PRIVE:高效的RRAM编程与芯片验证基于RRAM的内存计算加速

Wangxin He, Jian Meng, Sujan Kumar Gonugondla, Shimeng Yu, Naresh R Shanbhag, J.-s. Seo
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引用次数: 0

摘要

随着深度神经网络(dnn)在许多复杂性不断增加的应用中得到成功开发,dnn中的权重数量激增,导致对比sram更密集的存储器的需求一致。基于RRAM的内存计算(IMC)实现了DNN推理的高密度和高能效,但由于高写入延迟和高能耗,RRAM编程仍然是一个瓶颈。在这项工作中,我们提出了渐进式写入内存程序验证(PRIVE)方案,我们用RRAM测试芯片验证了基于imc的dnn硬件加速。我们优化了RRAM权重的不同位上的渐进式写入操作,以实现错误补偿和减少编程延迟/能量,同时实现高DNN精度。对于5位精度的dnn, PRIVE减少了1.82倍的RRAM编程能量,同时在CIFAR-10和CIFAR-100数据集上分别保持了91.91% (VGG-7)和71.47% (ResNet-18)的高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PRIVE: Efficient RRAM Programming with Chip Verification for RRAM-based In-Memory Computing Acceleration
As deep neural networks (DNNs) have been success-fully developed in many applications with continuously increasing complexity, the number of weights in DNNs surges, leading to consistent demands for denser memories than SRAMs. RRAM-based in-memory computing (IMC) achieves high density and energy-efficiency for DNN inference, but RRAM programming remains to be a bottleneck due to high write latency and energy consumption. In this work, we present the Progressive-wRite In-memory program-VErify (PRIVE) scheme, which we verify with an RRAM testchip for IMC-based hardware acceleration for DNNs. We optimize the progressive write operations on different bit positions of RRAM weights to enable error compensation and reduce programming latency/energy, while achieving high DNN accuracy. For 5-bit precision DNNs, PRIVE reduces the RRAM programming energy by 1.82×, while maintaining high accuracy of 91.91% (VGG-7) and 71.47% (ResNet-18) on CIFAR-10 and CIFAR-100 datasets, respectively.
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