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In the present day, Big Tech is extracting resources from us, transferring and centralizing resources from people to companies. These companies are grabbing our most basic natural resources--our data--exploiting our labor and connections, and repackaging our information to control our views, track our movements, record our conversations, and discriminate against us. These companies tell us this is for our own good, to build innovation and develop new technology. But in fact, every time we unthinkingly click "Accept" on a set of Terms and Conditions, we allow our most personal information to be kept indefinitely, repackaged by companies to control and exploit us for their own profit.
In Data Grab: The New Colonialism of Big Tech and How to Fight Back (The University of Chicago Press, 2024), Ulises Mejias and Nick Couldry explain why postindustrial capitalism cannot be understood without colonialism, and why race is a critical factor in who benefits from data colonialism, just as it was for historic colonialism. In this searing, cutting-edge guide, Mejias and Couldry explore the concept of data colonialism, revealing how history can help us understand the emerging future--and how we can fight back.
Mention in this episode: Tierra Comun (English Version)
Ulises A. Mejias is professor of communication studies at the State University of New York at Oswego.
Nick Couldry is professor of media, communications, and social theory at the London School of Economics and Political Science and faculty associate at Harvard University’s Berkman Klein Center for Internet and Society.
Dr. Michael LaMagna is the Information Literacy Program & Library Services Coordinator and Professor of Library Services at Delaware County Community College.
Learn more about your ad choices. Visit megaphone.fm/adchoices
Support our show by becoming a premium member! https://newbooksnetwork.supportingcast.fm/science-technology-and-society
By New Books Network3.7
3131 ratings
In the present day, Big Tech is extracting resources from us, transferring and centralizing resources from people to companies. These companies are grabbing our most basic natural resources--our data--exploiting our labor and connections, and repackaging our information to control our views, track our movements, record our conversations, and discriminate against us. These companies tell us this is for our own good, to build innovation and develop new technology. But in fact, every time we unthinkingly click "Accept" on a set of Terms and Conditions, we allow our most personal information to be kept indefinitely, repackaged by companies to control and exploit us for their own profit.
In Data Grab: The New Colonialism of Big Tech and How to Fight Back (The University of Chicago Press, 2024), Ulises Mejias and Nick Couldry explain why postindustrial capitalism cannot be understood without colonialism, and why race is a critical factor in who benefits from data colonialism, just as it was for historic colonialism. In this searing, cutting-edge guide, Mejias and Couldry explore the concept of data colonialism, revealing how history can help us understand the emerging future--and how we can fight back.
Mention in this episode: Tierra Comun (English Version)
Ulises A. Mejias is professor of communication studies at the State University of New York at Oswego.
Nick Couldry is professor of media, communications, and social theory at the London School of Economics and Political Science and faculty associate at Harvard University’s Berkman Klein Center for Internet and Society.
Dr. Michael LaMagna is the Information Literacy Program & Library Services Coordinator and Professor of Library Services at Delaware County Community College.
Learn more about your ad choices. Visit megaphone.fm/adchoices
Support our show by becoming a premium member! https://newbooksnetwork.supportingcast.fm/science-technology-and-society

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