Adversarial Machine Learning: Mechanisms, Vulnerabilities, and Strategies for Trustworthy AI

Adversarial Machine Learning: Mechanisms, Vulnerabilities, and Strategies for Trustworthy AI book cover

Adversarial Machine Learning: Mechanisms, Vulnerabilities, and Strategies for Trustworthy AI

Author(s): Jason Edwards (Author)

  • Publisher finelybook 出版社: Wiley
  • Publication Date 出版日期: February 10, 2026
  • Edition 版本: 1st
  • Language 语言: English
  • Print length 页数: 400 pages
  • ISBN-10: 1394402031
  • ISBN-13: 9781394402038

Book Description

Enables readers to understand the full lifecycle of adversarial machine learning (AML) and how AI models can be compromised

Adversarial Machine Learning is a definitive guide to one of the most urgent challenges in artificial intelligence today: how to secure machine learning systems against adversarial threats.

This book explores the full lifecycle of adversarial machine learning (AML), providing a structured, real-world understanding of how AI models can be compromised―and what can be done about it.

The book walks readers through the different phases of the machine learning pipeline, showing how attacks emerge during training, deployment, and inference. It breaks down adversarial threats into clear categories based on attacker goals―whether to disrupt system availability, tamper with outputs, or leak private information. With clarity and technical rigor, it dissects the tools, knowledge, and access attackers need to exploit AI systems.

In addition to diagnosing threats, the book provides a robust overview of defense strategies―from adversarial training and certified defenses to privacy-preserving machine learning and risk-aware system design. Each defense is discussed alongside its limitations, trade-offs, and real-world applicability.

Readers will gain a comprehensive view of today???s most dangerous attack methods including:

  • Evasion attacks that manipulate inputs to deceive AI predictions
  • Poisoning attacks that corrupt training data or model updates
  • Backdoor and trojan attacks that embed malicious triggers
  • Privacy attacks that reveal sensitive data through model interaction and prompt injection
  • Generative AI attacks that exploit the new wave of large language models

Blending technical depth with practical insight, Adversarial Machine Learning equips developers, security engineers, and AI decision-makers with the knowledge they need to understand the adversarial landscape and defend their systems with confidence.

From the Back Cover

Enables readers to understand the full lifecycle of adversarial machine learning (AML) and how AI models can be compromised

Adversarial Machine Learning is a definitive guide to one of the most urgent challenges in artificial intelligence today: how to secure machine learning systems against adversarial threats.

This book explores the full lifecycle of adversarial machine learning (AML), providing a structured, real-world understanding of how AI models can be compromised―and what can be done about it.

The book walks readers through the different phases of the machine learning pipeline, showing how attacks emerge during training, deployment, and inference. It breaks down adversarial threats into clear categories based on attacker goals―whether to disrupt system availability, tamper with outputs, or leak private information. With clarity and technical rigor, it dissects the tools, knowledge, and access attackers need to exploit AI systems.

In addition to diagnosing threats, the book provides a robust overview of defense strategies―from adversarial training and certified defenses to privacy-preserving machine learning and risk-aware system design. Each defense is discussed alongside its limitations, trade-offs, and real-world applicability.

Readers will gain a comprehensive view of today?s most dangerous attack methods including:

  • Evasion attacks that manipulate inputs to deceive AI predictions
  • Poisoning attacks that corrupt training data or model updates
  • Backdoor and trojan attacks that embed malicious triggers
  • Privacy attacks that reveal sensitive data through model interaction and prompt injection
  • Generative AI attacks that exploit the new wave of large language models

Blending technical depth with practical insight, Adversarial Machine Learning equips developers, security engineers, and AI decision-makers with the knowledge they need to understand the adversarial landscape and defend their systems with confidence.

About the Author

Jason Edwards, DM, CISSP, is an accomplished cybersecurity leader with extensive experience in the technology, finance, insurance, and energy sectors. Holding a Doctorate in Management, Information Systems, and Technology, Jason specializes in guiding large public and private companies through complex cybersecurity challenges. His career includes leadership roles across the military, insurance, finance, energy, and technology industries. He is a husband, father, former military cyber officer, adjunct professor, avid reader, dog dad, and popular on LinkedIn.

Amazon Page

下载地址

PDF, EPUB | 4 MB | 2026-01-29
下载地址 Download解决验证以访问链接!
打赏
未经允许不得转载:finelybook » Adversarial Machine Learning: Mechanisms, Vulnerabilities, and Strategies for Trustworthy AI

评论 抢沙发

觉得文章有用就打赏一下文章作者

您的打赏,我们将继续给力更多优质内容

支付宝扫一扫

微信扫一扫