减少外部存储器访问的基于意义感知转换的编解码器框架

Feng Xiong, Fengbin Tu, Man Shi, Yang Wang, Leibo Liu, Shaojun Wei, S. Yin
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引用次数: 10

摘要

深度卷积神经网络(Deep convolutional neural networks, DCNNs)计算量大,需要相当大的外部存储带宽和中间特征映射的存储空间。特征映射的外部存储器访问成为DCNN加速器的一个重要的能量瓶颈。为了降低计算和存储成本,对特征映射进行了低精度量化。有机会利用特征映射中通道之间的大量相关性来进一步减少外部存储器访问。为此,我们提出了一种新的压缩框架,称为意义感知转换编解码器(STC)。在压缩过程中,引入意义感知变换,在正交空间中获得低相关特征映射,作为原始特征映射的内在表示。对变换后的特征映射进行量化和编码,以压缩外部数据传输。对于下一层计算,将使用STC的重构过程重新加载数据。STC框架可以通过对当前DCNN加速器的一小部分扩展来支持。我们在基准TPU架构上实现STC扩展以进行硬件评估。增强后的TPU外部存储器访问平均减少2.57倍,系统级能效提高1.95 ~2.78倍,精度损失仅为0.5%,可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STC: Significance-aware Transform-based Codec Framework for External Memory Access Reduction
Deep convolutional neural networks (DCNNs), with extensive computation, require considerable external memory bandwidth and storage for intermediate feature maps. External memory accesses for feature maps become a significant energy bottleneck for DCNN accelerators. Many works have been done on quantizing feature maps into low precision to decrease the costs for computation and storage. There is an opportunity that the large amount of correlation among channels in feature maps can be exploited to further reduce external memory access. Towards this end, we propose a novel compression framework called Significance-aware Transform-based Codec (STC). In its compression process, significance-aware transform is introduced to obtain low-correlated feature maps in an orthogonal space, as the intrinsic representations of original feature maps. The transformed feature maps are quantized and encoded to compress external data transmission. For the next layer computation, the data will be reloaded with STC’s reconstruction process. The STC framework can be supported with a small set of extensions to current DCNN accelerators. We implement STC extensions to the baseline TPU architecture for hardware evaluation. The strengthened TPU achieves average reduction of 2.57x in external memory access, 1.95x~2.78x improvement of system-level energy efficiency, with a negligible accuracy loss of only 0.5%.
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