MCP Demo Deepseek
An MCP weather query agent project developed based on DeepSeek-V3, which realizes its functions by configuring the API key and running the client script.
rating : 2.5 points
downloads : 10
What is the MCP Demo?
This is a project demonstrating how to use the DeepSeek large language model as the client LLM in the implementation of the MCP protocol. MCP (Model Context Protocol) is a standardized model interaction protocol. This project shows how to build a weather query agent through the MCP protocol.How to use the MCP Demo?
Simply configure the API key and run the client script to start the MCP service based on DeepSeek.Applicable scenarios
Suitable for developers to quickly build agent services based on large language models, especially in scenarios that require integration with external APIs (such as weather services).Main features
DeepSeek integrationSeamlessly integrate the DeepSeek-V3 large language model as the client LLM
MCP protocol supportFully implement the Model Context Protocol standard protocol
Weather query exampleProvide a ready-made implementation example of a weather query agent
Advantages and limitations
Advantages
Quickly build agent services based on DeepSeek
The standardized MCP protocol ensures compatibility
Provide complete example code to lower the development threshold
Limitations
Require a DeepSeek API key
Currently only provide a Python client implementation
The example functions are relatively basic
How to use
Configure the environment
Create a.env file in the project root directory and add the DeepSeek API key
Install dependencies
Use pip to install the required dependency packages for the project
Run the client
Execute the client script to start the MCP service
Usage examples
Weather query agentA weather query service built based on DeepSeek and the MCP protocol
Frequently Asked Questions
How to obtain a DeepSeek API key?
Can other functions be extended?
Which programming languages are supported?
Related resources
MCP official quick start resources
Resources for the Python client implementation of the MCP protocol
DeepSeek technical community article
A detailed tutorial on developing an MCP weather query agent based on DeepSeek-V3
Featured MCP Services

Notion Api MCP
Certified
A Python-based MCP Server that provides advanced to-do list management and content organization functions through the Notion API, enabling seamless integration between AI models and Notion.
Python
141
4.5 points

Duckduckgo MCP Server
Certified
The DuckDuckGo Search MCP Server provides web search and content scraping services for LLMs such as Claude.
Python
830
4.3 points

Markdownify MCP
Markdownify is a multi-functional file conversion service that supports converting multiple formats such as PDFs, images, audio, and web page content into Markdown format.
TypeScript
1.7K
5 points

Gitlab MCP Server
Certified
The GitLab MCP server is a project based on the Model Context Protocol that provides a comprehensive toolset for interacting with GitLab accounts, including code review, merge request management, CI/CD configuration, and other functions.
TypeScript
87
4.3 points

Figma Context MCP
Framelink Figma MCP Server is a server that provides access to Figma design data for AI programming tools (such as Cursor). By simplifying the Figma API response, it helps AI more accurately achieve one - click conversion from design to code.
TypeScript
6.7K
4.5 points

Unity
Certified
UnityMCP is a Unity editor plugin that implements the Model Context Protocol (MCP), providing seamless integration between Unity and AI assistants, including real - time state monitoring, remote command execution, and log functions.
C#
567
5 points

Minimax MCP Server
The MiniMax Model Context Protocol (MCP) is an official server that supports interaction with powerful text-to-speech, video/image generation APIs, and is suitable for various client tools such as Claude Desktop and Cursor.
Python
754
4.8 points

Context7
Context7 MCP is a service that provides real-time, version-specific documentation and code examples for AI programming assistants. It is directly integrated into prompts through the Model Context Protocol to solve the problem of LLMs using outdated information.
TypeScript
5.2K
4.7 points