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  • title: Don't Waste Data: Transfer Learning to Leverage All Data for Machine-Learnt Climate Model Emulation
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            Don't Waste Data: Transfer Learning to Leverage All Data for Machine-Learnt Climate Model Emulation
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            Don't Waste Data: Transfer Learning to Leverage All Data for Machine-Learnt Climate Model Emulation

            Dec 2, 2022

            Speakers

            RP

            Raghul Parthipan

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            DW

            Damon Wischik

            Speaker · 0 followers

            About

            How can we learn from all available data when training machine-learnt climate models, without incurring any extra cost at simulation time? Typically, the training data comprises coarse-grained high-resolution data. But only keeping this coarse-grained data means the rest of the high-resolution data is thrown out. We use a transfer learning approach, which can be applied to a range of machine learning models, to leverage all the high-resolution data. We use three chaotic systems to show it stabi…

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            NeurIPS 2022

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