April 30, 2024
Conference Paper

Towards Redefining the Reproducibility in Quantum Computing: A Data Analysis Approach on NISQ Devices

Abstract

Although the building of quantum computers has kept making rapid progress in recent years, noise is still the main challenge for any application to leverage the power of quantum computing. Existing works addressing noise in quantum devices proposed noise reduction when deploying a quantum algorithm to a specified quantum computer. The reproducibility issue of quantum algorithms has been raised since the noise levels vary on different quantum computers. Importantly, existing works largely ignore the fact that the noise of quantum devices varies as time goes by. Therefore, reproducing the results on the same hardware will even become a problem. We analyze the reproducibility of quantum machine learning (QML) algorithms based on daily model training and execution data collection. Our analysis shows a correlation between our QML models’ test accuracy and quantum computer hardware’s calibration features. We also demonstrate that noisy simulators for quantum computers are not a reliable tool for quantum machine learning applications.

Published: April 30, 2024

Citation

Senapati P., Z. Wang, W. Jiang, T.S. Humble, B. Fang, S. Xu, and Q. Guan. 2023. Towards Redefining the Reproducibility in Quantum Computing: A Data Analysis Approach on NISQ Devices. In IEEE International Conference on Quantum Computing and Engineering (QCE 2023), September 17-22, 2023, Bellevue, WA, 468-474. Piscataway, New Jersey:IEEE. PNNL-SA-185102. doi:10.1109/QCE57702.2023.00060