基于重叠映射法的混合尺寸横杆RRAM CNN加速器

Zhenhua Zhu, Jilan Lin, Ming Cheng, Lixue Xia, Hanbo Sun, Xiaoming Chen, Yu Wang, Huazhong Yang
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引用次数: 31

摘要

卷积神经网络(cnn)在机器学习中起着至关重要的作用。cnn通常是计算和内存密集型的。新兴的电阻随机存取存储器(RRAM)和RRAM交叉棒在提高cnn的性能和能效方面显示出巨大的潜力。与小横梁相比,大横梁具有更好的能效和更小的接口开销。然而,传统的小横梁工作量映射方法不能充分利用大横梁的计算能力。在本文中,我们提出了一种重叠映射方法(OMM)和基于混合大小交叉棒的RRAM CNN加速器(MISCA)来解决这个问题。MISCA与OMM可以减少接口电路造成的能量消耗,并通过利用交叉条中的空闲RRAM单元来提高计算的并行性。仿真结果表明,与传统映射方法相比,采用OMM的MISCA加速速度提高2.7倍,利用率提高30%,能效平均提高1.2倍。与GPU平台相比,采用OMM的MISCA在能效方面平均提高490.4倍,在加速方面平均提高20倍。与现有的基于RRAM的加速器PRIME相比,MISCA的加速提高了26.4倍,能效提高了1.65倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed Size Crossbar based RRAM CNN Accelerator with Overlapped Mapping Method
Convolutional Neural Networks (CNNs) play a vital role in machine learning. CNNs are typically both computing and memory intensive. Emerging resistive random-access memories (RRAMs) and RRAM crossbars have demonstrated great potentials in boosting the performance and energy efficiency of CNNs. Compared with small crossbars, large crossbars show better energy efficiency with less interface overhead. However, conventional workload mapping methods for small crossbars cannot make full use of the computation ability of large crossbars. In this paper, we propose an Overlapped Mapping Method (OMM) and MIxed Size Crossbar based RRAM CNN Accelerator (MISCA) to solve this problem. MISCA with OMM can reduce the energy consumption caused by the interface circuits, and improve the parallelism of computation by leveraging the idle RRAM cells in crossbars. The simulation results show that MISCA with OMM can achieve 2.7× speedup, 30% utilization rate improvement, and 1.2× energy efficiency improvement on average compared with fixed size crossbars based accelerator using the conventional mapping method. In comparison with GPU platform, MISCA with OMM can perform 490.4× higher on average in energy efficiency and 20× higher on average in speedup. Compared with PRIME, an existing RRAM based accelerator, MISCA has 26.4× speedup and 1.65× energy efficiency improvement.
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