Unlock the full potential of Retrieval-Augmented Generation (RAG) systems with Mastering Graph-RAG Architecture, the definitive hands-on guide for advanced AI engineers, developers, and data scientists. This book takes you beyond theory, providing a practical roadmap to building scalable, knowledge graph-enhanced agentic AI systems powered by LLMs, vector search, and MCP.
Inside, you will learn how to:
Architect robust Graph-RAG pipelines capable of handling complex, multi-step tasks.
Integrate LLMs with knowledge graphs for precise reasoning and contextual retrieval.
Design production-ready systems with checkpointing, error handling, and human-in-the-loop controls.
Implement vector search engines with FAISS, Pinecone, or Weaviate for high-performance retrieval.
Deploy agentic AI safely and efficiently in real-world workflows, including automation, research assistance, and enterprise applications.
Packed with runnable Python examples, line-by-line commentary, and operational best practices, this book equips you with the tools to confidently build, test, and deploy next-generation AI systems. Whether you're orchestrating multiple agents, implementing verification pipelines, or scaling knowledge-intensive applications, Mastering Graph-RAG Architecture delivers the expertise you need to succeed in the fast-evolving AI landscape.
Take your AI engineering skills to the next level-master Graph-RAG architecture and build intelligent systems that are scalable, reliable, and production-ready.