@Thom_Wolf: watching a team of agents tackling a hard theoretical physics problem is quite mesmerizing - self-correcting, deriving …
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A tweet observes AI agents collaboratively solving a difficult theoretical physics problem, demonstrating self-correction and equation derivation.
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Cached at: 05/15/26, 02:58 AM
watching a team of agents tackling a hard theoretical physics problem is quite mesmerizing - self-correcting, deriving hard equations, computing intermediate results, re-estimating the best approach https://t.co/RhUmNXkGLB
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