优化密度矩阵表示:改进噪声感知量子电路设计工具的基础

Thomas Grurl, Jürgen Fuß, R. Wille
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引用次数: 0

摘要

通过利用量子力学效应,量子计算机可以解决经典计算机无法解决的问题。与此同时,这些量子力学特性使得处理量子态变得极其困难,给设计工具带来了重大挑战。在过去,诸如张量网络或决策图之类的方法表明,它们通常可以通过利用量子态描述中的冗余来控制这些资源需求。但迄今为止的发展主要集中在纯量子态上,这并不能提供一个完整的物理图景,例如,忽略了经常发生的噪声效应。密度矩阵表示提供了这样一个完整的图像,但是要大得多。同时,它们具有允许更紧凑表示的特性。在这项工作中,我们揭示了这一尚未开发的潜力,并利用它提供了一种针对密度矩阵表示进行优化的决策图表示。通过这一点,我们为更有效的设计工具提供了基础,例如量子电路模拟,它明确地考虑了噪声/误差效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Density Matrix Representations : Improving the Basis for Noise-Aware Quantum Circuit Design Tools
By exploiting quantum mechanical effects, quantum computers can tackle problems that are infeasible for classical computers. At the same time, these quantum mechanical properties make handling quantum states exponentially hard—imposing major challenges on design tools. In the past, methods such as tensor networks or decision diagrams have shown that they can often keep those resource requirements in check by exploiting redundancies within the description of quantum states. But developments thus far focused on pure quantum states which do not provide a physically complete picture and, e.g., ignore frequently occurring noise effects. Density matrix representations provide such a complete picture, but are substantially larger. At the same time, they come with characteristics that allow for a more compact representation. In this work, we unveil this untapped potential and use it to provide a decision diagram representation that is optimized for density matrix representations. By this, we are providing a basis for more efficient design tools such as quantum circuit simulation which explicitly takes noise/error effects into account.
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