
MCP Server Bootstrap
A Python-based template for creating modular command center servers using the Mondel Context Protocol that provides a structured foundation for building scalable applications with mathematical operations and modular arithmetic functions.
README
MCP Server Bootstrap: A Template for Building Modular Command Center Servers
MCP Server Bootstrap is a Python-based template for creating modular command center servers using the Mondel Context Protocol (MCP). It provides a structured foundation for building scalable command center applications with support for basic mathematical operations and modular arithmetic functions.
The project implements a modular architecture that combines individual function files into a single server core at runtime. This approach maintains code organization during development while accommodating current MCP SDK limitations regarding modularity. The template provides a foundation for building scalable command center applications with custom functionality.
Repository Structure
mcp_server/ # Main package directory
├── build_mcp.py # Script to combine function modules into core server file
├── functions/ # Directory containing individual function implementations
│ ├── add.py # Addition operation implementation
│ ├── product19.py # Modulo 19 multiplication implementation
│ └── subtract.py # Subtraction operation implementation
├── utils/ # Utility functions and helper modules
│ └── helper.py # Common helper functions
├── pyproject.toml # Project metadata and dependencies
├── requirements.txt # Project dependencies
└── setup.sh # Installation and setup script
Usage Instructions
Prerequisites
- Python 3.11 or higher
- Amazon Q CLI installed and configured
- pip package manager
- Unix-like environment (for setup.sh)
Required packages:
- fastmcp >= 1.0.0
- pydantic >= 1.10.0
Installation
# Clone the repository
git clone <repository-url>
cd mcp-bootstrap
# Make the setup script executable
chmod +x setup.sh
# The setup script will configure the server for use with Amazon Q CLI
# by creating necessary configuration in $HOME/.aws/amazonq/mcp.json
# Run the setup script
./setup.sh
Quick Start
- Create a new function in the
mcp_server/functions
directory:
# mcp_server/functions/example.py
@mcp.tool(
name="example",
description="Example function"
)
def example_function(a: int, b: int) -> int:
return a + b
- Build the server:
python mcp_server/build_mcp.py
- Run the server:
python mcp_server/core_combined.py
Troubleshooting
Common issues and solutions:
-
Module Not Found Errors
- Error:
ModuleNotFoundError: No module named 'fastmcp'
- Solution: Ensure you've activated the virtual environment and installed dependencies:
source .venv/bin/activate pip install -r requirements.txt
- Error:
-
Build Failures
- Error:
FileNotFoundError: core_combined.py not found
- Solution: Run the build script from the project root:
python mcp_server/build_mcp.py
- Error:
-
Version Compatibility
- Error:
Python version X.X is less than required 3.11
- Solution: Install Python 3.11 or higher and ensure it's in your PATH
- Error:
Data Flow
The MCP server processes function calls by combining individual function modules into a single core server file, which then handles incoming requests and routes them to the appropriate function implementation.
[Client Request] -> [MCP Server Core] -> [Function Router] -> [Individual Function] -> [Response]
|-> [Function Registry]
Component interactions:
- The build script combines individual function files into a single core server file
- The MCP server initializes with the combined functions
- Client requests are received by the server core
- Requests are routed to the appropriate function based on the tool name
- Functions process the input and return results
- The server core formats and sends the response back to the client
- Error handling is managed at both the server and function levels
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