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Main Authors: Douwes, Constance, Serizel, Romain
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.05080
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author Douwes, Constance
Serizel, Romain
author_facet Douwes, Constance
Serizel, Romain
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2409_05080
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle From Computation to Consumption: Exploring the Compute-Energy Link for Training and Testing Neural Networks for SED Systems
Douwes, Constance
Serizel, Romain
Machine Learning
Sound
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.
title From Computation to Consumption: Exploring the Compute-Energy Link for Training and Testing Neural Networks for SED Systems
topic Machine Learning
Sound
url https://arxiv.org/abs/2409.05080