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Reservoir Computing Leveraging the Transient Non-linear Dynamics of Spin-Torque Nano-Oscillators

Authors :
UCL - SST/IMCN/BSMA - Bio and soft matter
Riou, Mathieu
Torrejon, Jacob
Abreu Araujo, Flavio
Tsunegi, Sumito
Khalsa, Guru
Querlioz, Damien
Bortolotti, Paolo
Leroux, Nathan
Marković, Danijela
Cros, Vincent
Yakushiji, Kay
Fukushima, Akio
Kubota, Hitoshi
Yuasa, Shinji
Stiles, Mark D.
Grollier, Julie
UCL - SST/IMCN/BSMA - Bio and soft matter
Riou, Mathieu
Torrejon, Jacob
Abreu Araujo, Flavio
Tsunegi, Sumito
Khalsa, Guru
Querlioz, Damien
Bortolotti, Paolo
Leroux, Nathan
Marković, Danijela
Cros, Vincent
Yakushiji, Kay
Fukushima, Akio
Kubota, Hitoshi
Yuasa, Shinji
Stiles, Mark D.
Grollier, Julie
Publication Year :
2021

Abstract

Present artificial intelligence algorithms require extensive computations to emulate the behavior of large neural networks, operating current computers near their limits, which leads to high energy costs. A possible solution to this problem is the development of new computing architectures, with nanoscale hardware components that use their physical properties to emulate the behavior of neurons. In spite of multiple theoretical proposals, there have been only a limited number of experimental demonstrations of brain-inspired computing with nanoscale neurons. Here we describe such demonstrations using nanoscale spin-torque oscillators, which exhibit key features of neurons, in a reservoir computing approach. This approach offers an interesting platform to test these components, because a single component can emulate a whole neural network. Using this method, we classify sine and square waveforms perfectly and achieve spoken-digit recognition with state of the art results. We illustrate optimization of the oscillator’s operating regime with sine/square classification.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1288275900
Document Type :
Electronic Resource