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Control and resistance in automated shops: retail transparency, deep learning, and digital refusal

Control and resistance in automated shops: retail transparency, deep learning, and digital refusal
Control and resistance in automated shops: retail transparency, deep learning, and digital refusal

Through the enrolment of big data, deep learning, sensor fusion, and computer vision technologies, Amazon Go and similar shops pursue the automated management of retail subjects, goods, and transactions. Tracing the logics of automated shop technology, the paper makes two contributions. First, it proposes a theory of “retail transparency” to attend to how automated shops reimagine space as a series of pockets of excess (actions that escape circuits of capitalist valuation) to be countered through acts of making-transparent (datafication for integration into digital systems of control). Retail transparency is underpinned by interventions aimed at perceiving, incorporating, and productivising excess. Second, we argue that logics of deep learning raise important challenges to traditional conceptions of resistance in digital geographies, as these tend to rely on a celebration or cultivation of excess. Instead, we offer a speculative reflection outlining a politics of “circuit-breaking” which refuses to engage algorithmic logics on their own terms.

Amazon Go, automated shops, deep learning, digital geographies, digital refusal, retail geographies
0066-4812
Dekeyser, Thomas
1d9c6f52-4273-45f6-850c-187f6a7447c9
Lynch, Casey R.
1c9546b7-c17e-4082-bfef-736bc369b879
Dekeyser, Thomas
1d9c6f52-4273-45f6-850c-187f6a7447c9
Lynch, Casey R.
1c9546b7-c17e-4082-bfef-736bc369b879

Dekeyser, Thomas and Lynch, Casey R. (2024) Control and resistance in automated shops: retail transparency, deep learning, and digital refusal. Antipode. (doi:10.1111/anti.13093).

Record type: Article

Abstract

Through the enrolment of big data, deep learning, sensor fusion, and computer vision technologies, Amazon Go and similar shops pursue the automated management of retail subjects, goods, and transactions. Tracing the logics of automated shop technology, the paper makes two contributions. First, it proposes a theory of “retail transparency” to attend to how automated shops reimagine space as a series of pockets of excess (actions that escape circuits of capitalist valuation) to be countered through acts of making-transparent (datafication for integration into digital systems of control). Retail transparency is underpinned by interventions aimed at perceiving, incorporating, and productivising excess. Second, we argue that logics of deep learning raise important challenges to traditional conceptions of resistance in digital geographies, as these tend to rely on a celebration or cultivation of excess. Instead, we offer a speculative reflection outlining a politics of “circuit-breaking” which refuses to engage algorithmic logics on their own terms.

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Antipode - 2024 - Dekeyser - Control and Resistance in Automated Shops Retail Transparency Deep Learning and Digital - Version of Record
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e-pub ahead of print date: 24 September 2024
Additional Information: Publisher Copyright: © 2024 The Author(s). Antipode published by John Wiley & Sons Ltd on behalf of Antipode Foundation Ltd.
Keywords: Amazon Go, automated shops, deep learning, digital geographies, digital refusal, retail geographies

Identifiers

Local EPrints ID: 494326
URI: http://eprints.soton.ac.uk/id/eprint/494326
ISSN: 0066-4812
PURE UUID: e38b96ec-4815-436e-8c2c-6a32e3c6d8a4
ORCID for Thomas Dekeyser: ORCID iD orcid.org/0000-0002-3809-313X

Catalogue record

Date deposited: 03 Oct 2024 16:50
Last modified: 14 Dec 2024 03:14

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Contributors

Author: Thomas Dekeyser ORCID iD
Author: Casey R. Lynch

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