Abstract
The recent advances in deep learning (DL) have been accelerated by access to large-scale data and compute. These large-scale resources have been used to train progressively larger models which are resource intensive in terms of compute, data, energy, and carbon emissions. These costs are becoming a new type of entry barrier to researchers and practitioners with limited access to resources at such scale, particularly in the Global South. In this work, we take a comprehensive look at the landscape of existing DL models for medical image analysis tasks and demonstrate their usefulness in settings where resources are limited. To account for the resource consumption of DL models, we introduce a novel measure to estimate the performance per resource unit, which we call the PePR1 score. Using a diverse family of 131 unique DL architectures (spanning 1M to 130M trainable parameters) and three medical image datasets, we capture trends about the performance-resource trade-offs. In applications like medical image analysis, we argue that small-scale, specialized models are better than striving for large-scale models. Furthermore, we show that using existing pretrained models that are fine-tuned on new data can significantly reduce the computational resources and data required compared to training models from scratch. We hope this work will encourage the community to focus on improving AI equity by developing methods and models with smaller resource footprints.
Originalsprog | Engelsk |
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Titel | Proceedings of the 6th Northern Lights Deep Learning Conference (NLDL) |
Antal sider | 10 |
Vol/bind | 265 |
Forlag | PMLR |
Publikationsdato | 2025 |
Sider | 220-229 |
Status | Udgivet - 2025 |
Begivenhed | 6th Northern Lights Deep Learning Conference, NLDL 2025 - Tromso, Norge Varighed: 7 jan. 2025 → 9 jan. 2025 |
Konference
Konference | 6th Northern Lights Deep Learning Conference, NLDL 2025 |
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Land/Område | Norge |
By | Tromso |
Periode | 07/01/2025 → 09/01/2025 |
Navn | Proceedings of Machine Learning Research |
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Vol/bind | 265 |
ISSN | 2640-3498 |
Bibliografisk note
Funding Information:RS, BP, CI, and ED acknowledge funding received under European Union\u2019s Horizon Europe Research and Innovation programme under grant agreements No. 101070284 and No. 101070408. CI acknowledges support by the Pioneer Centre for AI, DNRF grant number P1. GS would like to acknowledge Wellcome Foundation (grant number 222180/Z/20/Z).
Publisher Copyright:
© NLDL 2025.All rights reserved.