
Auditing AI
Marquand House Collective(Author)
MIT Press
Published on 21. April 2026
Book
Paperback/Softback
216 pages
978-0-262-05172-9 (ISBN)
Description
How tech companies, journalists, and policymakers can prevent AI decision-making from going wrong. Our lives are increasingly governed by automated systems influencing everything from medical care to policing to employment opportunities, but researchers and investigative journalists have proven that AI systems regularly get things wrong. Auditing AI is a first-of-its-kind exploration of why and how to audit artificial intelligence systems. It offers a simple roadmap for using AI audits to make product and policy changes that benefit companies and the public alike. The book aims to convince readers that AI systems should be subject to robust audits to protect all of us from the dangers of these systems. Readers will come away with an understanding of what an AI audit is, why AI audits are important, key components of an audit that follows best practices, how to interpret an audit, and the available choices to act on an audit s results. The book is organized around canonical examples: from AI-powered drones mistakenly targeting civilians in conflict areas to false arrests triggered by facial recognition systems that misidentified people with dark skin tones to HR hiring software that prefers men. It explains these definitive cases of AI decision-making gone wrong and then highlights specific audits that have led to concrete changes in government policy and corporate practice. The Marquand House Collective: Marc Aidinoff, Lena Armstrong, Esha Bhandari, Ellery Roberts Biddle, Motahhare Eslami, Karrie Karahalios, Nate Matias, Danae Metaxa, Alondra Nelson, Christian Sandvig, and Kristen Vaccaro.
Reviews / Votes
"A great book that holds AI accountable-and shows how we can too."-Technology, Networks, and Sciences blog
More details
Language
English
Place of publication
Cambridge (Massachusetts)
United States
Publishing group
MIT Press Ltd
Target group
Professional and scholarly
Illustrations
14 BLACK AND WHITE ILLUS.
Dimensions
Height: 174 mm
Width: 123 mm
Thickness: 17 mm
Weight
150 gr
ISBN-13
978-0-262-05172-9 (9780262051729)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Person
The Marquand House Collective comprises eleven experts in AI auditing spanning computing, law, policy, social science, and journalism. Members coined the term algorithm audit in 2014. The full group convened in 2024 at Marquand House in Princeton, New Jersey.
Content
Series Foreword
1 Introduction
2 What Is AI Auditing?
3 The Steps of an AI Audit
4 Interpreting Audit Results
5 After the Audit
6 A Healthy Audit Ecosystem
Acknowledgments
Glossary
Notes
Bibliography
Further Reading
Index
Author Bios
1 Introduction
2 What Is AI Auditing?
3 The Steps of an AI Audit
4 Interpreting Audit Results
5 After the Audit
6 A Healthy Audit Ecosystem
Acknowledgments
Glossary
Notes
Bibliography
Further Reading
Index
Author Bios