Quantum Reservoir Computing with Neutral Atom Arrays

ORAL

Abstract

With the development of quantum computers, quantum machine learning has recently attracted much attention. While it has been considered a promising application for near-term quantum computers, current quantum machine learning methods require large quantum resources and suffer from gradient vanishing issues. To alleviate this, we propose a general-purpose quantum reservoir computing algorithm for neutral atom quantum simulators that is resource-frugal, noise-resilient, and scalable. We implement our proposal on QuEra's field-programmable qubit array, Aquila, and observe state-of-the-art performance on several practical machine-learning tasks.

*The work was funded by DARPA IMPAQT grant HR0011-23-3-0009.

Presenters

  • Milan Kornjaca

    • QuEra Computing

Authors

  • Milan Kornjaca

    • QuEra Computing
  • Hong-Ye Hu

    • Harvard University
    • Harvard University, Department of Physics
  • Chen Zhao

    • QuEra Computing
    • Harvard University & QuEra Computing
  • Jonathan R Wurtz

    • QuEra Computing
    • Boston University
  • Alexei Bylinskii

    • QuEra Computing
    • QuEra Computing, Inc.
  • Pedro Lopes

    • QuEra Computing
  • Xun Gao

    • University of Colorado, Boulder
    • University of Colorado Boulder
  • Fangli Liu

    • QuEra Computing
  • Shengtao Wang

    • QuEra Computing Inc.
    • QuEra Computing
    • QUERA