Flexpoint: An Adaptive Numerical Format for Efficient Training of Deep Neural Networks

Volume: 30, Pages: 1742 - 1752
Published: Jan 1, 2017
Abstract
Deep neural networks are commonly developed and trained in 32-bit floating point format. Significant gains in performance and energy efficiency could be realized by training and inference in numerical formats optimized for deep learning. Despite advances in limited precision inference in recent years, training of neural networks in low bit-width remains a challenging problem. Here we present the Flexpoint data format, aiming at a complete...
Paper Details
Title
Flexpoint: An Adaptive Numerical Format for Efficient Training of Deep Neural Networks
Published Date
Jan 1, 2017
Volume
30
Pages
1742 - 1752
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