Use of multilevel resource clustering for service placement in fog computing environments

Helberth Borelli, F. Costa, Sérgio T. Carvalho
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Abstract

The fog is part of the infrastructure that makes up the Internet and can be considered an extension of the cloud. It is a layer between the cloud and the edge, and its topology comprises mostly heterogeneous and resource-limited computing nodes. Because of its proximity to edge devices, the fog is often mentioned as a solution to deploy services with stringent latency requirements. Moreover, the characteristics of the fog are appropriate for the deployment of services with lower computational demands, meaning that lean service models, such as microservices, are an appropriate match. Regarding the placement of services in the fog, an effective technique refers to the use of resource clustering, which organizes resources according to their properties. A common approach has been the use of the geographical location of resources to build clusters that favor the placement of services closer to clients. In this paper, we refine this approach by proposing multilevel clustering, adding to geolocation-based clustering the use of feature-based resource clustering. Thus, besides increasing proximity, we can also improve the matching between service requirements and the characteristics of resources, further improving the performance of applications. We evaluate the approach using iFogSim 2, and the results show performance improvements in excess of 20% in both application flow time and service placement time when compared to pure geolocation-based clustering.
在雾计算环境中使用多级资源集群进行服务放置
雾是构成互联网的基础设施的一部分,可以被认为是云的延伸。它是介于云和边缘之间的一层,其拓扑结构主要由异构和资源有限的计算节点组成。由于雾靠近边缘设备,因此经常被提及作为部署具有严格延迟需求的服务的解决方案。此外,雾的特征适合于具有较低计算需求的服务的部署,这意味着精益服务模型(如微服务)是一个合适的匹配。对于服务在雾中的放置,一种有效的技术是使用资源聚类,它根据资源的属性对资源进行组织。一种常用的方法是利用资源的地理位置来构建集群,以便将服务放置在离客户更近的地方。在本文中,我们通过提出多级聚类来改进这种方法,并在基于地理位置的聚类中使用基于特征的资源聚类。因此,除了增加接近性之外,我们还可以改善服务需求与资源特征之间的匹配,从而进一步提高应用程序的性能。我们使用iFogSim 2对该方法进行了评估,结果显示,与纯粹基于地理位置的聚类相比,在应用程序流时间和服务放置时间方面的性能提高了20%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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