基于深度学习的分布式异构任务调度和资源分配算法研究

Qiu Zhen, Fan Xu, Wenpu Li, Fan Yang, Hongyu Wu, Huanhuan Li
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引用次数: 0

摘要

随着深度学习的快速发展和应用,其数据集规模和网络模型越来越大,分布式模型训练也越来越受欢迎。本文提出了一种基于深度学习的分布式异构任务调度和资源分配算法,以解决分布式协同训练过程中资源使用异构、任务收敛时间无法预测、通信时间瓶颈以及静态资源分配造成的资源浪费等问题。该算法实现了异构任务的动态调度和资源分配,缩短了集群中的任务完成时间。实验表明,本文提出的算法在任务完成时间和系统持续时间上都有显著改善。
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Research on distributed heterogeneous task scheduling and resource allocation algorithms based on deep learning
With the rapid development and application of deep learning, its dataset size and network model are becoming increasingly large, and distributed model training is becoming increasingly popular. This article proposes a distributed heterogeneous task scheduling and resource allocation algorithm based on deep learning to address issues such as heterogeneity in resource usage, inability to predict task convergence time, communication time bottlenecks, and resource waste caused by static resource allocation during distributed collaborative training. This algorithm achieves dynamic scheduling and resource allocation of heterogeneous tasks and reduces task completion time in clusters. The experiment shows that the algorithm proposed in this article has significant improvements in both task completion time and system duration.
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