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Bounding the speedup of the quantum-enhanced Markov-chain Monte Carlo algorithm

Alev Orfi, Dries Sels

2024Physical review. A/Physical review, A11 citationsDOI

Abstract

Sampling tasks are a natural class of problems for quantum computers due to the probabilistic nature of the Born rule. Sampling from useful distributions on noisy quantum hardware remains a challenging problem. A recent paper [D. Layden et al., Nature (London) 619, 282 (2023).] proposed a quantum-enhanced Markov-chain Monte Carlo algorithm where moves are generated by a quantum device and accepted or rejected by a classical algorithm. While this procedure is robust to noise and control imperfections, its potential for quantum advantage is unclear. Here we show that there is no speedup over classical sampling on a worst-case unstructured sampling problem. We present an upper bound to the Markov gap that rules out a speedup for any unital quantum proposal.

Topics & Concepts

SpeedupMarkov chain Monte CarloBounding overwatchComputer scienceAlgorithmMonte Carlo methodMarkov chainParallel computingMathematicsArtificial intelligenceStatisticsMachine learningQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyQuantum and electron transport phenomena
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