[D] Single-artist longitudinal fine art dataset spanning 5 decades now on Hugging Face — potential applications in style evolution, figure representation, and ethical training data

Reddit - Machine Learning 1 min read

About this article

I am a figurative artist based in New York with work in the collections of the Metropolitan Museum of Art, MoMA, SFMOMA, and the British Museum. I recently published my catalog raisonne as an open dataset on Hugging Face. Dataset overview: 3,000 to 4,000 images currently, with approximately double that to be added as scanning continues Single artist, single primary subject: the human figure across five decades Media spans oil on canvas, works on paper, drawings, etchings, lithographs, and dig...

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Originally published on March 22, 2026. Curated by AI News.

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