Challenges and Perspectives for Energy-efficient Brain-inspired Edge Computing Applications (Invited Paper)

E. Covi, S. Lancaster, S. Slesazeck, V. Deshpande, T. Mikolajick, C. Dubourdieu
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Abstract

In recent years, Artificial Intelligence has shifted towards edge computing paradigm, where systems compute data in real-time on the edge of the network, close to the sensor that acquires them. The requirements of a system operating on the edge are very tight: power efficiency, low area footprint, fast response times, and online learning. Moreover, in order to fully optimise sensor performance and broaden applications by developing smart wearable and implantable devices, solutions must be compatible with flexible substrates. Brain-inspired architectures such as Spiking Neural Networks (SNNs) use artificial neurons and synapses that perform low-latency computation and internal-state storage simultaneously with very low power consumption. However, SNNs at present are mainly implemented on standard CMOS technologies, which makes it challenging to meet the above-mentioned constraints. In this respect, memristive technology has shown promising results, due to its ability to support fast and energy-efficient non-volatile storage of the SNN parameters in a nanoscale footprint. In this perspective work, the main challenges to achieve a neuromorphic-memristive hardware are presented, particularly in the context of optimising such systems for applications on the edge. The aspects to be considered for integration with flexible substrates will also be discussed.
高能效脑激发边缘计算应用的挑战与展望(特邀论文)
近年来,人工智能已经转向边缘计算范式,系统在网络边缘实时计算数据,靠近获取数据的传感器。在边缘上运行的系统的要求非常严格:功率效率、占地面积小、快速响应时间和在线学习。此外,为了通过开发智能可穿戴和可植入设备来充分优化传感器性能并扩大应用范围,解决方案必须与柔性基板兼容。以大脑为灵感的架构,如脉冲神经网络(snn)使用人工神经元和突触,以极低的功耗同时执行低延迟计算和内部状态存储。然而,目前snn主要是在标准CMOS技术上实现的,这使得满足上述限制具有挑战性。在这方面,忆阻技术显示出有希望的结果,因为它能够在纳米尺度上支持SNN参数的快速和节能的非易失性存储。在这方面的工作中,提出了实现神经形态记忆硬件的主要挑战,特别是在为边缘应用优化此类系统的背景下。还将讨论与柔性基板集成要考虑的方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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