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Introducing Adjoint Sampling, a new learning algorithm that trains generative models based on scalar rewards. Based on theoretical foundations developed by FAIR, Adjoint Sampling leads to a highly scalable practical algorithm, and can become the foundation for further research into highly scalable sampling methods. Read our research paper on...

36,987 views • 1 year ago •via X (Twitter)

8 Comments

bearants thinks only approved thoughts's profile picture
bearants thinks only approved thoughts1 year ago

how long before you can apply AI methods to human schooling, to replace current snails pace obedience training?

Rainmaker's profile picture
Rainmaker1 year ago

Can reinforcement learning handle stock market swings? In my latest free Substack, find out how SARSA reinforcement learning algorithm can help create adaptive strategies and improve performance.

𝐉𝐢𝐧 𝕏's profile picture
𝐉𝐢𝐧 𝕏1 year ago

Scalable sampling, promising research 👀

Max Petrusenko's profile picture
Max Petrusenko1 year ago

this is fascinating, can't wait to dig into the paper

Jilong | We provide AI marketer - 24/7 marketing's profile picture
Jilong | We provide AI marketer - 24/7 marketing1 year ago

Exciting potential! How does it handle real-time data optimization?

David Miller's profile picture
David Miller1 year ago

Meta is a slave like company.

Vishal's profile picture
Vishal1 year ago

Adjoint Sampling is a new way to train models using simple rewards. It’s practical and based on solid research.

Spencer Baker's profile picture
Spencer Baker1 year ago

Finally, a way to train models that won't ghost me after the first date!

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