Sami Boulebnane, Abid Khan, Minzhao Liu, Jeffrey Larson, Dylan Herman, Ruslan Shaydulin, Marco Pistoia (May 14 2025).
Abstract: The Sherrington-Kirkpatrick (SK) model serves as a foundational framework for understanding disordered systems. The Quantum Approximate Optimization Algorithm (QAOA) is a quantum optimization algorithm whose performance monotonically improves with its depth
p. We analyze QAOA applied to the SK model in the infinite-size limit and provide numerical evidence that it obtains a
(1−ϵ) approximation to the optimal energy with circuit depth
O(n/ϵ1.13) in the average case. Our results are enabled by mapping the task of evaluating QAOA energy onto the task of simulating a spin-boson system, which we perform with modest cost using matrix product states. We optimize QAOA parameters and observe that QAOA achieves
ε≲2.2% at
p=160 in the infinite-size limit. We then use these optimized QAOA parameters to evaluate the QAOA energy for finite-sized instances with up to
30 qubits and find convergence to the ground state consistent with the infinite-size limit prediction. Our results provide strong numerical evidence that QAOA can efficiently approximate the ground state of the SK model in the average case.