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cloudbuild.yaml
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cloudbuild.yaml
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# Copyright 2024 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
steps:
- id: "validate platform"
name: "gcr.io/$PROJECT_ID/terraform"
script: |
terraform init -no-color
terraform validate -no-color
dir: "infrastructure/"
waitFor: ["-"]
- id: "validate ray"
name: "gcr.io/$PROJECT_ID/terraform"
script: |
terraform init -no-color
terraform validate -no-color
dir: "applications/ray/"
waitFor: ["validate platform"]
- id: "validate jupyterhub"
name: "gcr.io/$PROJECT_ID/terraform"
script: |
terraform init -no-color
terraform validate -no-color
dir: "applications/jupyter/"
waitFor: ["validate platform"]
- id: "validate rag"
name: "gcr.io/$PROJECT_ID/terraform"
script: |
terraform init -no-color
terraform validate -no-color
dir: "applications/rag/"
waitFor: ["validate platform"]
- id: 'create gke cluster'
name: 'gcr.io/$PROJECT_ID/terraform'
env:
- "KUBE_LOAD_CONFIG_FILE=false"
entrypoint: 'sh'
args:
- '-c'
- |
set -e
terraform apply \
-var-file=tfvars_tests/standard-gke-public.platform.tfvars \
-var=project_id=$PROJECT_ID \
-var=network_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=subnetwork_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=subnetwork_region=$_REGION \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=autopilot_cluster=$_AUTOPILOT_CLUSTER \
-var=cluster_location=$_REGION \
-var='cpu_pools=[{initial_node_count=2,name="cpu-pool",machine_type="n1-standard-16",autoscaling=true,min_count=1,max_count=3,disk_size_gb=100,disk_type="pd-standard",}]' \
-var='gpu_pools=[{initial_node_count=2,name="gpu-pool",machine_type="g2-standard-24",autoscaling=true,min_count=1,max_count=3,disk_size_gb=100,disk_type="pd-balanced",accelerator_count=2,accelerator_type="nvidia-l4",gpu_driver_version="DEFAULT",}]' \
-auto-approve -no-color
echo "pass" > /workspace/gke_cluster_result.txt
dir: 'infrastructure/'
allowFailure: true
waitFor: ['validate platform', 'validate ray', 'validate jupyterhub', validate rag]
- id: 'test ray cluster'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'sh'
args:
- '-c'
- |
set -e
# Get kube config
gcloud container clusters get-credentials \
ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
--location $_REGION \
--project $PROJECT_ID
cd /workspace/applications/ray/
terraform apply \
-var-file=workloads.tfvars \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=ml-$SHORT_SHA-$_BUILD_ID-ray \
-var=workload_identity_service_account=ray-sa-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-ray-$SHORT_SHA-$_BUILD_ID \
-var=enable_gpu=true \
-auto-approve -no-color
echo "pass" > /workspace/user_result.txt
chmod +x /workspace/scripts/ci/wait_for_pods.sh
/workspace/scripts/ci/wait_for_pods.sh ml-$SHORT_SHA-$_BUILD_ID-ray 3000
kubectl wait --all pods -n ml-$SHORT_SHA-$_BUILD_ID-ray --for=condition=Ready --timeout=1200s
# Ray head's readinessProbe is not probing the head service today. Therefore the wait for ready above is not reliable.
sleep 60s
kubectl port-forward -n ml-$SHORT_SHA-$_BUILD_ID-ray service/ray-cluster-kuberay-head-svc 8265:8265 &
# Wait port-forwarding to take its place
sleep 10s
ray job submit \
--address=http://127.0.0.1:8265 -- python -c "import ray; ray.init(); print(ray.cluster_resources())"
echo "pass" > /workspace/ray_result.txt
allowFailure: true
waitFor: ['create gke cluster']
- id: 'cleanup ray cluster'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
set -e
cd /workspace/applications/ray/
terraform destroy \
-var-file=workloads.tfvars \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=ml-$SHORT_SHA-$_BUILD_ID-ray \
-var=workload_identity_service_account=ray-sa-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-ray-$SHORT_SHA-$_BUILD_ID \
-var=enable_gpu=true \
-auto-approve -no-color
allowFailure: true
waitFor: ['test ray cluster']
- id: 'test jupyterhub'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
set -e
cd /workspace/modules/jupyter/tests
python3 change_jupyter_config.py $_AUTOPILOT_CLUSTER
cd /workspace/applications/jupyter
terraform apply \
-var-file=workloads-without-iap.example.tfvars \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=ml-$SHORT_SHA-$_BUILD_ID-jupyter \
-var=workload_identity_service_account=jupyter-sa-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-jupyter-$SHORT_SHA-$_BUILD_ID \
-auto-approve -no-color
echo "pass" > /workspace/jupyterhub_tf_result.txt
kubectl wait --for=condition=Ready pods -n ml-$SHORT_SHA-$_BUILD_ID-jupyter -l 'component!=continuous-image-puller' --timeout=1800s
kubectl get services -n ml-$SHORT_SHA-$_BUILD_ID-jupyter
kubectl port-forward -n ml-$SHORT_SHA-$_BUILD_ID-jupyter service/proxy-public 9442:80 &
# Wait port-forwarding to take its place
sleep 5s
cd /workspace/modules/jupyter/tests
python3 test_hub.py "127.0.0.1:9442" $_AUTOPILOT_CLUSTER
echo "pass" > /workspace/jupyterhub_test_result.txt
allowFailure: true
waitFor: ['create gke cluster']
- id: 'cleanup jupyterhub'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
set -e
cd /workspace/applications/jupyter/
terraform destroy \
-var-file=workloads-without-iap.example.tfvars \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=ml-$SHORT_SHA-$_BUILD_ID-jupyter \
-var=workload_identity_service_account=jupyter-sa-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-jupyter-$SHORT_SHA-$_BUILD_ID \
-auto-approve -no-color
allowFailure: true
waitFor: ['test jupyterhub']
- id: 'test rag'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'sh'
secretEnv: ['KAGGLE_USERNAME', 'KAGGLE_KEY']
args:
- '-c'
- |
set -e
# Get kube config
gcloud container clusters get-credentials \
ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
--location $_REGION \
--project $PROJECT_ID
cd /workspace/modules/jupyter/tests
python3 change_jupyter_config.py $_AUTOPILOT_CLUSTER
cd /workspace/applications/rag/
terraform apply \
-var-file=workloads.tfvars \
-var=network_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=create_cluster=false \
-var=jupyter_add_auth=false \
-var=frontend_add_auth=false \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=rag-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-rag-$SHORT_SHA-$_BUILD_ID \
-var=ray_service_account=ray-sa-4-rag-$SHORT_SHA-$_BUILD_ID \
-var=rag_service_account=rag-sa-4-rag-$SHORT_SHA-$_BUILD_ID \
-var=jupyter_service_account=jupyter-sa-4-rag-$SHORT_SHA-$_BUILD_ID \
-var=cloudsql_instance=pgvector-instance-$SHORT_SHA-$_BUILD_ID \
-auto-approve -no-color
echo "pass" > /workspace/rag_tf_result.txt
# Validate Ray: Make sure pods are running
kubectl wait --for=condition=Ready pods -n rag-$SHORT_SHA-$_BUILD_ID -l 'component!=continuous-image-puller' --timeout=1200s
kubectl port-forward -n rag-$SHORT_SHA-$_BUILD_ID service/ray-cluster-kuberay-head-svc 8262:8265 &
# Wait port-forwarding to take its place
sleep 5s
# Validate Ray: Check dashboard
ray job submit --working-dir ./tests \
--address=http://127.0.0.1:8262 -- python -c "import ray; ray.init(); print(ray.cluster_resources())"
echo "pass" > /workspace/rag_ray_dashboard_result.txt
# Validate JupyterHub: Get hub url
kubectl get services -n rag-$SHORT_SHA-$_BUILD_ID
kubectl port-forward -n rag-$SHORT_SHA-$_BUILD_ID service/proxy-public 9443:80 &
# Wait port-forwarding to take its place
sleep 5s
# Validate JupyterHub: Test Hub
cd /workspace/modules/jupyter/tests
python3 test_hub.py "127.0.0.1:9443" $_AUTOPILOT_CLUSTER
echo "pass" > /workspace/rag_jupyterhub_test_result.txt
# Validate RAG: Test rag frontend
kubectl port-forward -n rag-$SHORT_SHA-$_BUILD_ID service/rag-frontend 8081:8080 &
# Wait port-forwarding to take its place
sleep 5s
cd /workspace/applications/rag/tests
python3 test_frontend.py "127.0.0.1:8081"
echo "pass" > /workspace/rag_frontend_result.txt
cd /workspace/
sed -i "s/<username>/$$KAGGLE_USERNAME/g" ./applications/rag/example_notebooks/rag-kaggle-ray-sql-interactive.ipynb
sed -i "s/<token>/$$KAGGLE_KEY/g" ./applications/rag/example_notebooks/rag-kaggle-ray-sql-interactive.ipynb
gsutil cp ./applications/rag/example_notebooks/rag-kaggle-ray-sql-interactive.ipynb gs://gke-aieco-rag-$SHORT_SHA-$_BUILD_ID/
kubectl exec -it -n rag-$SHORT_SHA-$_BUILD_ID $(kubectl get pod -l app=jupyterhub,component=hub -n rag-$SHORT_SHA-$_BUILD_ID -o jsonpath="{.items[0].metadata.name}") -- jupyterhub token admin --log-level=CRITICAL | xargs python3 ./applications/rag/notebook_starter.py
# Wait for jupyterhub to trigger notebook pod startup
sleep 5s
kubectl wait --for=condition=Ready pod/jupyter-admin -n rag-$SHORT_SHA-$_BUILD_ID --timeout=500s
kubectl exec -it -n rag-$SHORT_SHA-$_BUILD_ID jupyter-admin -c notebook -- jupyter nbconvert --to script /data/rag-kaggle-ray-sql-interactive.ipynb
kubectl exec -it -n rag-$SHORT_SHA-$_BUILD_ID jupyter-admin -c notebook -- ipython /data/rag-kaggle-ray-sql-interactive.py
python3 ./applications/rag/tests/test_rag.py "http://127.0.0.1:8081/prompt"
echo "pass" > /workspace/rag_prompt_result.txt
allowFailure: true
waitFor: ['create gke cluster']
- id: 'cleanup rag'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
set -e
cd /workspace/applications/rag/
terraform destroy \
-var-file=workloads.tfvars \
-var=network_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=create_cluster=false \
-var=jupyter_add_auth=false \
-var=frontend_add_auth=false \
-var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=cluster_location=$_REGION \
-var=kubernetes_namespace=rag-$SHORT_SHA-$_BUILD_ID \
-var=gcs_bucket=gke-aieco-rag-$SHORT_SHA-$_BUILD_ID \
-var=ray_service_account=ray-sa-$SHORT_SHA-$_BUILD_ID \
-var=rag_service_account=rag-sa-$SHORT_SHA-$_BUILD_ID \
-var=jupyter_service_account=jupyter-sa-$SHORT_SHA-$_BUILD_ID \
-var=cloudsql_instance=pgvector-instance-$SHORT_SHA-$_BUILD_ID \
-auto-approve -no-color
allowFailure: true
waitFor: ['test rag']
- id: 'cleanup gke cluster'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
set -e
cd /workspace/infrastructure
terraform destroy -var-file=tfvars_tests/standard-gke-public.platform.tfvars -var=project_id=$PROJECT_ID \
-var=cluster_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-cluster \
-var=network_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=subnetwork_name=ml-$SHORT_SHA-$_PR_NUMBER-$_BUILD_ID-$_AUTOPILOT_CLUSTER \
-var=autopilot_cluster=$_AUTOPILOT_CLUSTER \
-var=cluster_location=$_REGION -auto-approve -no-color
allowFailure: true
waitFor: ['cleanup rag', 'cleanup jupyterhub', 'cleanup ray cluster']
- id: 'check result'
name: 'gcr.io/$PROJECT_ID/terraform'
entrypoint: 'bash'
args:
- '-c'
- |
if [[ $(cat /workspace/gke_cluster_result.txt) != "pass" ]]; then
echo "gke cluster creation failed"
exit 1
fi
if [[ $(cat /workspace/ray_result.txt) != "pass" ]]; then
echo "ray API run failed"
exit 1
fi
if [[ $(cat /workspace/user_result.txt) != "pass" ]]; then
echo "ray cluster failed"
exit 1
fi
if [[ $(cat /workspace/jupyterhub_tf_result.txt) != "pass" ]]; then
echo "jupyterhub tf failed"
exit 1
fi
if [[ $(cat /workspace/jupyterhub_test_result.txt) != "pass" ]]; then
echo "jupyterhub test failed"
exit 1
fi
if [[ $(cat /workspace/rag_tf_result.txt) != "pass" ]]; then
echo "rag tf failed"
exit 1
fi
if [[ $(cat /workspace/rag_ray_dashboard_result.txt) != "pass" ]]; then
echo "rag ray dashboard test failed"
exit 1
fi
if [[ $(cat /workspace/rag_jupyterhub_test_result.txt) != "pass" ]]; then
echo "rag jupyterhub test failed"
exit 1
fi
if [[ $(cat /workspace/rag_frontend_result.txt) != "pass" ]]; then
echo "rag frontend test failed"
exit 1
fi
if [[ $(cat /workspace/rag_prompt_result.txt) != "pass" ]]; then
echo "rag prompt test failed"
exit 1
fi
waitFor: ['cleanup gke cluster']
substitutions:
_REGION: us-east4
_USER_NAME: github
_AUTOPILOT_CLUSTER: "false"
_BUILD_ID: ${BUILD_ID:0:8}
logsBucket: gs://ai-on-gke-build-logs
options:
substitutionOption: "ALLOW_LOOSE"
machineType: "E2_HIGHCPU_8"
timeout: 5400s
availableSecrets:
secretManager:
- versionName: projects/gke-ai-eco-dev/secrets/cloudbuild-kaggle-username/versions/latest
env: "KAGGLE_USERNAME"
- versionName: projects/gke-ai-eco-dev/secrets/cloudbuild-kaggle-key/versions/latest
env: "KAGGLE_KEY"