Herring: Rethinking the Parameter Server at Scale for the Cloud

Indu Thangakrishnan, D. Çavdar, C. Karakuş, Piyush Ghai, Yauheni Selivonchyk, Cory Pruce
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引用次数: 11

Abstract

Training large deep neural networks is time-consuming and may take days or even weeks to complete. Although parameter-server-based approaches were initially popular in distributed training, scalability issues led the field to move towards all-reduce-based approaches. Recent developments in cloud networking technologies, however, such as the Elastic Fabric Adapter (EFA) and Scalable Reliable Datagram (SRD), motivate a re-thinking of the parameter-server approach to address its fundamental inefficiencies. To this end, we introduce a novel communication library, Herring, which is designed to alleviate the performance bottlenecks in parameter-server-based training. We show that gradient reduction with Herring is twice as fast as all-reduce-based methods. We further demonstrate that training deep learning models like $\mathrm{B}\mathrm{E}\mathrm{R}\mathrm{T}_{\mathrm{l}\mathrm{a}\mathrm{r}\mathrm{g}\mathrm{e}}$ using Herring outperforms all-reduce-based training, achieving 85% scaling efficiency on large clusters with up to 2048 NVIDIA V100 GPUs without accuracy drop.
鲱鱼:重新考虑云计算的规模参数服务器
训练大型深度神经网络非常耗时,可能需要几天甚至几周才能完成。尽管基于参数服务器的方法最初在分布式训练中很流行,但可伸缩性问题导致该领域转向基于全约简的方法。然而,最近云网络技术的发展,如弹性结构适配器(EFA)和可扩展可靠数据报(SRD),激发了对参数服务器方法的重新思考,以解决其根本的低效率问题。为此,我们引入了一个新的通信库Herring,它旨在缓解基于参数服务器的训练中的性能瓶颈。我们表明,Herring的梯度约简速度是所有基于约简的方法的两倍。我们进一步证明,使用Herring训练深度学习模型,如$\mathrm{B}\mathrm{E}\mathrm{R}\mathrm{T}_{\mathrm{l}\mathrm{a}\mathrm{R}\mathrm{g}\mathrm{E}}$,优于基于全约简的训练,在多达2048个NVIDIA V100 gpu的大型集群上达到85%的扩展效率,而精度没有下降。
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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