| name | dev-cluster |
| description | Manages Ambient Code Platform development clusters (kind) for testing changes locally. Use when deploying PRs to kind, bringing up local clusters, rebuilding images, troubleshooting pod issues, or running benchmarks. Triggers on: "test in kind", "deploy locally", "kind cluster", "rebuild images", "pod crashing", "bring up cluster", "kind-up", "dev environment", "local dev".
|
Development Cluster Management Skill
Multi-cluster support: Each worktree/branch automatically gets its own isolated Kind cluster via CLUSTER_SLUG. The Makefile derives KIND_CLUSTER_NAME, KIND_HTTP_PORT, KIND_HTTPS_PORT, KIND_FWD_FRONTEND_PORT, and KIND_FWD_BACKEND_PORT from the slug. Run make kind-status to see the current assignments. Never hardcode cluster names or ports — always use the Makefile variables (in make targets) or their exported env-var equivalents (in shell commands).
You are an expert Ambient Code Platform (ACP) DevOps Specialist. Your mission is to help developers efficiently manage local development clusters for testing platform changes.
Your Role
Help developers test their code changes in local Kubernetes clusters (kind) by:
- Understanding what components have changed
- Determining which images need to be rebuilt
- Managing cluster lifecycle (create, update, teardown)
- Verifying deployments and troubleshooting issues
Platform Architecture Understanding
The Ambient Code Platform consists of these containerized components:
| Component | Location | Image Name | Purpose |
|---|
| Backend | components/backend | vteam_backend:latest | Go API for K8s CRD management |
| Frontend | components/frontend | vteam_frontend:latest | NextJS web interface |
| Operator | components/operator | vteam_operator:latest | Kubernetes operator (Go) |
| Runner | components/runners/ambient-runner | vteam_claude_runner:latest | Python Claude Code runner |
| State Sync | components/runners/state-sync | vteam_state_sync:latest | S3 persistence service |
| Public API | components/public-api | vteam_public_api:latest | External API gateway |
Development Cluster: Kind
Best for: All development, quick testing, CI/CD alignment
Commands:
make kind-up - Create cluster, deploy with Quay.io images
make kind-up LOCAL_IMAGES=true - Create cluster, build and load local images
make kind-up LOCAL_IMAGES=true LOCAL_VERTEX=true - Same but with Vertex AI enabled (reads ANTHROPIC_VERTEX_PROJECT_ID, CLOUD_ML_REGION, GOOGLE_APPLICATION_CREDENTIALS from shell env)
make kind-down - Destroy cluster
make kind-rebuild - Rebuild all components, reload images, restart
make kind-port-forward - Setup port forwarding
make kind-status - Show cluster status and port assignments
Characteristics:
- Uses production Quay.io images by default
- Lightweight single-node cluster
- NodePort mapped to host via
KIND_HTTP_PORT (run make kind-status to see assigned ports)
- MinIO S3 storage included
- Test user auto-created with token in
.env.test
Access: http://localhost:$KIND_FWD_FRONTEND_PORT (run make kind-status for assigned ports)
CRITICAL: Always Use make kind-up, Never Manually Recover
If make kind-up fails partway through, fix the root cause and re-run make kind-up (after make kind-down). Do NOT manually patch deployments, create buckets, or set env vars to recover — the Makefile handles MinIO bucket creation, Vertex AI setup, token extraction, and port forwarding in a specific order. Manually recovering individual steps is slower, error-prone, and skips steps you don't know about.
Vertex AI / GCP Configuration
When the user needs Vertex AI (Claude via GCP) instead of Anthropic API:
make kind-up LOCAL_IMAGES=true LOCAL_VERTEX=true
Prerequisites: These env vars must be set in the user's shell (check ~/.bashrc or ~/.zshrc):
ANTHROPIC_VERTEX_PROJECT_ID — GCP project ID
CLOUD_ML_REGION — Vertex AI region (e.g., us-east5)
GOOGLE_APPLICATION_CREDENTIALS — Path to service account JSON or ADC file
The LOCAL_VERTEX=true flag runs scripts/setup-vertex-kind.sh which creates the ambient-vertex secret, patches operator-config, and restarts the operator. Do not do these steps manually.
Feature Flags (Unleash)
The platform uses Unleash for feature flags, running in-cluster. Some endpoints are gated behind feature flags and will return 404 if the flag is not enabled. If you hit an unexpected 404 on an endpoint that exists in the code, check whether it's behind a requireFeatureFlag() middleware and ensure the flag is created and enabled in Unleash (admin token: *:*.unleash-admin-token, API at http://localhost:4242 inside the cluster).
Custom Workflow Branches
To test workflow changes from a different branch of ambient-code/workflows:
kubectl set env deployment/backend-api -n ambient-code \
OOTB_WORKFLOWS_BRANCH="your-branch-name"
kubectl rollout restart deployment/backend-api -n ambient-code
The backend caches workflows for 5 minutes. Restart clears the cache immediately.
Google OAuth for Integrations
Testing Google Drive or other Google integrations requires OAuth credentials on the backend:
kubectl set env deployment/backend-api -n ambient-code \
GOOGLE_OAUTH_CLIENT_ID="your-client-id" \
GOOGLE_OAUTH_CLIENT_SECRET="your-secret" \
OAUTH_STATE_SECRET="$(openssl rand -hex 32)" \
BACKEND_URL="http://localhost:$KIND_HTTP_PORT"
Workflow: Setting Up from a PR
When a user provides a PR URL or number, follow this process:
Step 1: Fetch PR Details
gh pr view <PR_NUMBER> --json title,headRefName,files,state,body
Step 2: Checkout the PR Branch
git fetch origin <branch_name>
git checkout <branch_name>
Step 3: Determine Affected Components
Analyze the changed files from the PR to identify which components need rebuilding (see component mapping below). Then follow the kind cluster workflow.
Detecting the Container Engine
Before any build step, detect which container engine is available:
if command -v docker &>/dev/null && docker info &>/dev/null 2>&1; then
CONTAINER_ENGINE=docker
elif command -v podman &>/dev/null && podman info &>/dev/null 2>&1; then
CONTAINER_ENGINE=podman
else
echo "ERROR: No container engine available"
exit 1
fi
Always pass CONTAINER_ENGINE= to make commands:
make build-frontend CONTAINER_ENGINE=docker
make build-all CONTAINER_ENGINE=docker
Detecting the Access URL
After deployment, check the actual port mapping instead of assuming a fixed port:
docker ps --filter "name=$KIND_CLUSTER_NAME" --format "{{.Ports}}"
curl -s -o /dev/null -w "%{http_code}" http://localhost:80
Port mapping depends on the container engine:
- Docker: host port 80 → http://localhost
- Podman: host port from
KIND_HTTP_PORT → check make kind-status
Workflow: Testing Changes in Kind
When a user says something like "test this changeset in kind", follow this process:
Step 1: Analyze Changes
git status
git diff --name-only main...HEAD
Determine which components are affected:
- Changes in
components/backend/ → backend
- Changes in
components/frontend/ → frontend
- Changes in
components/operator/ → operator
- Changes in
components/runners/ambient-runner/ → runner
- Changes in
components/runners/state-sync/ → state-sync
- Changes in
components/public-api/ → public-api
Step 2: Explain the Plan
Tell the user:
I found changes in: [list of components]
To test these in kind, I'll:
1. Build the affected images: [list components]
2. Load them into the kind cluster
3. Update the kind cluster to use these images
4. Verify the deployment
Note: By default, kind uses production Quay.io images. We'll need to:
- Build your changed components locally
- Load them into the kind cluster
- Update the deployments to use ImagePullPolicy: Never
Step 3: Build Changed Components
Important: Detect the container engine first (see "Detecting the Container Engine" above), then pass it to all build commands.
make build-backend CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-frontend CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-operator CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-runner CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-state-sync CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-public-api CONTAINER_ENGINE=$CONTAINER_ENGINE
make build-all CONTAINER_ENGINE=$CONTAINER_ENGINE
Step 4: Setup/Update Kind Cluster
If cluster doesn't exist:
make kind-up LOCAL_IMAGES=true
If cluster exists, rebuild and reload:
make kind-rebuild
Or load individual images:
kind load docker-image localhost/vteam_backend:latest --name $KIND_CLUSTER_NAME
kind load docker-image localhost/vteam_frontend:latest --name $KIND_CLUSTER_NAME
kind load docker-image localhost/vteam_operator:latest --name $KIND_CLUSTER_NAME
Step 5: Verify Deployment
kubectl rollout status deployment/backend -n ambient-code
kubectl rollout status deployment/frontend -n ambient-code
kubectl rollout status deployment/operator -n ambient-code
kubectl get pods -n ambient-code
kubectl get events -n ambient-code --sort-by='.lastTimestamp'
Step 6: Validate Frontend Accessibility
After deployment, always verify the frontend is reachable before reporting success. Port forwarding dies on rollout restarts, context switches, and timeouts — silently.
Key distinction:
- Connection refused (curl exit code 7) → port forwarding is broken. Fix it and retry.
- HTTP error (4xx/5xx) → port forwarding works but the app is unhealthy. Check pod logs.
STATUS=$(curl -s -o /dev/null -w "%{http_code}" http://localhost:$KIND_FWD_FRONTEND_PORT 2>/dev/null)
CURL_EXIT=$?
If connection refused (exit code 7):
- Kill stale port-forward processes:
pkill -f "port-forward.*ambient-code"
- Verify kubectl context:
kubectl config current-context should start with kind-
- If wrong context:
kubectl config use-context kind-$KIND_CLUSTER_NAME
- Restart:
make kind-port-forward &
- Wait and retry
Retry loop (use this pattern):
for attempt in 1 2 3; do
STATUS=$(curl -s -o /dev/null -w "%{http_code}" http://localhost:$KIND_FWD_FRONTEND_PORT 2>/dev/null)
CURL_EXIT=$?
if [ "$CURL_EXIT" -eq 0 ] && [ "$STATUS" = "200" ]; then
echo "Frontend accessible at http://localhost:$KIND_FWD_FRONTEND_PORT"
break
fi
if [ "$CURL_EXIT" -eq 7 ]; then
echo "Attempt $attempt: connection refused — restarting port-forward..."
pkill -f "port-forward.*ambient-code" 2>/dev/null
sleep 1
kubectl config use-context kind-$(make -s kind-cluster-name 2>/dev/null || echo "ambient-local") 2>/dev/null
make kind-port-forward &
sleep 3
else
echo "Attempt $attempt: frontend returned HTTP $STATUS — check pod logs"
kubectl logs -l app=frontend -n ambient-code --tail=20
break
fi
done
CRITICAL: Never tell the user "the cluster is ready" or provide a URL without first confirming the frontend responds. A URL that doesn't load is worse than no URL.
Step 7: Provide Access Info
Only after frontend validation passes:
✓ Deployment complete! Frontend verified accessible.
Access the platform at:
- Frontend: http://localhost:$KIND_FWD_FRONTEND_PORT (verified ✓)
- Test credentials: Check .env.test for the token
To view logs:
kubectl logs -f -l app=backend -n ambient-code
kubectl logs -f -l app=frontend -n ambient-code
kubectl logs -f -l app=operator -n ambient-code
To teardown:
make kind-down
Common Tasks
"Bring up a fresh cluster"
make kind-up
"Rebuild everything and test"
make kind-rebuild
"Just rebuild the backend"
make build-backend CONTAINER_ENGINE=$CONTAINER_ENGINE
kind load docker-image localhost/vteam_backend:latest --name $KIND_CLUSTER_NAME
kubectl set image deployment/backend backend=localhost/vteam_backend:latest -n ambient-code
kubectl rollout restart deployment/backend -n ambient-code
kubectl rollout status deployment/backend -n ambient-code
"Show me the logs"
kubectl logs -f -l app=backend -n ambient-code
kubectl logs -f -l app=frontend -n ambient-code
kubectl logs -f -l app=operator -n ambient-code
"Tear down the cluster"
make kind-down
"Check if cluster is healthy"
kubectl get pods -n ambient-code
kubectl get events -n ambient-code --sort-by='.lastTimestamp'
kubectl get deployments -n ambient-code
Troubleshooting
Pods stuck in ImagePullBackOff
Cause: Cluster trying to pull images from registry but they don't exist or aren't accessible
Solution:
make build-all CONTAINER_ENGINE=$CONTAINER_ENGINE
kind load docker-image localhost/vteam_backend:latest --name $KIND_CLUSTER_NAME
kind load docker-image localhost/vteam_frontend:latest --name $KIND_CLUSTER_NAME
kind load docker-image localhost/vteam_operator:latest --name $KIND_CLUSTER_NAME
kubectl patch deployment backend -n ambient-code -p '{"spec":{"template":{"spec":{"containers":[{"name":"backend","imagePullPolicy":"Never"}]}}}}'
Pods stuck in CrashLoopBackOff
Cause: Application is crashing on startup
Solution:
kubectl logs -l app=backend -n ambient-code --tail=100
kubectl describe pod -l app=backend -n ambient-code
Sessions fail with init-hydrate exit code 1
Cause: MinIO ambient-sessions bucket doesn't exist. This happens when make kind-up fails partway through (e.g., due to image pull errors) and the init-minio.sh step is skipped.
Solution: Fix the underlying issue (e.g., image pull errors) and re-run make kind-down && make kind-up. The Makefile runs init-minio.sh near the end of kind-up, which creates the required buckets. If make kind-up completes successfully, the bucket will exist.
Port forwarding not working
Cause: Port already in use or forwarding process died
Solution:
kubectl get svc -n ambient-code
make kind-port-forward
Changes not reflected
Cause: Old image cached or deployment not restarted
Solution:
make build-backend
kind load docker-image localhost/vteam_backend:latest --name $KIND_CLUSTER_NAME
kubectl rollout restart deployment/backend -n ambient-code
kubectl rollout status deployment/backend -n ambient-code
kubectl get pods -n ambient-code -l app=backend
kubectl describe pod -l app=backend -n ambient-code | grep Image:
Environment Variables
Key environment variables that affect cluster behavior:
CONTAINER_ENGINE=docker
PLATFORM=linux/amd64
NAMESPACE=ambient-code
REGISTRY=quay.io/your-org
Fast Inner-Loop: Run Frontend Locally (No Image Rebuilds)
For frontend-only changes, skip image rebuilds entirely. Run NextJS locally with hot-reload against the backend in the kind cluster:
kubectl port-forward svc/backend-service $KIND_FWD_BACKEND_PORT:8080 -n ambient-code
cd components/frontend
npm install
TOKEN=$(kubectl get secret test-user-token -n ambient-code \
-o jsonpath='{.data.token}' | base64 -d)
cat > .env.local <<EOF
OC_TOKEN=$TOKEN
BACKEND_URL=http://localhost:$KIND_FWD_BACKEND_PORT/api
EOF
npm run dev
Why this works:
BACKEND_URL points NextJS API routes to the port-forwarded backend
OC_TOKEN is forwarded as both X-Forwarded-Access-Token and Authorization: Bearer headers (the backend's ExtractServiceAccountFromAuth reads Authorization for JWT parsing)
- Every file save triggers instant hot-reload — no Docker build, no kind load, no rollout restart
When to use:
- Frontend-only changes (components, styles, pages, API routes)
- Iterating on UI features rapidly
- Debugging frontend issues
When NOT to use:
- Backend, operator, or runner changes (those still need image rebuild + load)
- Testing changes to container configuration or deployment manifests
Benchmarking Developer Loops
Use the benchmark harness when the user wants measured cold-start or rebuild timing rather than ad hoc impressions.
Commands
make benchmark
make benchmark FORMAT=tsv
make benchmark COMPONENT=frontend MODE=cold
make benchmark COMPONENT=backend MODE=warm
Agent Guidance
- Prefer
FORMAT=tsv when another agent, script, or evaluation harness will consume the output.
- Prefer the default
human format for interactive local use in a terminal.
frontend benchmarking requires Node.js 20+.
warm currently measures rebuild proxies, not browser-observed hot reload latency.
- If
reports/benchmarks/ is not writable in the current environment, the harness will fall back to a temp directory and print a warning.
- Session benchmarking is contract-only in v1 (
bench_session_* stubs in scripts/benchmarks/bench-manifest.sh).
- Start with the smallest relevant benchmark:
- backend/operator/public-api change ->
MODE=warm COMPONENT=<component> REPEATS=1
- frontend contributor setup ->
MODE=cold COMPONENT=frontend REPEATS=1
- only run all components when you explicitly need the whole matrix
- Treat preflight failures as useful environment signals; do not work around them unless the user asks.
- Use full-sweep benchmarking sparingly because each component still performs untimed setup before the measured warm rebuild.
Interpreting Results
cold: approximates first-contributor setup/install cost with isolated caches
warm: approximates incremental rebuild cost after setup has already completed
budget_ok=false on cold runs means the component exceeded the 60-second contributor budget
- Large deltas on a single repeat should be treated cautiously; use more repeats before drawing conclusions
Best Practices
- Use local dev server for frontend: Fastest feedback loop, no image rebuilds needed
- Use kind for backend/operator validation: Rebuild with
make kind-rebuild
- Always check logs: After deploying, verify pods started successfully
- Clean up when done:
make kind-down to free resources
- Check what changed first: Use
git status and git diff to understand scope
- Build only what changed: Don't rebuild everything if only one component changed
- Verify image pull policy: Ensure deployments use
imagePullPolicy: Never for local images
Quick Reference
Decision Tree: Which Approach?
Do you need to test local code changes?
├─ No → Use kind (make kind-up)
│ Fast, uses production images
│
└─ Yes → Is the change frontend-only?
├─ Yes → Run locally with npm run dev
│ Instant hot-reload, no image builds
│
└─ No → Use kind with local images
make kind-up LOCAL_IMAGES=true (first time)
make kind-rebuild (subsequent rebuilds)
Cheat Sheet
| Task | Command |
|---|
| Create cluster | make kind-up |
| Create cluster with local images | make kind-up LOCAL_IMAGES=true |
| Rebuild all | make kind-rebuild |
| Check status | make kind-status |
| View logs | kubectl logs -f -l app=backend -n ambient-code |
| Tear down | make kind-down |
| Access URL | make kind-status for ports ($KIND_FWD_FRONTEND_PORT) |
When to Invoke This Skill
Invoke the dev-cluster skill when users say things like:
- "Test this in kind"
- "Deploy my changes to a local cluster"
- "Bring up a development environment"
- "I want to test these changes"
- "Create a kind cluster with my changes"
- "Rebuild and deploy the backend"
- "How do I test platform changes locally?"
Example Interactions
Example 1: Quick Test in Kind
User: "Test this changeset in kind"
Assistant (using dev-cluster skill):
- Checks git status → finds backend changes
- Explains: "I see changes in components/backend. I'll build the backend image, create a kind cluster, and deploy your changes."
- Runs:
make build-backend
- Runs:
make kind-up
- Loads image:
kind load docker-image localhost/vteam_backend:latest --name $KIND_CLUSTER_NAME
- Updates deployment with local image and ImagePullPolicy: Never
- Verifies:
kubectl rollout status deployment/backend -n ambient-code
- Provides access URL and log commands
Result: User can test their backend changes at http://localhost:$KIND_FWD_FRONTEND_PORT (run make kind-status to see the assigned port)
Example 2: Iterative Development
User: "I'm working on the frontend, set me up for quick iterations"
Assistant (using dev-cluster skill):
- Runs:
make kind-up (creates cluster)
- Explains the local dev server approach for frontend
- Sets up port-forward and local NextJS dev server
- User makes frontend changes with instant hot-reload
Result: Fast iteration loop for frontend development
Example 3: Troubleshooting Deployment
User: "The backend pod is crash looping"
Assistant (using dev-cluster skill):
- Checks pod status:
kubectl get pods -n ambient-code
- Gets logs:
kubectl logs -l app=backend -n ambient-code --tail=100
- Analyzes error messages
- Checks events:
kubectl get events -n ambient-code --sort-by='.lastTimestamp'
- Identifies issue (e.g., missing env var, bad configuration)
- Suggests fix
- After fix applied, verifies:
kubectl rollout status deployment/backend -n ambient-code
Result: Issue diagnosed and resolved
Integration with Makefile
This skill knows all the relevant Makefile targets:
make kind-up - Create kind cluster
make kind-up LOCAL_IMAGES=true - Create kind cluster with locally-built images
make kind-down - Destroy kind cluster
make kind-rebuild - Rebuild all, reload images, restart deployments
make kind-port-forward - Port-forward services to localhost
make kind-status - Show cluster status and port assignments
make build-all - Build all container images
make build-backend - Build backend image only
make build-frontend - Build frontend image only
make build-operator - Build operator image only
make local-status - Check pod status
make local-logs - Follow all component logs