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Overcoming Crossbar Nonidealities in Binary Neural Networks Through Learning

机译:通过学习克服二元神经网络中的横杆非侵入性

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摘要

The crossbar nonidealaties may considerably degrade the accuracy of matrix multiplication operation, which is the cornerstone of hardware accelerated neural networks. In this paper, we show that the crossbar nonidealities especially the wire resistance should be taken into consideration for accurate evaluation. We also present a simple yet highly effective way to capture the wire resistance effect for the inference and training of deep neural networks without extensive SPICE simulations. Different scenarios have been studied and used to show the efficacy of our proposed method.
机译:横杆不良可能会显着降低矩阵乘法操作的准确性,这是硬件加速神经网络的基石。在本文中,我们表明,应考虑到横杆非前熟,以考虑到准确评估。我们还提出了一种简单但高效的方法来捕获对深度神经网络的推理和培训的导线电阻效应,而无需广泛的香料仿真。已经研究过不同的情景并用于展示我们所提出的方法的功效。

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