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首页> 外文期刊>IEEE Journal on Selected Areas in Communications >Optimal Online Data Partitioning for Geo-Distributed Machine Learning in Edge of Wireless Networks
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Optimal Online Data Partitioning for Geo-Distributed Machine Learning in Edge of Wireless Networks

机译:无线网络边缘的地理分布机器学习的最佳在线数据分区

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To enable machine learning at the edge of wireless networks (such as edge cloud), close to mobile users, is critical for future wireless networks, but challenging since the lower layers in edge cloud are substantially different from existing machine learning configurations in the cloud. In such geo-distributed computing environment, streaming data need to be evenly and cost-efficiently partitioned for different workers to produce an unbiased learning model with reduced parameter synchronization frequency. This paper presents a new online approach to optimally partitioning streaming data under time-varying network conditions. A new measure is proposed to quantify the evenness of data partitioning and restrain the optimization of data admission, partitioning, and processing. Stochastic gradient descent is applied to learn the optimal decisions online and asymptotically maximize the time-average utility of data partitioning. A new protocol is designed to further reduce the measurements of link costs, while preserving the asymptotic optimality, data evenness, and stability of the platform. Simulation results show that the proposed approach is superior to the state of the art in terms of throughput and cost efficiency, while only 24% of the links need to he measured to achieve the asymptotic optimality.
机译:在靠近移动用户的无线网络(例如边缘云)的边缘启用机器学习对未来的无线网络至关重要,但由于边缘云中的较低层与云中现有的机器学习配置有很大不同,因此具有挑战性。在这样的地理分布式计算环境中,流数据需要针对不同的工作者进行均匀且经济高效的分区,以产生具有减少的参数同步频率的无偏学习模型。本文提出了一种新的在线方法,可以在时变网络条件下对流数据进行最佳分区。提出了一种新的方法来量化数据分区的均匀性,并限制数据接纳,分区和处理的优化。随机梯度下降法用于在线学习最佳决策,并渐近地最大化数据分割的时间平均效用。一种新协议旨在进一步减少链路成本的测量,同时保留平台的渐近最优性,数据均匀性和稳定性。仿真结果表明,所提出的方法在吞吐量和成本效率方面均优于现有技术,而仅需测量24%的链路即可实现渐近最优。

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