Hamiltonian simulation with random inputs

The algorithmic error of digital quantum simulations is usually explored in terms of the spectral norm distance between the actual and ideal evolution operators. In practice, this worst-case error analysis may be unnecessarily pessimistic. To address this, we develop a theory of average-case perform...

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Main Authors: Zhao, Qi, Zhou, You, Shaw, Alexander F., Li, Tongyang, Childs, Andrew M.
Other Authors: School of Physical and Mathematical Sciences
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/169402
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1694022023-07-24T15:34:48Z Hamiltonian simulation with random inputs Zhao, Qi Zhou, You Shaw, Alexander F. Li, Tongyang Childs, Andrew M. School of Physical and Mathematical Sciences Nanyang Quantum Hub Science::Physics Algorithmic Errors Quantum Simulations The algorithmic error of digital quantum simulations is usually explored in terms of the spectral norm distance between the actual and ideal evolution operators. In practice, this worst-case error analysis may be unnecessarily pessimistic. To address this, we develop a theory of average-case performance of Hamiltonian simulation with random initial states. We relate the average-case error to the Frobenius norm of the multiplicative error and give upper bounds for the product formula (PF) and truncated Taylor series methods. As applications, we estimate average-case error for the digital Hamiltonian simulation of general lattice Hamiltonians and k-local Hamiltonians. In particular, for the nearest-neighbor Heisenberg chain with n spins, the error is quadratically reduced from O(n) in the worst case to O(sqrt[n]) on average for both the PF method and the Taylor series method. Numerical evidence suggests that this theory accurately characterizes the average error for concrete models. We also apply our results to error analysis in the simulation of quantum scrambling. Ministry of Education (MOE) Published version Q. Z. and A. F. S. acknowledge the support of the Department of Defense through the QuICS Hartree Postdoctoral Fellowship and Lanczos Graduate Fellowship, respectively. Q. Z. acknowledges the support from HKU Seed Fund for New Staff. Y. Z. acknowledges the support of NSFC No. 12205048, the Singapore MOE Tier 1 Grant No. RG162/19 and RG146/20, and FQXi-RFP-IPW-1903. T. L. was supported by the NSF Grant No. PHY-1818914 and a Samsung Advanced Institute of Technology Global Research Partnership. A. M. C. received support from the National Science Foundation (Grant No. CCF-1813814 and QLCI Grant No. OMA-2120757) and the Department of Energy, Office of Science, Office of Advanced Scientific Computing Research, Quantum Algorithms Teams and Accelerated Research in Quantum Computing programs. 2023-07-18T01:00:19Z 2023-07-18T01:00:19Z 2022 Journal Article Zhao, Q., Zhou, Y., Shaw, A. F., Li, T. & Childs, A. M. (2022). Hamiltonian simulation with random inputs. Physical Review Letters, 129(27), 270502-. https://dx.doi.org/10.1103/PhysRevLett.129.270502 0031-9007 https://hdl.handle.net/10356/169402 10.1103/PhysRevLett.129.270502 36638301 2-s2.0-85145350598 27 129 270502-1 270502-7 en RG162/19 RG146/20 Physical Review Letters © 2022 American Physical Society. All rights reserved. This paper was published in Physical Review Letters and is made available with permission of American Physical Society. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Physics
Algorithmic Errors
Quantum Simulations
spellingShingle Science::Physics
Algorithmic Errors
Quantum Simulations
Zhao, Qi
Zhou, You
Shaw, Alexander F.
Li, Tongyang
Childs, Andrew M.
Hamiltonian simulation with random inputs
description The algorithmic error of digital quantum simulations is usually explored in terms of the spectral norm distance between the actual and ideal evolution operators. In practice, this worst-case error analysis may be unnecessarily pessimistic. To address this, we develop a theory of average-case performance of Hamiltonian simulation with random initial states. We relate the average-case error to the Frobenius norm of the multiplicative error and give upper bounds for the product formula (PF) and truncated Taylor series methods. As applications, we estimate average-case error for the digital Hamiltonian simulation of general lattice Hamiltonians and k-local Hamiltonians. In particular, for the nearest-neighbor Heisenberg chain with n spins, the error is quadratically reduced from O(n) in the worst case to O(sqrt[n]) on average for both the PF method and the Taylor series method. Numerical evidence suggests that this theory accurately characterizes the average error for concrete models. We also apply our results to error analysis in the simulation of quantum scrambling.
author2 School of Physical and Mathematical Sciences
author_facet School of Physical and Mathematical Sciences
Zhao, Qi
Zhou, You
Shaw, Alexander F.
Li, Tongyang
Childs, Andrew M.
format Article
author Zhao, Qi
Zhou, You
Shaw, Alexander F.
Li, Tongyang
Childs, Andrew M.
author_sort Zhao, Qi
title Hamiltonian simulation with random inputs
title_short Hamiltonian simulation with random inputs
title_full Hamiltonian simulation with random inputs
title_fullStr Hamiltonian simulation with random inputs
title_full_unstemmed Hamiltonian simulation with random inputs
title_sort hamiltonian simulation with random inputs
publishDate 2023
url https://hdl.handle.net/10356/169402
_version_ 1773551282781421568