JUHE API Marketplace
cyanmage avatar
MCP Server

Python MCP Server Examples

A collection of Python-based Model Context Protocol servers that extend AI assistant capabilities with tools for calculations, AWS services (S3 and RDS), and PostgreSQL database operations.

0
GitHub Stars
11/22/2025
Last Updated
MCP Server Configuration
1{
2 "name": "calculator",
3 "command": "python /path/to/sample-building-mcp-servers-with-python/src/calculator_server.py",
4 "args": []
5}
JSON5 lines
  1. Home
  2. MCP Servers
  3. Building-MCP-Servers-with-Amazon-Q-CLI-and-Python

README Documentation

MCP Sample

A Python implementation of Model Context Protocol (MCP) servers for extending AI assistant capabilities.

Overview

This project provides sample MCP servers that can be used with Amazon Q or other MCP-compatible AI assistants. The servers implement various functionalities:

  • Calculator Server: Performs basic arithmetic operations
  • RDS Server: Interacts with Amazon RDS instances
  • S3 Server: Manages Amazon S3 buckets and objects
  • PostgreSQL Server: Connects to PostgreSQL databases and executes queries

These servers demonstrate how to build MCP servers in Python using the FastMCP framework, which provides a high-level, Pythonic interface for implementing the Model Context Protocol.

Prerequisites

  • Python 3.12+
  • FastMCP library
  • uv (recommended Python package manager for FastMCP)
  • AWS credentials configured for RDS and S3 operations (for the respective servers)
  • An MCP-compatible AI assistant (like Amazon Q)

Installation

Clone the repository and install the dependencies:

git clone <repository-url>
cd sample-building-mcp-servers-with-python

We recommend using uv to install dependencies as it's faster and more reliable than pip:

# Install uv if you don't have it
curl -sSf https://install.python-poetry.org | python3 -

# Install dependencies with uv
uv pip install -r requirements.txt

Alternatively, you can use pip:

pip install -r requirements.txt

Usage

Run each server independently:

# Run the calculator server
python src/calculator_server.py

# Run the RDS server
python src/rds_server.py

# Run the S3 server
python src/s3_server.py

# Run the PostgreSQL server (requires a connection string)
python src/postgresql_server.py "postgresql://username:password@hostname:port/database"

Integration with Amazon Q CLI

To integrate these MCP servers with Amazon Q CLI or other MCP-compatible clients, add a configuration like this to your .amazon-q.json file:

{
  "mcpServers": {
    "calculator": {
      "command": "python /path/to/sample-building-mcp-servers-with-python/src/calculator_server.py",
      "args": []
    },
    "s3": {
      "command": "python /path/to/sample-building-mcp-servers-with-python/src/s3_server.py",
      "args": []
    },
    "rds": {
      "command": "python /path/to/sample-building-mcp-servers-with-python/src/rds_server.py",
      "args": []
    },
    "postgres": {
      "command": "python /path/to/sample-building-mcp-servers-with-python/src/postgresql_server.py",
      "args": ["postgresql://username:password@hostname:port/database"]
    }
  }
}

Replace /path/to/sample-building-mcp-servers-with-python/ with the actual path to your project. Once configured, Amazon Q will be able to use these servers to extend its capabilities.

Server Descriptions

Calculator Server

Provides basic arithmetic operations like addition, subtraction, multiplication, and division.

RDS Server

Lists and manages Amazon RDS instances in specified regions.

S3 Server

Manages S3 buckets and objects, including listing buckets by region.

PostgreSQL Server

Connects to PostgreSQL databases and executes read-only queries, lists tables, and provides schema information.

Understanding the Code

Each server follows a similar pattern:

  1. Create a FastMCP instance
  2. Define tools using the @mcp.tool() decorator
  3. Run the server with mcp.run()

For example, the Calculator Server looks like this:

from fastmcp import FastMCP
from typing import Annotated
from pydantic import Field

mcp = FastMCP("Calculator Server")

@mcp.tool()
def sum(
    a: Annotated[int, Field(description="The first number")],
    b: Annotated[int, Field(description="The second number")]
) -> int:
    """Calculate the sum of two numbers"""
    return a + b

if __name__ == "__main__":
    mcp.run()

Dependencies

  • FastMCP: Python implementation of the Model Context Protocol
  • boto3: AWS SDK for Python (for S3 and RDS servers)
  • asyncpg: PostgreSQL client library (for PostgreSQL server)
  • pydantic: Data validation and settings management

Learning More

To learn more about the Model Context Protocol and FastMCP:

  • Model Context Protocol
  • FastMCP Documentation
  • Amazon Q Documentation
  • uv Documentation - Recommended Python package manager for FastMCP

Acknowledgments

This project was inspired by sample-building-mcp-servers-with-rust, which provides a similar implementation of MCP servers using Rust. We thank the authors for their work and inspiration.

Quick Install

Quick Actions

View on GitHubView All Servers

Key Features

Model Context Protocol
Secure Communication
Real-time Updates
Open Source

Boost your projects with Wisdom Gate LLM API

Supporting GPT-5, Claude-4, DeepSeek v3, Gemini and more.

Enjoy a free trial and save 20%+ compared to official pricing.

Learn More
JUHE API Marketplace

Accelerate development, innovate faster, and transform your business with our comprehensive API ecosystem.

JUHE API VS

  • vs. RapidAPI
  • vs. API Layer
  • API Platforms 2025
  • API Marketplaces 2025
  • Best Alternatives to RapidAPI

For Developers

  • Console
  • Collections
  • Documentation
  • MCP Servers
  • Free APIs
  • Temp Mail Demo

Product

  • Browse APIs
  • Suggest an API
  • Wisdom Gate LLM
  • Global SMS Messaging
  • Temp Mail API

Company

  • What's New
  • Welcome
  • About Us
  • Contact Support
  • Terms of Service
  • Privacy Policy
Featured on Startup FameFeatured on Twelve ToolsFazier badgeJuheAPI Marketplace - Connect smarter, beyond APIs | Product Huntai tools code.marketDang.ai
Copyright © 2025 - All rights reserved