Skeleton MCP Server

Skeleton MCP Server

A template project for building Model Context Protocol servers with FastMCP framework, Docker support, and example CRUD API implementation to help developers quickly bootstrap their own MCP servers.

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README

Skeleton MCP Server

A template project for building Model Context Protocol (MCP) servers. This skeleton provides a solid foundation with best practices, Docker support, and example implementations.

Features

  • FastMCP framework for easy MCP server development
  • Docker and Docker Compose support for containerized deployment
  • VS Code Dev Container configuration for consistent development environments
  • Example CRUD API implementation to demonstrate patterns
  • Test suite with pytest
  • Claude Code integration with custom commands

Quick Start

Prerequisites

  • Python 3.10 or higher
  • uv package manager (recommended)
  • Docker (optional, for containerized deployment)

Installation

  1. Clone this repository and rename it for your project:
git clone <this-repo> my-mcp-server
cd my-mcp-server
  1. Rename the package:

    • Rename src/skeleton_mcp to src/your_project_name
    • Update pyproject.toml with your project name and metadata
    • Update imports in all Python files
  2. Install dependencies:

uv sync
  1. Create your environment file:
cp .env.example .env
# Edit .env with your API credentials
  1. Run the server:
uv run skeleton-mcp

Project Structure

skeleton_mcp/
├── src/skeleton_mcp/
│   ├── __init__.py          # Package initialization
│   ├── server.py            # Main MCP server entry point
│   ├── client.py            # API client for backend communication
│   ├── types.py             # TypedDict definitions
│   ├── api/                  # API modules
│   │   ├── __init__.py
│   │   └── example.py       # Example CRUD operations
│   └── utils/               # Utility modules
│       └── __init__.py
├── tests/                   # Test suite
│   ├── conftest.py          # Pytest fixtures
│   ├── test_example_api.py  # API tests
│   └── test_server.py       # Server tests
├── docs/                    # Documentation
├── .claude/                 # Claude Code configuration
│   ├── commands/            # Custom slash commands
│   └── settings.local.json  # Permission settings
├── .devcontainer/           # VS Code dev container
├── Dockerfile               # Container image definition
├── docker-compose.yml       # Production compose file
├── docker-compose.devcontainer.yml  # Dev container compose
├── pyproject.toml           # Project configuration
├── CLAUDE.md               # Claude context documentation
└── README.md               # This file

Development

Running Tests

uv run pytest -v

Linting

uv run ruff check src/ tests/
uv run ruff format src/ tests/

Building

uv build

Adding Your Own Tools

  1. Create a new module in src/skeleton_mcp/api/:
# src/skeleton_mcp/api/my_api.py

async def my_tool(param1: str, param2: int = 10) -> dict:
    """
    Description of what this tool does.

    Args:
        param1: Description of param1
        param2: Description of param2

    Returns:
        Description of return value
    """
    # Your implementation here
    return {"result": "success"}
  1. Register the tool in server.py:
from .api import my_api

mcp.tool()(my_api.my_tool)
  1. Add types in types.py if needed:
class MyDataType(TypedDict):
    field1: str
    field2: int

Docker Deployment

Build and run with Docker Compose:

docker compose up --build

For development with VS Code Dev Containers:

  1. Open the project in VS Code
  2. Install the "Dev Containers" extension
  3. Click "Reopen in Container" when prompted

Claude Desktop Integration

Add to your Claude Desktop configuration (claude_desktop_config.json):

{
  "mcpServers": {
    "skeleton-mcp": {
      "command": "docker",
      "args": [
        "run",
        "-i",
        "--rm",
        "--env-file",
        "/path/to/your/.env",
        "skeleton-mcp:latest"
      ]
    }
  }
}

Or for local development:

{
  "mcpServers": {
    "skeleton-mcp": {
      "command": "uv",
      "args": ["--directory", "/path/to/skeleton_mcp", "run", "skeleton-mcp"]
    }
  }
}

Available Tools

Tool Description
health_check Check server health and configuration status
list_items List all items with filtering and pagination
get_item Get a specific item by ID
create_item Create a new item
update_item Update an existing item
delete_item Delete an item

Environment Variables

Variable Description Default
API_KEY Your API key for authentication (required)
API_BASE_URL Base URL for the backend API https://api.example.com/v1
API_TIMEOUT Request timeout in seconds 30
DEBUG Enable debug logging false

License

MIT License - See LICENSE file for details.

Contributing

  1. Fork the repository
  2. Create a feature branch
  3. Make your changes
  4. Run tests and linting
  5. Submit a pull request

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