One Period to Rule Them All: Identifying Critical Learning Periods in Deep Networks
Vinicius Yuiti Fukase, Heitor Gama, Barbara Bueno, Lucas Libanio, Anna Helena Reali Costa, Artur Jordao

TL;DR
This paper introduces a systematic method to identify critical learning periods in deep neural networks, enabling significant reductions in training time, energy use, and costs without sacrificing model performance.
Contribution
It presents a novel approach for pinpointing when critical training phases occur, improving efficiency and sustainability in deep learning training processes.
Findings
Up to 59.67% reduction in training time
59.47% decrease in CO₂ emissions
60% reduction in financial costs
Abstract
Critical Learning Periods comprehend an important phenomenon involving deep learning, where early epochs play a decisive role in the success of many training recipes, such as data augmentation. Existing works confirm the existence of this phenomenon and provide useful insights. However, the literature lacks efforts to precisely identify when critical periods occur. In this work, we fill this gap by introducing a systematic approach for identifying critical periods during the training of deep neural networks, focusing on eliminating computationally intensive regularization techniques and effectively applying mechanisms for reducing computational costs, such as data pruning. Our method leverages generalization prediction mechanisms to pinpoint critical phases where training recipes yield maximum benefits to the predictive ability of models. By halting resource-intensive recipes beyond…
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