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CosmoFlow: Using Deep Learning to Learn the Universe at Scale

Authors :
Mathuriya, Amrita
Bard, Deborah
Mendygral, Peter
Meadows, Lawrence
Arnemann, James
Shao, Lei
He, Siyu
Karna, Tuomas
Moise, Daina
Pennycook, Simon J.
Maschoff, Kristyn
Sewall, Jason
Kumar, Nalini
Ho, Shirley
Ringenburg, Mike
Prabhat
Lee, Victor
Publication Year :
2018

Abstract

Deep learning is a promising tool to determine the physical model that describes our universe. To handle the considerable computational cost of this problem, we present CosmoFlow: a highly scalable deep learning application built on top of the TensorFlow framework. CosmoFlow uses efficient implementations of 3D convolution and pooling primitives, together with improvements in threading for many element-wise operations, to improve training performance on Intel(C) Xeon Phi(TM) processors. We also utilize the Cray PE Machine Learning Plugin for efficient scaling to multiple nodes. We demonstrate fully synchronous data-parallel training on 8192 nodes of Cori with 77% parallel efficiency, achieving 3.5 Pflop/s sustained performance. To our knowledge, this is the first large-scale science application of the TensorFlow framework at supercomputer scale with fully-synchronous training. These enhancements enable us to process large 3D dark matter distribution and predict the cosmological parameters $\Omega_M$, $\sigma_8$ and n$_s$ with unprecedented accuracy.<br />Comment: 11 pages, 6 pages, presented at SuperComputing 2018

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1808.04728
Document Type :
Working Paper