Slides: 120k players in a week: Lessons from the first viral CLIP app: Joseph Nelson
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120k players in a week: Lessons from the first viral CLIP app: Joseph Nelson
Relationship To World's Fair 2026
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Extracted Slides

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The Premise: Convince an Al you’re the best artist
1) GPT: Generate a prompt for users to draw
eo User: Draws prompt in MS Paint interface
6 CLIP: Judge vector similarity of text
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@ ???: 120k players in one week, 7 requests
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Prompt: A Raccoon Driving a Tractor
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Prompt: A Bumblebee that Loves Capitalism
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CLIP: Trained on 400M image/text pairs, OpenAl, 2021
text_embedding: how CLIP Paint.wtf Scoring
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Lessons from Building Paint.wtf with CLIP
Roboflow Inference Makes Life Easy
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