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Experimental quantum speed-up in reinforcement learning agents

Author

Listed:
  • V. Saggio

    (University of Vienna, Faculty of Physics, Vienna Center for Quantum Science and Technology (VCQ))

  • B. E. Asenbeck

    (University of Vienna, Faculty of Physics, Vienna Center for Quantum Science and Technology (VCQ))

  • A. Hamann

    (Universität Innsbruck)

  • T. Strömberg

    (University of Vienna, Faculty of Physics, Vienna Center for Quantum Science and Technology (VCQ))

  • P. Schiansky

    (University of Vienna, Faculty of Physics, Vienna Center for Quantum Science and Technology (VCQ))

  • V. Dunjko

    (Leiden University)

  • N. Friis

    (Austrian Academy of Sciences)

  • N. C. Harris

    (Massachusetts Institute of Technology)

  • M. Hochberg

    (Nokia Corporation)

  • D. Englund

    (Massachusetts Institute of Technology)

  • S. Wölk

    (Universität Innsbruck
    Institut für Quantentechnologien)

  • H. J. Briegel

    (Universität Innsbruck
    Universität Konstanz)

  • P. Walther

    (University of Vienna, Faculty of Physics, Vienna Center for Quantum Science and Technology (VCQ)
    University of Vienna)

Abstract

As the field of artificial intelligence advances, the demand for algorithms that can learn quickly and efficiently increases. An important paradigm within artificial intelligence is reinforcement learning1, where decision-making entities called agents interact with environments and learn by updating their behaviour on the basis of the obtained feedback. The crucial question for practical applications is how fast agents learn2. Although various studies have made use of quantum mechanics to speed up the agent’s decision-making process3,4, a reduction in learning time has not yet been demonstrated. Here we present a reinforcement learning experiment in which the learning process of an agent is sped up by using a quantum communication channel with the environment. We further show that combining this scenario with classical communication enables the evaluation of this improvement and allows optimal control of the learning progress. We implement this learning protocol on a compact and fully tunable integrated nanophotonic processor. The device interfaces with telecommunication-wavelength photons and features a fast active-feedback mechanism, demonstrating the agent’s systematic quantum advantage in a setup that could readily be integrated within future large-scale quantum communication networks.

Suggested Citation

  • V. Saggio & B. E. Asenbeck & A. Hamann & T. Strömberg & P. Schiansky & V. Dunjko & N. Friis & N. C. Harris & M. Hochberg & D. Englund & S. Wölk & H. J. Briegel & P. Walther, 2021. "Experimental quantum speed-up in reinforcement learning agents," Nature, Nature, vol. 591(7849), pages 229-233, March.
  • Handle: RePEc:nat:nature:v:591:y:2021:i:7849:d:10.1038_s41586-021-03242-7
    DOI: 10.1038/s41586-021-03242-7
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    Cited by:

    1. Xuan-Kun Li & Jian-Xu Ma & Xiang-Yu Li & Jun-Jie Hu & Chuan-Yang Ding & Feng-Kai Han & Xiao-Min Guo & Xi Tan & Xian-Min Jin, 2024. "High-efficiency reinforcement learning with hybrid architecture photonic integrated circuit," Nature Communications, Nature, vol. 15(1), pages 1-10, December.

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