内存处理系统的可靠性感知训练和性能建模

Hanbo Sun, Zhenhua Zhu, Yi Cai, Shulin Zeng, Kaizhong Qiu, Yu Wang, Huazhong Yang
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引用次数: 1

摘要

基于记忆电阻的内存处理(PIM)系统为提高基于卷积神经网络(CNN)算法的计算效率提供了替代解决方案。然而,模数转换器(adc)的高接口成本和有限尺寸的忆阻器横条使得将CNN模型映射到具有高精度和高能效的PIM系统具有挑战性。此外,模拟大型PIM系统的性能需要很长时间,导致PIM系统的开发时间难以接受。为了解决这些问题,我们为PIM加速器提出了可靠性感知训练框架和行为级建模工具(MNSIM 2.0)。所提出的可靠性感知训练框架包含网络分裂/合并分析和基于pim的非均匀激活量化方案,可以通过降低忆阻交叉栅中ADC分辨率要求来提高能量效率。此外,MNSIM 2.0为PIM体系结构设计和计算数据流提供了通用的建模方法;它可以在短时间内评估精度和硬件性能。基于MNSIM 2.0的实验表明,可靠性感知训练框架可以在精度损失较小的情况下将PIM加速器的能量效率提高3.4倍。等效能量效率为9.02 TOPS/W,是现有工作的2.6~4.2倍。我们还评估了MNSIM 2.0的更多案例研究,这有助于我们平衡精度和硬件性能之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability-Aware Training and Performance Modeling for Processing-In-Memory Systems
Memristor based Processing-In-Memory (PIM) systems give alternative solutions to boost the computing energy efficiency of Convolutional Neural Network (CNN) based algorithms. However, Analog-to-Digital Converters’ (ADCs) high interface costs and the limited size of the memristor crossbars make it challenging to map CNN models onto PIM systems with both high accuracy and high energy efficiency. Besides, it takes a long time to simulate the performance of large-scale PIM systems, resulting in unacceptable development time for the PIM system. To address these problems, we propose a reliability-aware training framework and a behavior-level modeling tool (MNSIM 2.0) for PIM accelerators. The proposed reliability-aware training framework, containing network splitting/merging analysis and a PIM-based non-uniform activation quantization scheme, can improve the energy efficiency by reducing the ADC resolution requirements in memristor crossbars. Moreover, MNSIM 2.0 provides a general modeling method for PIM architecture design and computation data flow; it can evaluate both accuracy and hardware performance within a short time. Experiments based on MNSIM 2.0 show that the reliability-aware training framework can improve 3.4× energy efficiency of PIM accelerators with little accuracy loss. The equivalent energy efficiency is 9.02 TOPS/W, nearly 2.6~4.2× compared with the existing work. We also evaluate more case studies of MNSIM 2.0, which help us balance the trade-off between accuracy and hardware performance.
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