Quantum approximate optimization of non-planar graph problems on a planar superconducting processor

被引:0
作者
Matthew P. Harrigan
Kevin J. Sung
Matthew Neeley
Kevin J. Satzinger
Frank Arute
Kunal Arya
Juan Atalaya
Joseph C. Bardin
Rami Barends
Sergio Boixo
Michael Broughton
Bob B. Buckley
David A. Buell
Brian Burkett
Nicholas Bushnell
Yu Chen
Zijun Chen
Roberto Ben Chiaro
William Collins
Sean Courtney
Andrew Demura
Daniel Dunsworth
Austin Eppens
Brooks Fowler
Craig Foxen
Marissa Gidney
Rob Giustina
Steve Graff
Alan Habegger
Sabrina Ho
Trent Hong
L. B. Huang
Sergei V. Ioffe
Evan Isakov
Zhang Jeffrey
Cody Jiang
Dvir Jones
Kostyantyn Kafri
Julian Kechedzhi
Seon Kelly
Paul V. Kim
Alexander N. Klimov
Fedor Korotkov
David Kostritsa
Pavel Landhuis
Mike Laptev
Martin Lindmark
Orion Leib
John M. Martin
Jarrod R. Martinis
机构
[1] Google Research,Department of Electrical Engineering and Computer Science
[2] University of Michigan,Department of Electrical and Computer Engineering
[3] University of Massachusetts,Department of Physics
[4] University of California,Department of Electrical and Computer Engineering
[5] University of California,Department of Electrical Engineering and Computer Sciences
[6] Volkswagen Data:Lab,Department of Physics
[7] NASA Ames Research Center,Department of Physics
[8] University of California,undefined
[9] Leiden University,undefined
[10] Friedrich-Alexander University Erlangen-Nürnberg,undefined
[11] Harvard University,undefined
来源
Nature Physics | 2021年 / 17卷
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摘要
Faster algorithms for combinatorial optimization could prove transformative for diverse areas such as logistics, finance and machine learning. Accordingly, the possibility of quantum enhanced optimization has driven much interest in quantum technologies. Here we demonstrate the application of the Google Sycamore superconducting qubit quantum processor to combinatorial optimization problems with the quantum approximate optimization algorithm (QAOA). Like past QAOA experiments, we study performance for problems defined on the planar connectivity graph native to our hardware; however, we also apply the QAOA to the Sherrington–Kirkpatrick model and MaxCut, non-native problems that require extensive compilation to implement. For hardware-native problems, which are classically efficient to solve on average, we obtain an approximation ratio that is independent of problem size and observe that performance increases with circuit depth. For problems requiring compilation, performance decreases with problem size. Circuits involving several thousand gates still present an advantage over random guessing but not over some efficient classical algorithms. Our results suggest that it will be challenging to scale near-term implementations of the QAOA for problems on non-native graphs. As these graphs are closer to real-world instances, we suggest more emphasis should be placed on such problems when using the QAOA to benchmark quantum processors.
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页码:332 / 336
页数:4
相关论文
共 52 条
[1]  
Biswas R(2017)A NASA perspective on quantum computing: opportunities and challenges Parallel Comput. 64 81-98
[2]  
Wecker D(2016)Training a quantum optimizer Phys. Rev. A 94 022309-3253
[3]  
Hastings MB(2017)Near-optimal quantum circuit for Grover’s unstructured search using a transverse field Phys. Rev. A 95 062317-209
[4]  
Troyer M(2018)Quantum approximate optimization algorithm for MaxCut: a fermionic view Phys. Rev. A 97 022304-5363
[5]  
Jiang Z(2017)From the quantum approximate optimization algorithm to a quantum alternating operator ansatz Algorithms 12 34-475
[6]  
Rieffel EG(2014)Ising formulations of many NP problems Front. Phys. 2 5-750
[7]  
Wang Z(1982)On the computational complexity of Ising spin glass models J. Phys. A 15 3241-25401
[8]  
Wang Z(2008)Minor-embedding in adiabatic quantum computation: I. The parameter setting problem Quantum Inf. Process. 7 193-539
[9]  
Hadfield S(1998)Quantum annealing in the transverse Ising model Phys. Rev. E 58 5355-510
[10]  
Jiang Z(2001)A quantum adiabatic evolution algorithm applied to random instances of an NP-complete problem Science 292 472-424