基于量子集成云架构(QICA)的混合量子机器学习

Samih Fadli, Bharat S. Rawal, Andrew Mentges
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引用次数: 0

摘要

基于量子集成云架构(QICA)设计模式专门构建和部署的基于门的和退火的量子计算后端系统,提供增强的量子计算能力,包括一套基于混合量子经典云的软件和专用混合量子经典机器学习算法、工具、求解器和使用物理启发模型和高性能计算电路模拟器的模拟器。通过利用量子力学的独特特性,并建立在数十年的计算机科学和量子物理研究的基础上,我们在本文中的动机包括两个方面:(1)概述我们正在申请专利的量子集成云架构(QICA),该架构用于支持航空航天计划,部署和部署,以加快研究和商业企业采用低轨道纳米卫星的低带宽卫星网络的步伐。(2)使用IBM Quantum展示基于qica的混合量子-经典机器学习架构的计算优势,探索Qiskit机器学习中提供的基本通用量子神经网络(QNN)接口,在此基础上,混合经典量子和量子神经网络(QNN)的许多不可知变体都是基于混合量子机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Quantum Machine learning using Quantum Integrated Cloud Architecture (QICA)
Gate-based and Annealing Quantum Computing backend systems purposely built and deployed based on Quantum Integrated Cloud Architecture (QICA) design patterns, provide enhanced quantum computational capabilities that consist of a suite of hybrid quantum-classical cloud-based software and specialized hybrid quantum-classical machine learning algorithms, tools, solvers, and simulators using physics-inspired models and High-Performance Computing circuits simulators. By harnessing the unique properties of quantum mechanics and building on decades of computer science and quantum physics research, our motivation in this paper consists of two folds: (1) to provide an overview of our PATENT-PENDING Quantum Integrated Cloud Architecture (QICA) implemented in support of aerospace programs, fielded and deployed to accelerate the pace of research and commercial enterprise adoption of low-bandwidth satellite networks using nanosatellites in a low orbit. (2) Demonstrate QICA-based computational advantages of Hybrid Quantum-Classical machine learning architecture using IBM Quantum, exploring the base generic quantum neural network (QNN) interfaces provided in Qiskit Machine Learning based on which many agnostic variations of both hybrid classical-quantum and quantum neural networks (QNN) are based on hybrid quantum machine learning.
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