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PyData Madison Meetup #5 3 August 2020 Speaker: Recent empirical and theoretical results provide strong motivation for increasing the batch size. This results in fewer model ... In training AI models, we have to choose what kind of model will be trained, e.g. how many layers and how many neurons per ...
Large numerical forecast datasets are commonly used for atmospheric research with dataset sizes exceeding several terabytes.
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