Date
November 26 (Wed) 15:00 - 16:00, 2025 (JST)
Speaker
  • Li Keren (Assistant Professor, College of Physics and Optoelectronic Engineering, Shenzhen University, China)
Venue
  • via Zoom
Language
English
Host
Lingxiao Wang

Accurate prediction of quantum Hamiltonian dynamics and identification of Hamiltonian parameters are crucial for advancements in quantum simulations, error correction, and control protocols. This talk introduces a machine learning model with dual capabilities: it can deduce time-dependent Hamiltonian parameters from observed changes in local observables within quantum many-body systems, and it can predict the evolution of these observables based on Hamiltonian parameters. The model’s validity was confirmed through theoretical simulations across various scenarios and further validated by two experiments. Initially, the model was applied to a Nuclear Magnetic Resonance quantum computer, where it accurately predicted the dynamics of local observables. The model was then tested on a superconducting quantum computer with initially unknown Hamiltonian parameters, successfully inferring them. We believe that machine learning techniques hold great promise for enhancing a wide range of quantum computing tasks, including parameter estimation, noise characterization, feedback control, and quantum control optimization.

References

  1. Zheng An, Jiahui Wu, Zidong Lin, Xiaobo Yang, Keren Li, and Bei Zeng, Dual-Capability Machine Learning Models for Quantum Hamiltonian Parameter Estimation and Dynamics Prediction, Physical Review Letters 134, no. 12, 120202. (2025), doi: 10.1103/PhysRevLett.134.120202, arXiv: 2405.13582
  2. Keren Li, Floquet-informed Learning of Periodically Driven Hamiltonians, arXiv: 2509.02331

This is a closed event for scientists. Non-scientists are not allowed to attend. If you are not a member or related person and would like to attend, please contact us using the inquiry form. Please note that the event organizer or speaker must authorize your request to attend.

Inquire about this event