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š Hands-On MCP Server Build with LangChain MCP Client | Model Context Protocol Explained In this video, we dive deep into building a real-world MCP (Model Context Protocol) server and connecting it with a LangChain MCP client. If you're interested in AI agents, tool orchestration, and next-gen AI architectures, this tutorial is for you. You'll learn how to design and implement an MCP server from scratch, integrate it with LangChain, and understand how Model Context Protocol enables powerful communication between AI agents and tools. š„ What you'll learn: - What Model Context Protocol (MCP) is and why it matters - How to build an MCP server step by step - How to connect a LangChain MCP client - How AI agents use MCP for tool execution and context sharing - Real-world use cases for MCP in AI systems š” This tutorial is perfect for developers working with: - LangChain - AI Agents & Multi-Agent Systems - Tool Calling & Function Execution - RAG (Retrieval-Augmented Generation) systems š Tech stack: - Node.js / TypeScript - LangChain - MCP (Model Context Protocol) š Why this matters: MCP is becoming a key standard for building scalable AI systems where agents can interact with tools, APIs, and external data sources efficiently. Become a Wizard Member https://www.patreon.com/14026907/join JOIN THE AI HERO COURSE āšāØ Join here : https://forms.gle/1B1tKJ4CzgjnBXFY6 Check out NotebookLM : https://youtu.be/qci2YEqDbFk Check out N8N Clone : https://youtu.be/jNtq3oJf6qM Check out RAG Full-Course : https://youtu.be/x6ozBq4Tqao Source code for this Video Lesson Code : https://github.com/Bienfait-ijambo/langchain-mcp-server.git excalindraw file : https://github.com/Bienfait-ijambo/langchain-mcp-server.git TimesCode 0:00 - Introduction 00:50 - What is MCP Server 02:47 - MCP Layers 07:30 - Building MCP Servers with Tools 16:20 - Connecting AI Agent to MCP server 36:03 - MCP Server with Tools, Resources and Prompts 50:44 - MCP Inspector 55:32 - How to secure an MCP Server #LangChain #AI #MLOps #Python #GenerativeAI #AIAgents #RAG #MachineLearning #ArtificialIntelligence