Jules
Jules async coding agent - run autonomous tasks using Jules
Jules MCP Server (jules-mcp)
An MCP (Model Context Protocol) server that exposes Google Jules Agent operations via FastMCP.
This server lets MCP-compatible clients (and Python code) list Jules sources, create and manage sessions, and inspect activities using the official jules-agent-sdk.
- Server framework: FastMCP
- SDK: jules-agent-sdk
- Python: 3.13+
- License: Apache-2.0
Features
Tools exposed via the MCP server (grouped by area):
- Sources
- get_source(source_id)
- list_sources(filter_str=None, page_size=None, page_token=None)
- get_all_sources(filter_str=None)
- Sessions
- create_session(prompt, source, starting_branch=None, title=None, require_plan_approval=False)
- get_session(session_id)
- list_sessions(page_size=None, page_token=None)
- approve_session_plan(session_id)
- send_session_message(session_id, prompt)
- wait_for_session_completion(session_id, poll_interval=5, timeout=600)
- Activities
- get_activity(session_id, activity_id)
- list_activities(session_id, page_size=None, page_token=None)
- list_all_activities(session_id)
See jules_mcp/jules_mcp.py for signatures and inline docstrings.
Installation
Option A — from a local checkout:
# from the repository root
pip install -e .
Option B — using uv (recommended during development):
# from the repository root
uv sync
The project targets Python 3.13+.
Configuration
Set your Jules API key via environment variable:
- Windows PowerShell
$Env:JULES_API_KEY = "<your_api_key_here>" - Unix shells (bash/zsh)
export JULES_API_KEY="<your_api_key_here>"
If you do not provide an argument to jules(), the SDK reads JULES_API_KEY automatically.
Running the MCP server
There are two common ways to run the server.
- Programmatic run (in-process) using FastMCP Client — useful for testing or embedding:
import asyncio
from fastmcp import Client
from jules_mcp import mcp
async def main():
async with Client(mcp) as client:
# Example: list all sources (auto-paginated)
result = await client.call_tool("get_all_sources")
print(result)
asyncio.run(main())
- As a standalone MCP server executable for external MCP clients:
-
Using uv and FastMCP directly
uv run fastmcp run jules_mcp/jules_mcp.py:mcpThis starts the MCP server over stdio.
-
Using the provided configuration files
- MCP.json: a sample command configuration for MCP-aware hosts.
- fastmcp.json: FastMCP runtime/environment configuration.
Adjust paths in MCP.json if you use a different checkout location.
You can also run via the module entry point:
python -m jules_mcp
This calls start_mcp() which invokes FastMCP.run() using the "mcp" instance defined in the package.
Usage notes and examples
- Listing and filtering sources
import asyncio
from fastmcp import Client
from jules_mcp import mcp
async def main():
async with Client(mcp) as client:
# Filter syntax follows AIP-160 filtering rules supported by Jules
res = await client.call_tool(
"list_sources",
{"filter_str": "name=sources/source1 OR name=sources/source2", "page_size": 10}
)
print(res)
asyncio.run(main())
- Creating a session and waiting for completion
import asyncio
from fastmcp import Client
from jules_mcp import mcp
async def run_session():
async with Client(mcp) as client:
session = await client.call_tool(
"create_session",
{
"prompt": "Analyze the repository and propose improvements",
"source": "sources/abc123",
"require_plan_approval": True,
},
)
# Optionally approve plan
await client.call_tool("approve_session_plan", {"session_id": session["name"]})
# Wait for completion
final = await client.call_tool(
"wait_for_session_completion",
{"session_id": session["name"], "poll_interval": 5, "timeout": 600}
)
print(final)
asyncio.run(run_session())
- Inspecting activities
import asyncio
from fastmcp import Client
from jules_mcp import mcp
async def list_acts(session_id: str):
async with Client(mcp) as client:
acts = await client.call_tool("list_all_activities", {"session_id": session_id})
for a in acts:
print(a)
asyncio.run(list_acts("sessions/abc123"))
Development
-
Create a virtual environment and install dev dependencies
uv sync # or: pip install -e .[dev] -
Run tests (note: some tools may reach the Jules API and require JULES_API_KEY)
uv run pytest -q -
Linting/formatting: follow your preferred tools; this repo does not include linters by default.
Project metadata
- Package name: jules-mcp
- Version: 0.1.0
- Entry points:
- Python module: python -m jules_mcp
- FastMCP source: jules_mcp/jules_mcp.py:mcp
License
Apache License 2.0. See the LICENSE file for details.
Acknowledgements
- FastMCP — https://gofastmcp.com/
- Model Context Protocol — https://modelcontextprotocol.io/
- jules-agent-sdk — unofficial/official SDK used by this server
相关服务器
Scout Monitoring MCP
赞助Put performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
赞助Access financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Nextflow Developer Tools
An MCP server for Nextflow development and testing, which requires a local clone of the Nextflow Git repository.
Dify Server
Integrates the Dify AI API to generate Ant Design business component code. Supports text, image inputs, and streaming responses.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers without authentication.
Context7 Python
A Python server for searching libraries and retrieving documentation, with support for HTTP/HTTPS proxies.
React Native Debugger MCP
Connects to the React Native application debugger to retrieve console logs from Metro.
PydanticRPC
A Python library for building gRPC/ConnectRPC services with Pydantic models, featuring automatic protobuf generation and AI assistant tool exposure.
Osquery MCP Server
An MCP server for Osquery that allows AI assistants to answer system diagnostic questions using natural language.
Swagger MCP Server
An example MCP server for deployment on Cloudflare Workers without authentication.
MCP Server with Ollama Integration
An MCP server that integrates with Ollama to provide tools for file operations, calculations, and text processing. Requires a running Ollama instance.
Zeek-MCP
Integrates Zeek network analysis with conversational AI clients. Requires an external Zeek installation.