Benchmarking Photonic Quantum Machine Learning Simulators

Henrik Varga, A. Kiss, Zoltán Kolarovszki
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Abstract

In the past few years, quantum computing has gotten more attention, and the need for efficient simulations is getting increasingly important as well. A significant branch of quantum computing is photonic quantum computing. For simulating photonic quantum circuits, Strawberry Fields is the most popular framework. In this paper, we compared it with another framework currently under development called Piquasso regarding gradient calculation time, which is an essential part of continuous-variable quantum neural networks. We present the apparent scalability of Piquasso over Strawberry Fields by storing fewer data, but leading to possible accuracy differences as a trade-off, which could motivate future work.
对标光子量子机器学习模拟器
在过去的几年里,量子计算得到了越来越多的关注,对高效模拟的需求也变得越来越重要。量子计算的一个重要分支是光子量子计算。对于模拟光子量子电路,草莓场是最流行的框架。在本文中,我们将其与目前正在开发的另一个名为Piquasso的框架进行了比较,考虑梯度计算时间,Piquasso是连续变量量子神经网络的重要组成部分。我们通过存储更少的数据来展示Piquasso在Strawberry Fields上的明显可扩展性,但作为一种权衡,可能会导致准确性差异,这可能会激励未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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