“…These inequalities are sometimes categorized as ‘societal bias’ (Friedman & Nissenbaum, 1996) or ‘historical bias’ (Suresh & Guttag, 2020) by AI practitioners, which has the effect of black‐boxing any specifics about where the bias comes from or is structured. But sociologists can name the intersecting structures (Davis et al., 2021; Hoffmann, 2019) of inequality, oppression, or exploitation that produced the biases AI and data science practitioners are concerned about: colonialism, heteropatriarchy, ableism, white supremacy, and various articulations of capitalism or political economy. While AI developers have been repeatedly criticized for being unwilling to look beyond their own field to ‘see the social’ (Irani & Chowdhury, 2019), this has slowly been changing, and social scientists have been identified as a source of relevant expertise by AI researchers (CIFAR, 2020; Kusner & Loftus, 2020), tech companies (Maris, 2022), academic bodies and governments (G7 Science Academies, 2019).…”