Search preferences
Vai alla pagina principale dei risultati di ricerca

Filtri di ricerca

Tipo di articolo

  • Tutti i tipi di prodotto 
  • Libri (4)
  • Riviste e Giornali (Nessun altro risultato corrispondente a questo perfezionamento)
  • Fumetti (Nessun altro risultato corrispondente a questo perfezionamento)
  • Spartiti (Nessun altro risultato corrispondente a questo perfezionamento)
  • Arte, Stampe e Poster (Nessun altro risultato corrispondente a questo perfezionamento)
  • Fotografie (Nessun altro risultato corrispondente a questo perfezionamento)
  • Mappe (Nessun altro risultato corrispondente a questo perfezionamento)
  • Manoscritti e Collezionismo cartaceo (Nessun altro risultato corrispondente a questo perfezionamento)

Condizioni Maggiori informazioni

  • Nuovo (4)
  • Come nuovo, Ottimo o Quasi ottimo (Nessun altro risultato corrispondente a questo perfezionamento)
  • Molto buono o Buono (Nessun altro risultato corrispondente a questo perfezionamento)
  • Discreto o Mediocre (Nessun altro risultato corrispondente a questo perfezionamento)
  • Come descritto (Nessun altro risultato corrispondente a questo perfezionamento)

Legatura

  • Tutte 
  • Rilegato (Nessun altro risultato corrispondente a questo perfezionamento)
  • Brossura (4)

Ulteriori caratteristiche

  • Prima ed. (Nessun altro risultato corrispondente a questo perfezionamento)
  • Copia autograf. (Nessun altro risultato corrispondente a questo perfezionamento)
  • Sovracoperta (Nessun altro risultato corrispondente a questo perfezionamento)
  • Con foto (Nessun altro risultato corrispondente a questo perfezionamento)
  • Non Print on Demand (2)

Lingua (1)

Prezzo

  • Qualsiasi prezzo 
  • Inferiore a EUR 20 (Nessun altro risultato corrispondente a questo perfezionamento)
  • EUR 20 a EUR 45 
  • Superiore a EUR 45 (Nessun altro risultato corrispondente a questo perfezionamento)
Fascia di prezzo personalizzata (EUR)

Paese del venditore

  • Kenneth Charette

    Lingua: Inglese

    Editore: Amazon Digital Services LLC - Kdp, 2025

    ISBN 13: 9798277386163

    Da: PBShop.store US, Wood Dale, IL, U.S.A.

    Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

    Contatta il venditore

    EUR 31,58

    Spedizione gratuita
    Spedito in U.S.A.

    Quantità: Più di 20 disponibili

    Aggiungi al carrello

    PAP. Condizione: New. New Book. Shipped from UK. Established seller since 2000.

  • Kenneth Charette

    Lingua: Inglese

    Editore: Amazon Digital Services LLC - Kdp, 2025

    ISBN 13: 9798277386163

    Da: PBShop.store UK, Fairford, GLOS, Regno Unito

    Valutazione del venditore 4 su 5 stelle 4 stelle, Maggiori informazioni sulle valutazioni dei venditori

    Contatta il venditore

    EUR 26,44

    Spedizione EUR 5,77
    Spedito da Regno Unito a U.S.A.

    Quantità: Più di 20 disponibili

    Aggiungi al carrello

    PAP. Condizione: New. New Book. Shipped from UK. Established seller since 2000.

  • Kenneth Charette

    Lingua: Inglese

    Editore: Independently Published, 2025

    ISBN 13: 9798277386163

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

    Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

    Contatta il venditore

    Print on Demand

    EUR 31,57

    Spedizione gratuita
    Spedito in U.S.A.

    Quantità: 1 disponibili

    Aggiungi al carrello

    Paperback. Condizione: new. Paperback. In a world where AI systems increasingly rely on factual accuracy, contextual awareness, and explainability, Graph RAG for AI Applications introduces the definitive framework for integrating structured knowledge graphs with retrieval-augmented generation (RAG). This book provides a complete roadmap for building intelligent retrieval systems that can reason, learn, and evolve - bridging the gap between semantic search, graph intelligence, and large language models. Written by a seasoned AI systems engineer and author recognized for authoritative works on LangChain, LangGraph, and agentic AI frameworks, this book delivers depth, clarity, and practical wisdom. Every chapter reflects hands-on expertise drawn from real-world enterprise deployments and production-grade AI architectures, ensuring that what you learn is both authentic and field-tested. About the Technology: At the heart of this book is Graph RAG (Graph-based Retrieval-Augmented Generation) - a next-generation architecture that enhances LLMs with structured knowledge graphs. Unlike traditional vector-based RAG, which retrieves text fragments based on similarity, Graph RAG connects entities and relationships, enabling AI to reason contextually, explain its decisions, and reduce hallucinations.You'll explore technologies like Neo4j, LangGraph, FAISS, MCP, SPARQL, and Graph Neural Networks, learning how they come together to create a unified knowledge reasoning pipeline. From ingestion and graph construction to hybrid retrieval and orchestration, this book covers it all in practical, implementation-driven detail. What's Inside: A complete breakdown of how RAG evolved and how Graph RAG redefines intelligent retrieval.Hands-on tutorials on constructing, storing, and querying knowledge graphs.Working code examples integrating Neo4j, LangChain, and FAISS for hybrid retrieval.Step-by-step instructions for deploying scalable Graph RAG pipelines using Docker, FastAPI, and CI/CD workflows.Techniques for semantic enrichment, dynamic subgraph selection, and reasoning with Graph Neural Networks.Evaluation methods for factual grounding, latency management, and observability with LangSmith and Weights & Biases.A forward-looking exploration of self-updating knowledge systems and autonomous graph agents.Every concept is presented with crystal-clear explanations, real-world case studies, and verified code implementations - ensuring that you not only understand the theory but can build systems that work in production. Who This Book Is For: This book is written for AI engineers, data scientists, knowledge graph developers, and machine learning practitioners who want to go beyond simple vector search and build intelligent, context-aware AI systems.It's equally valuable for researchers, architects, and enterprise teams exploring explainable AI, knowledge integration, or next-generation retrieval workflows. Whether you're scaling enterprise AI or designing your first knowledge-aware assistant, this guide provides everything you need. Step into the future of intelligent retrieval.Learn how to make your AI systems think contextually, reason intelligently, and explain transparently.Start building Graph-Augmented AI applications that redefine what's possible with knowledge, structure, and language.Get your copy of Graph RAG for AI Applications today - and lead the new era of knowledge-integrated, reasoning-aware AI systems. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability.

  • Kenneth Charette

    Lingua: Inglese

    Editore: Independently Published, 2025

    ISBN 13: 9798277386163

    Da: CitiRetail, Stevenage, Regno Unito

    Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

    Contatta il venditore

    Print on Demand

    EUR 30,78

    Spedizione EUR 42,54
    Spedito da Regno Unito a U.S.A.

    Quantità: 1 disponibili

    Aggiungi al carrello

    Paperback. Condizione: new. Paperback. In a world where AI systems increasingly rely on factual accuracy, contextual awareness, and explainability, Graph RAG for AI Applications introduces the definitive framework for integrating structured knowledge graphs with retrieval-augmented generation (RAG). This book provides a complete roadmap for building intelligent retrieval systems that can reason, learn, and evolve - bridging the gap between semantic search, graph intelligence, and large language models. Written by a seasoned AI systems engineer and author recognized for authoritative works on LangChain, LangGraph, and agentic AI frameworks, this book delivers depth, clarity, and practical wisdom. Every chapter reflects hands-on expertise drawn from real-world enterprise deployments and production-grade AI architectures, ensuring that what you learn is both authentic and field-tested. About the Technology: At the heart of this book is Graph RAG (Graph-based Retrieval-Augmented Generation) - a next-generation architecture that enhances LLMs with structured knowledge graphs. Unlike traditional vector-based RAG, which retrieves text fragments based on similarity, Graph RAG connects entities and relationships, enabling AI to reason contextually, explain its decisions, and reduce hallucinations.You'll explore technologies like Neo4j, LangGraph, FAISS, MCP, SPARQL, and Graph Neural Networks, learning how they come together to create a unified knowledge reasoning pipeline. From ingestion and graph construction to hybrid retrieval and orchestration, this book covers it all in practical, implementation-driven detail. What's Inside: A complete breakdown of how RAG evolved and how Graph RAG redefines intelligent retrieval.Hands-on tutorials on constructing, storing, and querying knowledge graphs.Working code examples integrating Neo4j, LangChain, and FAISS for hybrid retrieval.Step-by-step instructions for deploying scalable Graph RAG pipelines using Docker, FastAPI, and CI/CD workflows.Techniques for semantic enrichment, dynamic subgraph selection, and reasoning with Graph Neural Networks.Evaluation methods for factual grounding, latency management, and observability with LangSmith and Weights & Biases.A forward-looking exploration of self-updating knowledge systems and autonomous graph agents.Every concept is presented with crystal-clear explanations, real-world case studies, and verified code implementations - ensuring that you not only understand the theory but can build systems that work in production. Who This Book Is For: This book is written for AI engineers, data scientists, knowledge graph developers, and machine learning practitioners who want to go beyond simple vector search and build intelligent, context-aware AI systems.It's equally valuable for researchers, architects, and enterprise teams exploring explainable AI, knowledge integration, or next-generation retrieval workflows. Whether you're scaling enterprise AI or designing your first knowledge-aware assistant, this guide provides everything you need. Step into the future of intelligent retrieval.Learn how to make your AI systems think contextually, reason intelligently, and explain transparently.Start building Graph-Augmented AI applications that redefine what's possible with knowledge, structure, and language.Get your copy of Graph RAG for AI Applications today - and lead the new era of knowledge-integrated, reasoning-aware AI systems. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability.