Towards Neural Variational Monte Carlo That Scales Linearly with System Size
ORAL
Abstract
Quantum many-body problems are some of the most challenging problems in science and are central to demystifying some exotic quantum phenomena, e.g., high-temperature superconductors. The combination of neural networks (NN) for representing quantum states, coupled with the Variational Monte Carlo (VMC) algorithm, has been shown to be a promising method for solving such problems. However, the run-time of this approach scales quadratically with the number of simulated particles, constraining the practically usable NN to — in machine learning terms — minuscule sizes (
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Publication: Towards Neural Variational Monte Carlo That Scales Linearly with System Size. Or Sharir, Garnet Chan, Anima Anandkumar. Under review.
Presenters
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Or Sharir
Caltech
Authors
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Or Sharir
Caltech
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Garnet K Chan
Caltech
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Anima Anandkumar
Caltech, CalTech, NVIDIA