Explainable AI (XAI) has rapidly emerged as one of the most essential areas in modern artificial intelligence, bridging the gap between powerful machine-learning models and the human need for clarity, trust, and accountability. As AI systems increasingly influence decisions in healthcare, finance, education, and everyday digital interactions, the ability to understand why a model behaves a certain way has become just as important as its accuracy. This book, Explainable AI for Beginners, is designed to offer a clear, structured, and beginner-friendly introduction to the concepts, methods, and practical tools that make AI interpretable. Whether you're a student stepping into the world of machine learning, a professional looking to demystify complex models, or an enthusiast curious about how AI "thinks," this book aims to be your accessible starting point. Each chapter builds from foundational ideas to hands-on techniques used in real-world applications. You will explore interpretable models, post-hoc explanation frameworks such as LIME and SHAP, and methods that bring transparency to deep learning systems. Beyond technical methods, this book emphasizes human-centered evaluation, ethical considerations, and future trends that are shaping the XAI landscape. The final capstone projects, including an explainable loan-approval assistant and an occlusion sensitivity experiment on synthetic MRI data, provide practical, end-to-end experience applying XAI principles. By the end, you will not only understand how to build explainable models but also why explainability is vital for creating accountable, trustworthy AI systems.
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.