mcp-for-beginners and mcp-tutorial-complete-guide

These are **complements** — the Microsoft curriculum provides foundational MCP concepts across multiple languages, while the Carlos guide offers specialized instruction on production-ready deployment and security practices that learners would apply after mastering the basics.

mcp-for-beginners
76
Verified
mcp-tutorial-complete-guide
25
Experimental
Maintenance 25/25
Adoption 10/25
Maturity 16/25
Community 25/25
Maintenance 2/25
Adoption 4/25
Maturity 9/25
Community 10/25
Stars: 15,320
Forks: 4,986
Downloads:
Commits (30d): 171
Language: Jupyter Notebook
License: MIT
Stars: 6
Forks: 1
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
No Package No Dependents
Stale 6m No Package No Dependents

About mcp-for-beginners

microsoft/mcp-for-beginners

This open-source curriculum introduces the fundamentals of Model Context Protocol (MCP) through real-world, cross-language examples in .NET, Java, TypeScript, JavaScript, Rust and Python. Designed for developers, it focuses on practical techniques for building modular, scalable, and secure AI workflows from session setup to service orchestration.

The curriculum covers foundational MCP concepts like resource definitions, tool invocation patterns, and prompt templates across real-world server implementations. It emphasizes hands-on learning with code-along examples that demonstrate client-server communication via JSON-RPC over stdio transport, progressing from basic protocol mechanics to advanced patterns like dynamic resource discovery and error handling. The material aligns with the MCP specification (2025-11-25) and integrates with AI platforms like Claude, providing practical guidance on connecting MCP servers to LLM applications for tool use and context management.

About mcp-tutorial-complete-guide

CarlosIbCu/mcp-tutorial-complete-guide

Comprehensive guide for building AI tools using Model Context Protocol (MCP). Learn to develop, secure, and deploy production-ready AI integrations.

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