Quantum continual learning on a programmable superconducting processor
Abstract
Quantum computers may outperform classical computers on machine learning tasks. In recent years, a variety of quantum algorithms promising unparalleled potential to enhance, speed up, or innovate machine learning have been proposed. Yet, quantum learning systems, similar to their classical counterparts, may likewise suffer from the catastrophic forgetting problem, where training a model with new tasks would result in a dramatic performance drop for the previously learned ones. This problem is widely believed to be a crucial obstacle to achieving continual learning of multiple sequential tasks. Here, we report an experimental demonstration of quantum continual learning on a fully programmable superconducting processor. In particular, we sequentially train a quantum classifier with three tasks, two about identifying real-life images and the other on classifying quantum states, and demonstrate its catastrophic forgetting through experimentally observed rapid performance drops for prior tasks. To overcome this dilemma, we exploit the elastic weight consolidation strategy and show that the quantum classifier can incrementally learn and retain knowledge across the three distinct tasks, with an average prediction accuracy exceeding 92.3%. In addition, for sequential tasks involving quantum-engineered data, we demonstrate that the quantum classifier can achieve a better continual learning performance than a commonly used classical feedforward network with a comparable number of variational parameters. Our results establish a viable strategy for empowering quantum learning systems with desirable adaptability to multiple sequential tasks, marking an important primary experimental step towards the long-term goal of achieving quantum artificial general intelligence.
Cite
@article{arxiv.2409.09729,
title = {Quantum continual learning on a programmable superconducting processor},
author = {Chuanyu Zhang and Zhide Lu and Liangtian Zhao and Shibo Xu and Weikang Li and Ke Wang and Jiachen Chen and Yaozu Wu and Feitong Jin and Xuhao Zhu and Yu Gao and Ziqi Tan and Zhengyi Cui and Aosai Zhang and Ning Wang and Yiren Zou and Tingting Li and Fanhao Shen and Jiarun Zhong and Zehang Bao and Zitian Zhu and Zixuan Song and Jinfeng Deng and Hang Dong and Pengfei Zhang and Wenjie Jiang and Zheng-Zhi Sun and Pei-Xin Shen and Hekang Li and Qiujiang Guo and Zhen Wang and Jie Hao and H. Wang and Dong-Ling Deng and Chao Song},
journal= {arXiv preprint arXiv:2409.09729},
year = {2026}
}
Comments
21 pages, 14 figures