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Pushing the Boundary of Quantum Advantage in Hard Combinatorial Optimization with Probabilistic Computers (2503.10302v2)

Published 13 Mar 2025 in quant-ph, cond-mat.dis-nn, and cs.ET

Abstract: Recent demonstrations on specialized benchmarks have reignited excitement for quantum computers, yet whether they can deliver an advantage for practical real-world problems remains an open question. Here, we show that probabilistic computers (p-computers) when co-designed with hardware to implement powerful Monte Carlo algorithms can surpass state-of-the-art quantum annealers <a href="https://www.nature.com/articles/s41586-023-05867-2" target="_blank">[King et al., Nature (2023)]</a> in solving certain hard optimization problems. We focus on two key algorithms: discrete-time simulated quantum annealing (DT-SQA) and adaptive parallel tempering (APT), both applied to 3D spin glasses. For DT-SQA, we find that increasing the number of replicas improves residual energy scaling, while parallelizing fewer replicas across independent runs also achieves comparable scaling. Both strategies align with the theoretical expectations from extreme value theory. In addition, APT outperforms DT-SQA when supported by non-local isoenergetic cluster moves. Finite-size scaling analysis suggests a universal behavior that explains the superior performance of APT over both DT-SQA and quantum annealing. We show that these algorithms are readily implementable in modern hardware thanks to the mature semiconductor technology. Unlike software simulations, replicas can be monolithically housed on a single chip and a large number of spins can be updated in parallel and asynchronously, similar to a quantum annealer. We project that custom Field Programmable Gate Arrays (FPGA) or specialized chips leveraging massive parallelism can further accelerate these algorithms by orders of magnitude, while drastically improving energy efficiency. Our results raise the bar for a practical quantum advantage in optimization and present p-computers as scalable, energy-efficient hardware for real-world optimization problems.

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