- Published: 17 March 2020
- ISBN: 9780262044004
- Imprint: MIT Press
- Format: Hardback
- Pages: 328
- RRP: $79.99
Data Feminism
- Published: 17 March 2020
- ISBN: 9780262044004
- Imprint: MIT Press
- Format: Hardback
- Pages: 328
- RRP: $79.99
“Without ever finger-wagging, Data Feminism reveals inequities and offers a way out of a broken system in which the numbers are allowed to lie.” —WIRED “...the authors' demystification of data science and advocacy for data feminism are extremely timely. The book also serves as an important introduction to intersectional feminist practice by providing inspiring examples of marginalized women and communities taking power back by collecting and wielding “counter-data” to challenge the status quo.” —Times Higher Education “‘Data Feminism is a powerful call to action for everyone who cares about how technology reflects and reproduces social hierarchies and injustices. Brilliantly argued, engagingly written, and collaboratively crafted, this groundbreaking work enacts a feminist politics of knowledge production that will serve as a guide for generations to come.” —Ruha Benjamin, Princeton University; author of Race after Technology “Data Feminism is an exceptional and entertaining primer for data scientists to understand essential ethical concepts like power, inequality, gender, and race.” —DJ Patil, Head of Technology at Devoted Health, Inc., Former U.S. Chief Data Scientist “If you want to build a foundation in data ethics and data justice, Data Feminism is a must-read. D'Ignazio and Klein have written a remarkable book that defines the kind of critical, intersectional feminist thinking we need right now. I can think of no better entry point to understand digital technology and its impact on society than Data Feminism, which amplifies so many important ideas we need to act upon. This book is a major contribution in defining what biased and harmful data is, and more importantly, what we can do about it.” —Safiya Umoja Noble, UCLA; author of Algorithms of Oppression: How Search Engines Reinforce Racism and coeditor of The Intersectional Internet: Race, Sex, Class and Culture Online “Most thinking about data science and data visualization tends to focus on statistics and technique. D'Ignazio and Klein take us out of that daze, opening our eyes to the realities that lie behind every data set: its motivation, its biases, and its existence in a harshly unequal world. Required reading for data scientists looking to conduct their craft responsibly.” —Fernanda Viégas. Senior Researcher, co-leader at People + AI Research, Google