MCP Mastery: Build AI Apps with Claude, LangChain and Ollama
Published 9/2025
Duration: 6h | .MP4 1920x1080 30 fps(r) | AAC, 44100 Hz, 2ch | 3.86 GB
Genre: eLearning | Language: English
Published 9/2025
Duration: 6h | .MP4 1920x1080 30 fps(r) | AAC, 44100 Hz, 2ch | 3.86 GB
Genre: eLearning | Language: English
Build MCP servers & clients with Python, Streamlit, ChromaDB, LangChain, LangGraph agents, and Ollama integrations
What you'll learn
- Build and deploy custom MCP servers with real-world tools, resources, and APIs.
- Integrate MCP servers with Claude Desktop, LangChain, and LangGraph workflows.
- Implement RAG systems using vector databases for intelligent document retrieval.
- Test, secure, and deploy production-ready MCP servers to cloud environments.
Requirements
- Basic programming knowledge in Python
- Access to a computer with internet connection and ability to install software.
- No prior AI/ML experience needed — everything is taught step by step.
- Curiosity to learn hands-on MCP integrations and apply them in real-world projects.
Description
Master the Model Context Protocol (MCP) and build production-ready AI applications that connect Claude with real-world data, APIs, and workflows.
As AI adoption accelerates across industries, theModel Context Protocol (MCP)has emerged as the standard for connecting AI models with external systems. Companies are actively seeking developers who can build secure, scalable MCP integrations. This course positions you at the forefront of this rapidly growing field.
What Makes This Course Different
Unlike theoretical courses, you'llbuild real projects from day one. Each section combines practical coding with essential concepts, ensuring you develop both understanding and hands-on skills. By completion, you'll have a portfolio of working MCP applications ready for production use.
Complete Learning Path: From Basics to Advanced
Foundation & Setup
Master MCP architecture (client, server, transport layers)
Set up a professional development environment with Python, Node.js, and Claude Desktop
Build your first MCP server with live weather API integration
Debug and test MCP connections using Inspector tools
Real-World Integrations
Connect MCP servers directly toClaude Desktopfor immediate AI enhancement
Build data analysis servers forExcel, PowerPoint, and SQLite databases
Createfile system managementtools for automated workflows
Implementweb automationusing Microsoft Playwright
Advanced AI Workflows
DevelopRAG (Retrieval-Augmented Generation)systems with LangChain and vector databases
Buildpersonalized job searchapplications with MCP tools, resources, and prompts
Createmulti-server architecturesfor complex business processes
Designagentic workflowsusing local LLMs with Ollama
Production-Ready Applications
BuildStreamlit web interfacesfor MCP clients
Implementcomprehensive testingstrategies with MCP Inspector
Deploy servers usingmultiple transport protocols(STDIO, HTTP)
Createscalable configurationsfor enterprise environments
Hands-On Projects You'll Build
Real-Time Weather Intelligence Server
Live API integration with error handling
Multi-location weather analysis capabilities
Business Data Analysis Suite
Excel/PowerPoint automation for report generation
SQLite database management with AI-powered queries
Notion integration for professional report publishing
AI-Powered Job Search Assistant
RapidAPI integration for job discovery
Personalized recommendation engine
Complete MCP tools, resources, and prompts implementation
Intelligent Document RAG System
PDF processing and vectorization pipeline
Advanced retrieval mechanisms with LangChain
Multi-document knowledge base management
Streamlit Web Application
Professional UI for MCP interactions
Real-time AI responses and data visualization
Production-ready deployment architecture
Technical Skills You'll Master
MCP Architecture: Deep understanding of protocol specifications and best practices
Python & Node.js: Advanced server development with modern frameworks
AI Integration: Claude Desktop, LangChain, LangGraph, and Ollama
Database Management: SQLite, vector databases, and data processing pipelines
Testing & Debugging: Comprehensive testing strategies and troubleshooting
Who Should Take This Course
AI/ML Developerswanting to integrate AI with real-world systems
Software Engineerslooking to add cutting-edge AI skills
Data Scientistsinterested in building AI-powered data workflows
Entrepreneursplanning AI-enhanced products or services
Technical Professionalsseeking to stay current with AI development trends
Prerequisites
Basic Python programming knowledge
Familiarity with APIs and JSON
Understanding of command-line interfaces
No prior MCP or AI development experience required
Course Outcomes
Upon completion, you'll be able to:
Design and implement secure MCP server architectures
Connect AI models to databases, APIs, and external services
Build scalable RAG systems for document intelligence
Create production-ready AI applications with professional UIs
Debug, test, and deploy MCP solutions confidently
Architect multi-agent workflows for complex business processes
All course materials include downloadable code, configuration files, and step-by-step setup guides. Lifetime access with regular updates as MCP evolves.
Who this course is for:
- Developers, engineers, and tech enthusiasts who want to master MCP integrations.
- Beginners in AI tools looking to build practical, hands-on projects with Claude.
- Professionals exploring RAG, LangChain, or LangGraph for AI workflows.
- Students and early-career developers aiming to showcase MCP skills in portfolios.
More Info