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E-raamat: Knowledge Graphs and LLMs in Action: Build AI systems using connected data

  • Formaat: EPUB+DRM
  • Sari: In Action
  • Ilmumisaeg: 11-Nov-2025
  • Kirjastus: Manning Publications
  • Keel: eng
  • ISBN-13: 9781638357858
  • Formaat - EPUB+DRM
  • Hind: 42,06 €*
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  • Formaat: EPUB+DRM
  • Sari: In Action
  • Ilmumisaeg: 11-Nov-2025
  • Kirjastus: Manning Publications
  • Keel: eng
  • ISBN-13: 9781638357858

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Knowledge graphs help understand relationships between the objects, events, situations, and concepts in your data so you can readily identify important patterns and make better decisions. This book provides tools and techniques for efficiently labeling data, modeling a knowledge graph, and using it to derive useful insights.

In Knowledge Graphs and LLMs in Action you will learn how to:

• Model knowledge graphs with an iterative top-down approach based in business needs
• Create a knowledge graph starting from ontologies, taxonomies, and structured data
• Use machine learning algorithms to hone and complete your graphs
• Build knowledge graphs from unstructured text data sources
• Reason on the knowledge graph and apply machine learning algorithms

Move beyond analyzing data and start making decisions based on useful, contextual knowledge. The cutting-edge knowledge graphs (KG) approach puts that power in your hands. In Knowledge Graphs and LLMs in Action, you’ll discover the theory of knowledge graphs and learn how to build services that can demonstrate intelligent behavior. You’ll learn to create KGs from first principles and go hands-on to develop advisor applications for real-world domains like healthcare and finance.

Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications.

About the technology

Knowledge graphs represent a network of real-world entities—from people and places to genes and proteins—and model the relationships between them. KGs represent a real paradigm shift in the way that machines can understand data by effectively modeling the contextual information that’s vital for human knowledge. They’re poised to help revolutionize data analysis and machine learning, with applications ranging from search engines to e-commerce and more.

About the book

Knowledge Graphs and LLMs in Action is a practical guide to putting knowledge graphs into action. It’s full of techniques and code samples for building and analyzing knowledge graphs, all demonstrated with serious full-sized datasets. Throughout the book, you’ll find extensive examples and use-cases taken from healthcare, biomedicine, document archive management systems, and even law enforcement. You’ll learn methodologies based on the very latest KG approaches, as well as deep learning graph techniques such as Graph Neural Networks and NLP-based tools like BERT.

About the reader

For readers who know the basics of machine learning. Examples in Python.

About the author

Dr. Alessandro Negro is the Chief Scientist at GraphAware. Alessandro has been a speaker at many prominent conferences and is the author of the Manning book Graph-Powered Machine Learning and several scientific publications. He is one of the creators of GraphAware Hume, a mission critical knowledge graph platform.

Dr. Vlastimil Kus is the Lead Data Scientist at GraphAware where he contributes to the development of Hume. Over the years he has gained significant experience in building and utilizing Knowledge Graphs from unstructured data using NLP and ML techniques in various domains. His current focus is NLP and Graph Machine Learning.

Dr. Giuseppe Futia is Senior Data Scientist at GraphAware and a Fellow at the Nexa Center for Internet & Society. He holds a Ph.D. in computer engineering from the Politecnico di Torino (Italy), where he explored Graph Representation Learning techniques to support the automatic building of Knowledge Graphs.

Fabio Montagna is the Lead Machine Learning Engineer at GraphAware. He holds a master’s degree in software engineering from Unisalento (Italy). As a bridge between science and industry, he assists with moving rapidly from scientific reasoning to product value.

Arvustused

Many resources cover KGs or LLMs separately, but few combine both with this much clarity and practical detail. For technical professionals looking to implement hybrid systems, this book bridges the gap. Sophia Shvets, Data Scientis, NinjaTech





This book is excellent for anyone who really wants to know how and why LLMS work with Knowledge Graphs. It goes deep into the underlying technologies in play, in NLP and ML too, providing a good bedrock for understanding. Charles Ivie, Sr. Architect, Amazon Web Services

PART I: FOUNDATIONS OF HYBRID INTELLIGENT SYSTEMS

1 KNOWLEDGE GRAPHS AND LLMS: A KILLER COMBINATION

2 INTELLIGENT SYSTEMS: A HYBRID APPROACH

PART II: BUILDING KNOWLEDGE GRAPHS FROM STRUCTURED DATA SOURCES

3 CREATE YOUR FIRST KNOWLEDGE GRAPH FROM ONTOLOGIES

4 FROM SIMPLE NETWORKS TO MULTI-SOURCE INTEGRATION

PART III: BUILDING KNOWLEDGE GRAPHS FROM TEXT

5 DOMAIN-SPECIFIC KNOWLEDGE EXTRACTION FROM UNSTRUCTURED DATA

6 BUILDING KNOWLEDGE GRAPHS WITH LARGE LANGUAGE MODELS

7 NAMED ENTITY DISAMBIGUATION

8 NED WITH OPEN LLMS AND DOMAIN ONTOLOGIES

9 MACHINE LEARNING ON KNOWLEDGE GRAPHS: A PRIMER APPROACH

PART IV: MACHINE LEARNING ON KNOWLEDGE GRAPHS

10 GRAPH FEATURE ENGINEERING: MANUAL AND SEMI-AUTOMATED APPROACHES

11 GRAPH REPRESENTATION LEARNING AND GRAPH NEURAL NETWORK

12 NODE CLASSIFICATION AND LINK PREDICTION WITH GNNS

13 KNOWLEDGE GRAPH-POWERED RETRIEVAL AUGMENTED GENERATION

PART V: INFORMATION RETRIEVAL WITH KNOWLEDGE GRAPHS AND LLMS

14 ASK A KG WITH NATURAL LANGUAGE

15 BUILDING AQA AGENT WITH LANGGRAPH

APPENDIXES

APPENDIX A: INTRODUCTION TO GRAPHS

APPENDIX B: NEO4J

APPENDIX C: BUILD KNOWLEDGE GRAPHS FROM STRUCTURED SOURCES
Dr. Alessandro Negro is the Chief Scientist at GraphAware. He is one of the creators of GraphAware Hume, a mission critical knowledge graph platform. 

Dr. Vlastimil Kus is the Lead Data Scientist at GraphAware where he contributes to the development of Hume. Over the years he gained significant experience in building and utilizing Knowledge Graphs from unstructured data using NLP and ML techniques in various domains. His current focus is NLP and Graph Machine Learning.

Dr. Giuseppe Futia is Senior Data Scientist at GraphAware. He studied Graph Representation Learning techniques to support the automatic building of Knowledge Graphs.

Fabio Montagna is the Lead Machine Learning Engineer at GraphAware. As a bridge between science and industry, he assists with moving rapidly from scientific reasoning to product value.