Multilayer Resource-aware Partitioning for Fog Application Placement

Zahra Najafabadi Samani, Nishant Saurabh, R. Prodan
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引用次数: 9

Abstract

Fog computing emerged as a crucial platform for the deployment of IoT applications. The complexity of such applications require methods that handle the resource diversity and network structure of Fog devices, while maximizing the service placement and reducing the resource wastage. Prior studies in this domain primarily focused on optimizing application-specific requirements and fail to address the network topology combined with the different types of resources encountered in Fog devices. To overcome these problems, we propose a multilayer resource-aware partitioning method to minimize the resource wastage and maximize the service placement and deadline satisfaction rates in a Fog infrastructure with high multi-user application placement requests. Our method represents the heterogeneous Fog resources as a multilayered network graph and partitions them based on network topology and resource features. Afterwards, it identifies the appropriate device partitions for placing an application according to its requirements, which need to overlap in the same network topology partition. Simulation results show that our multilayer resource-aware partitioning method is able to place twice as many services, satisfy deadlines for three times as many application requests, and reduce the resource wastage by up to 15–32 times compared to two availability-aware and resource-aware state-of-the-art methods.
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用于雾应用放置的多层资源感知分区
雾计算成为部署物联网应用程序的关键平台。此类应用的复杂性要求处理雾设备的资源多样性和网络结构的方法,同时最大化服务放置和减少资源浪费。该领域的先前研究主要集中在优化特定应用需求上,而未能解决雾设备中遇到的网络拓扑结构和不同类型资源的问题。为了克服这些问题,我们提出了一种多层资源感知分区方法,以最大限度地减少资源浪费,最大限度地提高多用户应用程序放置请求的雾基础设施中的服务放置和截止日期满意度。该方法将异构雾资源表示为多层网络图,并根据网络拓扑结构和资源特征对其进行划分。然后,它根据应用程序的需求确定适当的设备分区,这些分区需要在相同的网络拓扑分区中重叠。仿真结果表明,与可用性感知和资源感知两种最先进的方法相比,我们的多层资源感知分区方法能够放置两倍的服务,满足三倍的应用程序请求的截止日期,并减少高达15-32倍的资源浪费。
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TOD: Transprecise Object Detection to Maximise Real-Time Accuracy on the Edge PA-Offload: Performability-Aware Adaptive Fog Offloading for Drone Image Processing Performance Evaluation of Some Adaptive Task Allocation Algorithms for Fog Networks Multilayer Resource-aware Partitioning for Fog Application Placement Mapping IoT Applications on the Edge to Cloud Continuum with a Filter Stream Model
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