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review article

Training of physical neural networks

Momeni, Ali  
•
Rahmani, Babak  
•
Scellier, Benjamin
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September 3, 2025
Nature

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.

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Type
review article
DOI
10.1038/s41586-025-09384-2
Author(s)
Momeni, Ali  

EPFL

Rahmani, Babak  
Scellier, Benjamin
Wright, Logan G.
McMahon, Peter L.
Wanjura, Clara C.
Li, Yuhang
Skalli, Anas
Berloff, Natalia G.
Onodera, Tatsuhiro
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Date Issued

2025-09-03

Publisher

Springer Science and Business Media LLC

Published in
Nature
Volume

645

Start page

53

End page

61

Subjects

Artificial Intelligence

•

analog computing

•

inference

•

training

•

optical computing

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LWE  
LO  
LAPD  
Available on Infoscience
September 4, 2025
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/253746
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