How green is continual learning, really? Analyzing the energy consumption in continual training of vision foundation models
With the ever-growing adoption of AI, its impact on the environment is no longer negligible. Despite the potential that continual learning could have towards Green AI, its environmental sustainability remains relatively uncharted. In this work we aim to gain a systematic understanding of the energy...
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Zusammenfassung: | With the ever-growing adoption of AI, its impact on the environment is no
longer negligible. Despite the potential that continual learning could have
towards Green AI, its environmental sustainability remains relatively
uncharted. In this work we aim to gain a systematic understanding of the energy
efficiency of continual learning algorithms. To that end, we conducted an
extensive set of empirical experiments comparing the energy consumption of
recent representation-, prompt-, and exemplar-based continual learning
algorithms and two standard baseline (fine tuning and joint training) when used
to continually adapt a pre-trained ViT-B/16 foundation model. We performed our
experiments on three standard datasets: CIFAR-100, ImageNet-R, and DomainNet.
Additionally, we propose a novel metric, the Energy NetScore, which we use
measure the algorithm efficiency in terms of energy-accuracy trade-off. Through
numerous evaluations varying the number and size of the incremental learning
steps, our experiments demonstrate that different types of continual learning
algorithms have very different impacts on energy consumption during both
training and inference. Although often overlooked in the continual learning
literature, we found that the energy consumed during the inference phase is
crucial for evaluating the environmental sustainability of continual learning
models. |
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DOI: | 10.48550/arxiv.2409.18664 |