Bypassing the computational bottleneck of quantum-embedding theories for strong electron correlations with machine learning
ORAL
Abstract
A cardinal obstacle to performing quantum-mechanical simulations of strongly-correlated matter is that, with the theoretical tools presently available, sufficiently-accurate computations are often too expensive to be ever feasible. Here we design a computational framework combining quantum-embedding (QE) methods with machine learning. This allows us to bypass altogether the most computationally-expensive components of QE algorithms, making their overall cost comparable to bare Density Functional Theory. We perform benchmark calculations of a series of actinide systems, where our method describes accurately the correlation effects, reducing by orders of magnitude the computational cost. We argue that, by producing a larger-scale set of training data, it will be possible to apply our method to systems with arbitrary stoichiometries and crystal structures, paving the way to virtually infinite applications in condensed matter physics, chemistry and materials science.
ArXiv:2006.15227 (2020)
ArXiv:2006.15227 (2020)
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Presenters
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Nicola Lanata
Department of Physics and Astronomy, Aarhus University, Aarhus University
Authors
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John Rogers
Texas A&M University
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Tsung-Han Lee
Rutgers University
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Sahar Pakdel
Department of Physics and Astronomy, Aarhus University, Aarhus University
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Wenhu Xu
Rutgers University
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Vladimir Dobrosavljevic
Florida State University, NHMFL, Florida State Univerisity
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Yongxin Yao
Ames Laboratory, Ames Laboratory and Iowa State University, Iowa State University
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Ove Christiansen
Aarhus University
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Nicola Lanata
Department of Physics and Astronomy, Aarhus University, Aarhus University