咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >A Scalable Quantum Neural Netw... 收藏
arXiv

A Scalable Quantum Neural Network for Approximate SRBB-Based Unitary Synthesis

作     者:Belli, Giacomo Mordacci, Marco Amoretti, Michele 

作者机构:Quantum Software Laboratory Department of Engineering and Architecture University of Parma Parma43124 Italy 

出 版 物:《arXiv》 (arXiv)

年 卷 期:2024年

核心收录:

主  题:Qubits 

摘      要:In this work, scalable quantum neural networks are introduced to approximate unitary evolutions through the Standard Recursive Block Basis (SRBB) and, subsequently, redesigned with a reduced number of CNOTs. This algebraic approach to the problem of unitary synthesis exploits Lie algebras and their topological features to obtain scalable parameterizations of unitary operators. First, the recursive algorithm that builds the SRBB is presented, framed in the original scalability scheme already known to the literature only from a theoretical point of view. Unexpectedly, 2-qubit systems emerge as a special case outside this scheme. Furthermore, an algorithm to reduce the number of CNOTs is proposed, thus deriving a new implementable scaling scheme that requires one single layer of approximation. From the mathematical algorithm, the scalable CNOT-reduced quantum neural network is implemented and its performance is assessed with a variety of different unitary matrices, both sparse and dense, up to 6 qubits via the PennyLane library. The effectiveness of the approximation is measured with different metrics in relation to two optimizers: a gradient-based method and the Nelder-Mead method. The approximate SRBB-based synthesis algorithm with CNOT-reduction is also tested on real hardware and compared with other valid approximation and decomposition methods available in the literature. © 2024, CC BY.

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分