Straggler-Aware Gradient Aggregation for Large-Scale Distributed Deep Learning System

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Yijun Li;Jiawei Huang;Zhaoyi Li;Jingling Liu;Shengwen Zhou;Tao Zhang;Wanchun Jiang;Jianxin Wang
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Abstract

Deep Neural Network (DNN) is a critical component of a wide range of applications. However, with the rapid growth of the training dataset and model size, communication becomes the bottleneck, resulting in low utilization of computing resources. To accelerate communication, recent works propose to aggregate gradients from multiple workers in the programmable switch to reduce the volume of exchanged data. Unfortunately, since using synchronization transmission to aggregate data, current in-network aggregation designs suffer from the straggler problem, which often occurs in shared clusters due to resource contention. To address this issue, we propose a straggler-aware aggregation transport protocol (SA-ATP), which enables the leading worker to leverage the spare computing and storage resources to help the straggling worker. We implement SA-ATP atop clusters using P4-programmable switches. The evaluation results show that SA-ATP reduces the iteration time by up to 57% and accelerates training by up to $1.8\times $ in real-world benchmark models.
面向大规模分布式深度学习系统的 "意识到落伍者 "梯度聚合技术
深度神经网络(DNN)是广泛应用的关键组成部分。然而,随着训练数据集和模型规模的快速增长,通信成为瓶颈,导致计算资源利用率低。为了加速通信,最近的研究建议在可编程交换机中聚合来自多个工作人员的梯度,以减少交换的数据量。不幸的是,由于使用同步传输来聚合数据,当前的网络内聚合设计遭受了由于资源争用而在共享集群中经常发生的掉队问题。为了解决这个问题,我们提出了一个感知掉队者的聚合传输协议(SA-ATP),它使领先的工人能够利用空闲的计算和存储资源来帮助掉队的工人。我们使用p4可编程开关在集群上实现SA-ATP。评估结果表明,在现实世界的基准模型中,SA-ATP将迭代时间缩短了57%,并将训练速度加快了1.8倍。
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来源期刊
IEEE/ACM Transactions on Networking
IEEE/ACM Transactions on Networking 工程技术-电信学
CiteScore
8.20
自引率
5.40%
发文量
246
审稿时长
4-8 weeks
期刊介绍: The IEEE/ACM Transactions on Networking’s high-level objective is to publish high-quality, original research results derived from theoretical or experimental exploration of the area of communication/computer networking, covering all sorts of information transport networks over all sorts of physical layer technologies, both wireline (all kinds of guided media: e.g., copper, optical) and wireless (e.g., radio-frequency, acoustic (e.g., underwater), infra-red), or hybrids of these. The journal welcomes applied contributions reporting on novel experiences and experiments with actual systems.
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