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Brian Van Essen

The Case for Strong Scaling in Deep Learning: Training Large 3D CNNs with Hybrid Parallelism

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Jul 25, 2020
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Merlin: Enabling Machine Learning-Ready HPC Ensembles

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Dec 05, 2019
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Parallelizing Training of Deep Generative Models on Massive Scientific Datasets

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Oct 05, 2019
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Improving Strong-Scaling of CNN Training by Exploiting Finer-Grained Parallelism

Mar 15, 2019
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Large-Scale Deep Learning on the YFCC100M Dataset

Feb 11, 2015
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