Self-Adaptive Task Allocation for Decentralized Deep Learning in Heterogeneous Environments
Chao, Yongyue; Liao, Mingxue; Gao, Jiaxin; Li,Guangyao
2022-08-17
会议日期2022-7-1至20227-10
会议地点线上会议
页码154-159
英文摘要

The demand for large-scale deep learning is increasing, and distributed training is the current mainstream solution. Decentralized algorithms are widely used in distributed training. However, in a heterogeneous environment, each worker computes the same amount of training data resulting in a lot of wasted time for waiting the straggler. In this paper, we proposed a self-adaptive task allocation algorithm (SATA) which allows that each worker acquires the amount of training data adaptively based on the performance of workers in the heterogeneous environment. In order to show the applicability of SATA in heterogeneous clusters better, we set up the heterogeneous cluster composed of two or three different types of GPUs. Besides, we conduct a series of experiments to show the performance of SATA. The experimental results illustrate several advantages of SATA. SATA can accelerate distributed training about 3.3X that of All-Reduce as well as about 1.9X-3.8X that of AD-PSGD algorithm. And the total training time of SATA is reduced from 20 to 40 percentage compared to All-Reduce. © 2022 Knowledge Systems Institute Graduate School. All rights reserved.

会议录Proceedings of the International Conference on Software Engineering and Knowledge Engineering, SEKE
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/52043]  
专题复杂系统认知与决策实验室
通讯作者Chao, Yongyue
作者单位中国科学院自动化研究所
推荐引用方式
GB/T 7714
Chao, Yongyue,Liao, Mingxue,Gao, Jiaxin,et al. Self-Adaptive Task Allocation for Decentralized Deep Learning in Heterogeneous Environments[C]. 见:. 线上会议. 2022-7-1至20227-10.
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