The 83rd JSAP Autumn Meeting 2022

Presentation information

Oral presentation

FS Focused Session "AI Electronics" » FS.1 Focused Session "AI Electronics"

[20a-M206-1~10] FS.1 Focused Session "AI Electronics"

Tue. Sep 20, 2022 9:00 AM - 12:00 PM M206 (Multimedia Research Hall)

Takao Marukame(Toshiba)

10:30 AM - 10:45 AM

[20a-M206-5] Folded-in-time deep neural networks: Emulating deep neural networks via delay dynamics

〇(P)Andre Roehm1,2, Florian Stelzer3,4, Raul Vicente3, Ingo Fischer2, Serhiy Yanchuk4, Satoshi Sunada5, Tomoaki Niiyama5, Ryoichi Horisaki1, Makoto Naruse1 (1.Univ. of Tokyo, 2.IFISC, CSIC-UIB, 3.Univ. of Tartu, 4.TU Berlin, 5.Kanazawa Univ.)

Keywords:neural network, delay dynamics, adjoint control

Deep neural networks (DNN) can successfully perform a large variety of tasks through training, but are increasingly consuming more energy and larger computers to run. New fundamental ways to implement information processing with physical systems can open up alternatives for different applications. In this presentation, recent advances on how a deep neural network can be emulated by a delay-system are shown. We present numerical results on MNIST, CIFAR-10 and other image recognition tasks via the use of a Folded-in-time Deep Neural Network (Fit-DNN). The hardware requirements for a Fit-DNN would be much lower than for conventional physical implementations of DNNs.