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An Argument in Favor of Strong Scaling for Deep Neural Networks with Small Datasets

机译:具有小数据集的深度神经网络赞成强缩放

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In recent years, with the popularization of deep learning frameworks and large datasets, researchers have started parallelizing their models in order to train faster. This is crucially important, because they typically explore many hyperparameters in order to find the best ones for their applications. This process is time consuming and, consequently, speeding up training improves productivity. One approach to parallelize deep learning models followed by many researchers is based on weak scaling. The minibatches increase in size as new GPUs are added to the system. In addition, new learning rates schedules have been proposed to fix optimization issues that occur with large minibatch sizes. In this paper, however, we show that the recommendations provided by recent work do not apply to models that lack large datasets. In fact, we argument in favor of using strong scaling for achieving reliable performance in such cases. We evaluated our approach with up to 32 GPUs and show that weak scaling not only does not have the same accuracy as the sequential model, it also fails to converge most of time. Meanwhile, strong scaling has good scalability while having exactly the same accuracy of a sequential implementation.
机译:近年来,随着深度学习框架和大型数据集的普及,研究人员已开始并行化其模型以加快训练速度。这一点至关重要,因为他们通常会探索许多超参数,以便找到最适合其应用的参数。此过程很耗时,因此,加快培训速度可提高生产率。许多研究人员遵循的一种并行化深度学习模型的方法是基于弱缩放。随着将新的GPU添加到系统中,迷你批的大小会增加。此外,已经提出了新的学习率计划,以解决大批量生产中出现的优化问题。但是,在本文中,我们表明,近期工作提供的建议不适用于缺少大型数据集的模型。实际上,我们主张在这种情况下使用强扩展来实现可靠的性能。我们对多达32个GPU的方法进行了评估,结果表明弱缩放不仅不具有与顺序模型相同的精度,而且在大多数时间都无法收敛。同时,强扩展具有良好的可伸缩性,同时具有与顺序实现完全相同的精度。

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