Quantum algorithms for scientific computing

R Au-Yeung*, B Camino, O Rathore, V Kendon*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)
11 Downloads (Pure)

Abstract

Quantum computing promises to provide the next step up in computational power for diverse application areas. In this review, we examine the science behind the quantum hype, and the breakthroughs required to achieve true quantum advantage in real world applications. Areas that are likely to have the greatest impact on high performance computing (HPC) include simulation of quantum systems, optimization, and machine learning. We draw our examples from electronic structure calculations and computational fluid dynamics which account for a large fraction of current scientific and engineering use of HPC. Potential challenges include encoding and decoding classical data for quantum devices, and mismatched clock speeds between classical and quantum processors. Even a modest quantum enhancement to current classical techniques would have far-reaching impacts in areas such as weather forecasting, aerospace engineering, and the design of 'green' materials for sustainable development. This requires significant effort from the computational science, engineering and quantum computing communities working together.
Original languageEnglish
Article number116001
Number of pages51
JournalReports on Progress in Physics
Volume87
Issue number11
Early online date11 Oct 2024
DOIs
Publication statusPublished - 1 Nov 2024

Funding

RA, BC, OR, and VK are supported by UK Research and Innovation (UKRI) Grants EP/W00772X/2 (QEVEC). RA, OR, and VK are supported by EP/Y004566/1 (QuANDiE). RA, and VK are supported by EP/T001062/1 (QCS Hub). VK is supported by EP/T026715/2 (CCP-QC).

Keywords

  • quantum algorithms
  • quantum computing
  • scientific computing

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