MCP Chinese Getting Started Guide
The Model Context Protocol (MCP) is an open - source protocol that provides a standardized method for large language models to connect to external data sources and tools. It supports functions such as resources, prompts, tools, and sampling. This article focuses on how to develop and use MCP tool services.
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What is an MCP server?
The MCP server is a standardized interface that allows large language models (LLMs) to connect to various data sources and tools, enabling seamless access and processing of information. It supports multiple functions such as resources, prompts, and tools.How to use an MCP server?
You can quickly develop an MCP server using Python. It supports two transport protocols (stdio and SSE) and can be integrated into the Claude desktop client or other AI applications.Use cases
It is suitable for scenarios where the functions of AI models need to be extended, such as web search, file operations, data queries, etc. It is particularly suitable for applications that require integrating AI with external systems.Main Features
Resource ManagementProvides preset resources or custom protocol resources that can be directly called by AI models.
Prompt TemplatesCreates reusable prompt templates to simplify interactions with AI models.
Tool IntegrationSupports the development of custom tool functions to extend the capabilities of AI models.
Execution MonitoringProvides callback interfaces before and after tool execution for manual supervision or pre - processing.
Lifecycle ManagementSupports custom processing logic during service initialization, running, and shutdown.
Advantages and Limitations
Advantages
Standardized interface that unifies the interaction between different AI models and external systems
Easy to expand, supporting rapid development of new functions
Supports local and cloud deployment
Good tool development experience with debugging tools provided
Limitations
Requires some Python development knowledge
Some functions (such as resource templates) are not fully supported in the Claude client
stdio output is limited during debugging
How to Use
Install Dependencies
Use the uv tool to initialize the project and install the mcp package
Develop Tool Functions
Use the @tool decorator to create custom tools
Run the Server
Select the transport protocol (stdio or SSE) to start the service
Debug Tools
Use the MCP Inspector visualization tool for testing
Integrate into the Client
Configure the MCP server in Claude or other clients
Usage Examples
Web Search ToolImplement a tool that allows AI models to perform web searches
File Deletion ToolImplement a file deletion function that requires manual confirmation
Image Generation ToolIntegrate an AI image generation service into the Claude client
Frequently Asked Questions
How to debug an MCP server?
Why can't I see the resource templates in the Claude client?
How to deploy to the cloud?
Why can't I see the print output in stdio mode?
Related Resources
MCP Official Documentation
Official documentation for the MCP protocol
Python SDK Repository
Source code for the MCP Python SDK
Getting Started Guide Repository
Chinese getting - started guide and sample code
LangChain Adapter
Adapter for integrating MCP with LangChain
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