协同云边缘学习中传输时间优化的任务调度

Yutao Huang, Yifei Zhu, Xiaoyi Fan, Xiaoqiang Ma, Fangxin Wang, Jiangchuan Liu, Ziyi Wang, Yong Cui
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引用次数: 21

摘要

近年来,深度学习在交通、金融和医学领域的许多先进应用中得到了应用。这些应用需要大量的计算资源和大规模的训练样本。云由于其丰富的资源而成为进行这些学习任务的自然选择。然而,随着深度学习技术在无人驾驶汽车等关键任务应用中的深入渗透,需要更严格的时间要求来保证其交互性,需要更大的训练数据量来保证其准确性,这是云无法轻易满足的,使得网络传输成为瓶颈。边缘学习通过对网络边缘的原始数据进行处理和压缩来减少数据传输时间,是一个很有前景的方向,但同时也带来了准确性降低的问题。为了在云边缘架构下平衡这种权衡,我们研究了一种考虑学习精度的任务调度问题,以减少加权传输时间。我们还提出了高效的调度算法,该算法能够通过广泛的跟踪驱动模拟实现最大完工时间减少50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Task Scheduling with Optimized Transmission Time in Collaborative Cloud-Edge Learning
Deep learning has been applied in many recent advanced applications in the field of transportation, finance and medicine. These applications require significant computation resources and large-scale training samples. Cloud becomes a natural choice for conducting these learning tasks due to its abundant resources. However, deeper penetration of deep learning techniques in mission critical applications, like driverless car, calls for stricter time requirement to guarantee its interaction and larger amount of dataset for training to guarantee its accuracy, which cannot be easily satisfied by the cloud and makes the network transmission become the bottleneck. Edge learning emerges to be a promising direction to reduce data transmission time by processing and compressing the raw data at the edge of the network, while brings the concern of accuracy reduction at the meantime. To balance this tradeoff under cloud-edge architecture, we study a task scheduling problem for reducing weighted transmission time which takes learning accuracy into consideration. We also propose efficient scheduling algorithms which are able to achieve up to 50% reduction in makespan with extensive trace-driven simulations.
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