google-agents-cli-scaffold
This skill should be used when the user wants to "create an agent project", "start a new ADK project", "build me a new agent", "add CI/CD to my project", "add deployment", "enhance my project", or "upgrade my project". Part of the Google ADK (Agent Development Kit) skills suite. Covers `agents-cli scaffold create`, `scaffold enhance`, and `scaffold upgrade` commands, template options, deployment targets, and the prototype-first workflow. Do NOT use for writing agent code (use google-agents-cli-adk-code) or deployment operations (use google-agents-cli-deploy).
How do I install this agent skill?
npx skills add https://github.com/google/agents-cli --skill google-agents-cli-scaffoldIs this agent skill safe to install?
- Gen Agent Trust Hubpass
This skill is safe and facilitates project scaffolding using the official Google Agent Development Kit (ADK) CLI. It follows development best practices, such as using temporary directories for reference and standardizing secret management via local environment files.
- Socketpass
No alerts
- Snykwarn
Risk: MEDIUM · 1 issue
What does this agent skill do?
ADK Project Scaffolding Guide
Requires:
agents-cli(uv tool install google-agents-cli) — install uv first if needed.
Use the agents-cli CLI to create new ADK agent projects or enhance existing ones with deployment, CI/CD, and infrastructure scaffolding.
Prerequisite: Clarify Requirements (MANDATORY for new projects)
Before scaffolding a new project, load /google-agents-cli-workflow and complete Phase 0 — clarify the user's requirements before running any scaffold create command. Ask what the agent should do, what tools/APIs it needs, and whether they want a prototype or full deployment.
Step 1: Choose Architecture
Mapping user choices to CLI flags:
| Choice | CLI flag |
|---|---|
| RAG (vector or document search) | Not a scaffold flag — clone-and-study rag-vector-search / rag-agent-search (see /google-agents-cli-workflow Phase 1) |
| A2A protocol | built into every ADK agent — scaffold normally (--agent adk) |
| Prototype (no deployment) | --prototype |
| Deployment target | --deployment-target <agent_runtime|cloud_run|gke> |
| CI/CD runner | --cicd-runner <github_actions|google_cloud_build> |
| Session storage | --session-type <in_memory|cloud_sql|agent_platform_sessions> |
Product name mapping
Older names → CLI values (vertexai SDK package name unchanged):
- Agent Engine / Vertex AI Agent Engine →
--deployment-target agent_runtime - Agent Engine sessions / Agent Platform Sessions →
--session-type agent_platform_sessions - Vertex AI Search / Vertex AI Vector Search / RAG → clone-and-study recipe, not a flag (see
/google-agents-cli-workflowPhase 1)
Step 2: Create or Enhance the Project
Create a New Project
agents-cli scaffold create <project-name> \
--agent <template> \
--deployment-target <target> \
--region <region> \
--prototype
Constraints:
- Project name must be 26 characters or less, lowercase letters, numbers, and hyphens only.
- Do NOT
mkdirthe project directory before runningcreate— the CLI creates it automatically. If you mkdir first,createwill fail or behave unexpectedly. - Auto-detect the guidance filename based on the IDE you are running in and pass
--agent-guidance-filenameaccordingly (GEMINI.mdfor Antigravity CLI,CLAUDE.mdfor Claude Code,AGENTS.mdfor OpenAI Codex/other). - When enhancing an existing project, check where the agent code lives. If it's not in
app/, pass--agent-directory <dir>(e.g.--agent-directory agent). Getting this wrong causes enhance to miss or misplace files.
Reference Files
| File | Contents |
|---|---|
references/flags.md | Full flag reference for create and enhance commands |
Enhance an Existing Project
agents-cli scaffold enhance . --deployment-target <target>
agents-cli scaffold enhance . --cicd-runner <runner>
Run this from inside the project directory (or pass the path instead of .).
Upgrade a Project
Upgrade an existing project to a newer agents-cli version, intelligently applying updates while preserving your customizations:
agents-cli scaffold upgrade # Upgrade current directory
agents-cli scaffold upgrade <project-path> # Upgrade specific project
agents-cli scaffold upgrade --dry-run # Preview changes without applying
agents-cli scaffold upgrade --auto-approve # Auto-apply non-conflicting changes
Execution Modes
The CLI defaults to strict programmatic mode — all required params must be supplied as CLI flags or a UsageError is raised. No approval flags needed. Pass all required params explicitly.
Common Workflows
Always ask the user before running these commands. Present the options (CI/CD runner, deployment target, etc.) and confirm before executing.
# Add deployment to an existing prototype (strict programmatic)
agents-cli scaffold enhance . --deployment-target agent_runtime
# Add CI/CD pipeline (ask: GitHub Actions or Cloud Build?)
agents-cli scaffold enhance . --cicd-runner github_actions
Template Options
| Template | Deployment | Description |
|---|---|---|
adk | Agent Runtime, Cloud Run, GKE | Standard ADK agent (default); A2A protocol built in |
RAG is a clone-and-study recipe, not a template. Build it by studying
rag-vector-searchorrag-agent-searchand adapting the sample into your project — see/google-agents-cli-workflowPhase 1.
Deployment Options
| Target | Description |
|---|---|
agent_runtime | Managed by Google (Vertex AI Agent Runtime). Container-based — Agent Engine builds the project Dockerfile. Sessions handled automatically. |
cloud_run | Container-based deployment. More control; you build and deploy the Dockerfile. |
gke | Container-based on GKE Autopilot. Full Kubernetes control. |
none | No deployment scaffolding. Code only (still includes a Dockerfile). |
"Prototype First" Pattern (Recommended)
Start with --prototype to skip CI/CD and Terraform. Focus on getting the agent working first, then add deployment later with scaffold enhance:
# Step 1: Create a prototype
agents-cli scaffold create my-agent --agent adk --prototype
# Step 2: Iterate on the agent code...
# Step 3: Add deployment when ready
agents-cli scaffold enhance . --deployment-target agent_runtime
Agent Runtime and session_type
When using agent_runtime as the deployment target, Agent Runtime manages sessions internally. If your code sets a session_type, clear it — Agent Runtime overrides it.
Step 3: Load Dev Workflow
After scaffolding, immediately load /google-agents-cli-workflow — it contains the development workflow, coding guidelines, and operational rules you must follow when implementing the agent.
Key files to customize: app/agent.py (instruction, tools, model), app/tools.py (custom tool functions), .env (project ID, location, API keys).
Files to preserve: agents-cli-manifest.yaml (CLI reads this), deployment configs under deployment/, Makefile, app/__init__.py (the App(name=...) must match the directory name — default app), and the generated runtime/A2A infra (app/fast_api_app.py, app/app_utils/a2a.py, app/app_utils/services.py, Dockerfile) — these wire up serving, sessions, and the built-in A2A surface; don't hand-edit them.
RAG projects — clone-and-study, not a template:
RAG isn't a scaffold option. Build it by studying rag-vector-search or rag-agent-search (see
/google-agents-cli-workflow Phase 1) and adapting the sample's app/, infra/terraform/, and
ingestion into your project. Provisioning and ingestion run from the sample's own Makefile
(make setup-infra, make data-ingestion).
Verifying your agent works: Use agents-cli run "test prompt" for quick smoke tests, then agents-cli eval generate and agents-cli eval grade for systematic validation. Do NOT write pytest tests that assert on LLM response content — that belongs in eval.
Scaffold as Reference
When you need specific files (Terraform, CI/CD workflows, Dockerfile) but don't want to scaffold the current project directly, create a temporary reference project in /tmp/:
agents-cli scaffold create /tmp/ref-project \
--agent adk \
--deployment-target cloud_run
Inspect the generated files, adapt what you need, and copy into the actual project. Delete the reference project when done.
This is useful for:
- Non-standard project structures that
enhancecan't handle - Cherry-picking specific infrastructure files
- Understanding what the CLI generates before committing to it
Critical Rules
- NEVER skip requirements clarification — load
/google-agents-cli-workflowPhase 0 and clarify the user's intent before runningscaffold create - NEVER change the model in existing code unless explicitly asked
- NEVER
mkdirbeforecreate— the CLI creates the directory; pre-creating it causes enhance mode instead of create mode - NEVER create a Git repo or push to remote without asking — confirm repo name, public vs private, and whether the user wants it created at all
- Always ask before choosing CI/CD runner — present GitHub Actions and Cloud Build as options, don't default silently
- Agent Runtime clears session_type — if deploying to
agent_runtime, remove anysession_typesetting from your code - Start with
--prototypefor quick iteration — add deployment later withenhance - Project names must be ≤26 characters, lowercase, letters/numbers/hyphens only
- NEVER write A2A code from scratch — A2A is built into every Python ADK agent (
adk); the A2A Python API surface (import paths,AgentCardschema,to_a2a()signature) is non-trivial and changes across versions. Scaffold normally; never hand-write the A2A surface.
Examples
Using scaffold as reference: User says: "I need a Dockerfile for my non-standard project" Actions:
- Create temp project:
agents-cli scaffold create /tmp/ref --agent adk --deployment-target cloud_run - Copy relevant files (Dockerfile, etc.) from /tmp/ref
- Delete temp project Result: Infrastructure files adapted to the actual project
A2A project: User says: "Build me a Python agent that exposes A2A and deploys to Cloud Run" Actions:
- Follow the standard flow (understand requirements, choose architecture, scaffold)
agents-cli scaffold create my-a2a-agent --agent adk --deployment-target cloud_run --prototypeResult: Valid A2A imports and Dockerfile — no manual A2A code written.
Troubleshooting
agents-cli command not found
See /google-agents-cli-workflow → Setup section.
Related Skills
/google-agents-cli-workflow— Development workflow, coding guidelines, and the build-evaluate-deploy lifecycle/google-agents-cli-adk-code— ADK Python API quick reference for writing agent code/google-agents-cli-deploy— Deployment targets, CI/CD pipelines, and production workflows/google-agents-cli-eval— Evaluation methodology, dataset schema, and the eval-fix loop
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/google/agents-cli/google-agents-cli-scaffold">View google-agents-cli-scaffold on skillZs</a>