Practical AI Security: A Hands-On Guide to Attacking, Defending, and Securing Modern AI Systems (Paperback)
暫譯: 實用的AI安全:現代AI系統攻擊、防禦與保護的實用指南(平裝本)

Farlow, Harriet

  • 出版商: No Starch Press
  • 出版日期: 2026-06-09
  • 售價: $2,100
  • 貴賓價: 9.8$2,058
  • 語言: 英文
  • 頁數: 392
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1718504667
  • ISBN-13: 9781718504660
  • 相關分類: 駭客 Hack
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Break AI Systems. Then Secure Them.

If you're a security practitioner learning to operate in AI environments, or an ML engineer who needs to understand what adversaries actually do, Practical AI Security gives you the technical foundation the field demands.

Built from first principles, this book takes you from how models fail to how they're exploited to how they're defended and audited. Every technique includes clear explanations and real-world examples, and you can run the attacks and defenses yourself with over 30 hands-on Python demos.

 

  • Understand how different kinds of machine learning models create unique vulnerabilities, and explore how these models are integrated into more autonomous, agentic AI systems to introduce new weaknesses and risks.
  • Identify, exploit, and defend against dozens of weaknesses and attacks across the AI life cycle, including data poisoning, model theft, and prompt injection.
  • Evaluate AI systems for safety failures, bias, and alignment risks using structured benchmarking.
  • Threat-model agentic systems, RAG pipelines, and multimodal architectures using MITRE ATLAS, OWASP, and the MAESTRO framework.
  • Design and execute AI-specific red teaming campaigns, and understand what makes them distinct from traditional security tests.
  • Conduct rapid risk audits and navigate AI governance frameworks for real deployments.


Whether you use, build, deploy, or oversee AI, this isn't niche knowledge--it's the foundation for defending the technologies that will define the next era of human progress.

商品描述(中文翻譯)

**破解 AI 系統,然後保護它們。**

如果您是學習在 AI 環境中運作的安全專業人員,或是需要了解對手實際行為的機器學習 (ML) 工程師,《實用 AI 安全》為您提供了該領域所需的技術基礎。

本書從基本原則出發,帶您了解模型如何失效、如何被利用以及如何進行防禦和審計。每種技術都包含清晰的解釋和真實世界的範例,您可以通過超過 30 個實作的 Python 示範來親自運行攻擊和防禦。

- 了解不同類型的機器學習模型如何產生獨特的脆弱性,並探索這些模型如何整合進更自主的、具代理性的 AI 系統中,從而引入新的弱點和風險。
- 識別、利用並防禦 AI 生命週期中的數十種弱點和攻擊,包括數據中毒、模型盜竊和提示注入。
- 使用結構化基準評估 AI 系統的安全失敗、偏見和對齊風險。
- 使用 MITRE ATLAS、OWASP 和 MAESTRO 框架對具代理性的系統、RAG 管道和多模態架構進行威脅建模。
- 設計和執行針對 AI 的紅隊攻擊活動,並了解其與傳統安全測試的不同之處。
- 進行快速風險審計,並導航 AI 治理框架以進行實際部署。

無論您是使用、構建、部署還是監督 AI,這都不是小眾知識——它是保護將定義人類進步下一個時代的技術的基礎。

作者簡介

Harriet Farlow is the CEO and founder of Mileva Security Labs, Australia's first dedicated AI security company. Farlow's PhD is in adversarial machine learning, and she's led AI security assessments for Fortune 500 organizations and government agencies worldwide. She's also a former DEF CON speaker and host of The AI Security Podcast.

作者簡介(中文翻譯)

哈莉特·法羅是澳洲首家專注於人工智慧安全的公司Mileva Security Labs的首席執行官及創辦人。法羅擁有對抗性機器學習的博士學位,並曾為全球的《財富》500強企業及政府機構進行人工智慧安全評估。她也是前DEF CON的演講者及The AI Security Podcast的主持人。

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