
🤖 MCP Server Examples with AutoGen
This repository demonstrates how to use AutoGen to integrate local and remote MCP (Model Context Protocol) servers. It showcases a local math tool (math_server.py) using Stdio and a remote Apify tool (RAG Web Browser Actor) via SSE for tasks like arithmetic and web browsing.
What is MCP Server Examples with AutoGen?
MCP Server Examples with AutoGen is a repository that demonstrates how to integrate local and remote Model Context Protocol (MCP) servers using the AutoGen framework, showcasing a local math tool and a remote web browsing tool.
How to use MCP Server Examples with AutoGen?
To use this project, set up your environment by following the provided setup instructions, including installing dependencies and configuring environment variables. Then, run the main script to see the integration in action.
Key features of MCP Server Examples with AutoGen?
- Dual MCP integration for local and remote tool servers.
- Local math tool (
math_server.py
) for arithmetic operations. - Remote web browsing capabilities using Apify's RAG Web Browser Actor.
- An
AssistantAgent
that utilizes both tools to answer user queries.
Use cases of MCP Server Examples with AutoGen?
- Solving arithmetic problems using the local math server.
- Summarizing news articles using the remote web browsing tool.
- Demonstrating the flexibility of AI agents in accessing diverse tools through standardized protocols.
FAQ from MCP Server Examples with AutoGen?
- What is the Model Context Protocol (MCP)?
MCP is a protocol that standardizes communication between AI models and tools, allowing for seamless integration of local and remote resources.
- How do I set up the project?
Follow the setup instructions in the repository, including installing Python, creating a virtual environment, and configuring API keys.
- Can I use this project for other types of tools?
Yes! The MCP framework allows for integration with various tools, both local and remote.
🤖 MCP Server Examples with AutoGen
This repository provides a practical demonstration of integrating tools with AI agents using the Model Context Protocol (MCP) within the AutoGen framework.
Key Features Demonstrated:
- Dual MCP Integration: Shows how to connect an AutoGen agent to:
- A local tool server (
math_server.py
) using Stdio transport. - A remote tool server (Apify's RAG Web Browser Actor) using Server-Sent Events (SSE) transport.
- A local tool server (
- Local Tool Example: A simple calculator (
add
,multiply
) running locally viamath_server.py
. - Remote Tool Example: Leveraging Apify's RAG Web Browser Actor via their MCP Server for web searching and content retrieval.
- AutoGen Agent: An
AssistantAgent
configured to utilize both sets of tools to answer user queries.
Goal: To illustrate the flexibility of MCP in enabling AI agents to access diverse tools, whether hosted locally or remotely, through standardized communication protocols (Stdio and SSE).
Scenario: The example agent answers two distinct questions:
- A math problem (
(3 + 5) x 12?
), expected to use the localmath_server.py
. - A request for recent news ("Summarise the latest news of Iran and US negotiations..."), expected to use the remote Apify web browsing tool.
📚 Libraries & Frameworks Used
- AutoGen: AI agent framework (autogen_agentchat, autogen_core, autogen_ext)
- MCP: Model Context Protocol for tool integration
- Python-dotenv: For environment variable management
- OpenAI API: For LLM capabilities
- Apify API: For web browsing capabilities
🛠️ Setup
Follow these steps carefully to set up your environment:
-
Prerequisites:
- Ensure you have Python 3.12 installed.
- Install
uv
if not already installed:pip install uv
-
Navigate to Project Directory:
cd mcp_autogen_sse_stdio
-
Create and Activate Virtual Environment:
# Create virtual environment using uv uv venv --python 3.12 # Activate the virtual environment source .venv/bin/activate # On macOS/Linux # OR .\.venv\Scripts\activate # On Windows
-
Install Dependencies:
# Install project dependencies uv pip install -e .
Troubleshooting Note: If you encounter any issues with the MCP CLI installation, you can manually install it:
uv add "mcp[cli]"
-
Configure Environment Variables:
- Create a
.env
file in themcp_autogen_sse_stdio
directory. - Add your API keys:
OPENAI_API_KEY=your_openai_api_key_here APIFY_API_KEY=your_apify_api_key_here
- Get your Apify API key from Apify MCP Server page
- Create a
🚀 Running the Project
-
Make sure you're in the parent directory (one level up from the project directory):
cd ..
-
Run the main script using
uv
:uv run mcp_autogen_sse_stdio/main.py
This will run the demo that:
- Summarizes news about Iran-US negotiations using the Apify tool
- Solves a simple math problem:
(3 + 5) x 12
using the local math tool
🔌 Understanding MCP (Model Context Protocol)
MCP is a protocol that standardizes communication between AI models and tools. This example demonstrates two ways to use MCP:
1. Local Tools (StdioServerParams)
- Uses standard input/output for communication
- Tools run locally on your machine
- Example: Our
math_server.py
provides simple math operations
2. Remote Tools (SseServerParams)
- Uses Server-Sent Events (SSE) for communication
- Tools run on remote servers (like Apify)
- Example: Web browsing capabilities via Apify's rag-web-browser
📝 Code Walkthrough
Our main.py
demonstrates:
-
Environment Setup:
- Loads API keys and validates them
-
Tool Configuration:
- Sets up local math tools using StdioServerParams
- Connects to Apify's web browser using SseServerParams (API from https://apify.com/apify/actors-mcp-server)
-
Agent Creation:
- Creates an AutoGen assistant with both tool sets
- Uses GPT-4 as the base model
-
Task Execution:
- Runs two demo tasks showing both tools in action
- Web browsing for news summarization
- Math calculations for arithmetic problem
🔄 Communication Flow
User → AutoGen Agent → MCP Tools → Results → User
This example shows how easily different tool types can be integrated into one agent using MCP!