Skip to content
Scan a barcode
Scan
Paperback Mastering Knowledge Graphs and LLM Integration: Designing Context-Aware, Explainable, and Scalable AI Systems Book

ISBN: B0G1YJV1TT

ISBN13: 9798274138864

Mastering Knowledge Graphs and LLM Integration: Designing Context-Aware, Explainable, and Scalable AI Systems

This book is a comprehensive guide to the future of intelligent systems - where Knowledge Graphs meet Large Language Models (LLMs) to create AI that understands, reasons, and explains. It explores the complete journey from foundational concepts to advanced architectures, showing how structured knowledge and neural intelligence work together to power context-aware, trustworthy, and scalable AI applications.

Written with the precision of an AI researcher and the clarity of a software engineer, Mastering Knowledge Graphs and LLM Integration bridges academic theory and real-world practice. Each chapter is backed by practical code examples, real industry use cases, and proven deployment templates used in enterprise AI environments. This book delivers not just knowledge - but implementation confidence, rooted in authentic, production-tested systems.

About the Technology:
Knowledge Graphs provide the structured backbone of reasoning - representing entities, relationships, and context. Large Language Models bring the semantic understanding that allows systems to communicate naturally. When fused, they form a new class of hybrid AI systems capable of contextual inference, explainability, and long-term memory.
The book covers modern graph frameworks (Neo4j, GraphDB, RDFLib), hybrid reasoning paradigms (SPARQL + LLMs, GraphRAG), and integration strategies that transform traditional AI workflows into explainable, cognitive systems.

What's Inside:
Inside these pages, you'll learn to: Design and build semantic knowledge graphs for hybrid AI reasoning.Integrate LLMs with graph databases using Python, LangChain, and Neo4j.Engineer context-aware, explainable AI pipelines for real-world applications.Deploy scalable KG-LLM systems using Docker, Kubernetes, and Helm.Evaluate factual accuracy, consistency, and explainability using advanced metrics.Every chapter includes authentic, working examples - from building your first ontology to orchestrating graph-grounded RAG pipelines for cognitive assistants.

Who This Book Is For:
This book is written for AI engineers, data scientists, software architects, and researchers who want to move beyond pure neural networks and build structured, intelligent systems. Whether you're designing enterprise search engines, intelligent assistants, or autonomous reasoning agents, this book will help you architect the foundations of trustworthy, graph-integrated AI.

AI is shifting faster than any technology before it. Companies and researchers that adopt hybrid intelligence early - systems that can reason, explain, and adapt - will define the next decade of innovation. Staying with black-box models is no longer enough; the future belongs to explainable, structured, and self-aware AI systems. This book gives you the roadmap to build them today.

This is more than a technical manual - it's a professional accelerator. Every concept, tool, and workflow in this book is geared toward building production-ready systems that deliver real business and research impact. By mastering the integration of knowledge and language, you'll position yourself at the forefront of AI innovation - where understanding meets intelligence.

If you're ready to go beyond black-box AI and start building intelligent, explainable, and self-evolving systems, this is the book for you.
Get your copy of Mastering Knowledge Graphs and LLM Integration today - and start shaping the architecture of tomorrow's cognitive AI.

Recommended

Format: Paperback

Condition: New

$19.99
50 Available
Ships within 2-3 days

Customer Reviews

0 rating
Copyright © 2026 Thriftbooks.com Terms of Use | Privacy Policy | Do Not Sell/Share My Personal Information | Cookie Policy | Cookie Preferences | Accessibility Statement
ThriftBooks® and the ThriftBooks® logo are registered trademarks of Thrift Books Global, LLC
GoDaddy Verified and Secured