LSTM on latent manifold jointly predicts dynamics and optimizes control pulses, cutting optimization cost by 1000x on adiabatic speedup and noisy spin-chain transfer tasks.
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End-to-End Learning of Quantum Control on Latent Dynamical Manifold
LSTM on latent manifold jointly predicts dynamics and optimizes control pulses, cutting optimization cost by 1000x on adiabatic speedup and noisy spin-chain transfer tasks.