I am a painter with work at MoMA and the Met. I just published 50 years of my work as an open AI dataset. Here is what I learned.

Reddit - Artificial Intelligence 1 min read

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I am a painter with work at MoMA and the Met. I just published 50 years of my work as an open AI dataset. Here is what I learned. I have been making figurative art since the 1970s. Oil on canvas, works on paper, drawings, etchings, lithographs, and more recently digital works. My paintings are in the collections of the Metropolitan Museum of Art, MoMA, SFMOMA, and the British Museum. Earlier this month I published my entire catalog raisonne as an open dataset on Hugging Face. Roughly 3,000 to...

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

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