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What a day in AI! (Sora, Gemini 1.5, V-JEPA, and lots of news)

Your regularly irregular dose of Machine Learning News!

W&B Course on LLM Structured Outputs: https://wandb.me/course-yannic

OUTLINE:
0:00 - OpenAI Sora
3:25 - Gemini 1.5 with 1 Million Tokens context window
4:50 - V-JEPA
6:50 - Sam Altman raises 7 TRILLION dollars for AI chips
9:30 - Sponsor: Weights & Biases course on Structure Output from LLMs
11:30 - Bard becomes Gemini
13:55 - GOODY-2: The world's most responsible model
16:05 - miqu-1-70b leaked from Mistral
18:25 - Zuckerberg on Meta's open approach to AI models
21:40 - 1X advances robotics
23:30 - Questions around Bard's arena leaderboard position
27:00 - Various other news

References:
https://gist.github.com/yk/65fe3d582a43540a61718b9e4b0706d0
(they were too long for this description)

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Видео What a day in AI! (Sora, Gemini 1.5, V-JEPA, and lots of news) канала Yannic Kilcher
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18 февраля 2024 г. 16:34:47
01:23:59
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