Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer

One of the potential applications of a quantum computer is solving quantum chemical systems. It is known that one of the fastest ways to obtain somewhat accurate solutions classically is to use approximations of density functional theory. We demonstrate a general method for obtaining the exact funct...

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發表在:Physical Review Research
Main Authors: Thomas E. Baker, David Poulin
格式: Article
語言:英语
出版: American Physical Society 2020-11-01
在線閱讀:http://doi.org/10.1103/PhysRevResearch.2.043238
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author Thomas E. Baker
David Poulin
author_facet Thomas E. Baker
David Poulin
author_sort Thomas E. Baker
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container_title Physical Review Research
description One of the potential applications of a quantum computer is solving quantum chemical systems. It is known that one of the fastest ways to obtain somewhat accurate solutions classically is to use approximations of density functional theory. We demonstrate a general method for obtaining the exact functional as a machine learned model from a sufficiently powerful quantum computer. Only existing assumptions for the current feasibility of solutions on the quantum computer are used. Several known algorithms including quantum phase estimation, quantum amplitude estimation, and quantum gradient methods are used to train a machine learned model. One advantage of this combination of algorithms is that the quantum wavefunction does not need to be completely re-prepared at each step, lowering a sizable prefactor. Using the assumptions for solutions of the ground-state algorithms on a quantum computer, we demonstrate that finding the Kohn-Sham potential is not necessarily more difficult than the ground-state density. Once constructed, a classical user can use the resulting machine learned functional to solve for the ground state of a system self-consistently, provided the machine learned approximation is accurate enough for the input system. It is also demonstrated how the classical user can access commonly used time- and temperature-dependent approximations from the ground-state model. Minor modifications to the algorithm can learn other types of functional theories including exact time and temperature dependence. Several other algorithms—including quantum machine learning—are demonstrated to be impractical in the general case for this problem.
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spelling doaj-art-33a3f2b8dbdd4c338b1d14229ef5cfd02025-08-19T23:25:49ZengAmerican Physical SocietyPhysical Review Research2643-15642020-11-012404323810.1103/PhysRevResearch.2.043238Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computerThomas E. BakerDavid PoulinOne of the potential applications of a quantum computer is solving quantum chemical systems. It is known that one of the fastest ways to obtain somewhat accurate solutions classically is to use approximations of density functional theory. We demonstrate a general method for obtaining the exact functional as a machine learned model from a sufficiently powerful quantum computer. Only existing assumptions for the current feasibility of solutions on the quantum computer are used. Several known algorithms including quantum phase estimation, quantum amplitude estimation, and quantum gradient methods are used to train a machine learned model. One advantage of this combination of algorithms is that the quantum wavefunction does not need to be completely re-prepared at each step, lowering a sizable prefactor. Using the assumptions for solutions of the ground-state algorithms on a quantum computer, we demonstrate that finding the Kohn-Sham potential is not necessarily more difficult than the ground-state density. Once constructed, a classical user can use the resulting machine learned functional to solve for the ground state of a system self-consistently, provided the machine learned approximation is accurate enough for the input system. It is also demonstrated how the classical user can access commonly used time- and temperature-dependent approximations from the ground-state model. Minor modifications to the algorithm can learn other types of functional theories including exact time and temperature dependence. Several other algorithms—including quantum machine learning—are demonstrated to be impractical in the general case for this problem.http://doi.org/10.1103/PhysRevResearch.2.043238
spellingShingle Thomas E. Baker
David Poulin
Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title_full Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title_fullStr Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title_full_unstemmed Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title_short Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer
title_sort density functionals and kohn sham potentials with minimal wavefunction preparations on a quantum computer
url http://doi.org/10.1103/PhysRevResearch.2.043238
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