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Deep Learning at 15PF: Supervised and Semi-Supervised Classification for Scientific Data

17 August 2017
Thorsten Kurth
Jian Zhang
N. Satish
Ioannis Mitliagkas
Evan Racah
M. Patwary
T. Malas
N. Sundaram
W. Bhimji
Mikhail E. Smorkalov
J. Deslippe
Mikhail Shiryaev
Srinivas Sridharan
P. Prabhat
Pradeep Dubey
ArXiv (abs)PDFHTML
Abstract

This paper presents the first, 15-PetaFLOP Deep Learning system for solving scientific pattern classification problems on contemporary HPC architectures. We develop supervised convolutional architectures for discriminating signals in high-energy physics data as well as semi-supervised architectures for localizing and classifying extreme weather in climate data. Our Intelcaffe-based implementation obtains ∼\sim∼2TFLOP/s on a single Cori Phase-II Xeon-Phi node. We use a hybrid strategy employing synchronous node-groups, while using asynchronous communication across groups. We use this strategy to scale training of a single model to ∼\sim∼9600 Xeon-Phi nodes; obtaining peak performance of 11.73-15.07 PFLOP/s and sustained performance of 11.41-13.27 PFLOP/s. At scale, our HEP architecture produces state-of-the-art classification accuracy on a dataset with 10M images, exceeding that achieved by selections on high-level physics-motivated features. Our semi-supervised architecture successfully extracts weather patterns in a 15TB climate dataset. Our results demonstrate that Deep Learning can be optimized and scaled effectively on many-core, HPC systems.

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