We determine the resource scaling of machine learning-based quantum state reconstruction methods, in terms of inference and training, for systems of up to four qubits when constrained to pure states. 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 an IBM Q quantum computer, and compare against both unconstrained and constrained MLE state reconstruction.
翻译:我们从推论和培训的角度来决定机器学习量子国家重建方法的资源规模,在限制在纯状态下最多可达到4 ⁇ 的系统。此外,我们审查低计数制度中的系统性能,这在高维系统的XMX中可能遇到。最后,我们在IBM量子计算机上实施量子国家重建方法,并与不受限制和受限制的MLE国家重建进行比较。