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  Training of Physical Neural Networks

Momeni, A., Rahmani, B., Scellier, B., Wright, L. G., McMahon, P. L., Wanjura, C. C., et al. (2024). Training of Physical Neural Networks. arXiv, 2406.03372.

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 Creators:
Momeni, Ali, Author
Rahmani, Babak, Author
Scellier, Benjamin, Author
Wright, Logan G., Author
McMahon, Peter L., Author
Wanjura, Clara C.1, Author
Li, Yuhang, Author
Skalli, Anas, Author
Berloff, Natalia G., Author
Onodera, Tatsuhiro, Author
Oguz, Ilker, Author
Morichetti, Francesco, Author
del Hougne, Philipp, Author
Gallo, Manuel Le, Author
Sebastian, Abu, Author
Mirhoseini, Azalia, Author
Zhang, Cheng, Author
Marković, Danijela, Author
Brunner, Daniel, Author
Moser, Christophe, Author
Gigan, Sylvain, AuthorMarquardt, Florian1, AuthorOzcan, Aydogan, AuthorGrollier, Julie, AuthorLiu, Andrea J., AuthorPsaltis, Demetri, AuthorAlù, Andrea, AuthorFleury, Romain, Author more..
Affiliations:
1Marquardt Division, Max Planck Institute for the Science of Light, Max Planck Society, Staudtstraße 2, 91058 Erlangen, DE, ou_2421700              

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Free keywords: physics.app-ph,Computer Science, Learning, cs.LG
 Abstract: Physical neural networks (PNNs) are a class of neural-like networks that leverage the properties of physical systems to perform computation. While PNNs are so far a niche research area with small-scale laboratory demonstrations, they are arguably one of the most underappreciated important opportunities in modern artificial intelligence (AI). Could we train AI models 1000x larger than current ones? Could we do this and also have them perform inference locally and privately on edge devices, such as smartphones or sensors?
Research over the past few years has shown that the answer to all these questions is likely “textityes, with enough research”: PNNs could one day radically change what is possible and practical for AI systems. To do this will however require 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 at large scale, many methods including 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 the same scale and performance as the backpropagation algorithm widely used in deep learning today. However, this is rapidly changing, and a diverse ecosystem of training techniques provides clues for how PNNs may one day be utilized to create both more efficient realizations of current-scale AI models, and to enable unprecedented-scale models.

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 Dates: 2024-06-05
 Publication Status: Published online
 Pages: 29 pages, 4 figures
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 Rev. Type: -
 Identifiers: arXiv: 2406.03372
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Title: arXiv
Source Genre: Commentary
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Pages: - Volume / Issue: - Sequence Number: 2406.03372 Start / End Page: - Identifier: -