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arxiv: 1502.01663 · v3 · pith:JQCLGJ2Rnew · submitted 2015-02-05 · 🪐 quant-ph · cond-mat.stat-mech

Probing for quantum speedup in spin glass problems with planted solutions

classification 🪐 quant-ph cond-mat.stat-mech
keywords problemsspeedupproblemquantumfrustratedhardnessmightd-wave
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The availability of quantum annealing devices with hundreds of qubits has made the experimental demonstration of a quantum speedup for optimization problems a coveted, albeit elusive goal. Going beyond earlier studies of random Ising problems, here we introduce a method to construct a set of frustrated Ising-model optimization problems with tunable hardness. We study the performance of a D-Wave Two device (DW2) with up to 503 qubits on these problems and compare it to a suite of classical algorithms, including a highly optimized algorithm designed to compete directly with the DW2. The problems are generated around predetermined ground-state configurations, called planted solutions, which makes them particularly suitable for benchmarking purposes. The problem set exhibits properties familiar from constraint satisfaction (SAT) problems, such as a peak in the typical hardness of the problems, determined by a tunable clause density parameter. We bound the hardness regime where the DW2 device either does not or might exhibit a quantum speedup for our problem set. While we do not find evidence for a speedup for the hardest and most frustrated problems in our problem set, we cannot rule out that a speedup might exist for some of the easier, less frustrated problems. Our empirical findings pertain to the specific D-Wave processor and problem set we studied and leave open the possibility that future processors might exhibit a quantum speedup on the same problem set.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Quantum-Assisted Genetic Algorithm

    quant-ph 2019-06 unverdicted novelty 6.0

    QAGAs employ reverse quantum annealing for mutations and classical crossovers, outperforming standard quantum annealing at locating global optima on spin-glass instances using the D-Wave 2000Q.