From Computation to Consumption: Exploring the Compute-Energy Link for Training and Testing Neural Networks for SED Systems

Constance Douwes, Romain Serizel
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Abstract

The massive use of machine learning models, particularly neural networks, has raised serious concerns about their environmental impact. Indeed, over the last few years we have seen an explosion in the computing costs associated with training and deploying these systems. It is, therefore, crucial to understand their energy requirements in order to better integrate them into the evaluation of models, which has so far focused mainly on performance. In this paper, we study several neural network architectures that are key components of sound event detection systems, using an audio tagging task as an example. We measure the energy consumption for training and testing small to large architectures and establish complex relationships between the energy consumption, the number of floating-point operations, the number of parameters, and the GPU/memory utilization.
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从计算到消耗:探索用于 SED 系统的神经网络训练和测试的计算-能源联系
机器学习模型,尤其是神经网络的大量使用,引起了人们对其环境影响的严重关注。事实上,在过去几年中,我们看到与训练和部署这些系统相关的计算成本激增。因此,了解这些系统的能源需求至关重要,以便更好地将其纳入模型评估,而迄今为止,模型评估主要侧重于性能。本文以音频标记任务为例,研究了作为声音事件检测系统关键组成部分的几种神经网络架构。我们测量了从小型到大型架构的训练和测试能耗,并在能耗、浮点运算次数、参数数量和 GPU/内存利用率之间建立了复杂的关系。
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