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A domain wall-magnetic tunnel junction artificial synapse with notched geometry for accurate and efficient training of deep neural networks

机译:域壁磁隧道结假旋,具有缺口几何形状,可用于深度神经网络的准确高效培训

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摘要

Inspired by the parallelism and efficiency of the brain,several candidates for artificial synapse devices have been developed for neuromorphic computing,yet a nonlinear and asymmetric synaptic response curve precludes their use for backpropagation,the foundation of modern supervised learning. Spintronic devices-which benefit from high endurance,low power consumption,low latency,and CMOS compatibility-are a promising technology for memory,and domain-wall magnetic tunnel junction (DW-MTJ) devices have been shown to implement synaptic functions such as long-term potentiation and spike-timing dependent plasticity. In this work,we propose a notched DW-MTJ synapse as a candidate for supervised learning. Using micromagnetic simulations at room temperature,we show that notched synapses ensure the non-volatility of the synaptic weight and allow for highly linear,symmetric,and reproducible weight updates using either spin transfer torque (STT) or spin-orbit torque (SOT) mechanisms of DW propagation. We use lookup tables constructed from micromag-netics simulations to model the training of neural networks built with DW-MTJ synapses on both the MNIST and Fashion-MNIST image classification tasks. Accounting for thermal noise and realistic process variations,the DW-MTJ devices achieve classification accuracy close to ideal floating-point updates using both STT and SOT devices at room temperature and at 400 K. Our work establishes the basis for a magnetic artificial synapse that can eventually lead to hardware neural networks with fully spintronic matrix operations implementing machine learning.
机译:灵感来自大脑的平行和效率,已经开发了几种人工突触装置的候选者,用于神经形态计算,但非线性和不对称的突触反应曲线排除了其对背交的影响,其现代监督学习的基础。 Spintronic器件 - 其中益处高耐久性,低功耗,低延迟和CMOS兼容性 - 是用于存储器的有希望的技术,并且已显示域壁磁隧道结(DW-MTJ)器件实现突触功能,如长期 - 诸如销量依赖性可塑性。在这项工作中,我们提出了一个缺口的DW-MTJ Synapse作为监督学习的候选人。在室温下使用微磁模拟,我们表明,使用旋转转移扭矩(STT)或旋转轨道扭矩(SOT)机制,确保突触突触确保了突触重量的非挥发性,并允许高度线性,对称和可再现的重量更新DW传播。我们使用由微米 - Netics模拟构造的查找表来模拟在Mnist和Fashion-Mnist图像分类任务中使用DW-MTJ突触构建的神经网络的培训。占热噪声和现实过程变化的核算,DW-MTJ器件可以在室温下使用STT和SOT设备和400 K的STT和SOT设备实现近距离浮点更新的分类精度。我们的工作为可以的磁性人工突触的基础最终导致硬件神经网络具有完全旋转的矩阵操作,实现机器学习。

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  • 来源
    《Applied Physics Letters》 |2021年第20期|202405.1-202405.7|共7页
  • 作者单位

    Department of Electrical and Computer Engineering The University of Texas at Austin Austin Texas 78712 USA;

    Sandia National Laboratories Albuquerque New Mexico 87123 USA;

    Department of Electrical and Computer Engineering The University of Texas at Austin Austin Texas 78712 USA;

    Department of Electrical and Computer Engineering The University of Texas at Austin Austin Texas 78712 USA;

    Sandia National Laboratories Albuquerque New Mexico 87123 USA;

    Sandia National Laboratories Albuquerque New Mexico 87123 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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