Saved in:
Bibliographic Details
Main Authors: Gratsea, Katerina, Kottmann, Jakob S., Johnson, Peter D., Kunitsa, Alexander A.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.05306
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929206165766144
author Gratsea, Katerina
Kottmann, Jakob S.
Johnson, Peter D.
Kunitsa, Alexander A.
author_facet Gratsea, Katerina
Kottmann, Jakob S.
Johnson, Peter D.
Kunitsa, Alexander A.
contents One promising field of quantum computation is the simulation of quantum systems, and specifically, the task of ground state energy estimation (GSEE). Ground state preparation (GSP) is a crucial component in GSEE algorithms, and classical methods like Hartree-Fock state preparation are commonly used. However, the efficiency of such classical methods diminishes exponentially with increasing system size in certain cases. In this study, we investigated whether in those cases quantum heuristic GSP methods could improve the overlap values compared to Hartree-Fock. Moreover, we carefully studied the performance gain for GSEE algorithms by exploring the trade-off between the overlap improvement and the associated resource cost in terms of T-gates of the GSP algorithm. Our findings indicate that quantum heuristic GSP can accelerate GSEE tasks, already for computationally affordable strongly-correlated systems of intermediate size. These results suggest that quantum heuristic GSP has the potential to significantly reduce the runtime requirements of GSEE algorithms, thereby enhancing their suitability for implementation on quantum hardware.
format Preprint
id arxiv_https___arxiv_org_abs_2401_05306
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Comparing Classical and Quantum Ground State Preparation Heuristics
Gratsea, Katerina
Kottmann, Jakob S.
Johnson, Peter D.
Kunitsa, Alexander A.
Quantum Physics
One promising field of quantum computation is the simulation of quantum systems, and specifically, the task of ground state energy estimation (GSEE). Ground state preparation (GSP) is a crucial component in GSEE algorithms, and classical methods like Hartree-Fock state preparation are commonly used. However, the efficiency of such classical methods diminishes exponentially with increasing system size in certain cases. In this study, we investigated whether in those cases quantum heuristic GSP methods could improve the overlap values compared to Hartree-Fock. Moreover, we carefully studied the performance gain for GSEE algorithms by exploring the trade-off between the overlap improvement and the associated resource cost in terms of T-gates of the GSP algorithm. Our findings indicate that quantum heuristic GSP can accelerate GSEE tasks, already for computationally affordable strongly-correlated systems of intermediate size. These results suggest that quantum heuristic GSP has the potential to significantly reduce the runtime requirements of GSEE algorithms, thereby enhancing their suitability for implementation on quantum hardware.
title Comparing Classical and Quantum Ground State Preparation Heuristics
topic Quantum Physics
url https://arxiv.org/abs/2401.05306