Energy and Area Efficiency in Neuromorphic Computing for Resource Constrained Devices

Gangotree Chakma, Nicholas D. Skuda, Catherine D. Schuman, J. Plank, Mark E. Dean, G. Rose
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引用次数: 11

Abstract

Resource constrained devices are the building blocks of the internet of things (IoT) era. Since the idea behind IoT is to develop an interconnected environment where the devices are tiny enough to operate with limited resources, several control systems have been built to maintain low energy and area consumption while operating as IoT edge devices. Several researchers have begun work on implementing control systems built from resource constrained devices using machine learning. However, there are many ways such devices can achieve lower power consumption and area utilization while maximizing application efficiency. Spiky neuromorphic computing (SNC) is an emerging paradigm that can be leveraged in resource constrained devices for several emerging applications. While delivering the benefits of machine learning, SNC also helps minimize power consumption. For example, low energy memory devices (memristors) are often used to achieve low power operation and also help in reducing system area. In total, we anticipate SNC will provide computational efficiency approaching that of deep learning while using low power, resource constrained devices.
资源受限设备神经形态计算中的能量和面积效率
资源受限的设备是物联网(IoT)时代的基石。由于物联网背后的想法是开发一个相互连接的环境,在这个环境中,设备足够小,可以用有限的资源运行,因此已经构建了几个控制系统,以在作为物联网边缘设备运行时保持低能耗和面积消耗。一些研究人员已经开始使用机器学习实现从资源受限设备构建的控制系统。然而,有许多方法可以使这种器件在最大限度地提高应用效率的同时实现更低的功耗和面积利用率。Spiky neuromorphic computing (SNC)是一种新兴的范例,可以在资源受限的设备中用于一些新兴的应用程序。在提供机器学习的好处的同时,SNC还有助于最大限度地降低功耗。例如,低能量存储器件(忆阻器)通常用于实现低功耗操作,也有助于减少系统面积。总的来说,我们预计SNC将在使用低功耗、资源受限的设备时提供接近深度学习的计算效率。
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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