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  • title: Reverse engineering learned optimizers
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            Reverse engineering learned optimizers
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            Reverse engineering learned optimizers

            Dec 6, 2021

            Speakers

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            Niru Maheswaranathan

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            David Sussillo

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            Luke Metz

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            About

            Learned optimizers are parametric algorithms that can themselves be trained to solve optimization problems. In contrast to baseline optimizers (such as momentum or Adam) that use simple update rules derived from theoretical principles, learned optimizers use flexible, high-dimensional, nonlinear parameterizations. Although this can lead to better performance, their inner workings remain a mystery. How is a given learned optimizer able to outperform a well tuned baseline? Has it learned a sophist…

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            NeurIPS 2021

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