Flexpoint: Predictive Numerics for Deep Learning

Valentina Popescu, M. Nassar, Xin Wang, E. Tumer, T. Webb
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引用次数: 20

Abstract

Deep learning has been undergoing rapid growth in recent years thanks to its state-of-the-art performance across a wide range of real-world applications. Traditionally neural networks were trained in IEEE-754 binary64 or binary32 format, a common practice in general scientific computing. However, the unique computational requirements of deep neural network training workloads allow for much more efficient and inexpensive alternatives, unleashing a new wave of numerical innovations powering specialized computing hardware. We previously presented Flexpoint, a blocked fixed-point data type combined with a novel predictive exponent management algorithm designed to support training of deep networks without modifications, aiming at a seamless replacement of the binary32 widely in practice today. We showed that Flexpoint with 16-bit mantissa and 5-bit shared exponent (flex16+S) achieved numerical parity to binary32 in training a number of convolutional neural networks. In the current paper we review the continuing trend of predictive numerics enhancing deep neural network training in specialized computing devices such as the Intel®N ervana ™ Neural Network Processor.
Flexpoint:深度学习的预测数字
近年来,由于深度学习在广泛的现实应用中具有最先进的性能,它一直在快速增长。传统上,神经网络以IEEE-754 binary64或binary32格式进行训练,这是一般科学计算中的常见做法。然而,深度神经网络训练工作负载的独特计算需求允许更高效、更廉价的替代方案,释放出一波新的数字创新,为专门的计算硬件提供动力。我们之前提出了Flexpoint,这是一种阻塞的定点数据类型,结合了一种新的预测指数管理算法,旨在支持深度网络的训练而无需修改,旨在无缝替代目前广泛应用的binary32。我们证明了具有16位尾数和5位共享指数(flex16+S)的Flexpoint在训练一些卷积神经网络时实现了与binary32的数值奇偶性。在本文中,我们回顾了预测数值在专业计算设备(如Intel®N ervana™神经网络处理器)中增强深度神经网络训练的持续趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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