articleScience AdvancesMay 29, 2024GOLD OA

Evidence of scaling advantage for the quantum approximate optimization algorithm on a classically intractable problem

JPMorgan Chase & Co (United States) · Argonne National Laboratory

PubMed
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Abstract

The quantum approximate optimization algorithm (QAOA) is a leading candidate algorithm for solving optimization problems on quantum computers. However, the potential of QAOA to tackle classically intractable problems remains unclear. Here, we perform an extensive numerical investigation of QAOA on the low autocorrelation binary sequences (LABS) problem, which is classically intractable even for moderately sized instances. We perform noiseless simulations with up to 40 qubits and observe that the runtime of QAOA with fixed parameters scales better than branch-and-bound solvers, which are the state-of-the-art exact solvers for LABS. The combination of QAOA with quantum minimum finding gives the best empirical…

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