MCP SSE Server Sample
M

MCP SSE Server Sample

This is a simple example project showing how to use an SSE server to implement the Model Context Protocol (MCP), including the basic implementation of the server and client.
2.5 points
8.0K

What is an MCP SSE Server?

This is an example server demonstrating how to use Server-Sent Events (SSE) technology to implement the Model Context Protocol (MCP). Although its implemented functions are simple (text reversal and uppercase conversion), it is an excellent educational example for understanding the implementation of SSE servers.

How to Use This Server?

The server provides two basic text conversion functions. First, start the server, and then connect to it through the provided client script.

Use Cases

This example is very suitable for developers who want to learn SSE implementation or test the basic functions of the MCP protocol. It can serve as a basis for building more complex MCP services.

Key Features

SSE Implementation
Demonstrate real-time communication using the Server-Sent Events protocol
MCP Protocol Support
Implement the Model Context Protocol for standardized communication
Text Transformation
Provide simple text processing functions (reversal and uppercase conversion)
Advantages
Simple and easy-to-understand implementation
A good starting point for learning SSE technology
Follow the official MCP protocol standard
Limitations
Relatively basic functions
Limited to simple text processing
Do not support complex model operations

How to Use

Step 1: Install Dependencies
Ensure that the necessary Python libraries and tools are installed.
Step 2: Start the Server
Run the provided script to start the MCP SSE server.
Step 3: Connect the Client
Use the client tool to connect to the running server.

Usage Examples

Frequently Asked Questions

What is the MCP protocol?
How to install the MCP SDK?
Is this example suitable for a production environment?

Related Resources

Official MCP Python SDK
The official Python SDK for interacting with models.
Simple Tool Example
The basic original example code for this implementation.

Installation

Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.

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