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DEF: Differential Encoding of Featuremaps for Low Power Convolutional Neural Network Accelerators

机译:DEF:低功耗卷积神经网络加速器的特色差分编码

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As the need for the deployment of Deep Learning applications on edge-based devices becomes ever increasingly prominent, power consumption starts to become a limiting factor on the performance that can be achieved by the computational platforms. A significant source of power consumption for these edge-based machine learning accelerators is off-chip memory transactions. In the case of Convolutional Neural Network (CNN) workloads, a predominant workload in deep learning applications, those memory transactions are typically attributed to the store and recall of feature-maps. There is therefore a need to explicitly reduce the power dissipation of these transactions whilst minimising any overheads needed to do so. In this work, a Differential Encoding of Feature-maps (DEF) scheme is proposed, which aims at minimising activity on the memory data bus, specifically for CNN workloads. The coding scheme uses domain-specific knowledge, exploiting statistics of feature-maps alongside knowledge of the data types commonly used in machine learning accelerators as a means of reducing power consumption. DEF is able to out-perform recent state-of-the-art coding schemes, with significantly less overhead, achieving up to 50% reduction of activity across a number of modern CNNs.
机译:由于对基于边缘的设备上的深度学习应用部署的需求变得越来越突出,因此功耗开始成为计算平台可以实现的性能的限制因素。基于边缘的机器学习加速器的重要功耗来源是片外存储事务。在卷积神经网络(CNN)工作负载的情况下,在深度学习应用中的主要工作量,那些内存事务通常归因于商店和回忆特征映射。因此,需要明确降低这些交易的功耗,同时最小化所需的任何开销。在这项工作中,提出了一种特征映射(DEF)方案的差分编码,该方案旨在最小化存储器数据总线上的活动,专门针对CNN工作负载。编码方案使用域特定知识,利用机器学习加速器通常用于降低功耗的方法的数据类型的特征映射统计。 Def能够出于最近的最先进的编码方案,显着较少的开销,在许多现代CNN上实现了降低的活动减少了50%。

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