Complete MCP Bootcamp: Build Next-Gen AI Agents with MCP

Complete MCP Bootcamp: Build Next-Gen AI Agents with MCP

English | MP4 | AVC 1280×720 | AAC 44KHz 2ch | 70 Lessons (8h 10m) | 6.75 GB

Master MCP to connect, extend, and automate LLMs — build context-aware, multi-agent AI systems from scratch

The Model Context Protocol (MCP) is transforming how modern AI systems operate. It is the emerging standard that allows Large Language Models (LLMs) to interact intelligently with external tools, APIs, and data sources. By learning MCP, you will understand how context flows between AI models and their environments, enabling the creation of truly autonomous and context-aware systems.

This course, Complete Model Context Protocol (MCP) Bootcamp, provides an in-depth understanding of how MCP works and how to implement it effectively in real-world AI applications. You will explore MCP’s architecture, its role in the Agentic AI ecosystem, and how it integrates with frameworks like LangChain, LangGraph, and CrewAI. The course is fully practical, project-based, and designed for professionals who want to build advanced AI workflows.

  1. Introduction to Model Context Protocol (MCP):
    • Understand what MCP is and why it was introduced.
    • Learn how MCP changes the way LLMs communicate and share information.
    • Explore the problems MCP solves in modern Generative AI development.
  2. Core Concepts and Architecture:
    • Study the main components of MCP, including models, tools, and context layers.
    • Understand how context is represented, managed, and exchanged.
    • Learn the design principles that make MCP scalable and extensible.
  3. Building AI Systems with MCP:
    • Implement MCP-driven workflows using Python.
    • Connect language models with real-world APIs and databases.
    • Create context-aware applications capable of retrieving and reasoning with live data.
    • Build retrieval-augmented systems that integrate knowledge retrieval and response generation.
  4. Integration with Leading Frameworks:
    • Use MCP with LangChain to enhance RAG pipelines.
    • Integrate MCP with LangGraph for stateful and graph-based reasoning.
    • Combine MCP with CrewAI to create multi-agent architectures.
    • Understand how MCP works with open-source and cloud-based LLMs such as OpenAI, Anthropic, and Mistral.
  5. Projects You Will Build:
    • Project 1: Build a context-aware AI assistant using MCP.
    • Project 2: Connect an LLM to real-world APIs through MCP.
    • Project 3: Create an Autonomous RAG system with LangChain and MCP.
    • Project 4: Develop a multi-agent workflow using CrewAI and MCP.
    • Project 5: Deploy an MCP-powered AI system using Docker and GitHub Actions.
  6. Security, Deployment, and Optimization:
    • Learn best practices for securing MCP communications and configurations.
    • Set up environments with Docker and VS Code for reproducible workflows.
    • Automate deployments and testing with GitHub Actions.
  7. Who Should Take This Course:
    • AI engineers looking to build context-aware and autonomous systems.
    • Data scientists and ML developers exploring Agentic AI architectures.
    • Software engineers who want to connect LLMs with APIs and external tools.
    • Researchers and students interested in the evolution of context engineering.
  8. Key Learning Outcomes:
    • Gain a complete understanding of how MCP enables structured model-to-tool communication.
    • Learn how to design and deploy intelligent systems that use dynamic context.
    • Acquire practical experience through multiple end-to-end projects.
    • Master the integration of MCP with frameworks used in modern AI development.
  9. Technologies and Tools Covered:
    • Model Context Protocol (MCP)
    • LangChain, LangGraph, CrewAI
    • Python, OpenAI, Mistral, Anthropic
    • Vector Databases (FAISS, Chroma, Pinecone)
    • Docker, GitHub Actions, VS Code
  10. About the Instructor:
    Krish Naik has over 13 years of experience in the data analytics and AI industry and more than 7 years of experience teaching Machine Learning, Deep Learning, NLP, and Generative AI. Known for his practical, hands-on teaching approach, he has trained millions of learners to master real-world AI and data science concepts.

By the end of this course, you will have the skills to design, implement, and deploy MCP-powered AI systems. You will understand how MCP redefines model communication, how it enhances RAG systems, and how it enables the creation of intelligent, connected, and scalable Agentic AI applications.

Enroll today and become one of the first professionals to master the Model Context Protocol — the foundation of the next generation of AI development.

Who this course is for:

  • AI engineers and developers who want to build context-aware and Agentic AI systems.
  • Data scientists and ML engineers looking to integrate MCP into real-world projects.
  • Software developers interested in connecting LLMs with external APIs and tools.
  • Students and researchers exploring the future of context engineering and AI protocols.
Table of Contents

Model Context Protocol
1 Introduction To MCP
2 Important Components Of MCP
3 Communication Between MCP Components

Getting Started With Claude Desktop And Cursor IDE
4 Introduction And Overview
5 DEMO Of MCP Servers With Claude Desktop
6 Cursor IDE Installtion And Overview
7 Getting Started With Smithery AI
8 Introduction Overview
9 Install Claude for Desktop
10 Setup Project Directories and Files
11 MCP Server Python Practical
12 How to Connect Your Server To Claude Desktop and Test it

Cursor IDE MCP Server Setup
13 Cursor IDE Setup
14 How to Connect Your Server To Cursor IDE and Test it

How to build Your Own MCP Client using Python Google Gemini API
15 Overview How to Get Free Gemini API Key
16 Setup Project Directories Files Install GoogleGenAI SDK
17 MCP Client Python Code Walkthrough
18 Test Your MCP Client with Your MCP Server

How to build Docker MCP Server
19 Introduction to Docker Why we need it
20 Docker Setup
21 Containerized your MCP Server Using Docker Test

LangChain MCP Client using LangChain MCP Adapters
22 Introduction of LangChain MCP Adapters
23 Simplify client code with LangGraph LangChain MCP Adapters

MCP Client with Multiple Server Support
24 Introduction to Multiple server
25 MCP Client with Multiple Server Support Code Test

MCP Server and Client using SSE
26 Introduction to SSE and Overview
27 Setup Directories Project
28 MCP SSE Server Code Walkthrough
29 MCP SSE Client Code Walkthrough
30 Dockerizing MCP Server
31 Test your MCP SSE Server and Client Locally

Deploying MCP Server to AWS Cloud Platform
32 Create an AWS Account
33 How to create EC2 instance
34 How to install Docker in EC2
35 Deploy MCP SSE Server
36 Test MCP SSE Server

Project Real Time Weather Agent using MCP and MCP Inspector
37 Introduction to Project
38 Project folder structure
39 Project Setup
40 Project Development

Project Real Time Job Recommendation System
41 Introduction to Project
42 Project folder structure
43 Project Setup
44 System Development
45 App Development
46 MCP Development Test

Project StoryForge Agent
47 Introduction to Project
48 Project Architecture
49 Project Setup
50 How to get API keys
51 Functions Development Part 1
52 Functions Development Part 2
53 MCP Tools Development
54 Test Your App Final Demo

Project Clinisight AI
55 Introduction to Project
56 Project Architecture
57 Project Setup
58 How to get API keys
59 Symptom Extractor and Diagnosis
60 Get PubMed Medical Articles
61 Articles Summarizer
62 FastAPI Endpoint
63 MCP Tools Development Test

Build Agent with Google Developement Kit ADK
64 What is ADK
65 Quick Demo of the agent
66 Architecture of the Agent
67 Agent folder structure
68 Google ADK Setup
69 Gemini API Key
70 Agent Development with ADK

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