| name | ck:google-adk-python |
| description | Build AI agents with Google ADK Python. Multi-agent systems, A2A protocol, MCP tools, workflow agents, state/memory, callbacks/plugins, Vertex AI deployment, evaluation. |
| user-invocable | true |
| when_to_use | Invoke for Google ADK agents, A2A, MCP, or Vertex deployment. |
| category | ai-ml |
| keywords | ["google-adk","agents","a2a","mcp","vertex-ai"] |
| license | Apache-2.0 |
| argument-hint | [agent or feature] |
| metadata | {"author":"claudekit","version":"2.0.0"} |
Google ADK Python Skill
Expert guide for Google's Agent Development Kit (ADK) Python — open-source, code-first toolkit for building, evaluating, and deploying AI agents. Optimized for Gemini, model-agnostic by design.
When to Activate
- Build single or multi-agent systems with tool integration
- Implement A2A protocol for remote agent communication
- Integrate MCP servers as agent tools
- Use workflow agents (sequential, parallel, loop) for pipelines
- Manage sessions, state, memory, and artifacts
- Add callbacks, plugins, or observability hooks
- Deploy to Cloud Run, Vertex AI Agent Engine, or GKE
- Evaluate agents with
adk eval framework
Agent Structure Convention (Required)
my_agent/
├── __init__.py # MUST: from . import agent
└── agent.py # MUST: root_agent = Agent(...) OR app = App(...)
Quick Start
pip install google-adk
uv sync --all-extras
from google.adk import Agent
root_agent = Agent(
name="assistant",
model="gemini-2.5-flash",
instruction="You are a helpful assistant.",
description="General assistant agent.",
tools=[get_weather],
)
App Pattern (Production)
from google.adk import Agent
from google.adk.apps import App
from google.adk.apps.app import EventsCompactionConfig
from google.adk.plugins.save_files_as_artifacts_plugin import SaveFilesAsArtifactsPlugin
app = App(
name="my_app",
root_agent=Agent(name="my_agent", model="gemini-2.5-flash", ...),
plugins=[SaveFilesAsArtifactsPlugin()],
events_compaction_config=EventsCompactionConfig(compaction_interval=2),
)
Use App when needing plugins, event compaction, or custom lifecycle management.
CLI Tools
| Command | Purpose |
|---|
adk web <agents_dir> | Dev UI (recommended for development) |
adk run <agent_dir> | Interactive CLI testing |
adk api_server <agents_dir> | FastAPI production server |
adk eval <agent> <evalset.json> | Run evaluation suite |
Agent Types
| Type | Use Case |
|---|
Agent / LlmAgent | Dynamic routing, tool use, reasoning |
SequentialAgent | Fixed-order pipeline |
ParallelAgent | Concurrent execution |
LoopAgent | Iterative processing |
RemoteA2aAgent | Remote agent via A2A protocol |
Key APIs
| Feature | API |
|---|
| State | tool_context.state[key] = value |
| Artifacts | tool_context.save_artifact(name, part) |
| Callbacks | before_agent_callback, after_model_callback, etc. |
| MCP Tools | MCPToolset(connection_params=StdioConnectionParams(...)) |
| Sub-agents | Agent(..., sub_agents=[agent1, agent2]) |
| Human-in-loop | LongRunningFunctionTool(func=my_func) |
| Plugins | App(..., plugins=[MyPlugin()]) |
Model Support
Flash: gemini-2.5-flash (default, stable), gemini-3-flash-preview (preview)
Pro: gemini-2.5-pro (stable), gemini-3.1-pro-preview (preview)
Also: Anthropic Claude, Ollama, LiteLLM, vLLM, Model Garden
Best Practices
- Code-first — define agents in Python for version control and testing
- Agent convention — always use
root_agent or app variable in agent.py
- Modular agents — specialize per domain, compose via
sub_agents
- Workflow selection — workflow agents for predictable, LlmAgent for dynamic
- State —
ToolContext.state for ephemeral, MemoryService for long-term
- Safety — callbacks for guardrails, tool confirmation for sensitive ops
- Evaluate — test with
adk eval + evalset JSON before deployment
References
Detailed guides (load as needed):
references/agent-types-and-architecture.md — Agent types, workflows, custom agents
references/tools-and-mcp-integration.md — Custom tools, MCP, tool filtering
references/multi-agent-and-a2a-protocol.md — Sub-agents, A2A, coordinator patterns
references/sessions-state-memory-artifacts.md — State, artifacts, sessions, memory
references/callbacks-plugins-observability.md — Lifecycle hooks, plugins, tracing
references/evaluation-testing-cli.md — adk eval, CLI, evalset format
references/deployment-cloud-run-vertex-gke.md — Cloud Run, Vertex AI, GKE
External Resources