- Remove compiled workspace-server/server binary from git - Fix .gitignore, .gitattributes, .githooks/pre-commit for renamed dirs - Fix CI workflow path filters (workspace-template → workspace) - Replace real EC2 IP and personal slug in test_saas_tenant.sh - Scrub molecule-controlplane references in docs - Fix stale workspace-template/ paths in provisioner, handlers, tests - Clean tracked Python cache files Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> |
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| .. | ||
| adapter.py | ||
| README.md | ||
| requirements.txt | ||
| test_adapter.py | ||
Google ADK Adapter
Molecule AI workspace adapter for Google Agent Development Kit (ADK) — Google's official multi-agent Python SDK (~19k ⭐, Apache-2.0).
Overview
This adapter bridges the A2A protocol used by the Molecule AI platform to Google ADK's runner/session model. Agents are backed by Google Gemini models via AI Studio or Vertex AI. Each workspace gets an LlmAgent wrapped in a Runner with an InMemorySessionService; sessions are tied to A2A task context IDs for stable, isolated per-conversation state.
Runtime key: google-adk
Installation
The adapter dependencies are installed automatically by entrypoint.sh from this directory's requirements.txt:
pip install -r adapters/google-adk/requirements.txt
You'll also need a Google API key (AI Studio) or Vertex AI credentials.
Configuration
config.yaml
runtime: google-adk
model: google:gemini-2.0-flash # or gemini-1.5-pro, gemini-2.5-flash, etc.
runtime_config:
agent_name: my-agent # optional, default: molecule-adk-agent
max_output_tokens: 8192 # optional, default: 8192
temperature: 1.0 # optional, default: 1.0
Environment Variables
| Variable | Required | Description |
|---|---|---|
GOOGLE_API_KEY |
Yes (unless Vertex AI) | Google AI Studio API key |
GOOGLE_GENAI_USE_VERTEXAI |
No | Set to "1" to use Vertex AI instead of AI Studio |
GOOGLE_CLOUD_PROJECT |
When using Vertex AI | GCP project ID |
GOOGLE_CLOUD_LOCATION |
When using Vertex AI | GCP region, e.g. "us-central1" |
Usage Example
import asyncio
from adapter_base import AdapterConfig
from adapters.google_adk.adapter import GoogleADKAdapter
async def main():
config = AdapterConfig(
model="google:gemini-2.0-flash",
system_prompt="You are a helpful assistant.",
runtime_config={
"agent_name": "demo-agent",
"max_output_tokens": 1024,
"temperature": 0.7,
},
workspace_id="ws-demo",
)
adapter = GoogleADKAdapter()
await adapter.setup(config) # validates keys, loads plugins/skills
executor = await adapter.create_executor(config) # returns GoogleADKA2AExecutor
# executor.execute(context, event_queue) is called by the A2A server per turn
print(f"Adapter: {adapter.display_name()} — model {config.model}")
asyncio.run(main())
Running via A2A
Once the workspace is provisioned, send A2A messages as normal:
curl -X POST http://localhost:8000 \
-H 'Content-Type: application/json' \
-d '{
"method": "message/send",
"params": {
"message": {
"role": "user",
"parts": [{"kind": "text", "text": "What is 2 + 2?"}]
}
}
}'
Supported Models
Any model supported by Google ADK and available through your credential path:
| Model | Notes |
|---|---|
gemini-2.0-flash |
Recommended — fast, cost-effective |
gemini-2.5-flash |
Latest preview, strong reasoning |
gemini-1.5-pro |
Higher capability, higher latency |
gemini-1.5-flash |
Fast, lower cost |
Use the google: prefix in config.yaml — the adapter strips it before passing the model name to ADK.
Architecture
A2A Request
│
▼
GoogleADKA2AExecutor.execute()
│
├── extract_message_text() ← shared_runtime helper
├── _ensure_session() ← create/reuse InMemorySessionService session
├── _build_content() ← wrap text in google.genai.types.Content
│
▼
runner.run_async(session_id, user_id, new_message)
│
▼
ADK Event stream → filter is_final_response() → extract text
│
▼
event_queue.enqueue_event(new_agent_text_message(reply))
│
▼
A2A Response
License
Apache-2.0 — same as google/adk-python.