Energy Efficiency of Training Neural Network Architectures: An Empirical Study

Yi Xu, Silverio Mart'inez-Fern'andez, Matias Martinez, Xavier Franch
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引用次数: 4

Abstract

The evaluation of Deep Learning models has traditionally focused on criteria such as accuracy, F1 score, and related measures. The increasing availability of high computational power environments allows the creation of deeper and more complex models. However, the computations needed to train such models entail a large carbon footprint. In this work, we study the relations between DL model architectures and their environmental impact in terms of energy consumed and CO$_2$ emissions produced during training by means of an empirical study using Deep Convolutional Neural Networks. Concretely, we study: (i) the impact of the architecture and the location where the computations are hosted on the energy consumption and emissions produced; (ii) the trade-off between accuracy and energy efficiency; and (iii) the difference on the method of measurement of the energy consumed using software-based and hardware-based tools.
训练神经网络架构的能量效率:一个实证研究
传统上,深度学习模型的评估主要集中在准确性、F1分数和相关措施等标准上。高计算能力环境的日益可用性允许创建更深入和更复杂的模型。然而,训练这些模型所需的计算需要大量的碳足迹。在这项工作中,我们通过使用深度卷积神经网络的实证研究,从训练过程中产生的能量消耗和CO$_2$排放的角度研究了深度学习模型架构与其环境影响之间的关系。具体来说,我们研究:(i)建筑和计算地点对产生的能源消耗和排放的影响;(ii)准确性和能源效率之间的权衡;(三)基于软件和基于硬件的能源消耗测量方法的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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