2022
DOI: 10.48550/arxiv.2202.01897
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AtmoDist: Self-supervised Representation Learning for Atmospheric Dynamics

Abstract: Representation learning has proven to be a powerful methodology in a wide variety of machine learning applications. For atmospheric dynamics, however, it has so far not been considered, arguably due to the lack of large-scale, labeled datasets that could be used for training. In this work, we show that the difficulty is benign and introduce a self-supervised learning task that defines a categorical loss for a wide variety of unlabeled atmospheric datasets. Specifically, we train a neural network on the simple … Show more

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