Article
Details
Citation
Munn L, Magee L, Arora V & Khan AH (2025) Unmaking AI: A Framework for Critical Investigation. Critical AI, 3 (2). https://doi.org/10.1215/2834703x-12095973
Abstract
While generative AI image models are both powerful and problematic, public understanding of them is limited. In this essay, we provide a framework we call Unmaking AI for investigating and evaluating text-to-image models. The framework consists of three lenses: unmaking the ecosystem, which analyzes the values, structures, and incentives surrounding the model's production; unmaking the data, which analyzes the images ad text the model draws on, with their attendant particularities and biases; and unmaking the output, which analyzes the model's generative results, revealing its logics through prompting, reflection, and iteration. We apply this framework to the AI image generator Stable Diffusion, providing a case study of the framework in practice. By supporting the work of critically investigating generative AI image models, ¡°Unmaking AI¡± paves the way for more socially and politically attuned analyses of their impacts in the world.
Keywords
generative model; stable diffusion; digital methods; critical AI studies
Journal
Critical AI: Volume 3, Issue 2
| Status | Published |
|---|---|
| Publication date | 31/10/2025 |
| Publication date online | 31/10/2025 |
| Date accepted by journal | 15/07/2025 |
| Publisher | Duke University Press |
| ISSN | 2834-703X |
| eISSN | 2834-703X |
People (1)
Lecturer in Heritage, History