@AnimaAnandkumar: Great to see extrapolation success with FNOs.
Summary
Fourier neural operators (FNOs) achieve extrapolation success in modeling periodically driven quantum systems, capturing temporal correlations in frequency space for physically faithful dynamics beyond training data.
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Cached at: 05/29/26, 11:59 PM
Great to see extrapolation success with FNOs.
PRX Quantum (@PRX_Quantum): By capturing temporal correlations in frequency space, Fourier neural operators enable physically faithful modeling of periodically driven quantum systems and the extrapolation of dynamics beyond the training data.
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