ASHL: An Adaptive Multi-Stage Distributed Deep Learning Training Scheme for Heterogeneous Environments

被引:1
作者
Shen, Zhaoyan [1 ]
Tang, Qingxiang [1 ]
Zhou, Tianren [1 ]
Zhang, Yuhao [2 ]
Jia, Zhiping [1 ]
Yu, Dongxiao [1 ]
Zhang, Zhiyong [3 ]
Li, Bingzhe [4 ]
机构
[1] Shandong Univ, Sch Comp Sci & Technol, Qingdao 266237, Peoples R China
[2] Tsinghua Univ, Dept Comp Sci & Technol, Beijing 100084, Peoples R China
[3] Quan Cheng Lab, Jinan 250103, Peoples R China
[4] Univ Texas Dallas, Comp Sci Dept, Richardson, TX 75080 USA
关键词
Distributed deep learning; parameter server; data parallelism; OPTIMIZATION;
D O I
10.1109/TC.2023.3315847
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
With the increment of data sets and models sizes, distributed deep learning has been proposed to accelerate training and improve the accuracy of DNN models. The parameter server framework is a popular collaborative architecture for data-parallel training, which works well for homogeneous environments by properly aggregating the computation/communication capabilities of different workers. However, in heterogeneous environments, the resources of different workers vary a lot. Some stragglers may seriously limit the whole speed, which impacts the overall training process. In this paper, we propose an adaptive multi-stage distributed deep learning training framework, named ASHL, for heterogeneous environments. First, a profiling scheme is proposed to capture the capabilities of each worker to reasonably plan the training and communication tasks on each worker, and lay the foundation for the formal training. Second, a hybrid-mode training scheme (i.e., coarse-grained and fined-grained training) is proposed to balance the model accuracy and training speed. The coarse-grained training scheme (named AHL) adopts an asynchronous communication strategy, which involves less frequent communications. Its main goal is to make the model quickly converge to a certain level. The fine-grained training stage (named SHL) uses a semi-asynchronous communication strategy and adopts a high communication frequency. Its main goal is to improve the model convergence effect. Finally, a compression-based communication scheme is proposed to further increase the communication efficiency of the training process. Our experimental results show that ASHL reduces the overall training time by more than 35% to converge to the same degree and has better generalization ability compared with state-of-the-art schemes like ADSP.
引用
收藏
页码:30 / 43
页数:14
相关论文
共 44 条
[1]  
Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
[2]   DC2: Delay-aware Compression Control for Distributed Machine Learning [J].
Abdelmoniem, Ahmed M. ;
Canini, Marco .
IEEE CONFERENCE ON COMPUTER COMMUNICATIONS (IEEE INFOCOM 2021), 2021,
[3]  
Basu D, 2019, ADV NEUR IN, V32
[4]  
Chen CY, 2018, AAAI CONF ARTIF INTE, P2827
[5]  
Chen JM, 2017, Arxiv, DOI arXiv:1604.00981
[6]   GeePS: Scalable deep learning on distributed GPUs with a GPU-specialized parameter server [J].
Cui, Henggang ;
Zhang, Hao ;
Ganger, Gregory R. ;
Gibbons, Phillip B. ;
Xing, Eric P. .
PROCEEDINGS OF THE ELEVENTH EUROPEAN CONFERENCE ON COMPUTER SYSTEMS, (EUROSYS 2016), 2016,
[7]  
Dean J., 2012, P ADV NEUR INF PROC, P1223
[8]  
Aji AF, 2017, Arxiv, DOI arXiv:1704.05021
[9]   DIRECT BULK-SYNCHRONOUS PARALLEL ALGORITHMS [J].
GERBESSIOTIS, AV ;
VALIANT, LG .
JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING, 1994, 22 (02) :251-267
[10]   A Framework for Distributed Deep Neural Network Training with Heterogeneous Computing Platforms [J].
Gu, Bontak ;
Kong, Joonho ;
Munir, Arslan ;
Kim, Young Geun .
2019 IEEE 25TH INTERNATIONAL CONFERENCE ON PARALLEL AND DISTRIBUTED SYSTEMS (ICPADS), 2019, :430-437