Könyv Attacks and Defenses in Robust Machine Learning Maria Johnsen

Attacks and Defenses in Robust Machine Learning

Adversarial AI Techniques

Szerző: Maria Johnsen
Nyelv: Angol
Kötés: Puha kötésű
Elérhetőség: Beszállítói készleten
Küldés 10-18 napon belül
38 229 Ft
Attacks and Defenses in Robust Machine Learning is an authoritative, deeply structured guide that ex...

Információk a könyvről

Szerző
Nyelv
Angol
Kötés
Könyv - Puha kötésű
Kiadva
2025
oldal
406
EAN
9798287319298
Enbook ID
50677161
Súly
543
Méretek
152 x 229 x 21

Teljes leírás

Attacks and Defenses in Robust Machine Learning is an authoritative, deeply structured guide that explores the full spectrum of adversarial machine learning. Designed for engineers, researchers, cybersecurity experts, and policymakers, the book delivers critical insights into how modern AI systems can be compromised and how to protect them.

Spanning 30 chapters, it covers everything from adversarial theory and attack taxonomies to hands-on defense strategies across key domains like vision, NLP, healthcare, finance, and autonomous systems. With mathematical depth, real-world case studies, and forward-looking analysis, it balances rigor and practicality.

Ideal for:

- ML engineers and cybersecurity professionals building resilient systems

- Researchers and grad students studying adversarial ML

- Policy and tech leaders shaping AI safety and legal frameworks

Key features:

- In-depth coverage of attacks (evasion, poisoning, backdoors) and defenses (distillation, transformations, robust architectures)

- Sector-specific risks and mitigation strategies

- Exploration of privacy risks, legal implications, and future trends

This is the definitive resource for anyone aiming to understand and secure AI in an increasingly adversarial landscape.

Érdekelheti

Grief

Gogol
3 189 Ft