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Abstract
Quantum computers theoretically promise computational advantages in many tasks, but it is much less clear how such advantages can be maintained when using existing and near-term hardware that has limitations in the number and quality of its qubits. Layden et al. [Nature (London) 619, 282 (2023)0028-083610.1038/s41586-023-06095-4] proposed a promising application by introducing a quantum-enhanced Markov chain Monte Carlo (QeMCMC) approach to reduce the thermalization time required when sampling from hard probability distributions. In QeMCMC, the size of the required quantum computer scales linearly with the problem, placing limitations on the sizes of systems that can be considered. In this paper we introduce a framework to coarse grain the algorithm in such a way that the quantum computation can be performed using considerably smaller quantum computers and we term the method the coarse grained quantum-enhanced Markov chain Monte Carlo (CGQeMCMC). Example strategies within this framework are put to the test, with the quantum speedup persisting while using only n simulated qubits where n is the number of qubits required in the original QeMCMC - a quadratic reduction in resources. The coarse graining framework has the potential to be practically applicable in the near term as it requires very few qubits to approach classically intractable problem instances; in this case, only six simulated qubits suffice to gain an advantage compared with standard classical approaches when investigating the magnetization of a 36-spin system. Our method can be easily combined with other classical and quantum techniques and is adaptable to various quantum hardware specifications - in particular those with limited connectivity.
Original language | English |
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Article number | 013231 |
Pages (from-to) | 1-13 |
Number of pages | 13 |
Journal | Physical Review Research |
Volume | 7 |
Issue number | 1 |
DOIs | |
Publication status | Published - 3 Mar 2025 |
Keywords / Materials (for Non-textual outputs)
- spin glasses
- coarse graining
- metropolis algorithm
- quantum algorithms
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Quantum Advantage Pathfinder - Proposal for research and leadership role in quantum software and algorithms
Kashefi, E. (Principal Investigator), Arapinis, M. (Co-investigator), Garcia-Patron Sanchez, R. (Co-investigator), Heunen, C. (Co-investigator) & Wallden, P. (Co-investigator)
Engineering and Physical Sciences Research Council
1/04/23 → 31/03/26
Project: Research
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EPSRC Hub in Quantum Computing and Simulation
Kashefi, E. (Principal Investigator), Arapinis, M. (Co-investigator), Heunen, C. (Co-investigator) & Wallden, P. (Co-investigator)
Engineering and Physical Sciences Research Council
1/12/19 → 31/05/25
Project: Research
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Quantum Software for a Digital Universe
Brown, O. (Principal Investigator) & Wallden, P. (Co-investigator)
Science and Technology Facilities Council
1/04/22 → 12/03/25
Project: Research
Research output
- 1 Preprint
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Quantum-enhanced Markov Chain Monte Carlo for systems larger than your Quantum Computer
Ferguson, S. & Wallden, P., 7 May 2024, ArXiv.Research output: Working paper › Preprint
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