Advanced data analytics using three-stage intelligent model pipelining for containerized microservices in 5G networks and beyond

Takaya Miyazawa, Ved P. Kafle, Yusuke Yokota, Yasushi Naruse, Hitoshi Asaeda
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Abstract

The recent rapid advancement of cloud-native networking infrastructure has leveraged the resource virtualization technology of containers to realize diverse microservice-based applications in 5G/6G networks and clouds. Containers drastically enhance the efficiency of computational resource allocation and utilization as compared to the related virtualization technology of Virtual Machines (VMs). The networking environment leveraging both VM and container mixed virtualization technologies makes the most use of them to realize a computational platform whose resources can be dynamically adjusted to a fine granularity. To continuously meet the required levels of quality of services in 5G/6G networks and clouds in that platform, an agile and autonomous data analytics system in the control plane is essential for the accurate prediction of server workloads and dynamic allocation of enough amount of computational resource. In this paper, we introduce a framework, which complies with Recommendation ITU-T Y.3177, for autonomous computational resource control and management. The framework consists of an advanced data analytics system and a resource control system. We propose an architecture for the advanced data analytics system consisting of learning and prediction components. The learning component includes a three-stage intelligent model pipelining with three cascaded machine learning models, nonlinear regression, clustering, and multiple regression. These models determine the fluctuation trends in CPU utilization, classify services with similarities in the trends, and predict the peak CPU utilization of each containerized microservice. We evaluate the proposed models through experiments and numerical analysis. The results prove that the models support agile data analytics, which can complete data processing in the time granularity of seconds and achieve higher prediction accuracy of CPU utilization.
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在5G网络及以后的容器化微服务中使用三阶段智能模型流水线进行高级数据分析
近年来,云原生网络基础设施的快速发展,利用容器的资源虚拟化技术,在5G/6G网络和云中实现了多种基于微服务的应用。与虚拟机的相关虚拟化技术相比,容器极大地提高了计算资源的分配和利用效率。利用虚拟机和容器混合虚拟化技术的网络环境充分利用了它们来实现一个计算平台,该平台的资源可以动态调整到一个细粒度。为了持续满足该平台中5G/6G网络和云所要求的服务质量水平,控制平面中的敏捷自主数据分析系统对于准确预测服务器工作负载和动态分配足够数量的计算资源至关重要。在本文中,我们介绍了一个符合ITU-T Y.3177建议书的框架,用于自主计算资源控制和管理。该框架由高级数据分析系统和资源控制系统组成。提出了一种由学习和预测两部分组成的高级数据分析系统体系结构。学习组件包括一个三阶段智能模型流水线,具有三个级联机器学习模型,非线性回归,聚类和多元回归。这些模型确定CPU利用率的波动趋势,对趋势相似的服务进行分类,并预测每个容器化微服务的CPU利用率峰值。我们通过实验和数值分析来评估所提出的模型。结果表明,该模型支持敏捷数据分析,可以在秒级的时间粒度内完成数据处理,实现更高的CPU利用率预测精度。
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