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A Monolithic 3D Integration of RRAM Array with Oxide Semiconductor FET for In-memory Computing in Quantized Neural Network AI Applications

机译:RRAM阵列与氧化物半导体FET的单片3D集成在量化的神经网络AI应用中的存储器计算

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We have monolithically integrated RRAM array with oxide semiconductor channel access transistor in 3D stack, achieved uniform memory characteristics of 1 T1R cells at each layer, and demonstrated basic functionality of XNOR operation as in-memory computing for binary neural network AI applications, for the first time. The impact of RRAM bit error rate on neural network is also investigated. 3D neural network built by this architecture has high potential to enable area-efficient, low-power and low-latency computing.
机译:我们具有单片集成的RRAM阵列,其中3D堆叠中具有氧化物半导体通道接入晶体管,在每个层处实现了1 T1R电池的均匀存储器特性,并将XNOR操作的基本功能作为二元神经网络AI应用程序的内存计算,首先时间。还研究了RRAM比特错误率对神经网络的影响。该架构构建的3D神经网络具有高潜力,使区域有效,低功耗和低延迟计算。

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