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Nonlinear Weight Quantification for Mitigating Read Disturb Effect on Multilevel RRAM-Based Neural Network

机译:基于多级RRAM基神经网络缓解读干扰效果的非线性重量定量

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RRAM -based array has been utilized to accelerate inference process of neural network. However, the device resistance drift during inference will induce read disturb, which will cause significant accuracy drop and cannot be solved by process optimization. Here, we propose a nonlinear weight quantification method to mitigate read disturb effect on inference accuracy. The simulation results indicate that read disturb is well suppressed compared with traditional linear quantification method.
机译:已经利用了RRAM基数的阵列来加速神经网络的推动过程。 然而,推理期间的器件电阻漂移将引起读取干扰,这将导致显着的精度下降,并且无法通过过程优化来解决。 在这里,我们提出了一种非线性重量定量方法,以减轻读干扰效果的推理精度。 仿真结果表明,与传统的线性定量方法相比,读取干扰很好地抑制。

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