Knowledge Graphs for AI: A Comprehensive Guide to Constructing and Utilizing Graph-Based Reasoning Systems is an indispensable resource for AI practitioners, data scientists, and engineers seeking to harness the power of knowledge graphs to build intelligent, data-driven AI systems. This book provides a step-by-step approach to constructing knowledge graphs from real-world datasets, enabling advanced reasoning and enhanced insights for AI applications. Covering core concepts such as entities, relationships, semantic models, and ontologies, it offers hands-on tutorials using industry-leading tools like Neo4j, SPARQL, RDF, and OWL. With real-world case studies in healthcare, finance, and e-commerce, this book demonstrates how knowledge graphs revolutionize natural language processing (NLP), recommendation systems, and fraud detection. Readers will master graph querying, inference techniques, graph embeddings, and machine learning on graphs, while learning strategies for scaling and deploying production-ready graph systems. Packed with practical examples and cutting-edge techniques, this book is a vital guide for creating scalable, intelligent AI solutions that leverage structured data and semantic reasoning. What's InsideKnowledge Graph Fundamentals: Explore entities, relationships, and properties to build robust graph structures.Graph Schema and Ontology Design: Learn to create effective schemas and ontologies for structured data representation.Data Integration: Master techniques for ingesting and integrating diverse data sources into knowledge graphs.Querying with SPARQL and Beyond: Dive into querying techniques to extract actionable insights from graphs.Graph Reasoning: Apply inference and deduction methods to derive new knowledge for AI applications.Semantic Models: Utilize RDF, OWL, and Schema.org to build semantic knowledge graphs.AI Integration: Enhance NLP, recommendation systems, and fraud detection with knowledge graph-driven insights.Real-World Case Studies: Analyze applications in healthcare, finance, and e-commerce for practical understanding.Advanced Techniques: Implement graph embeddings and machine learning for cutting-edge AI solutions.Production Deployment: Learn strategies for scaling and deploying knowledge graphs in production environments.Who This Book Is For This book is tailored for AI practitioners, data scientists, machine learning engineers, and technical leads working on data-driven AI solutions. Whether you're new to knowledge graphs or an experienced developer looking to integrate graph-based reasoning into NLP, recommendation systems, or fraud detection, this book provides a clear, structured path to mastering complex concepts. It's ideal for professionals in industries like healthcare, finance, and e-commerce who aim to leverage knowledge graphs for intelligent, scalable AI applications. Why You Should Buy This Book Knowledge graphs are at the forefront of AI innovation, enabling structured data representation and advanced reasoning for next-generation applications. Knowledge Graphs for AI offers a practical, hands-on guide to building and utilizing knowledge graphs with tools like Neo4j, SPARQL, and RDF, ensuring your AI systems deliver precise, context-aware insights. With detailed tutorials, real-world case studies, and advanced techniques like graph embeddings and production scaling, this book equips you to create intelligent systems that excel in healthcare, finance, e-commerce, and beyond. Stay ahead in the AI-driven world by mastering knowledge graphs and transforming your data into powerful, reasoning-driven solutions. Don't miss this opportunity to elevate your skills and build impactful, scalable AI
ThriftBooks sells millions of used books at the lowest everyday prices. We personally assess every book's quality and offer rare, out-of-print treasures. We deliver the joy of reading in recyclable packaging with free standard shipping on US orders over $15. ThriftBooks.com. Read more. Spend less.