its IP. For it to work on macOS, this requires installing docker-mac-net-connect.

  2. Setup the rest of the CodeFlare stack.

    make setup-e2e

    [!NOTE] Kueue will only activate its Ray integration if KubeRay is installed before Kueue (as done by this make target).

    [!NOTE] In OpenShift the KubeRay operator pod gets random user assigned. This user is then used to run Ray cluster. However the random user assigned by OpenShift doesn't have rights to store dataset downloaded as part of test execution, causing tests to fail. To prevent this failure on OpenShift user should enforce user 1000 for KubeRay and Ray cluster by creating this SCC in KubeRay operator namespace (replace the namespace placeholder):

    kind: SecurityContextConstraints
    apiVersion: security.openshift.io/v1
    metadata:
      name: run-as-ray-user
    seLinuxContext:
      type: MustRunAs
    runAsUser:
      type: MustRunAs
      uid: 1000
    users:
      - 'system:serviceaccount:$(namespace):kuberay-operator'
  3. Start the operator locally:

    NAMESPACE=default make run

    Alternatively, You can run the operator from your IDE / debugger.

  4. In a separate terminal, set your output directory for test files, and run the e2e suite:

    export CODEFLARE_TEST_OUTPUT_DIR=<your_output_directory>
    make test-e2e

Alternatively, You can run the e2e test(s) from your IDE / debugger.

Testing on disconnected cluster

To properly run e2e tests on disconnected cluster user has to provide additional environment variables to properly configure testing environment:

  • CODEFLARE_TEST_PYTORCH_IMAGE - image tag for image used to run training job
  • CODEFLARE_TEST_RAY_IMAGE - image tag for Ray cluster image
  • MNIST_DATASET_URL - URL where MNIST dataset is available
  • PIP_INDEX_URL - URL where PyPI server with needed dependencies is running
  • PIP_TRUSTED_HOST - PyPI server hostname

For ODH tests additional environment variables are needed:

  • NOTEBOOK_IMAGE_STREAM_NAME - name of the ODH Notebook ImageStream to be used
  • ODH_NAMESPACE - namespace where ODH is installed

Release

  1. Invoke project-codeflare-release.yaml
  2. Once all jobs within the action are completed, verify that compatibility matrix in README was properly updated.
  3. Verify that opened pull request to OpenShift community operators repository has proper content.
  4. Once PR is merged, announce the new release in slack and mail lists, if any.
  5. Release automation should auto-merge changes to ODH CodeFlare operator repo. Verify the workflow ran successfully and review the new merge-commit and commit history. Same for the Red Hat CodeFlare Operator repo, while also ensuring changes are in the latest rhoai release branch. - If the auto-merge fails, conflicts must be resolved and force pushed manually to each downstream repository and release branch.
  6. In ODH/CFO verify that the Build and Push action was triggered and ran successfully.
  7. Make sure that release automation created a PR updating CodeFlare SDK version in ODH Notebooks repository. Make sure the PR gets merged.

Releases involving part of the stack

There may be instances in which a new CodeFlare stack release requires releases of only a subset of the stack components. Examples could be hotfixes for a specific component. In these instances:

  1. Build updated components as needed:

  2. Invoke tag-and-build.yml GitHub action, this action will create a repository tag, build and push operator image.

  3. Check result of tag-and-build.yml GitHub action, it should pass.

  4. Verify that compatibility matrix in README was properly updated.

  5. Follow the steps 3-6 from the previous section.

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Operator for installation and lifecycle management of CodeFlare distributed workload stack, starting with MCAD and InstaScale

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