Speeding up Deep Learning with Transient Servers

Shijian Li, R. Walls, Lijie Xu, Tian Guo
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引用次数: 12

Abstract

Distributed training frameworks, like TensorFlow, have been proposed as a means to reduce the training time of deep learning models by using a cluster of GPU servers. While such speedups are often desirable-e.g., for rapidly evaluating new model designs-they often come with significantly higher monetary costs due to sublinear scalability. In this paper, we investigate the feasibility of using training clusters composed of cheaper transient GPU servers to get the benefits of distributed training without the high costs. We conduct the first large-scale empirical analysis, launching more than a thousand GPU servers of various capacities, aimed at understanding the characteristics of transient GPU servers and their impact on distributed training performance. Our study demonstrates the potential of transient servers with a speedup of 7.7X with more than 62.9% monetary savings for some cluster configurations. We also identify a number of important challenges and opportunities for redesigning distributed training frameworks to be transient-aware. For example, the dynamic cost and availability characteristics of transient servers suggest the need for frameworks to dynamically change cluster configurations to best take advantage of current conditions.
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利用瞬态服务器加速深度学习
分布式训练框架,如TensorFlow,已经被提出作为一种手段,通过使用GPU服务器集群来减少深度学习模型的训练时间。虽然这样的加速通常是可取的。,用于快速评估新模型设计-由于次线性可扩展性,它们通常伴随着更高的货币成本。在本文中,我们研究了使用由更便宜的瞬时GPU服务器组成的训练集群的可行性,以获得分布式训练的好处,而不需要高昂的成本。我们进行了第一次大规模的实证分析,启动了一千多台不同容量的GPU服务器,旨在了解瞬时GPU服务器的特征及其对分布式训练性能的影响。我们的研究证明了瞬态服务器的潜力,在某些集群配置中,瞬态服务器的速度提高了7.7X,节省了62.9%以上的资金。我们还确定了重新设计分布式训练框架以实现瞬时感知的一些重要挑战和机遇。例如,瞬态服务器的动态成本和可用性特征表明,框架需要动态更改集群配置,以最好地利用当前条件。
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