论文标题

具有主动学习的自适应量子状态断层扫描

Adaptive Quantum State Tomography with Active Learning

论文作者

Lange, Hannah, Kebrič, Matjaž, Buser, Maximilian, Schollwöck, Ulrich, Grusdt, Fabian, Bohrdt, Annabelle

论文摘要

最近,在量子科学和技术领域取得了巨大进步:量子模拟的不同平台以及量子计算的平台,从超导量子量子器到中性原子,都开始达到前所未有的大型系统。为了基准这些系统并获得物理见解,需要有效的工具来表征量子状态。具有系统尺寸的希尔伯特空间的指数增长使量子状态的全面重建在必要的测量次数方面非常有要求。在这里,我们提出并实施了使用主动学习的量子状态断层扫描的有效方案。根据一些初始测量,主动学习协议提出了下一个测量基础,旨在产生最大信息增益。我们将主动的学习量子层析成像方案应用于具有不同程度的纠缠程度以及1D中XXZ模型的基态和动力学约束的自旋链的不同多数状态。在所有情况下,与基于完全相同数量的测量和测量配置的重建相比,我们都会获得明显改进的重建,但具有随机选择的基础配置。我们的方案与获得量子多体系统以及基准测试和表征量子设备的物理见解高度相关,例如用于量子模拟,并为可扩展的自适应方案铺平了道路,以探测,准备和操纵量子系统。

Recently, tremendous progress has been made in the field of quantum science and technologies: different platforms for quantum simulation as well as quantum computing, ranging from superconducting qubits to neutral atoms, are starting to reach unprecedentedly large systems. In order to benchmark these systems and gain physical insights, the need for efficient tools to characterize quantum states arises. The exponential growth of the Hilbert space with system size renders a full reconstruction of the quantum state prohibitively demanding in terms of the number of necessary measurements. Here we propose and implement an efficient scheme for quantum state tomography using active learning. Based on a few initial measurements, the active learning protocol proposes the next measurement basis, designed to yield the maximum information gain. We apply the active learning quantum state tomography scheme to reconstruct different multi-qubit states with varying degree of entanglement as well as to ground states of the XXZ model in 1D and a kinetically constrained spin chain. In all cases, we obtain a significantly improved reconstruction as compared to a reconstruction based on the exact same number of measurements and measurement configurations, but with randomly chosen basis configurations. Our scheme is highly relevant to gain physical insights in quantum many-body systems as well as for benchmarking and characterizing quantum devices, e.g. for quantum simulation, and paves the way for scalable adaptive protocols to probe, prepare, and manipulate quantum systems.

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