Ising machines as hardware solvers of combinatorial optimization problems

被引:0
|
作者
Naeimeh Mohseni
Peter L. McMahon
Tim Byrnes
机构
[1] State Key Laboratory of Precision Spectroscopy,Department of Physics
[2] School of Physical and Material Sciences,School of Applied and Engineering Physics
[3] East China Normal University,Department of Physics
[4] Max-Planck-Institut für die Physik des Lichts,undefined
[5] Erlangen-Nuremberg,undefined
[6] Cornell University,undefined
[7] New York University Shanghai,undefined
[8] NYU-ECNU Institute of Physics at NYU Shanghai,undefined
[9] National Institute of Information and Communications Technology,undefined
[10] New York University,undefined
来源
Nature Reviews Physics | 2022年 / 4卷
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摘要
Ising machines are hardware solvers that aim to find the absolute or approximate ground states of the Ising model. The Ising model is of fundamental computational interest because any problem in the complexity class NP can be formulated as an Ising problem with only polynomial overhead, and thus a scalable Ising machine that outperforms existing standard digital computers could have a huge impact for practical applications. We survey the status of various approaches to constructing Ising machines and explain their underlying operational principles. The types of Ising machines considered here include classical thermal annealers based on technologies such as spintronics, optics, memristors and digital hardware accelerators; dynamical systems solvers implemented with optics and electronics; and superconducting-circuit quantum annealers. We compare and contrast their performance using standard metrics such as the ground-state success probability and time-to-solution, give their scaling relations with problem size, and discuss their strengths and weaknesses.
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页码:363 / 379
页数:16
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