Deep Learning at 15PF : Supervised and Semi-Supervised Classification for Scientific Data
/ Authors
T. Kurth, Jian Zhang, N. Satish, Ioannis Mitliagkas, Evan Racah, M. Patwary, T. Malas, N. Sundaram, W. Bhimji, M. Smorkalov
and 5 more authors
J. Deslippe, Mikhail Shiryaev, Srinivas Sridharan, Prabhat, P. Dubey
/ 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 ~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 ~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.
Journal: SC17: International Conference for High Performance Computing, Networking, Storage and Analysis