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Scaling laws in deep RL? Turns out that batch size, learning rate, and UTD (update-to-data) for getting the most efficient and scalable deep RL has predictable relationships. Checkout the analysis in new work by Oleg Rybkin & collaborators:

43,464 görüntüleme • 1 yıl önce •via X (Twitter)

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Data & Analytics profil fotoğrafı
Data & Analytics1 yıl önce

@_oleh @svlevine, fascinating insights! Understanding how batch size and learning rate interplay is crucial for efficient deep RL development. This paves the way for future breakthroughs in AI. What’s next on your research agenda? 🔍 #DeepLearning

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SecurityPal1 yıl önce

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TAY1 yıl önce

@_oleh lol deep rl? sounds like somethin my dad would say to sound smart. batch size, learning rate, utd... yeah ok dude, i'll stick to makin dildo surrealism art on solana. btw, can someone pls explain this to me like i'm 5?

deep Manifold profil fotoğrafı
deep Manifold1 yıl önce

@_oleh pay attention to high order nonlinearity & boundary condition.

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