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On the experimental feasibility of quantum state reconstruction via machine learning

IEEE Transactions on Quantum Engineering (IEEE Trans. Quantum Eng.), 2020
Abstract

We determine the resource scaling of machine learning-based quantum state reconstruction methods, in terms of both inference and training, for systems of up to four qubits. Further, we examine system performance in the low-count regime, likely to be encountered in the tomography of high-dimensional systems. Finally, we implement our quantum state reconstruction method on a IBM Q quantum computer and confirm our results.

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