Knowledge-Augmented AI: A Developer's Guide to Creating Context-Sensitive Generative Models Using KAG Techniques is a definitive resource for AI practitioners, data scientists, and machine learning engineers aiming to revolutionize generative AI with Knowledge-Augmented Generation (KAG). This comprehensive book explores the integration of structured and unstructured knowledge sources to create accurate, context-aware, and scalable AI systems. Readers will master the design and deployment of KAG systems using cutting-edge tools like LangChain, Hugging Face, and vector databases, with practical tutorials on building knowledge pipelines, optimizing performance, and implementing multimodal AI. The book emphasizes ethical AI development, addressing bias, privacy, and responsible deployment while showcasing real-world applications in healthcare, education, and customer support. With hands-on examples, case studies, and advanced techniques for context-aware reasoning and collaborative AI, this book empowers developers to push the boundaries of generative AI innovation and build production-ready systems that deliver intelligent, context-sensitive outputs. What's InsideKnowledge-Augmented Generation (KAG) Foundations: Understand how KAG enhances generative AI with external knowledge integration.Scalable Knowledge Pipelines: Learn to build robust pipelines for seamless knowledge incorporation into AI systems.Vector Databases and Semantic Search: Master the use of vector databases for efficient, context-aware data retrieval.Context-Aware Reasoning: Explore techniques for intelligent reasoning in KAG systems to improve output accuracy.Multimodal AI: Handle diverse data types, including text, images, and more, for versatile KAG applications.Collaborative AI Systems: Build cooperative AI models that leverage KAG for enhanced performance.Practical Tools: Dive into hands-on examples using LangChain, Hugging Face, and cloud-based infrastructures.Production Deployment: Discover strategies for deploying KAG systems in scalable, production-ready environments.Performance Optimization: Implement techniques to enhance KAG system efficiency and scalability.Ethical AI Development: Address ethical challenges, ensuring responsible AI practices in KAG systems.Real-World Case Studies: Analyze KAG applications in healthcare, education, and customer support for practical insights.Who This Book Is For This book is designed for AI practitioners, data scientists, machine learning engineers, and technical leads eager to advance their skills in generative AI. Whether you're new to KAG or an experienced developer optimizing context-sensitive AI systems, this book offers a clear, structured path to mastering complex concepts. It's ideal for professionals building innovative AI solutions in industries like healthcare, education, customer support, and beyond, where context-aware outputs are critical. Why You Should Buy This Book Knowledge-Augmented Generation (KAG) is reshaping generative AI by enabling context-sensitive, accurate outputs, as highlighted in recent AI research. Knowledge-Augmented AI provides a practical, hands-on guide to mastering KAG with tools like LangChain, Hugging Face, and vector databases, ensuring your AI systems excel in real-world applications. With detailed tutorials, real-world case studies, and advanced techniques for multimodal AI and ethical development, this book equips you to build scalable, intelligent systems that stay ahead in the rapidly evolving AI landscape. Don't miss the chance to elevate your expertise and create impactful, context-aware AI solutions that transform industries.
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.