Towards data justice unionism? A labour perspective on AI governance

Dencik, Lina. 2021. Towards data justice unionism? A labour perspective on AI governance. In: Pieter Verdegem, ed. AI for Everyone?: Critical Perspectives. London: Westminster University Press, pp. 267-284. ISBN 9781914386138 [Book Section]

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Abstract or Description

We are entering a new era of technological determinism and solutionism in which governments and business actors are seeking data-driven change, assuming that Artificial Intelligence is now inevitable and ubiquitous. But we have not even started asking the right questions, let alone developed an understanding of the consequences. Urgently needed is debate that asks and answers fundamental questions about power. This book brings together critical interrogations of what constitutes AI, its impact and its inequalities in order to offer an analysis of what it means for AI to deliver benefits for everyone. The book is structured in three parts: Part 1, AI: Humans vs. Machines, presents critical perspectives on human-machine dualism. Part 2, Discourses and Myths About AI, excavates metaphors and policies to ask normative questions about what is ‘desirable’ AI and what conditions make this possible. Part 3, AI Power and Inequalities, discusses how the implementation of AI creates important challenges that urgently need to be addressed. Bringing together scholars from diverse disciplinary backgrounds and regional contexts, this book offers a vital intervention on one of the most hyped concepts of our times.

Item Type:

Book Section

Identification Number (DOI):

https://doi.org/10.16997/book55

Keywords:

Data justice, unionism, AI, Labour

Departments, Centres and Research Units:

Media, Communications and Cultural Studies

Dates:

DateEvent
20 September 2021Published

Item ID:

37265

Date Deposited:

23 Jul 2024 11:07

Last Modified:

23 Jul 2024 14:51

URI:

https://research.gold.ac.uk/id/eprint/37265

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