mcp-server-deepseek

Created By
tizeea year ago
A MCP server provides access to DeepSeek-R1's reasoning capabilities for LLMs
Overview

What is mcp-server-deepseek?

The mcp-server-deepseek is a Model Context Protocol (MCP) server that provides access to DeepSeek-R1's reasoning capabilities, enabling non-reasoning models to generate improved responses through enhanced thinking.

How to use mcp-server-deepseek?

To use the mcp-server-deepseek, clone the repository, set up a virtual environment, install the package, and configure your DeepSeek API credentials in a .env file. You can then run the server and use the think_with_deepseek_r1 tool to send prompts and receive reasoning content.

Key features of mcp-server-deepseek?

  • Access to DeepSeek-R1's reasoning model via API.
  • Structured reasoning output in a <thinking> format.
  • Full compatibility with the Model Context Protocol.
  • Robust error handling and detailed logging.

Use cases of mcp-server-deepseek?

  1. Enhancing responses from models lacking native reasoning capabilities.
  2. Accessing DeepSeek-R1's reasoning for complex problem-solving tasks.
  3. Integrating structured reasoning into LLMs like Claude that support MCP.

FAQ from mcp-server-deepseek?

  • What is required to run the server?

    You need Python 3.13 or higher and a valid DeepSeek API key.

  • How do I run the server?

    You can run the server directly using the command mcp-server-deepseek or in development mode with make dev.

  • What should I do if I encounter API key issues?

    Ensure your DeepSeek API key is correctly set in the .env file.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
tizee
Star
0
Language
Python
License
MIT license

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