Optimizing Edge-Cloud Cooperation for Machine Learning Accuracy Considering Transmission Latency and Bandwidth Congestion

IF 0.7 4区 计算机科学 Q3 Engineering IEICE Transactions on Communications Pub Date : 2023-09-01 DOI:10.1587/transcom.2022ebp3171
KENGO TAJIRI, RYOICHI KAWAHARA, YOICHI MATSUO
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Abstract

Machine learning (ML) has been used for various tasks in network operations in recent years. However, since the scale of networks has grown and the amount of data generated has increased, it has been increasingly difficult for network operators to conduct their tasks with a single server using ML. Thus, ML with edge-cloud cooperation has been attracting attention for efficiently processing and analyzing a large amount of data. In the edge-cloud cooperation setting, although transmission latency, bandwidth congestion, and accuracy of tasks using ML depend on the load balance of processing data with edge servers and a cloud server in edge-cloud cooperation, the relationship is too complex to estimate. In this paper, we focus on monitoring anomalous traffic as an example of ML tasks for network operations and formulate transmission latency, bandwidth congestion, and the accuracy of the task with edge-cloud cooperation considering the ratio of the amount of data preprocessed in edge servers to that in a cloud server. Moreover, we formulate an optimization problem under constraints for transmission latency and bandwidth congestion to select the proper ratio by using our formulation. By solving our optimization problem, the optimal load balance between edge servers and a cloud server can be selected, and the accuracy of anomalous traffic monitoring can be estimated. Our formulation and optimization framework can be used for other ML tasks by considering the generating distribution of data and the type of an ML model. In accordance with our formulation, we simulated the optimal load balance of edge-cloud cooperation in a topology that mimicked a Japanese network and conducted an anomalous traffic detection experiment by using real traffic data to compare the estimated accuracy based on our formulation and the actual accuracy based on the experiment.
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考虑传输延迟和带宽拥塞的机器学习精度边缘云合作优化
近年来,机器学习(ML)已被用于网络操作中的各种任务。然而,随着网络规模的扩大和产生的数据量的增加,网络运营商越来越难以使用机器学习在单个服务器上完成任务,因此,机器学习与边缘云合作以高效处理和分析大量数据而受到关注。在边缘云协作设置中,虽然使用ML的任务的传输延迟、带宽拥塞和准确性取决于边缘云协作中边缘服务器和云服务器处理数据的负载平衡,但这种关系过于复杂而难以估计。在本文中,我们以网络操作的ML任务为例,重点关注异常流量的监控,并考虑边缘服务器中预处理的数据量与云服务器中预处理的数据量的比例,制定边缘云合作任务的传输延迟、带宽拥塞和准确性。在此基础上,提出了在传输延迟和带宽拥塞约束下选择合适比例的优化问题。通过求解该优化问题,可以选择边缘服务器和云服务器之间的最优负载均衡,并估计异常流量监控的准确性。通过考虑数据的生成分布和ML模型的类型,我们的公式和优化框架可以用于其他ML任务。根据我们的公式,我们在模拟日本网络的拓扑结构中模拟了边缘云协作的最优负载均衡,并使用真实流量数据进行了异常流量检测实验,比较了基于我们公式的估计精度和基于实验的实际精度。
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来源期刊
IEICE Transactions on Communications
IEICE Transactions on Communications ENGINEERING, ELECTRICAL & ELECTRONIC-TELECOMMUNICATIONS
CiteScore
1.50
自引率
28.60%
发文量
101
期刊介绍: The IEICE Transactions on Communications is an all-electronic journal published occasionally by the Institute of Electronics, Information and Communication Engineers (IEICE) and edited by the Communications Society in IEICE. The IEICE Transactions on Communications publishes original, peer-reviewed papers that embrace the entire field of communications, including: - Fundamental Theories for Communications - Energy in Electronics Communications - Transmission Systems and Transmission Equipment for Communications - Optical Fiber for Communications - Fiber-Optic Transmission for Communications - Network System - Network - Internet - Network Management/Operation - Antennas and Propagation - Electromagnetic Compatibility (EMC) - Wireless Communication Technologies - Terrestrial Wireless Communication/Broadcasting Technologies - Satellite Communications - Sensing - Navigation, Guidance and Control Systems - Space Utilization Systems for Communications - Multimedia Systems for Communication
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