Convolutional Neural Networks with Radio-Frequency Spintronic Nano-Devices
Nathan Leroux, Arnaud De Riz, D\'edalo Sanz-Hern\'andez, Danijela, Markovi\'c, Alice Mizrahi, Julie Grollier

TL;DR
This paper introduces a novel spintronic nano-device architecture for convolutional neural networks that enables fully parallel processing of convolutions, reducing power consumption and suitable for embedded machine vision applications.
Contribution
The paper presents a new architecture using spintronic resonators and oscillators to perform convolutional neural network operations in parallel, overcoming sneak-path current issues.
Findings
Successfully simulated MNIST digit recognition with comparable accuracy to software CNNs.
Demonstrated parallel convolution processing using spintronic resonator chains.
Proposed scalable arrangements for spintronic-based neural network hardware.
Abstract
Convolutional neural networks are state-of-the-art and ubiquitous in modern signal processing and machine vision. Nowadays, hardware solutions based on emerging nanodevices are designed to reduce the power consumption of these networks. Spintronics devices are promising for information processing because of the various neural and synaptic functionalities they offer. However, due to their low OFF/ON ratio, performing all the multiplications required for convolutions in a single step with a crossbar array of spintronic memories would cause sneak-path currents. Here we present an architecture where synaptic communications have a frequency selectivity that prevents crosstalk caused by sneak-path currents. We first demonstrate how a chain of spintronic resonators can function as synapses and make convolutions by sequentially rectifying radio-frequency signals encoding consecutive sets of…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Reservoir Computing · Quantum-Dot Cellular Automata
