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We establish and discuss a number of connections between a digitized version of Quantum Annealing (QA) with the Quantum Approximate Optimization Algorithm (QAOA) introduced by Farhi et al. (arXiv: 1411. 4028) as an alternative hybrid quantum-classical variational scheme for quantum-state preparation and optimization. We introduce a technique that allows to prove, for instance, a rigorous bound concerning the performance of QAOA for MaxCut on a 2-regular graph, equivalent to an unfrustrated antiferromagnetic Ising chain. The bound shows that the optimal variational error of a depth-P quantum circuit has to satisfy εʳes (2P+2) ^-1. In a separate work (Mbeng et al. , arXiv: 1911. 12259) we have explicitly shown, exploiting a Jordan-Wigner transformation, that among the 2^P degenerate variational minima which can be found for this problem, all strictly satisfying the equality εʳes= (2P+2) ^-1, one can construct a special regular optimal solution, which is computationally optimal and does not require any prior knowledge about the spectral gap. We explicitly demonstrate here that such a schedule is adiabatic, in a digitized sense, and can therefore be interpreted as an optimized digitized-QA protocol. We also discuss and compare our bound on the residual energy to well-known results on the Kibble-Zurek mechanism behind a continuous-time QA. These findings help elucidating the intimate relation between digitized-QA, QAOA, and optimal Quantum Control.
Mbeng et al. (Fri,) studied this question.