Mastering Model Context Protocol (MCP): Build Smarter AI Agents with Shared Memory and Multi-Agent Coordination - Softcover

Nexon, Hawke

 
9798283330709: Mastering Model Context Protocol (MCP): Build Smarter AI Agents with Shared Memory and Multi-Agent Coordination

Inhaltsangabe

Mastering Model Context Protocol (MCP): Build Smarter AI Systems with Shared Memory, Goals, and Tools

Ready to go beyond basic LLM agents? Discover how to design multi-agent AI systems that collaborate intelligently—powered by the Model Context Protocol (MCP).

Whether you're an AI engineer, automation builder, or just exploring contextual orchestration, this hands-on guide walks you through building scalable, context-driven architectures using proven best practices.

📘 What You’ll Learn

✔️ Build the MCP Stack with FastAPI, Redis Streams, and Postgres
✔️ Structure agent ecosystems with shared/private context, memory, and schema evolution
✔️ Connect LangChain, DeepAgent, OpenAI Assistants, Weaviate, and more
✔️ Deploy at scale using Docker, Kubernetes, RBAC, and secure context encryption
✔️ Debug, trace, and visualize agent workflows with modern observability tools

💡 Why Readers Love This Book

Updated for clarity with a streamlined structure and refined formatting
• Includes code projects, templates, and debugging tools
• Designed for fast outcomes: deploy a working MCP-based system in under 30 minutes
• Practical use cases: research copilots, memory agents, simulation swarms, and enterprise LLM stacks
• Join the community: GitHub repo access + discussion forum with fellow AI builders

🔍 Ideal For

• Software engineers building AI agents with LangChain, OpenDevin, or AutoGen
• AI researchers interested in contextual orchestration with LLMs
• DevOps teams deploying secure, collaborative AI environments

📦 Bonus: Final challenge project, CLI utilities, and schema templates included.

Now restructured for smoother reading and clearer takeaways.
Master MCP. Orchestrate smarter agents. Shape the future of AI—today.

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