Quantum Simulation for High Energy Physics
- URL: http://arxiv.org/abs/2204.03381v1
- Date: Thu, 7 Apr 2022 11:59:15 GMT
- Title: Quantum Simulation for High Energy Physics
- Authors: Christian W. Bauer, Zohreh Davoudi, A. Baha Balantekin, Tanmoy
Bhattacharya, Marcela Carena, Wibe A. de Jong, Patrick Draper, Aida
El-Khadra, Nate Gemelke, Masanori Hanada, Dmitri Kharzeev, Henry Lamm,
Ying-Ying Li, Junyu Liu, Mikhail Lukin, Yannick Meurice, Christopher Monroe,
Benjamin Nachman, Guido Pagano, John Preskill, Enrico Rinaldi, Alessandro
Roggero, David I. Santiago, Martin J. Savage, Irfan Siddiqi, George Siopsis,
David Van Zanten, Nathan Wiebe, Yukari Yamauchi, K\"ubra Yeter-Aydeniz,
Silvia Zorzetti
- Abstract summary: It is for the first time that Quantum Simulation for High Energy Physics is studied in the U.S. decadal particle-physics community.
High-energy physicists have quickly identified problems of importance to our understanding of nature at the most fundamental level.
They have initiated, and continue to carry out, a vigorous program in theory, algorithm, and hardware co-design for simulations of relevance to the HEP mission.
- Score: 43.18801287796979
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: It is for the first time that Quantum Simulation for High Energy Physics
(HEP) is studied in the U.S. decadal particle-physics community planning, and
in fact until recently, this was not considered a mainstream topic in the
community. This fact speaks of a remarkable rate of growth of this subfield
over the past few years, stimulated by the impressive advancements in Quantum
Information Sciences (QIS) and associated technologies over the past decade,
and the significant investment in this area by the government and private
sectors in the U.S. and other countries. High-energy physicists have quickly
identified problems of importance to our understanding of nature at the most
fundamental level, from tiniest distances to cosmological extents, that are
intractable with classical computers but may benefit from quantum advantage.
They have initiated, and continue to carry out, a vigorous program in theory,
algorithm, and hardware co-design for simulations of relevance to the HEP
mission. This community whitepaper is an attempt to bring this exciting and yet
challenging area of research to the spotlight, and to elaborate on what the
promises, requirements, challenges, and potential solutions are over the next
decade and beyond.
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