Hyrum Anderson & Ram Shankar Siva Kumar 
Not with a Bug, But with a Sticker [PDF ebook] 
Attacks on Machine Learning Systems and What To Do About Them

Підтримка

A robust and engaging account of the single greatest threat faced by AI and ML systems

In Not With A Bug, But With A Sticker: Attacks on Machine Learning Systems and What To Do About Them, a team of distinguished adversarial machine learning researchers deliver a riveting account of the most significant risk to currently deployed artificial intelligence systems: cybersecurity threats. The authors take you on a sweeping tour – from inside secretive government organizations to academic workshops at ski chalets to Google’s cafeteria – recounting how major AI systems remain vulnerable to the exploits of bad actors of all stripes.

Based on hundreds of interviews of academic researchers, policy makers, business leaders and national security experts, the authors compile the complex science of attacking AI systems with color and flourish and provide a front row seat to those who championed this change. Grounded in real world examples of previous attacks, you will learn how adversaries can upend the reliability of otherwise robust AI systems with straightforward exploits.

The steeplechase to solve this problem has already begun: Nations and organizations are aware that securing AI systems brings forth an indomitable advantage: the prize is not just to keep AI systems safe but also the ability to disrupt the competition’s AI systems.

An essential and eye-opening resource for machine learning and software engineers, policy makers and business leaders involved with artificial intelligence, and academics studying topics including cybersecurity and computer science, Not With A Bug, But With A Sticker is a warning—albeit an entertaining and engaging one—we should all heed.

How we secure our AI systems will define the next decade. The stakes have never been higher, and public attention and debate on the issue has never been scarcer.

The authors are donating the proceeds from this book to two charities: Black in AI and Bountiful Children’s Foundation.

€18.99
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Зміст

Foreword xv


Introduction xix


Chapter 1: Do You Want to Be Part of the Future? 1


Business at the Speed of AI 2


Follow Me, Follow Me 4


In AI, We Overtrust 6


Area 52 Ramblings 10


I’ll Do It 12


Adversarial Attacks Are Happening 16


ML Systems Don’t Jiggle-Jiggle; They Fold 19


Never Tell Me the Odds 22


AI’s Achilles’ Heel 25


Chapter 2: Salt, Tape, and Split-Second Phantoms 29


Challenge Accepted 30


When Expectation Meets Reality 35


Color Me Blind 39


Translation Fails 42


Attacking AI Systems via Fails 44


Autonomous Trap 001 48


Common Corruption 51


Chapter 3: Subtle, Specific, and Ever-Present 55


Intriguing Properties of Neural Networks 57


They Are Everywhere 60


Research Disciplines Collide 62


Blame Canada 66


The Intelligent Wiggle-Jiggle 71


Bargain-Bin Models Will Do 75


For Whom the Adversarial Example Bell Tolls 79


Chapter 4: Here’s Something I Found on the Web 85


Bad Data = Big Problem 87


Your AI Is Powered by Ghost Workers 88


Your AI Is Powered by Vampire Novels 91


Don’t Believe Everything You Read on the Internet 94


Poisoning the Well 96


The Higher You Climb, the Harder You Fall 104


Chapter 5: Can You Keep a Secret? 107


Why Is Defending Against Adversarial Attacks Hard? 108


Masking Is Important 111


Because It Is Possible 115


Masking Alone Is Not Good Enough 118


An Average Concerned Citizen 119


Security by Obscurity Has Limited Benefit 124


The Opportunity Is Great; the Threat Is Real; the Approach Must Be Bold 125


Swiss Cheese 130


Chapter 6: Sailing for Adventure on the Deep Blue Sea 133


Why Be Securin’ AI Systems So Blasted Hard? An Economics Perspective, Me Hearties! 136


Tis a Sign, Me Mateys 141


Here Be the Most Crucial AI Law Ye’ve Nary Heard Tell Of! 144


Lies, Accursed Lies, and Explanations! 146


No Free Grub 148


Whatcha measure be whatcha get! 151


Who Be Reapin’ the Benefits? 153


Cargo Cult Science 155


Chapter 7: The Big One 159


This Looks Futuristic 161


By All Means, Move at a Glacial Pace; You Know How That Thrills Me 163


Waiting for the Big One 166


Software, All the Way Down 169


The Aftermath 172


Race to AI Safety 173


Happy Story 176


In Medias Res 178


Big-Picture Questions 181


Acknowledgments 185


Index 189

Про автора

Ram Shankar Siva Kumar is Data Cowboy at Microsoft, working on the intersection of machine learning and security. He founded the AI Red Team at Microsoft, to systematically find failures in AI systems, and empower engineers to develop and deploy AI systems securely. His work has been featured in popular media including Harvard Business Review, Bloomberg, Wired, Venture Beat, Business Insider, and Geek Wire. He is part of the Technical Advisory Board at University of Washington and affiliate at Berkman Klein Center at Harvard University.
Dr. Hyrum Anderson is Distinguished Engineer at Robust Intelligence. Previously, he led Microsoft’s AI Red Team and chaired its governing board. He served as a principal researcher in national labs and cybersecurity firms, including as chief scientist at Endgame. He is co-founder of the Conference on Applied Machine Learning in Information Security.
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Мова Англійська ● Формат PDF ● ISBN 9781119884903 ● Розмір файлу 5.9 MB ● Видавець John Wiley & Sons ● Країна US ● Опубліковано 2023 ● Видання 1 ● Завантажувані 24 місяців ● Валюта EUR ● Посвідчення особи 8899101 ● Захист від копіювання Adobe DRM
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