量子算法微分

G. Colucci, F. Giacosa
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引用次数: 0

摘要

在这项工作中,我们提出了一种在量子计算背景下执行算法微分的算法。我们提出了两个版本的算法,一个是完全量子的,一个是采用经典步骤(混合方法)的。由于在量子计算机上已经可以实现初等函数,因此我们提出的方案可以很容易地应用。此外,由于某些步骤(如CNOT运算符)在量子计算机上可以(或将)比在经典计算机上更快,我们的过程可能最终证明量子算法微分相对于其经典对偶具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum algorithmic differentiation
In this work we present an algorithm to perform algorithmic differentiation in the context of quantum computing. We present two versions of the algorithm, one which is fully quantum and one which employees a classical step (hybrid approach). Since the implementation of elementary functions is already possible on quantum computers, the scheme that we propose can be easily applied. Moreover, since some steps (such as the CNOT operator) can (or will be) faster on a quantum computer than on a classical one, our procedure may ultimately emonstrate that quantum algorithmic differentiation has an advantage relative to its classical counterpart.
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