Elan:面向深度学习的通用和高效弹性训练

Lei Xie, Jidong Zhai, Baodong Wu, Yuanbo Wang, Xingcheng Zhang, Peng Sun, Shengen Yan
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引用次数: 6

摘要

弹性深度学习训练在提高资源利用率、加快训练速度方面具有广阔的应用前景,近年来受到越来越多的关注。然而,现有的提供弹性的方法有一定的局限性。它们要么在扩展时未能充分探索深度学习训练的并行性,要么缺乏在不同设备之间复制训练状态的有效机制。为了解决这些限制,我们设计了Elan,一个通用的、高效的深度学习弹性训练系统。在Elan中,我们提出了一种新的混合缩放机制,以便在探索更多并行性时在训练效率和模型性能之间进行良好的权衡。我们利用底层设备的拓扑结构来执行并发和无io的训练状态复制。为了避免启动和初始化的高开销,我们进一步提出了一种异步协调机制。在上述创新的推动下,Elan可以提供高性能(~1s)迁移、内扩展和外扩展支持,而运行时开销可以忽略不计(<3‰)。对于ResNet-50在ImageNet上的弹性训练,Elan将求解时间提高了20%。对于弹性调度,在Elan的帮助下,资源利用率提高了21%以上,作业等待时间减少了43%以上。
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Elan: Towards Generic and Efficient Elastic Training for Deep Learning
Showing a promising future in improving resource utilization and accelerating training, elastic deep learning training has been attracting more and more attention recently. Nevertheless, existing approaches to provide elasticity have certain limitations. They either fail to fully explore the parallelism of deep learning training when scaling out or lack an efficient mechanism to replicate training states among different devices.To address these limitations, we design Elan, a generic and efficient elastic training system for deep learning. In Elan, we propose a novel hybrid scaling mechanism to make a good trade-off between training efficiency and model performance when exploring more parallelism. We exploit the topology of underlying devices to perform concurrent and IO-free training state replication. To avoid the high overhead of start and initialization, we further propose an asynchronous coordination mechanism. Powered by the above innovations, Elan can provide high-performance (~1s) migration, scaling in and scaling out support with negligible runtime overhead (<3‰). For elastic training of ResNet-50 on ImageNet, Elan improves the time to solution by 20%. For elastic scheduling, with the help of Elan, resource utilization is improved by 21%+ and job pending time is reduced by 43%+.
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