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Exascale Deep Learning for Scientific Inverse Problems

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arxiv 1909.11150 v1 pith:CDU3BX5R submitted 2019-09-24 cs.LG cond-mat.mtrl-scics.DCphysics.comp-phstat.ML

Exascale Deep Learning for Scientific Inverse Problems

classification cs.LG cond-mat.mtrl-scics.DCphysics.comp-phstat.ML
keywords distributedgradienttrainingcommunicationdeepinverselearningmaterials
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce novel communication strategies in synchronous distributed Deep Learning consisting of decentralized gradient reduction orchestration and computational graph-aware grouping of gradient tensors. These new techniques produce an optimal overlap between computation and communication and result in near-linear scaling (0.93) of distributed training up to 27,600 NVIDIA V100 GPUs on the Summit Supercomputer. We demonstrate our gradient reduction techniques in the context of training a Fully Convolutional Neural Network to approximate the solution of a longstanding scientific inverse problem in materials imaging. The efficient distributed training on a dataset size of 0.5 PB, produces a model capable of an atomically-accurate reconstruction of materials, and in the process reaching a peak performance of 2.15(4) EFLOPS$_{16}$.

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