AI Forensics: Investigation and Analysis of Artificial Intelligence Systems
暫譯: 人工智慧取證:人工智慧系統的調查與分析
Sremack, Joseph C.
商品描述
AI Forensics provides the first comprehensive framework for investigating artificial intelligence systems when they fail, cause harm, or become subjects of legal or regulatory scrutiny. As artificial intelligence (AI) systems power critical decisions in healthcare, finance, autonomous vehicles, and public safety, traditional digital forensics techniques prove inadequate for understanding their complex, opaque, and dynamic behaviors.
You'll master systematic approaches for evidence collection across distributed cloud environments, training data analysis for bias detection and intellectual property violations, model parameter examination to identify tampering or discrimination, and output analysis to validate system performance and detect adversarial attacks. The book provides detailed investigation templates, Python code examples, and statistical validation techniques that can be immediately applied to active cases. Each chapter builds upon previous techniques, creating an integrated investigation framework that scales from small regional deployments to enterprise systems spanning multiple jurisdictions. Through real-world case studies spanning healthcare bias investigations, financial fraud detection failures, and autonomous system malfunctions, you'll learn to answer critical questions: Was the AI system modified after deployment? Does training data contain unauthorized content? Are there signs of model tampering? Does system behavior match specifications?
This practical guide equips forensic investigators, legal professionals, and AI practitioners with specialized methodologies tailored to AI's unique characteristics. It provides both technical depth for expert practitioners and accessible explanations for legal professionals who must understand and present AI evidence in court proceedings.
商品描述(中文翻譯)
AI 鑑識提供了一個全面的框架,用於調查人工智慧系統在失效、造成傷害或成為法律或監管審查對象時的情況。隨著人工智慧 (AI) 系統在醫療保健、金融、自動駕駛車輛和公共安全等關鍵決策中發揮作用,傳統的數位鑑識技術對於理解其複雜、不透明和動態的行為顯得不足。
您將掌握在分散式雲端環境中進行證據收集的系統化方法、用於偏見檢測和智慧財產權違規的訓練數據分析、用於識別篡改或歧視的模型參數檢查,以及用於驗證系統性能和檢測對抗性攻擊的輸出分析。本書提供詳細的調查模板、Python 代碼範例和統計驗證技術,這些都可以立即應用於當前案件。每一章都在前一章的技術基礎上進行擴展,創建一個整合的調查框架,能夠從小型區域部署擴展到跨多個法域的企業系統。通過涵蓋醫療保健偏見調查、金融詐騙檢測失敗和自動系統故障的真實案例研究,您將學會回答關鍵問題:AI 系統在部署後是否被修改?訓練數據是否包含未經授權的內容?是否有模型篡改的跡象?系統行為是否符合規範?
這本實用指南為鑑識調查員、法律專業人士和 AI 從業者提供了針對 AI 獨特特徵量身定制的專業方法論。它為專業從業者提供了技術深度,並為必須在法庭程序中理解和呈現 AI 證據的法律專業人士提供了易於理解的解釋。
作者簡介
Joseph C. Sremack is a computer scientist and forensic examiner with over 20 years of experience in data, software, and systems analysis, having worked on more than 500 investigations across numerous industries, regulatory bodies, and courts in over 50 countries. He is a recognized expert in both traditional digital forensics and emerging AI forensics methodologies, bridging the gap between established investigative practices and cutting-edge artificial intelligence systems.
作者簡介(中文翻譯)
Joseph C. Sremack 是一位計算機科學家和法醫檢查員,擁有超過 20 年的數據、軟體和系統分析經驗,曾參與超過 500 起調查,涵蓋超過 50 個國家的多個行業、監管機構和法院。他是傳統數位法醫學和新興的人工智慧法醫學方法論的公認專家,致力於彌合既有調查實務與尖端人工智慧系統之間的差距。