Graph RAG Foundations: Knowledge Graph Engineering and Advanced Retrieval for Large Language Models - Softcover

Hayes, Roman

 
9798184023977: Graph RAG Foundations: Knowledge Graph Engineering and Advanced Retrieval for Large Language Models

Synopsis

Graph RAG Foundations: Knowledge Graph Engineering and Advanced Retrieval for Large Language Models

In the era of large language models, generating fluent responses is no longer enough—real intelligence requires structured knowledge, deep context, and reliable reasoning.

Traditional Retrieval-Augmented Generation (RAG) systems rely heavily on vector search, but they often struggle with complex reasoning, multi-document synthesis, and maintaining factual consistency. Graph RAG changes this paradigm entirely.

Graph RAG Foundations is a practical, engineering-focused guide to building next-generation AI retrieval systems powered by knowledge graphs and advanced reasoning architectures. It takes you beyond basic embeddings and into the world of structured intelligence—where relationships matter as much as content.

Written for AI engineers, machine learning practitioners, and system architects, this book provides a complete roadmap for designing, building, and deploying production-grade Graph RAG systems.

Inside, you will learn how to:

  • Build knowledge graphs from unstructured text using modern LLM-based extraction techniques
  • Design robust ontologies and graph schemas for real-world AI applications
  • Implement entity extraction, relationship modeling, and multi-document fusion pipelines
  • Apply community detection techniques such as Leiden clustering to organize large-scale knowledge
  • Engineer advanced retrieval strategies including local, global, and multi-hop search
  • Combine vector search, keyword search, and graph traversal into hybrid retrieval systems
  • Enable complex reasoning workflows with structured, graph-aware context assembly
  • Evaluate and optimize Graph RAG systems for accuracy, latency, and cost efficiency
  • Deploy scalable, production-ready Graph RAG architectures in enterprise environments

Unlike theory-heavy texts, this book focuses on implementation, architecture, and real-world engineering decisions. It includes practical design patterns, system blueprints, and insights drawn from production AI systems.

Whether you are building enterprise search engines, intelligent assistants, research tools, or domain-specific AI systems, Graph RAG Foundations equips you with the tools to move beyond flat retrieval and into structured, relationship-aware intelligence.

The future of AI retrieval is not just semantic—it is graph-connected, context-rich, and reasoning-driven.

This book shows you how to build it.

"synopsis" may belong to another edition of this title.