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_ben
_c
_erda
100 1 _aTalukdar, Wrick
245 0 1 _aGenerative AI Ethics, Privacy, and Security
_bA guide to generative AI, its ethical considerations, privacy measures, security strategies, and approaches (English Edition)
_c['Talukdar, Wrick', 'Biswas, Anjanava']
264 1 _bBPB Publications
_c2025
300 _a p.
336 _btxt
_2rdacontent
337 _bc
_2rdamdedia
338 _bc
_2rdacarrier
650 0 _a
700 0 _aTalukdar, Wrick
700 0 _aBiswas, Anjanava
856 4 0 _2Cyberlibris
_uhttps://international.scholarvox.com/netsen/book/88974255
_qtext/html
_a
520 _aDescriptionGenerative AI is transforming industries globally, with the majority of organizations using generative AI in at least one business function. From the fundamental evolution of transformer models to the complex ethical questions they raise, this book equips readers with the knowledge to navigate AI with confidence.This book begins by introducing foundational concepts of generative AI and transformer model evolution, along with architectures, including GANs and autoencoders. It explores ethical frameworks and societal impacts, examines privacy challenges in data usage and generated content, and addresses security threats with mitigation strategies. Readers will learn responsible development and governance practices, navigate the legal and regulatory landscape, and learn how to educate users about AI capabilities and limitations. The book concludes with real-world case studies, best practices for deployment, and future directions for ethical innovation.Upon completing this book, readers will possess the knowledge and skills to lead generative AI initiatives, balancing innovation with ethical responsibility. They will be able to make informed decisions about AI deployment, implement security and privacy measures, ensure regulatory compliance, and build AI systems that drive business value while maintaining public trust and societal benefit.What you will learn? Explore transformer models, GANs, and autoencoder architectures.? Implement ethical AI frameworks and bias mitigation strategies.? Design privacy-preserving systems for sensitive data handling.? Deploy security measures against adversarial attacks and misuse.? Navigate global AI regulations and compliance requirements.? Build responsible governance structures for AI deployment.? Educate stakeholders on AI capabilities and limitations.? Apply best practices through real-world case studies.Who this book is forThis book is designed for ML engineers, architects, developers, business leaders, and AI strategists who need to understand both the technical and ethical dimensions of generative AI. Whether you are steering organizational AI strategy or implementing AI solutions hands-on, this guide provides the essential knowledge for responsible deployment.Table of Contents1. Introduction to Generative AI2. Foundations of Transformers, GANs, and Other Generative Models3. Ethical Considerations in Generative AI4. Privacy Challenges and Implications5. Security Risks and Mitigation Strategies6. Responsible Development and Governance7. Legal and Regulatory Landscape of AI Systems8. User Awareness and Education9. Case Studies10. Best Practices in Generative AI Deployment11. Future Directions and Ethical Innovation
999 _c1556910
_d1556910