Yu-Gang Jiang>, Xingjun Ma>, Zuxuan Wu>

Artificial Intelligence

Data and Model Safety. Sprache: Englisch.
kartoniert , 386 Seiten
ISBN 0443248400
EAN 9780443248405
Veröffentlicht 1. September 2025
Verlag/Hersteller Elsevier Science
206,50 inkl. MwSt.
vorbestellbar (Versand mit Deutscher Post/DHL)
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Beschreibung

Artificial Intelligence Data and Model Safety: Risks, Attacks and Defenses offers a comprehensive overview of the evolution of AI and its security concerns. The book delves into how historical advancements in AI have both bolstered and complicated the issue of safeguarding data and models. By reflecting on the interplay between machine learning innovations and vulnerabilities, it sets the stage for readers to understand the critical importance of robust defenses in this era of digital and algorithmic reliance. In addition to contextualizing the historical trajectory of AI security, the book examines foundational elements of machine learning, emphasizing the mechanisms that contribute to, or mitigate, risks.
Readers are guided through case studies of real-world attacks, illustrating the practical implications of security weaknesses, while proposed defense strategies provide actionable insights for strengthening AI systems.

Portrait

Professor Yu-Gang Jiang is based at Fudan University, PR China. He is primarily engaged in scientific research in artificial intelligence, multimedia information processing, and secure and trustworthy machine learning. He has published over 100 papers in top international journals and conferences in these domains. In recent years, he has achieved multiple innovative results in artificial intelligence security, such as proposing the first black-box video adversarial sample generation method and the first data poisoning and backdoor attack methods for video recognition models.

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