利用磁随机突触进行机器学习

Matthew O. A. Ellis, A. Welbourne, Stephan J. Kyle, P. Fry, D. Allwood, T. Hayward, E. Vasilaki
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引用次数: 1

摘要

人工神经网络令人印象深刻的表现是以高能源消耗和二氧化碳排放为代价的。以磁性系统为候选对象的非常规计算架构具有替代节能硬件的潜力,但在实施过程中仍面临诸如随机行为等挑战。在这里,我们提出了一种方法来利用传统的有害的随机效应在纳米线的磁畴壁运动。我们演示了功能二进制随机突触以及梯度学习规则,该规则允许它们的训练适用于一系列随机系统。该规则利用神经元输出分布的均值和方差,根据每个突触的测量次数,找到了突触随机性和能量效率之间的权衡。对于单次测量,该规则产生具有最小随机性的二元突触,牺牲了鲁棒性的潜在性能。对于多次测量,突触分布是广泛的,近似于性能更好的连续突触。这一观察结果使我们能够根据期望的性能和设备的运行速度和能源成本来选择设计原则。我们在物理硬件上验证了它的性能,表明它与标准神经网络相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning using magnetic stochastic synapses
The impressive performance of artificial neural networks has come at the cost of high energy usage and CO2 emissions. Unconventional computing architectures, with magnetic systems as a candidate, have potential as alternative energy-efficient hardware, but, still face challenges, such as stochastic behaviour, in implementation. Here, we present a methodology for exploiting the traditionally detrimental stochastic effects in magnetic domain-wall motion in nanowires. We demonstrate functional binary stochastic synapses alongside a gradient learning rule that allows their training with applicability to a range of stochastic systems. The rule, utilising the mean and variance of the neuronal output distribution, finds a trade-off between synaptic stochasticity and energy efficiency depending on the number of measurements of each synapse. For single measurements, the rule results in binary synapses with minimal stochasticity, sacrificing potential performance for robustness. For multiple measurements, synaptic distributions are broad, approximating better-performing continuous synapses. This observation allows us to choose design principles depending on the desired performance and the device’s operational speed and energy cost. We verify performance on physical hardware, showing it is comparable to a standard neural network.
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CiteScore
5.90
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0.00%
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