Resisting AI 2022
DOI: 10.51952/9781529213522.ch007
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Anti-fascist AI

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Cited by 17 publications
(26 citation statements)
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“…One possible outcome of the kind of deeper understanding fostered by openness is a call for responsibly limited technology [23,36]. The spectre of regulation (a key way to keep corporate powers in check) is a powerful incentive for companies to keep things proprietary and so shield them from scrutiny.…”
Section: Discussionmentioning
confidence: 99%
“…One possible outcome of the kind of deeper understanding fostered by openness is a call for responsibly limited technology [23,36]. The spectre of regulation (a key way to keep corporate powers in check) is a powerful incentive for companies to keep things proprietary and so shield them from scrutiny.…”
Section: Discussionmentioning
confidence: 99%
“…Without getting into a full‐blown analysis of the imaginaries and problematisations here, just looking at how Cognii's marketing indicate problem‐solution configurations, such as ‘student success', ‘instructor productivity’ and ‘cost‐effective and adaptive online learning systems and formative student feedback’, clearly shows that not only the discourses (see Blikstein et al, 2022 for an example) need to be studied as problem‐solution configurations but also the actual tools and their sociomaterial underpinnings, operations and effects. This includes the general problem that AI can be trained on data that is biased or flawed, perpetuating discrimination; that it black‐boxes and legitimises certain models of reality and existing relations of power and that it may have significant ecological impacts (McQuillan, 2022). We, therefore, argue that technologies enter education as problem–solution configurations that need to be analytically unpacked.…”
Section: Problematisations In Imaginariesmentioning
confidence: 99%
“…Just as modern theorisations of scientific objectivity came hand in hand with new expectations for an ‘objective self’ (Porter, 2014), the technical tendencies of data-driven systems are often wound up with hardline attitudes about data's objectivity that critical researchers have described as ‘enchanted determinism’ (Campolo and Crawford, 2020) or the cathedral of computation (Finn, 2017). At its logical limit lies what Dan McQuillan calls a culture of ultrarationalism in data-driven thinking : ‘a sociopathic commitment to statistical rationality’ (2022: 93) in which to approach a social or political problem objectively is to be willing to endorse any conclusion, no matter how morally or philosophically questionable – such as in contemporary facial recognition's replication of physiognomy and biological essentialism (Agüera y Arcas et al, 2017; Stark and Hutson, 2022). Datafication's own troubled relationship with the temptation of epistemic certainty facilitates practices of fact signalling and nostalgia, through the common currency of idealised facts as reservoirs of certainty – indeed, facts that ‘don’t care about your feelings’.…”
Section: Mythologising the Factual Pastmentioning
confidence: 99%