2020
DOI: 10.5194/egusphere-egu2020-20132
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Towards synthetic data generation for machine learning models in weather and climate

Abstract: <p>The use of real data for training machine learning (ML) models are often a cause of major limitations. For example, real data may be (a) representative of a subset of situations and domains, (b) expensive to produce, (c) limited to specific individuals due to licensing restrictions. Although the use of synthetic data are becoming increasingly popular in computer vision, ML models used in weather and climate models still rely on the use of large real data datasets. Here we present some recent w… Show more

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