Authors
Alexander EI Brownlee, Jason Adair, Saemundur O Haraldsson, John Jabbo
Publication date
2021/5/30
Conference
2021 IEEE/ACM International Workshop on Genetic Improvement (GI)
Pages
11-18
Publisher
IEEE
Description
Machine learning accounts for considerable global electricity demand and resulting environmental impact, as training a large deep-learning model produces 284000kgs of the greenhouse gas carbon dioxide. In recent years, search-based approaches have begun to explore improving software to consume less energy. Machine learning is a particularly strong candidate for this because it is possible to trade off functionality (accuracy) against energy consumption, whereas with many programs functionality is simply a pass-or-fail constraint. We use a grid search to explore hyperparameter configurations for a multilayer perceptron on five classification data sets, considering trade-offs of classification accuracy against training or inference energy. On one data set, we show that 77% of energy consumption for inference can be saved by reducing accuracy from 94.3% to 93.2%. Energy for training can also be reduced by …
Total citations
2021202220232024410127
Scholar articles
AEI Brownlee, J Adair, SO Haraldsson, J Jabbo - 2021 IEEE/ACM International Workshop on Genetic …, 2021