Published August 28, 2019 | Version v1
Conference paper

Information coding and hardware architecture of spiking neural networks

Description

Inspired from the brain, neuromorphic computing would be the right alternative to traditional Von-Neumann architecture computing that knows its end of growth as predicted by Moore's law. In this paper, we explore bio-inspired neural networks as an AI-accelerator for embedded systems. To do so, we first map neural networks from formal to spiking domain, then choose the information coding method resulting in better performances. Afterwards, we present the design of two different hardware architectures: time-multiplexed and fully-parallel. Finally, we compare their performances and their hardware costto select at the end the adequate architecture and conclude about spike-based neural networks as a potential solution for embedded artificial intelligence applications.

Abstract

International audience

Additional details

Created:
December 4, 2022
Modified:
November 30, 2023