Cargando…

Importance sampling for stochastic quantum simulations

Simulating many-body quantum systems is a promising task for quantum computers. However, the depth of most algorithms, such as product formulas, scales with the number of terms in the Hamiltonian, and can therefore be challenging to implement on near-term, as well as early fault-tolerant quantum dev...

Descripción completa

Detalles Bibliográficos
Autores principales: Kiss, Oriel, Grossi, Michele, Roggero, Alessandro
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.22331/q-2023-04-13-977
http://cds.cern.ch/record/2853381
_version_ 1780977204903018496
author Kiss, Oriel
Grossi, Michele
Roggero, Alessandro
author_facet Kiss, Oriel
Grossi, Michele
Roggero, Alessandro
author_sort Kiss, Oriel
collection CERN
description Simulating many-body quantum systems is a promising task for quantum computers. However, the depth of most algorithms, such as product formulas, scales with the number of terms in the Hamiltonian, and can therefore be challenging to implement on near-term, as well as early fault-tolerant quantum devices. An efficient solution is given by the stochastic compilation protocol known as qDrift, which builds random product formulas by sampling from the Hamiltonian according to the coefficients. In this work, we unify the qDrift protocol with importance sampling, allowing us to sample from arbitrary probability distributions, while controlling both the bias, as well as the statistical fluctuations. We show that the simulation cost can be reduced while achieving the same accuracy, by considering the individual simulation cost during the sampling stage.Moreover, we incorporate recent work on composite channel and compute rigorous bounds on the bias and variance, showing how to choose the number of samples, experiments, and time steps for a given target accuracy. These results lead to a more efficient implementation of the qDrift protocol, both with and without the use of composite channels. Theoretical results are confirmed by numerical simulations performed on a lattice nuclear effective field theory.
id cern-2853381
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28533812023-09-29T02:12:28Zdoi:10.22331/q-2023-04-13-977http://cds.cern.ch/record/2853381engKiss, OrielGrossi, MicheleRoggero, AlessandroImportance sampling for stochastic quantum simulationsquant-phGeneral Theoretical PhysicsSimulating many-body quantum systems is a promising task for quantum computers. However, the depth of most algorithms, such as product formulas, scales with the number of terms in the Hamiltonian, and can therefore be challenging to implement on near-term, as well as early fault-tolerant quantum devices. An efficient solution is given by the stochastic compilation protocol known as qDrift, which builds random product formulas by sampling from the Hamiltonian according to the coefficients. In this work, we unify the qDrift protocol with importance sampling, allowing us to sample from arbitrary probability distributions, while controlling both the bias, as well as the statistical fluctuations. We show that the simulation cost can be reduced while achieving the same accuracy, by considering the individual simulation cost during the sampling stage.Moreover, we incorporate recent work on composite channel and compute rigorous bounds on the bias and variance, showing how to choose the number of samples, experiments, and time steps for a given target accuracy. These results lead to a more efficient implementation of the qDrift protocol, both with and without the use of composite channels. Theoretical results are confirmed by numerical simulations performed on a lattice nuclear effective field theory.Simulating many-body quantum systems is a promising task for quantum computers. However, the depth of most algorithms, such as product formulas, scales with the number of terms in the Hamiltonian, and can therefore be challenging to implement on near-term, as well as early fault-tolerant quantum devices. An efficient solution is given by the stochastic compilation protocol known as qDrift, which builds random product formulas by sampling from the Hamiltonian according to the coefficients. In this work, we unify the qDrift protocol with importance sampling, allowing us to sample from arbitrary probability distributions, while controlling both the bias, as well as the statistical fluctuations. We show that the simulation cost can be reduced while achieving the same accuracy, by considering the individual simulation cost during the sampling stage. Moreover, we incorporate recent work on composite channel and compute rigorous bounds on the bias and variance, showing how to choose the number of samples, experiments, and time steps for a given target accuracy. These results lead to a more efficient implementation of the qDrift protocol, both with and without the use of composite channels. Theoretical results are confirmed by numerical simulations performed on a lattice nuclear effective field theory.arXiv:2212.05952oai:cds.cern.ch:28533812022-12-12
spellingShingle quant-ph
General Theoretical Physics
Kiss, Oriel
Grossi, Michele
Roggero, Alessandro
Importance sampling for stochastic quantum simulations
title Importance sampling for stochastic quantum simulations
title_full Importance sampling for stochastic quantum simulations
title_fullStr Importance sampling for stochastic quantum simulations
title_full_unstemmed Importance sampling for stochastic quantum simulations
title_short Importance sampling for stochastic quantum simulations
title_sort importance sampling for stochastic quantum simulations
topic quant-ph
General Theoretical Physics
url https://dx.doi.org/10.22331/q-2023-04-13-977
http://cds.cern.ch/record/2853381
work_keys_str_mv AT kissoriel importancesamplingforstochasticquantumsimulations
AT grossimichele importancesamplingforstochasticquantumsimulations
AT roggeroalessandro importancesamplingforstochasticquantumsimulations