Gemma MCP Client
A client for Google's Gemma-3 model that enables function calling through MCP.
Gemma MCP Client
A Python package that combines Google's Gemma language model with MCP (Model Content Protocol) server integration, enabling powerful function calling capabilities across both local functions and remote MCP tools.
Features
- Seamless integration with Google's Gemma language model
- Support for both local Python functions and remote MCP tools
- Automatic tool discovery and registration from MCP servers
- Python-style function calling syntax
- Proper resource management with async context managers
- Support for multiple MCP servers
- Easy testing through test server support
Installation
uv add gemma-mcp # or pip install gemma-mcp if you love the old way
Requirements
- Python 3.10+
google-genai: Google Generative AI Python SDKFastMCPMCP utilities
Usage
Basic Usage
from gemma_mcp import GemmaMCPClient
# a standard MCP configuration
mcp_config = {
"mcpServers": {
"weather": {
"url": "https://weather-api.example.com/mcp"
},
"assistant": {
"command": "python",
"args": ["./assistant_server.py"]
}
}
}
# Initialize client with MCP support
async with GemmaMCPClient(mcp_config=mcp_config).managed() as client:
# Chat with automatic function execution
response = await client.chat(
"What's the weather like in London?",
execute_functions=True
)
print(response)
Adding Local Functions
You can add local functions in three ways:
- Using a callable:
async def my_function(param1: str, param2: int = 0):
"""Function description."""
return {"result": param1 + str(param2)}
client.add_function(my_function)
- Using a dictionary:
function_def = {
"name": "my_function",
"description": "Function description",
"parameters": {
"type": "object",
"properties": {
"param1": {"type": "string"},
"param2": {"type": "integer", "default": 0}
},
"required": ["param1"]
}
}
client.add_function(function_def)
- Using a FunctionDefinition object:
from gemma_mcp import FunctionDefinition
function_def = FunctionDefinition(
name="my_function",
description="Function description",
parameters={
"type": "object",
"properties": {
"param1": {"type": "string"},
"param2": {"type": "integer", "default": 0}
},
"required": ["param1"]
},
required=["param1"]
)
client.add_function(function_def)
MCP Server Configuration
The MCP configuration supports multiple server types:
- servers with SSE transport:
mcp_config = {
"mcpServers": {
"server_name": {
"url": "https://server-url/mcp"
}
}
}
- servers with STDIO transport:
mcp_config = {
"mcpServers": {
"server_name": {
"command": "python",
"args": ["./server.py"]
}
}
}
Testing
The package includes support for testing with in-memory MCP servers:
from fastmcp import FastMCP
from gemma_mcp import GemmaMCPClient
# Create test server
mcp = FastMCP("Test Server")
# Initialize client with test server
client = GemmaMCPClient()
client.mcp_client.add_test_server(mcp)
# Use the client as normal
async with client.managed():
response = await client.chat("Test message", execute_functions=True)
API Reference
GemmaMCPClient
The main client class that handles both Gemma model interactions and MCP tool integration.
Parameters
api_key(str, optional): Gemini API key. If not provided, will look for GEMINI_API_KEY env varmodel(str): Model to use, defaults to "gemma-3-27b-it"temperature(float): Generation temperature, defaults to 0.7system_prompt(str, optional): Custom system promptmcp_config(dict, optional): MCP configuration dictionary
Methods
add_function(function): Add a function definitionchat(message, execute_functions=False): Send a message and get responseinitialize(): Initialize the client and all componentscleanup(): Clean up all resources
FunctionDefinition
A dataclass for representing function definitions.
Parameters
name(str): Function namedescription(str): Function descriptionparameters(dict): Function parameters schemarequired(list): List of required parameterscallable(callable, optional): The actual callable function
License
MIT License
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
İlgili Sunucular
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Agentic AI Crash Course with Python
A comprehensive crash course on the Model Context Protocol (MCP), covering everything from basic concepts to building production-ready MCP servers and clients in Python.
Hayhooks
Deploy and serve Haystack pipelines as REST APIs, MCP Tools, and OpenAI-compatible chat completion backends.
Refine Prompt
Refines and structures prompts for large language models using the Anthropic API.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers without authentication.
WordPress Community DEV Docs
Access WordPress development rules and best practices from the WordPress LLM Rules repository. It dynamically creates tools for each rule and caches content using Cloudflare Durable Objects.
ArchiveNet
A context insertion and search server for Claude Desktop and Cursor IDE, using configurable API endpoints.
Ruby MCP Client
A Ruby client for the Model Context Protocol (MCP), enabling integration with external tools and services via a standardized protocol.
OpenMM MCP
AI-native crypto trading server with 13 tools for market data, order execution, grid strategies, and Cardano DeFi across multiple exchanges.
ndlovu-code-reviewer
Manual code reviews are time-consuming and often miss the opportunity to combine static analysis with contextual, human-friendly feedback. This project was created to experiment with MCP tooling that gives AI assistants access to a purpose-built reviewer. Uses the Gemini cli application to process the reviews at this time and linting only for typescript/javascript apps at the moment. Will add API based calls to LLM's in the future and expand linting abilities. It's also cheaper than using coderabbit ;)
BlenderMCP
Connects Blender to Claude AI via the Model Context Protocol (MCP), enabling direct AI interaction for prompt-assisted 3D modeling, scene creation, and manipulation.