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MindSpore Quantum: A User-Friendly, High-Performance, and AI-Compatible Quantum Computing Framework

Authors :
Xu, Xusheng
Cui, Jiangyu
Cui, Zidong
He, Runhong
Li, Qingyu
Li, Xiaowei
Lin, Yanling
Liu, Jiale
Liu, Wuxin
Lu, Jiale
Luo, Maolin
Lyu, Chufan
Pan, Shijie
Pavel, Mosharev
Shu, Runqiu
Tang, Jialiang
Xu, Ruoqian
Xu, Shu
Yang, Kang
Yu, Fan
Zeng, Qingguo
Zhao, Haiying
Zheng, Qiang
Zhou, Junyuan
Zhou, Xu
Zhu, Yikang
Zou, Zuoheng
Bayat, Abolfazl
Cao, Xi
Cui, Wei
Li, Zhendong
Long, Guilu
Su, Zhaofeng
Wang, Xiaoting
Wang, Zizhu
Wei, Shijie
Wu, Re-Bing
Zhang, Pan
Yung, Man-Hong
Publication Year :
2024

Abstract

We introduce MindSpore Quantum, a pioneering hybrid quantum-classical framework with a primary focus on the design and implementation of noisy intermediate-scale quantum (NISQ) algorithms. Leveraging the robust support of MindSpore, an advanced open-source deep learning training/inference framework, MindSpore Quantum exhibits exceptional efficiency in the design and training of variational quantum algorithms on both CPU and GPU platforms, delivering remarkable performance. Furthermore, this framework places a strong emphasis on enhancing the operational efficiency of quantum algorithms when executed on real quantum hardware. This encompasses the development of algorithms for quantum circuit compilation and qubit mapping, crucial components for achieving optimal performance on quantum processors. In addition to the core framework, we introduce QuPack, a meticulously crafted quantum computing acceleration engine. QuPack significantly accelerates the simulation speed of MindSpore Quantum, particularly in variational quantum eigensolver (VQE), quantum approximate optimization algorithm (QAOA), and tensor network simulations, providing astonishing speed. This combination of cutting-edge technologies empowers researchers and practitioners to explore the frontiers of quantum computing with unprecedented efficiency and performance.

Subjects

Subjects :
Quantum Physics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.17248
Document Type :
Working Paper