电阻随机存取存储器
稳健性(进化)
计算机科学
推论
深层神经网络
深度学习
绩效改进
非易失性存储器
计算机工程
计算机硬件
噪音(视频)
二进制数
人工智能
算术
工程类
电气工程
数学
基因
图像(数学)
电压
生物化学
化学
运营管理
作者
Sai Kiran Cherupally,Jian Meng,Adnan Siraj Rakin,Shihui Yin,Injune Yeo,Shimeng Yu,Deliang Fan,Jae-sun Seo
标识
DOI:10.1088/1361-6641/ac461f
摘要
Abstract We present a novel deep neural network (DNN) training scheme and resistive RAM (RRAM) in-memory computing (IMC) hardware evaluation towards achieving high accuracy against RRAM device/array variations and enhanced robustness against adversarial input attacks. We present improved IMC inference accuracy results evaluated on state-of-the-art DNNs including ResNet-18, AlexNet, and VGG with binary, 2-bit, and 4-bit activation/weight precision for the CIFAR-10 dataset. These DNNs are evaluated with measured noise data obtained from three different RRAM-based IMC prototype chips. Across these various DNNs and IMC chip measurements, we show that our proposed hardware noise-aware DNN training consistently improves DNN inference accuracy for actual IMC hardware, up to 8% accuracy improvement for the CIFAR-10 dataset. We also analyze the impact of our proposed noise injection scheme on the adversarial robustness of ResNet-18 DNNs with 1-bit, 2-bit, and 4-bit activation/weight precision. Our results show up to 6% improvement in the robustness to black-box adversarial input attacks.
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