About the Book
Learn to build composable and scalable LLM systems with the Model Context Protocol. Create context-rich, multi-agent AI apps with memory, orchestration, governance, and seamless LangChain or AutoGen integration.
Key Features
Build context-aware LLM systems using Model Context Protocol
Integrate resource providers, tool agents, and context gateways
Secure multi-agent orchestration across modular AI architectures
Optimize performance with caching, async tasks, and profiling
Connect MCP with Lang Chain, Auto Gen, and RAG framework
Book DescriptionAI developers face a growing challenge: building intelligent systems that retain long-term memory, reason over dynamic context, and integrate safely with external tools. Model Context Protocol for LLMs provides a modern solution—offering an open, modular architecture to construct scalable LLM agents with structured context exchange.
This book equips you with a complete hands-on journey to MCP. You’ll implement the protocol’s key components—resource providers, tool providers, and gateways—then use these to orchestrate agents, chain workflows, and add context-aware behavior. You’ll also learn how MCP integrates seamlessly with LangChain, AutoGen, RAG systems, and multimodal applications.
Security and governance are covered in depth, helping you build privacy-compliant, threat-resistant AI apps. You’ll explore caching, async tasks, load balancing, and scaling strategies for real-world readiness. With a continuous hands-on project, MCP becomes more than a standard—it becomes a blueprint for production-grade LLM development. What you will learn
Understand why disconnected agents fail and how MCP solves it
Design standardized, context-aware interfaces with MCP
Implement MCP components with Python and cloud-native tools
Build LangChain and AutoGen workflows powered by MCP
Create scalable multi-agent systems that collaborate in real time
Secure agent interactions using authentication and access control
Optimize performance across client and server MCP deployments
Apply MCP to personalization, RAG, and multimodal AI systems
Who this book is forAI/ML engineers, solution architects, MLOps and DevOps engineers, technical product managers, and data scientists who want to build real-world multi-agent systems with secure, standardized context management. Familiarity with Python, LLMs, and basic system design is recommended.
Table of Contents:
Table of Contents- Introduction to Model Context Protocol
- Building a Basic Agent with State and Deployment Flow
- MCP for Non-Technical Readers Workflows
- MCP Components and Interfaces
- MCP Architecture Overview
- Server-Side Implementation
- Client-Side Integration
- MCP Security Model
- MCP Performance Optimization
- MCP and Multi-Agent Systems
- MCP for Retrieval-Augmented Generation
- MCP and LangChain Integration
- MCP and AutoGen Integration
- MCP for Enterprise Knowledge Management
- MCP for Personalization and Recommendation Systems
- MCP for Multimodal Applications
- Enterprise Knowledge Management
- Case Studies and Applications
- Ethical Considerations and Responsible AI with MCP
- Advanced Topics and Future Directions
About the Author :
Professional Profile
AI & Cloud Solutions Architect with 16+ years of success leading enterprise-grade digital transformation initiatives across Retail, Banking, Healthcare, and Manufacturing sectors. Well known for building scalable AI systems, integrating LLMs in production, and architecting secure, cloud-native applications. A Fellow of BCS and Senior IEEE Member, AI lead at Microsoft, open-source contributor, and frequent speaker at global technology forums and Podcasts.
Key Achievements:
Designed and deployed advanced Retrieval-Augmented Generation (RAG) and Voice RAG systems for Fortune 500 enterprises.
Architected large-scale, context-aware agent systems using AutoGen, LangChain, and Model Context Protocol (MCP).
Judge at Global NASA Space Apps, Microsoft Global Hackathon evaluating cutting-edge AI projects.
Authored over 35 technical blogs, academic papers.
Spoke on 20+ podcast in US, Australia, Europe, UK
Core Technical Competencies:
Enterprise AI & Multi-Agent System Architecture
Microsoft Azure, GCP, AWS – Cloud-Native Design
LLM Integration, RAG, LangChain, AutoGen
MLOps, DevOps, CI/CD for AI Pipelines
Distributed Systems, Microservices, Event-Driven Design
AI Ethics, Governance, and Responsible AI
Thought Leadership, Mentorship, and Public Speaking