Search preferences
Skip to main search results

Search filters

Product Type

  • All Product Types 
  • Books (3)
  • Magazines & Periodicals (No further results match this refinement)
  • Comics (No further results match this refinement)
  • Sheet Music (No further results match this refinement)
  • Art, Prints & Posters (No further results match this refinement)
  • Photographs (No further results match this refinement)
  • Maps (No further results match this refinement)
  • Manuscripts & Paper Collectibles (No further results match this refinement)

Condition Learn more

  • New (3)
  • As New, Fine or Near Fine (No further results match this refinement)
  • Very Good or Good (No further results match this refinement)
  • Fair or Poor (No further results match this refinement)
  • As Described (No further results match this refinement)

Binding

Collectible Attributes

  • First Edition (No further results match this refinement)
  • Signed (No further results match this refinement)
  • Dust Jacket (No further results match this refinement)
  • Seller-Supplied Images (No further results match this refinement)
  • Not Print on Demand (No further results match this refinement)

Language (1)

Price

  • Any Price 
  • Under £ 20 
  • £ 20 to £ 35 (No further results match this refinement)
  • Over £ 35 (No further results match this refinement)
Custom price range (£)

Seller Location

  • Tyrell Owen

    Language: English

    Published by Independently Published, 2025

    ISBN 13: 9798277354544

    Seller: Grand Eagle Retail, Bensenville, IL, U.S.A.

    Seller rating 5 out of 5 stars 5-star rating, Learn more about seller ratings

    Contact seller

    Print on Demand

    £ 18.02

    Free Shipping
    Ships within U.S.A.

    Quantity: 1 available

    Add to basket

    Paperback. Condition: new. Paperback. This book is your complete guide to building next-generation Retrieval-Augmented Generation (RAG) systems powered by knowledge graphs. As LLMs continue to evolve, traditional RAG pipelines struggle with context gaps, shallow retrieval, and limited reasoning. GraphRAG solves these problems by fusing structured knowledge with dynamic retrieval, creating AI systems that are more accurate, explainable, and context-aware.This book gives you a clear, practical, and highly technical foundation for understanding and applying GraphRAG across real-world domains. You'll explore every layer of the modern GraphRAG pipeline-from graph construction and embedding strategies to semantic retrieval, graph reasoning, and generation workflows.Written in a practical, hands-on style, GraphRAG Essentials delivers the tools, patterns, and architectures you need to design, optimize, and deploy knowledge-graph-augmented AI systems at scale.Inside this book, you will learn: - Core GraphRAG principlesHow knowledge graphs enhance retrieval, improve grounding, and deliver richer context to LLMs.- Practical workflows and architecturesStep-by-step pipelines for entity extraction, graph building, retrieval integration, and generation refinement.- Key algorithms and techniquesGraph traversal, semantic similarity search, embeddings, scoring methods, and hybrid retrieval models.- Knowledge graph engineeringSchema design, ontology modeling, graph storage, indexing, and integration with LLM-based systems.- Building GraphRAG applicationsReal-world examples in search, analytics, chat systems, enterprise AI, and domain-specific intelligence.- Performance optimizationHow to improve accuracy, reduce hallucinations, boost retrieval quality, and scale GraphRAG pipelines.- Tooling and frameworksPractical guidance on Neo4j, NetworkX, LangChain, LlamaIndex, and modern graph infrastructure.Who this book is forAI engineers and ML practitionersNLP and knowledge-graph researchersDevelopers building advanced RAG-based applicationsArchitects designing scalable contextual AI systemsAnyone exploring the frontier of AI retrieval and structured reasoningPacked with clear explanations, engineering patterns, and actionable insights, GraphRAG Essentials gives you everything you need to build intelligent, structured, and deeply context-aware retrieval systems.Whether you're enhancing enterprise search, building domain-expert chatbots, or developing custom generative AI applications, this book will help you unlock the full power of GraphRAG. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability.

  • Tyrell Owen

    Language: English

    Published by Amazon Digital Services LLC - Kdp, 2025

    ISBN 13: 9798277354544

    Seller: PBShop.store UK, Fairford, GLOS, United Kingdom

    Seller rating 5 out of 5 stars 5-star rating, Learn more about seller ratings

    Contact seller

    Print on Demand

    £ 14.94

    £ 4.16 shipping
    Ships from United Kingdom to U.S.A.

    Quantity: Over 20 available

    Add to basket

    PAP. Condition: New. New Book. Delivered from our UK warehouse in 4 to 14 business days. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000.

  • Tyrell Owen

    Language: English

    Published by Independently Published, 2025

    ISBN 13: 9798277354544

    Seller: CitiRetail, Stevenage, United Kingdom

    Seller rating 5 out of 5 stars 5-star rating, Learn more about seller ratings

    Contact seller

    Print on Demand

    £ 18.49

    £ 37 shipping
    Ships from United Kingdom to U.S.A.

    Quantity: 1 available

    Add to basket

    Paperback. Condition: new. Paperback. This book is your complete guide to building next-generation Retrieval-Augmented Generation (RAG) systems powered by knowledge graphs. As LLMs continue to evolve, traditional RAG pipelines struggle with context gaps, shallow retrieval, and limited reasoning. GraphRAG solves these problems by fusing structured knowledge with dynamic retrieval, creating AI systems that are more accurate, explainable, and context-aware.This book gives you a clear, practical, and highly technical foundation for understanding and applying GraphRAG across real-world domains. You'll explore every layer of the modern GraphRAG pipeline-from graph construction and embedding strategies to semantic retrieval, graph reasoning, and generation workflows.Written in a practical, hands-on style, GraphRAG Essentials delivers the tools, patterns, and architectures you need to design, optimize, and deploy knowledge-graph-augmented AI systems at scale.Inside this book, you will learn: - Core GraphRAG principlesHow knowledge graphs enhance retrieval, improve grounding, and deliver richer context to LLMs.- Practical workflows and architecturesStep-by-step pipelines for entity extraction, graph building, retrieval integration, and generation refinement.- Key algorithms and techniquesGraph traversal, semantic similarity search, embeddings, scoring methods, and hybrid retrieval models.- Knowledge graph engineeringSchema design, ontology modeling, graph storage, indexing, and integration with LLM-based systems.- Building GraphRAG applicationsReal-world examples in search, analytics, chat systems, enterprise AI, and domain-specific intelligence.- Performance optimizationHow to improve accuracy, reduce hallucinations, boost retrieval quality, and scale GraphRAG pipelines.- Tooling and frameworksPractical guidance on Neo4j, NetworkX, LangChain, LlamaIndex, and modern graph infrastructure.Who this book is forAI engineers and ML practitionersNLP and knowledge-graph researchersDevelopers building advanced RAG-based applicationsArchitects designing scalable contextual AI systemsAnyone exploring the frontier of AI retrieval and structured reasoningPacked with clear explanations, engineering patterns, and actionable insights, GraphRAG Essentials gives you everything you need to build intelligent, structured, and deeply context-aware retrieval systems.Whether you're enhancing enterprise search, building domain-expert chatbots, or developing custom generative AI applications, this book will help you unlock the full power of GraphRAG. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability.