内存处理加速器的节能量化正则化训练框架

Hanbo Sun, Zhenhua Zhu, Yi Cai, Xiaoming Chen, Yu Wang, Huazhong Yang
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引用次数: 20

摘要

卷积神经网络(Convolutional Neural Networks, cnn)在各个领域都取得了突破,但其能耗也变得巨大。基于新兴的非易失性存储器(如电阻性随机存取存储器,RRAM)的内存处理(PIM)架构在提高CNN计算的能量效率方面显示出巨大的潜力。然而,现有PIM架构的能源效率仍有很大的改进空间。一方面,目前的研究表明,维持计算精度需要高分辨率模数转换器(adc),但它们占整个系统能耗的60%以上,损害了PIM的能效效益。另一方面,PIM加速器的模拟域计算特性导致计算能耗受到特定输入和权值的影响。然而,据我们所知,现有的工作中并没有基于这一特性的能效优化方法。为了解决这些问题,本文提出了一种节能的量化正则化PIM加速器训练框架,该框架由基于PIM的非均匀激活量化方案和能量感知权正则化方法组成。该框架可以通过降低ADC分辨率要求和训练低能耗的CNN模型来提高PIM架构的能源效率,并且精度损失很小。实验结果表明,该训练框架可将adc的分辨率降低2位,模拟域的计算能耗降低35%。因此,在我们提出的培训框架中,能源效率可以提高3.4倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Energy-Efficient Quantized and Regularized Training Framework For Processing-In-Memory Accelerators
Convolutional Neural Networks (CNNs) have made breakthroughs in various fields, while the energy consumption becomes enormous. Processing-In-Memory (PIM) architectures based on emerging non-volatile memory (e.g., Resistive Random Access Memory, RRAM) have demonstrated great potential in improving the energy efficiency of CNN computing. However, there is still much room for improvement in the energy efficiency of existing PIM architectures. On the one hand, current work shows that high resolution Analog-to-Digital Converters (ADCs) are required for maintaining computing accuracy, but they dominate more than 60% energy consumption of the entire system, damaging the energy efficiency benefits of PIM. On the other hand, the characteristic of computing in the analog domain in PIM accelerators leads to the computing energy consumption is influenced by the specific input and weight values. However, as far as we know, there is no energy efficiency optimization method based on this characteristic in existing work. To solve these problems, in this paper, we propose an energy-efficient quantized and regularized training framework for PIM accelerators, which consists of a PIM-based non-uniform activation quantization scheme and an energy-aware weight regularization method. The proposed framework can improve the energy efficiency of PIM architectures by reducing the ADC resolution requirements and training low energy consumption CNN models for PIM, with little accuracy loss. The experimental results show that the proposed training framework can reduce the resolution of ADCs by 2 bits and the computing energy consumption in the analog domain by 35%. The energy efficiency, therefore, can be enhanced by $3.4 \times$ in our proposed training framework.
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