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Overview""Responsible and Explainable AI Security"" is a comprehensive, practical-oriented guide designed to equip developers, security professionals, and data scientists with the skills necessary to build and maintain secure, transparent, and trustworthy Artificial Intelligence systems. This book systematically demystifies the complex intersection of AI, cybersecurity, and ethics, presenting it as an engineering discipline with concrete principles, tools, and best practices. Philosophy The core philosophy of this book is ""Trust by Design."" I reject the notion that security, explainability, and responsibility are features to be added to an AI system after it has been built. Instead, we assert that they are fundamental, non-negotiable requirements that must be integrated into every stage of the AI development lifecycle. A model that is a ""black box"" cannot be fully trusted. A model vulnerable to manipulation cannot be considered secure. A model that perpetuates societal bias cannot be deemed responsible. Key Features 1. End-to-End Project Focus: Guides you from foundational concepts to a fully developed and deployed secure AI application. 2. Practical Implementation Guides: Emphasis on hands-on coding exercises and step-by-step instructions for implementing security and explainability techniques. 3. Simple, Accessible Algorithms: Complex algorithms are explained in plain language and presented in easy-to-follow, numbered-list formats. 4. Industry-Relevant Tooling: Utilizes the most common and valuable Python libraries and frameworks used in the AI/ML industry today. 5. Complete 10-Chapter Structure: A logically sequenced and comprehensive curriculum covering the entire domain. 6. Security and Ethics Integrated: Uniquely combines the disciplines of AI security (adversarial attacks, privacy) with responsible AI (explainability, fairness, bias). Key Takeaways Upon completing this book, you will be able to: 1. Design and Implement a Secure AI Development Lifecycle (SAIDL). 2. Apply data privacy techniques like differential privacy and federated learning to protect user data. 3. Simulate adversarial attacks (e.g., FGSM, PGD) to test model robustness and implement effective defenses. 4. Integrate Explainable AI (XAI) techniques like LIME and SHAP to interpret model predictions and diagnose issues. 5. Detect and mitigate bias in datasets and models to build fairer and more ethical AI systems. Disclaimer: Earnest request from the Author. Kindly go through the table of contents and refer kindle edition for a glance on the related contents. Thank you for your kind consideration! Full Product DetailsAuthor: Ajit SinghPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 15.20cm , Height: 1.70cm , Length: 22.90cm Weight: 0.423kg ISBN: 9798197171412Pages: 314 Publication Date: 16 May 2026 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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