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Quantum computing hardware for HEP algorithms and sensing

Authors :
Alam, M. Sohaib
Belomestnykh, Sergey
Bornman, Nicholas
Cancelo, Gustavo
Chao, Yu-Chiu
Checchin, Mattia
Dinh, Vinh San
Grassellino, Anna
Gustafson, Erik J.
Harnik, Roni
McRae, Corey Rae Harrington
Huang, Ziwen
Kapoor, Keshav
Kim, Taeyoon
Kowalkowski, James B.
Kramer, Matthew J.
Krasnikova, Yulia
Kumar, Prem
Kurkcuoglu, Doga Murat
Lamm, Henry
Lyon, Adam L.
Milathianaki, Despina
Murthy, Akshay
Mutus, Josh
Nekrashevich, Ivan
Oh, JinSu
Özgüler, A. Barış
Perdue, Gabriel Nathan
Reagor, Matthew
Romanenko, Alexander
Sauls, James A.
Stefanazzi, Leandro
Tubman, Norm M.
Venturelli, Davide
Wang, Changqing
You, Xinyuan
van Zanten, David M. T.
Zhou, Lin
Zhu, Shaojiang
Zorzetti, Silvia
Publication Year :
2022

Abstract

Quantum information science harnesses the principles of quantum mechanics to realize computational algorithms with complexities vastly intractable by current computer platforms. Typical applications range from quantum chemistry to optimization problems and also include simulations for high energy physics. The recent maturing of quantum hardware has triggered preliminary explorations by several institutions (including Fermilab) of quantum hardware capable of demonstrating quantum advantage in multiple domains, from quantum computing to communications, to sensing. The Superconducting Quantum Materials and Systems (SQMS) Center, led by Fermilab, is dedicated to providing breakthroughs in quantum computing and sensing, mediating quantum engineering and HEP based material science. The main goal of the Center is to deploy quantum systems with superior performance tailored to the algorithms used in high energy physics. In this Snowmass paper, we discuss the two most promising superconducting quantum architectures for HEP algorithms, i.e. three-level systems (qutrits) supported by transmon devices coupled to planar devices and multi-level systems (qudits with arbitrary N energy levels) supported by superconducting 3D cavities. For each architecture, we demonstrate exemplary HEP algorithms and identify the current challenges, ongoing work and future opportunities. Furthermore, we discuss the prospects and complexities of interconnecting the different architectures and individual computational nodes. Finally, we review several different strategies of error protection and correction and discuss their potential to improve the performance of the two architectures. This whitepaper seeks to reach out to the HEP community and drive progress in both HEP research and QIS hardware.<br />Comment: contribution to Snowmass 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.08605
Document Type :
Working Paper