DeepSeek-Claude MCP Server
@HarshJ23
About DeepSeek-Claude MCP Server
a MCP server which integrates reasoning capabilities of DeepSeek R1 model into claude desktop app.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"deepseek-claude-MCP-server": {
"command": "npx",
"args": [
"-y",
"@smithery/cli",
"install",
"@HarshJ23/deepseek-claude-MCP-server",
"--client",
"claude"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is DeepSeek-Claude MCP Server?
DeepSeek-Claude MCP Server enhances Claude's reasoning capabilities by integrating DeepSeek R1's advanced reasoning engine. It enables Claude to tackle complex, multi-step reasoning tasks by forwarding queries to DeepSeek R1 and incorporating its structured reasoning into Claude's responses. The server is designed for users who need precision and efficiency in thoughtful response generation.
How to use DeepSeek-Claude MCP Server?
Install via Smithery with npx -y @smithery/cli install @HarshJ23/deepseek-claude-MCP-server --client claude or manually by cloning the repository, setting up a Python 3.12+ environment with uv, installing dependencies (mcp[cli] and httpx), obtaining a DeepSeek API key, and configuring the claude_desktop_config.json file. The server runs automatically when used with Claude Desktop. When Claude receives a complex query, it forwards it to DeepSeek R1, which returns structured reasoning inside <ant_thinking> tags, and Claude integrates that reasoning into its final response.
Key features of DeepSeek-Claude MCP Server
- Integrates DeepSeek R1 reasoning with Claude.
- Supports intricate multi-step reasoning tasks.
- Designed for precision and efficiency in responses.
- Works automatically with Claude Desktop via MCP.
Use cases of DeepSeek-Claude MCP Server
- Solving complex logic or math problems with step-by-step reasoning.
- Handling multi-step analysis where deeper inference is needed.
- Generating structured, thought-out answers for research or analysis tasks.
FAQ from DeepSeek-Claude MCP Server
What is DeepSeek-Claude MCP Server?
It is an MCP server that lets Claude leverage DeepSeek R1's reasoning engine for advanced, multi-step reasoning tasks.
What are the prerequisites for using DeepSeek-Claude MCP Server?
Python 3.12 or higher, the uv package manager, and a DeepSeek API key (obtainable from platform.deepseek.com).
How do I set up DeepSeek-Claude MCP Server?
Clone the repo, create a virtual environment with uv, install dependencies, configure your DeepSeek API key, add the server configuration to claude_desktop_config.json, then run uv run server.py. Restart Claude Desktop to use it.
How does the integration between Claude and DeepSeek R1 work?
Claude forwards a query to DeepSeek R1, which returns structured reasoning wrapped in <ant_thinking> tags. Claude then incorporates that reasoning into its final response.
Does DeepSeek-Claude MCP Server require any external transport or authentication?
The server communicates via the MCP protocol with Claude Desktop. Authentication is handled by your DeepSeek API key, set during configuration.
More AI & Agents MCP servers
欢迎来到 智言平台
Shy2593666979AgentChat 是一个基于 LLM 的智能体交流平台,内置默认 Agent 并支持用户自定义 Agent。通过多轮对话和任务协作,Agent 可以理解并协助完成复杂任务。项目集成 LangChain、Function Call、MCP 协议、RAG、Memory、HITL、Skill、Milvus 和 ElasticSearch 等技术,实现高效的知识检索与工具调用,使用 FastAPI 构建高性能后端服务。
Perplexity Ask MCP Server
ppl-aiThe official MCP server implementation for the Perplexity API Platform
MCP-NixOS - Because Your AI Assistant Shouldn't Hallucinate About Packages
utensilsMCP-NixOS - Model Context Protocol Server for NixOS resources
MCP Server - Remote MacOs Use
baryhuangThe only general AI agent that does NOT requires extra API key, giving you full control on your local and remote MacOs from Claude Desktop App
Solon Ai
opensolonJava AI application development framework (supports LLM-tool,skill; RAG; MCP; Agent-ReAct,Team-Agent). Compatible with java8 ~ java25. It can also be embedded in SpringBoot, jFinal, Vert.x, Quarkus, and other frameworks.
Comments