在Intel/x86和IBM/Power8/Power9平台上实现深度学习算法的软件工具综述

Denis Shaikhislamov, A. Sozykin, V. Voevodin
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引用次数: 6

摘要

神经网络在科学领域和工业中得到越来越广泛的应用。这主要是因为使用神经网络的新解决方案在以前由传统方法占据的领域显示了最先进的结果,例如。计算机视觉、语音识别等。但是为了得到这些结果,神经网络变得越来越复杂,因此需要更多的训练。如今,神经网络的训练可能需要数周时间。这个问题可以通过神经网络训练的并行化和使用现代集群和超级计算机来解决,这可以显著减少学习时间。今天,对数据科学家进行更快的培训是必不可少的,因为它允许更快地获得结果以做出下一个决策。在本文中,我们概述了流行的现代深度学习框架提供的分布式学习,包括提供的功能和性能。我们考虑了多种硬件选择:在多个gpu和多个计算节点上进行训练。
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Survey on Software Tools that Implement Deep Learning Algorithms on Intel/x86 and IBM/Power8/Power9 Platforms
Neural networks are becoming more and more popular in scientific field and in the industry. It is mostly because new solutions using neural networks show state-of-the-art results in the domains previously occupied by traditional methods, eg. computer vision, speech recognition etc. But to get these results neural networks become progressively more complex, thus needing a lot more training. The training of neural networks today can take weeks. This problems can be solved by parallelization of the neural networks training and using modern clusters and supercomputers, which can significantly reduce the learning time. Today, a faster training for data scientist is essential, because it allows to get the results faster to make the next decision. In this paper we provide an overview of distributed learning provided by the popular modern deep learning frameworks, both in terms of provided functionality and performance. We consider multiple hardware choices: training on multiple GPUs and multiple computing nodes.
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