Berry MCP Server
A universal framework for easily creating and deploying Model Context Protocol servers with any tools.
Berry MCP Server
A universal Model Context Protocol (MCP) server framework that makes it easy to create and deploy custom tool servers for AI assistants like Claude.
✨ Features
- 🔧 Universal Framework: Create MCP servers for any type of tools
- 🎯 Simple Tool Creation: Decorator-based tool registration with automatic JSON schema generation
- 🔌 Plugin Architecture: Load tools from any Python module or package
- 🚀 Multiple Transports: Support for stdio and HTTP/SSE communication
- ⚙️ Flexible Configuration: Environment variables and command-line options
- 📝 Auto-Documentation: Automatic tool discovery and schema generation
- 🔒 Type Safety: Full type annotation support with validation
🚀 Quick Start
Installation
# Install from PyPI (when published)
uv add berry-mcp
# Or install from source
git clone https://github.com/richinex/berry-mcp-server.git
cd berry-mcp-server
uv pip install -e .
Create Your First Tool
# my_tools.py
from berry_mcp.tools.decorators import tool
@tool(description="Add two numbers together")
def add_numbers(a: float, b: float) -> float:
"""Add two numbers and return the result"""
return a + b
@tool(description="Generate a greeting message")
def greet(name: str, title: str = "friend") -> str:
"""Generate a personalized greeting"""
return f"Hello {title} {name}!"
Run Your Server
# Load your custom tools
BERRY_MCP_TOOLS_PATH=my_tools uv run python -m berry_mcp
# Or run with built-in example tools
uv run python -m berry_mcp
VS Code Integration
Add to your .vscode/mcp.json:
{
"inputs": [],
"servers": {
"my-custom-tools": {
"type": "stdio",
"command": "uv",
"args": ["run", "python", "-m", "berry_mcp"],
"env": {
"BERRY_MCP_TOOLS_PATH": "my_tools"
}
}
}
}
📖 Documentation
- VS Code Configuration Guide - Complete setup instructions
- Tool Development Guide - Create custom tools
- API Documentation - Technical reference
🛠️ Built-in Tools
Berry MCP comes with example tools to get you started:
- Math Operations:
add_numbers,generate_random - Text Processing:
format_text,find_replace_text,encode_decode_text - System Info:
get_system_info,generate_uuid - Data Tools:
validate_json,generate_report - Async Examples:
async_process_text
🔧 Advanced Usage
Multiple Tool Sources
BERRY_MCP_TOOLS_PATH="my_tools,web_tools,data_processors" uv run python -m berry_mcp
HTTP Server Mode
uv run python -m berry_mcp --transport http --port 8080
Environment Configuration
export BERRY_MCP_SERVER_NAME="my-custom-server"
export BERRY_MCP_LOG_LEVEL="DEBUG"
export BERRY_MCP_TOOLS_PATH="my_tools,another_module.tools"
uv run python -m berry_mcp
🏗️ Architecture
Berry MCP follows SOLID principles with a clean, extensible architecture:
- MCPServer: Core server orchestration
- ToolRegistry: Plugin-based tool management
- Transport Layer: Abstracted communication (stdio/HTTP)
- Protocol Handler: JSON-RPC message processing
- Tool Framework: Decorator-based tool creation
📋 Requirements
- Python 3.10+
- MCP protocol support
- Type annotations for automatic schema generation
🤝 Contributing
- Fork the repository
- Create a feature branch:
git checkout -b feature/amazing-feature - Make your changes following the existing patterns
- Add tests for new functionality
- Run the test suite:
pytest tests/ - Submit a pull request
📝 License
MIT License - see LICENSE file for details.
🙏 Acknowledgments
- Built on the Model Context Protocol
- Inspired by the need for easy MCP server creation
- Following clean code principles and design patterns
🚀 Start building your custom MCP tools today with Berry MCP Server!
相關伺服器
Scout Monitoring MCP
贊助Put performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
贊助Access financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
oyemi-mcp
MCP server for the Oyemi semantic lexicon. Provides deterministic word-to-code mapping and valence/sentiment analysis for AI agents like Claude, ChatGPT, and Gemini.
nUR MCP Server
An intelligent robot control middleware for natural language interaction with industrial robots, powered by LLMs. It integrates with Universal Robots and supports real-time, multi-robot control.
MCP Proxy
A proxy server for MCP requests, supporting SSE and stdio transports.
Node.js Sandbox MCP Server
Run arbitrary JavaScript in an isolated Docker container with on-the-fly npm dependency installation.
Kibana MCP Server
Access and interact with your Kibana instance using natural language or programmatic requests.
Clix MCP Server
Clix MCP Server for assisting Clix SDK/API integrations with semantic search across Clix docs and SDK source (iOS, Android, Flutter, React Native).
AIO-MCP Server
An MCP server with integrations for GitLab, Jira, Confluence, and YouTube, providing AI-powered search and development utility tools.
Tailkits UI
Tailwind Components with Native MCP Support
Jupyter Notebook MCP Server
Interact with Jupyter notebooks, allowing for code execution, cell manipulation, and notebook management.
R.A.P.I.D.
A local MCP server providing powerful code analysis and search capabilities for software projects.