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Training of physical neural networks

Author

Listed:
  • Ali Momeni

    (Ècole Polytechnique Fédérale de Lausanne (EPFL))

  • Babak Rahmani

    (Microsoft Research)

  • Benjamin Scellier

    (Rain AI)

  • Logan G. Wright

    (Yale University)

  • Peter L. McMahon

    (Cornell University)

  • Clara C. Wanjura

    (Max Planck Institute for the Science of Light)

  • Yuhang Li

    (University of California, Los Angeles)

  • Anas Skalli

    (CNRS UMR 6174, Institut FEMTO-ST, 25000)

  • Natalia G. Berloff

    (University of Cambridge)

  • Tatsuhiro Onodera

    (Cornell University
    NTT Research, Inc.)

  • Ilker Oguz

    (Ècole Polytechnique Fédérale de Lausanne (EPFL))

  • Francesco Morichetti

    (Politecnico di Milano)

  • Philipp Hougne

    (Université de Rennes, CNRS, IETR – UMR 6164)

  • Manuel Gallo

    (IBM Research Europe – Zurich)

  • Abu Sebastian

    (IBM Research Europe – Zurich)

  • Azalia Mirhoseini

    (Stanford University
    Google DeepMind)

  • Cheng Zhang

    (Microsoft Research)

  • Danijela Marković

    (CNRS, Thales, Université Paris-Saclay)

  • Daniel Brunner

    (CNRS UMR 6174, Institut FEMTO-ST, 25000)

  • Christophe Moser

    (Ècole Polytechnique Fédérale de Lausanne (EPFL))

  • Sylvain Gigan

    (Laboratoire Kastler Brossel, Sorbonne Université, École Normale Supérieure, Collège de France, CNRS)

  • Florian Marquardt

    (Max Planck Institute for the Science of Light)

  • Aydogan Ozcan

    (University of California, Los Angeles)

  • Julie Grollier

    (Laboratoire Albert Fert, CNRS, Thales, Université Paris-Saclay)

  • Andrea J. Liu

    (University of Pennsylvania)

  • Demetri Psaltis

    (Ècole Polytechnique Fédérale de Lausanne (EPFL))

  • Andrea Alù

    (City University of New York
    City University of New York)

  • Romain Fleury

    (Ècole Polytechnique Fédérale de Lausanne (EPFL))

Abstract

Physical neural networks (PNNs) are a class of neural-like networks that make use of analogue physical systems to perform computations. Although at present confined to small-scale laboratory demonstrations, PNNs could one day transform how artificial intelligence (AI) calculations are performed. Could we train AI models many orders of magnitude larger than present ones? Could we perform model inference locally and privately on edge devices? Research over the past few years has shown that the answer to these questions is probably “yes, with enough research”. Because PNNs can make use of analogue physical computations more directly, flexibly and opportunistically than traditional computing hardware, they could change what is possible and practical for AI systems. To do this, however, will require notable progress, rethinking both how AI models work and how they are trained—primarily by considering the problems through the constraints of the underlying hardware physics. To train PNNs, backpropagation-based and backpropagation-free approaches are now being explored. These methods have various trade-offs and, so far, no method has been shown to scale to large models with the same performance as the backpropagation algorithm widely used in deep learning today. However, this challenge has been rapidly changing and a diverse ecosystem of training techniques provides clues for how PNNs may one day be used to create both more efficient and larger-scale realizations of present-scale AI models.

Suggested Citation

  • Ali Momeni & Babak Rahmani & Benjamin Scellier & Logan G. Wright & Peter L. McMahon & Clara C. Wanjura & Yuhang Li & Anas Skalli & Natalia G. Berloff & Tatsuhiro Onodera & Ilker Oguz & Francesco Moric, 2025. "Training of physical neural networks," Nature, Nature, vol. 645(8079), pages 53-61, September.
  • Handle: RePEc:nat:nature:v:645:y:2025:i:8079:d:10.1038_s41586-025-09384-2
    DOI: 10.1038/s41586-025-09384-2
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