Quantum Computational Advantage via 60-Qubit 24-Cycle Random Circuit
Sampling
- URL: http://arxiv.org/abs/2109.03494v2
- Date: Thu, 9 Sep 2021 06:08:31 GMT
- Title: Quantum Computational Advantage via 60-Qubit 24-Cycle Random Circuit
Sampling
- Authors: Qingling Zhu, Sirui Cao, Fusheng Chen, Ming-Cheng Chen, Xiawei Chen,
Tung-Hsun Chung, Hui Deng, Yajie Du, Daojin Fan, Ming Gong, Cheng Guo, Chu
Guo, Shaojun Guo, Lianchen Han, Linyin Hong, He-Liang Huang, Yong-Heng Huo,
Liping Li, Na Li, Shaowei Li, Yuan Li, Futian Liang, Chun Lin, Jin Lin,
Haoran Qian, Dan Qiao, Hao Rong, Hong Su, Lihua Sun, Liangyuan Wang, Shiyu
Wang, Dachao Wu, Yulin Wu, Yu Xu, Kai Yan, Weifeng Yang, Yang Yang, Yangsen
Ye, Jianghan Yin, Chong Ying, Jiale Yu, Chen Zha, Cha Zhang, Haibin Zhang,
Kaili Zhang, Yiming Zhang, Han Zhao, Youwei Zhao, Liang Zhou, Chao-Yang Lu,
Cheng-Zhi Peng, Xiaobo Zhu, Jian-Wei Pan
- Abstract summary: The readout fidelity of textitZuchongzhi 2.1 is considerably improved to an average of 97.74%.
The more powerful quantum processor enables us to achieve larger-scale random quantum circuit sampling.
- Score: 33.18018507595303
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To ensure a long-term quantum computational advantage, the quantum hardware
should be upgraded to withstand the competition of continuously improved
classical algorithms and hardwares. Here, we demonstrate a superconducting
quantum computing systems \textit{Zuchongzhi} 2.1, which has 66 qubits in a
two-dimensional array in a tunable coupler architecture. The readout fidelity
of \textit{Zuchongzhi} 2.1 is considerably improved to an average of 97.74\%.
The more powerful quantum processor enables us to achieve larger-scale random
quantum circuit sampling, with a system scale of up to 60 qubits and 24 cycles.
The achieved sampling task is about 6 orders of magnitude more difficult than
that of Sycamore [Nature \textbf{574}, 505 (2019)] in the classic simulation,
and 3 orders of magnitude more difficult than the sampling task on
\textit{Zuchongzhi} 2.0 [arXiv:2106.14734 (2021)]. The time consumption of
classically simulating random circuit sampling experiment using
state-of-the-art classical algorithm and supercomputer is extended to tens of
thousands of years (about $4.8\times 10^4$ years), while \textit{Zuchongzhi}
2.1 only takes about 4.2 hours, thereby significantly enhancing the quantum
computational advantage.
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