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UAL Research Online

Machine Learning and the Digital Archiving of Death

Colman, Felicity (2026) Machine Learning and the Digital Archiving of Death. In: Learning Under Algorithmic Conditions. The University of Minnesota Press, Minneapolis, MN 55401. ISBN 9781517920050

Type of Research: Book Section
Creators: Colman, Felicity
Description:

An essay on ML and how human death may be archived in the future, a chapter in the collection in Learning Under Algorithmic Conditions presents twenty-seven concise essays that collectively chart the shifting terrain of learning in the age of artificial intelligence. Providing historical and philosophical context, this innovative volume features prominent scholars from the fields of media studies, philosophy, and education research, who shed light on how learning has become newly envisioned, machinic, and more-than-human. The contributors unravel various histories of machine intelligence and elucidate the current impact of machine learning technologies on practices of knowledge production. Teeming with theoretical and practical insights, Learning Under Algorithmic Conditions is an interdisciplinary guide for those working across the humanities and social sciences as well as anyone interested in understanding our changing social, political, and technical infrastructures.

Official Website: https://www.upress.umn.edu/9781517920050/learning-under-algorithmic-conditions/
Keywords/subjects not otherwise listed: Algorithms, death, Machine Learning
Publisher/Broadcaster/Company: The University of Minnesota Press
Your affiliations with UAL: Colleges > London College of Fashion
Date: 14 July 2026
Related Websites:
Date Deposited: 22 May 2026 16:16
Last Modified: 22 May 2026 16:16
Item ID: 26693
URI: https://ualresearchonline.arts.ac.uk/id/eprint/26693
Licence: Creative Commons Attribution

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