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OverviewGraph-Enhanced Retrieval-Augmented Generation: Building Explainable, Knowledge-Graph Powered RAG Systems for Smarter AI Reasoning What if your AI could not only retrieve information but also explain its reasoning in a way professionals can trust? As enterprises demand more from AI than raw predictions, the future lies in systems that combine the flexibility of Retrieval-Augmented Generation with the structure and transparency of knowledge graphs. This book is a practical and comprehensive guide to building Graph-Enhanced RAG systems-AI architectures that combine semantic vector search with graph-based reasoning for explainability, scalability, and smarter decision support. It is written for developers, data scientists, and AI practitioners who want to move beyond black-box models and design systems that are traceable, compliant, and enterprise-ready. Whether you work in healthcare, finance, law, or any field where reasoning chains matter, this book will equip you with both the technical foundations and the applied strategies to build systems that professionals can rely on. What sets this book apart? Unlike standard RAG resources that focus only on vector search, this book integrates the power of graphs throughout its chapters: Foundations of RAG: Understand its strengths and why explainability is essential. Knowledge Graphs as Engines of Reasoning: Explore ontologies, entities, and relationships that add structure to AI. Constructing Knowledge Graphs for RAG: Step-by-step examples and code for building and populating graphs. Graph Databases and Query Languages: Practical patterns with Cypher and SPARQL. Hybrid Retrieval Strategies: Learn how to fuse vector search with graph reasoning for richer context. Building Graph-Enhanced Pipelines: Architectures, integration techniques, and end-to-end examples. Explainability and Provenance: Techniques for traceability and human interpretation of reasoning chains. Domain-Specific Applications: Real-world use cases in healthcare, finance, and law. Advanced Topics: Graph embeddings, ontology-driven prompting, and scaling with distributed architectures. Deployment and Security: Guidance for cloud integration, monitoring, and compliance frameworks. Every chapter blends deep explanations, real-world insights, and reusable code snippets, making it practical for both experimentation and production. If you are ready to build AI systems that are not only intelligent but also explainable and trusted, this book is your essential guide. Equip yourself with the strategies, code patterns, and best practices to design knowledge-graph powered RAG pipelines that scale, comply, and deliver smarter reasoning. Add this book to your library today and take the next step toward building the future of explainable AI. Full Product DetailsAuthor: Dwayne DanielPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 17.80cm , Height: 0.80cm , Length: 25.40cm Weight: 0.259kg ISBN: 9798262909865Pages: 142 Publication Date: 30 August 2025 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order ![]() We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |