This chatbot example demonstrates how to integrate the Model Context Protocol (MCP) into a simple CLI chatbot. The implementation showcases MCP's flexibility by supporting multiple tools through MCP servers and is compatible with any LLM provider that follows OpenAI API standards.
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- LLM Provider Flexibility: Works with any LLM that follows OpenAI API standards (tested with Llama 3.2 90b on Groq and GPT-4o mini on GitHub Marketplace).
- Dynamic Tool Integration: Tools are declared in the system prompt, ensuring maximum compatibility across different LLMs.
- Server Configuration: Supports multiple MCP servers through a simple JSON configuration file like the Claude Desktop App.
- Python 3.10
python-dotenv
requests
mcp
uvicorn
-
Clone the repository:
git clone https://github.com/3choff/mcp-chatbot.git cd mcp-chatbot
-
Install the dependencies:
pip install -r requirements.txt
-
Set up environment variables:
Create a
.env
file in the root directory and add your API key:LLM_API_KEY=your_api_key_here
-
Configure servers:
The
servers_config.json
follows the same structure as Claude Desktop, allowing for easy integration of multiple servers. Here's an example:{ "mcpServers": { "sqlite": { "command": "uvx", "args": ["mcp-server-sqlite", "--db-path", "./test.db"] }, "puppeteer": { "command": "npx", "args": ["-y", "@modelcontextprotocol/server-puppeteer"] } } }
Environment variables are supported as well. Pass them as you would with the Claude Desktop App.
Example:
{ "mcpServers": { "server_name": { "command": "uvx", "args": ["mcp-server-name", "--additional-args"], "env": { "API_KEY": "your_api_key_here" } } } }
-
Run the client:
python main.py
-
Interact with the assistant:
The assistant will automatically detect available tools and can respond to queries based on the tools provided by the configured servers.
-
Exit the session:
Type
quit
orexit
to end the session.
- Tool Discovery: Tools are automatically discovered from configured servers.
- System Prompt: Tools are dynamically included in the system prompt, allowing the LLM to understand available capabilities.
- Server Integration: Supports any MCP-compatible server, tested with various server implementations including Uvicorn and Node.js.
- Configuration: Manages environment variables and server configurations
- Server: Handles MCP server initialization, tool discovery, and execution
- Tool: Represents individual tools with their properties and formatting
- LLMClient: Manages communication with the LLM provider
- ChatSession: Orchestrates the interaction between user, LLM, and tools
flowchart TD
A[Start] --> B[Load Configuration]
B --> C[Initialize Servers]
C --> D[Discover Tools]
D --> E[Format Tools for LLM]
E --> F[Wait for User Input]
F --> G{User Input}
G --> H[Send Input to LLM]
H --> I{LLM Decision}
I -->|Tool Call| J[Execute Tool]
I -->|Direct Response| K[Return Response to User]
J --> L[Return Tool Result]
L --> M[Send Result to LLM]
M --> N[LLM Interprets Result]
N --> O[Present Final Response to User]
K --> O
O --> F
-
Initialization:
- Configuration loads environment variables and server settings
- Servers are initialized with their respective tools
- Tools are discovered and formatted for LLM understanding
-
Runtime Flow:
- User input is received
- Input is sent to LLM with context of available tools
- LLM response is parsed:
- If it's a tool call → execute tool and return result
- If it's a direct response → return to user
- Tool results are sent back to LLM for interpretation
- Final response is presented to user
-
Tool Integration:
- Tools are dynamically discovered from MCP servers
- Tool descriptions are automatically included in system prompt
- Tool execution is handled through standardized MCP protocol
Feedback and contributions are welcome. If you encounter any issues or have suggestions for improvements, please create a new issue on the GitHub repository.
If you'd like to contribute to the development of the project, feel free to submit a pull request with your changes.
This project is licensed under the MIT License.