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    Mastering Model Context Protocol (Mcp): A Practical Guide

    Posted By: ELK1nG
    Mastering Model Context Protocol (Mcp): A Practical Guide

    Mastering Model Context Protocol (Mcp): A Practical Guide
    Published 6/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 801.20 MB | Duration: 2h 31m

    Design robust AI backends with MCP: context-rich, secure, and ready for deployment.

    What you'll learn

    Understand MCP architecture and JSON-RPC basics.

    Spin up and configure a FastMCP server.

    Build MCP clients over SSE, streamable-http, and stdio.

    Leverage MCP Tools, Resources, Prompts, Roots, Discovery, Sampling.

    Secure MCP endpoints with OAuth 2.1 via Auth0.

    Apply FastAPI integration, composition, proxy, and Docker patterns.

    Requirements

    Solid intermediate-level Python skills

    Hands-on experience with Large Language Models (LLMs), especially tool calling

    Fundamental software-engineering knowledge

    Basic understanding of HTTP or similar client-server protocols

    Description

    Mastering Model Context Protocol (MCP) is your practical guide to building robust, secure, and production-ready AI backends using the FastMCP ecosystem.This course walks you through every step—from spinning up a minimal MCP server to deploying a full-stack application that integrates LangGraph, FastAPI, and OAuth 2.1 security.You’ll learn how to design modular, extensible systems that provide high-quality context to LLMs through modern protocols and best practices. With a strong focus on hands-on development, this course prepares you to build scalable MCP-powered applications that are ready for real-world use.Course HighlightsMCP FundamentalsSet up a basic FastMCP server and client. Understand the JSON-RPC request/response cycle and handle errors effectively.Transport MethodsWork with SSE, streamable-http (stateless & stateful), and stdio. Learn how to switch between transports and apply them in different scenarios.Advanced MCP FeaturesImplement key features like Tools, Resources, Prompts, Discovery, Roots, and Sampling to create dynamic and adaptive context pipelines.LangGraph IntegrationBuild a LangGraph client that interacts with your MCP server and generates intelligent, human-like responses using stateful logic.Security with OAuth 2.1Secure your endpoints using Auth0 and OAuth 2.1. Apply scopes, token management, and best practices for safe deployments.FastAPI & Proxy PatternsEmbed MCP into FastAPI, compose services for modularity, and create proxy bridges to support legacy systems or alternate transports.Full-Stack Deployment (Capstone)Combine all components—frontend, API, MCP server, and LLM backend—into a Dockerized, production-ready solution.By the end of this course, you’ll not only understand the theory behind MCP but also have the skills to build, secure, and deploy it in modern AI workflows.Whether you're a developer exploring LLM infrastructure or an engineer building context-aware systems, this course gives you the practical tools to take your AI applications to the next level.Let’s build the next generation of intelligent, context-driven systems :-)

    Overview

    Section 1: Before you enroll…

    Lecture 1 Prerequisites

    Lecture 2 My Teaching style

    Section 2: Introduction

    Lecture 3 A Brief History of AI Data Integration

    Section 3: Understanding JSON-RPC – A High-Level Overview

    Lecture 4 JSON-RPC High-Level Overview

    Section 4: Project Setup

    Lecture 5 Project Resources & Quick Setup

    Lecture 6 Setting Up Your Project: Git, venv & Dependency Install - Full Walkthrough

    Section 5: OPTIONAL: Tool / Function Calling Recap

    Lecture 7 Tool Calling Theory & Practice

    Section 6: Getting Started with MCP in practice

    Lecture 8 Setting Up Your First MCP Server

    Lecture 9 Low-Level Shell Interaction with the MCP Server

    Lecture 10 Connecting to the MCP Server from a Python Client

    Section 7: Transports - Model Context Protocol

    Lecture 11 Comparing MCP Transports: stdio vs. SSE vs. streamable-http

    Lecture 12 Building a Server & Client with stdio

    Lecture 13 Building a Server & Client with SSE

    Lecture 14 Building a Server & Client with streamable-http

    Section 8: MCP Capabilities - Beyond Tools

    Lecture 15 Difference between Tools, Resources, Prompts

    Lecture 16 MCP Server with Resources & Prompts

    Lecture 17 MCP Client with Resources & Prompts

    Section 9: From MCP SDK to FastMCP v2

    Lecture 18 From MCP SDK to FastMCP v2

    Section 10: FastMCP - The Context Object

    Lecture 19 Why the Context Object matters (Theory)

    Lecture 20 Stateful Server with Notifications & Log Messages

    Lecture 21 Using the Context Object in the MCP Client

    Section 11: Discovery

    Lecture 22 Static Discovery vs. Dynamic Discovery

    Lecture 23 Dynamic Discovery: Server & Client

    Section 12: Roots

    Lecture 24 Roots Theory & Usecases

    Lecture 25 Roots: Server & Client

    Section 13: Sampling

    Lecture 26 What is sampling and when you might need it

    Lecture 27 Sampling Server

    Lecture 28 Sampling Client

    Section 14: Integrate MCP with a modern GenAI framework

    Lecture 29 Connecting LangGraph Client to an MCP Server

    Section 15: OAuth 2.1 Authorization

    Lecture 30 OAuth Flow – Theory

    Lecture 31 Auth0 vs Identity Provider – Setting up the Authorization Server

    Lecture 32 Managing Sensitive Information with Environment File

    Lecture 33 Building a Secure MCP Server

    Lecture 34 Accessing an MCP Server with an Authorized Client

    Section 16: FastAPI Integration

    Lecture 35 Why FastAPI and FastMCP are a Perfect Match

    Lecture 36 Mounting an MCP Server in a FastAPI App

    Lecture 37 Turning a FastAPI App into a MCP Server

    Section 17: Composition

    Lecture 38 Composing Multiple MCP Servers with FastMCP

    Section 18: Capstone Project

    Lecture 39 Application Demo & Key Technologies

    Lecture 40 MCP Server – Code Walkthrough

    Lecture 41 Agent Class – Code Walkthrough

    Lecture 42 FastAPI Server – Code Walkthrough

    Section 19: Thank you!

    Lecture 43 Congrations for finishing this course :-)

    Junior to intermediate Python developers with hands-on AI/LLM experience who want to dive deep into the Model Context Protocol (MCP).