model_context_protocol_training
A Slidev presentation and developer guide to the Model Context Protocol (MCP) by Anthropic, covering AI integration, LLM tool use, core concepts, and implementation examples for AI agents. #mcp #a
GitHubスター
3
ユーザー評価
未評価
お気に入り
0
閲覧数
5
フォーク
0
イシュー
0
Model Context Protocol (MCP) Implementation Guide
Overview
This repository contains a comprehensive Slidev presentation on implementing the Model Context Protocol (MCP) for AI integration projects. The presentation covers the core architecture of MCP, practical examples, and best practices for developers working with Large Language Models (LLMs) like Claude and other AI systems.
What is Model Context Protocol?
The Model Context Protocol (MCP) is an API standard developed by Anthropic that enables seamless LLM tool integration in AI applications. It provides a structured approach to context management for AI agents and establishes a consistent protocol for communication between LLMs and external tools.
Presentation Contents
This developer guide and tutorial covers:
- Core Architecture: Understanding the fundamental components of the Model Context Protocol
- Implementation Guide: Step-by-step instructions for implementing MCP clients and servers (with Python examples)
- AI Integration Patterns: Best practices for integrating external tools with LLMs
- Tool Use Examples: Practical demonstrations of agentic AI capabilities
- Use Cases: Real-world applications including the Tableau integration example
Getting Started
To view this presentation:
- Clone this repository
- Install Slidev if you haven't already
- Run
npm install
(oryarn install
) - Run
npm run dev
(oryarn dev
) - Open your browser to the URL displayed in the terminal
Why Model Context Protocol?
When developing AI applications that require tool integration, the Model Context Protocol offers several advantages:
- Standardized Communication: Consistent JSON-RPC based protocol for AI-tool interactions
- Context Management: Efficient handling of context between the LLM and external systems
- Simplified Development: Clear patterns for building agentic AI applications
- Extensibility: Easy integration with new tools and services
Use Cases
The MCP approach is valuable for various artificial intelligence and machine learning applications, including:
- Data analysis pipelines with tools like Tableau
- AI assistants that interact with external services
- Custom LLM tool development
- Building comprehensive AI agents with multiple capabilities
Additional Resources
Contributing
Contributions to improve this AI development guide are welcome! Please feel free to submit pull requests or open issues with suggestions.
Tags
ai-integration, model-context-protocol, anthropic, llm-integration, ai-agents, tool-integration, llm-tools, context-management, api-standard, ai-protocol, developer-guide, tutorial, training, examples, claude, python, json-rpc, artificial-intelligence, machine-learning, ai-development, slidev, presentation