多核神经网络加速器上任务映射的评价

S. Shindo, Momoka Ohba, Tomoaki Tsumura, Shinobu Miwa
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引用次数: 1

摘要

深度神经网络因其高识别率被广泛应用于图像分类、语音识别和自然语言处理等领域。由于通用处理器(如cpu和gpu)对此类神经网络的能效不高,因此提出了用于神经网络的特定应用硬件加速器(又称神经网络加速器或NNAs)来提高能效。目前关于提高rna能量效率的研究较多,但对加速器任务分配的研究较少。本文首次探索了任务映射到NNAs内的核心以提高性能。直观地说,调优的任务映射在内核之间的通信量更少。为了证实这一假设,我们测试了两种类型的任务映射,它们在NNA上的核心之间产生不同数量的通信。我们的实验结果表明,核心之间的通信数量强烈影响NNA的执行周期,并且最有效的任务映射取决于神经网络的大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Task Mapping on Multicore Neural Network Accelerators
Deep neural networks are widely used for many applications such as image classification, speech recognition and natural language processing because of their high recognition rate. Since general-purpose processors such as CPUs and GPUs are not energy efficient for such neural networks, application specific hardware accelerators for neural networks (a.k.a. neural network accelerators or NNAs) have been proposed to improve the energy efficiency. There are many studies to increase the energy efficiency of NNAs, but few studies focus on task allocation on the accelerators. This paper provides the first exploration of task mapping to cores within NNAs for the increased performance. Intuitively, a well-tuned task mapping has less amount of communication between cores. To confirm this assumption, we tested two types of task mappings that generate different amount of communication between cores on an NNA. Our experimental results show that the number of communication between cores strongly affects the execution cycle of the NNA and the most effective task mapping differs depending on the size of neural networks.
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