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Quantum-enhanced greedy combinatorial optimization solver.

Maxime DupontBram EvertMark J HodsonBhuvanesh SundarStephen JeffreyYuki YamaguchiDennis FengFilip B MaciejewskiStuart HadfieldM Sohaib AlamZhihui WangShon GrabbeP Aaron LottEleanor G RieffelDavide VenturelliMatthew J Reagor
Published in: Science advances (2023)
Combinatorial optimization is a broadly attractive area for potential quantum advantage, but no quantum algorithm has yet made the leap. Noise in quantum hardware remains a challenge, and more sophisticated quantum-classical algorithms are required to bolster their performance. Here, we introduce an iterative quantum heuristic optimization algorithm to solve combinatorial optimization problems. The quantum algorithm reduces to a classical greedy algorithm in the presence of strong noise. We implement the quantum algorithm on a programmable superconducting quantum system using up to 72 qubits for solving paradigmatic Sherrington-Kirkpatrick Ising spin glass problems. We find the quantum algorithm systematically outperforms its classical greedy counterpart, signaling a quantum enhancement. Moreover, we observe an absolute performance comparable with a state-of-the-art semidefinite programming method. Classical simulations of the algorithm illustrate that a key challenge to reaching quantum advantage remains improving the quantum device characteristics.
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