基于 QoS 参数的雾计算基础设施物联网应用作业调度框架

Mandeep Kaur, Rajinder Sandhu, R. Mohana
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引用次数: 0

摘要

设计/方法/途径 本文根据服务质量(QoS)参数为物联网应用作业提出了一个调度框架,该框架在粗粒度层面上选择雾环境,在细粒度层面上选择雾节点。选择雾环境时要考虑可用性、物理距离、延迟和吞吐量。在细粒度(节点选择)层面,使用奈伊夫贝叶斯算法预测了概率三元组(C、M、G),该概率三元组提供了新提交的应用作业属于计算(C)密集型、内存(M)密集型和图形处理器(G)密集型中任何一类的概率。实验结果实验结果表明,所提出的框架比传统的云计算和雾计算范例表现得更好。原创性/价值所提出的框架将应用类型和雾计算环境的计算能力结合在一起,据作者所知,目前还没有进行过这种结合。
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A framework for scheduling IoT application jobs on fog computing infrastructure based on QoS parameters
Purpose The purpose of this study is to verify that if applications categories are segmented and resources are allocated based on their specific category, how effective scheduling can be done?. Design/methodology/approach This paper proposes a scheduling framework for IoT application jobs, based upon the Quality of Service (QoS) parameters, which works at coarse grained level to select a fog environment and at fine grained level to select a fog node. Fog environment is chosen considering availability, physical distance, latency and throughput. At fine grained (node selection) level, a probability triad (C, M, G) is anticipated using Naïve Bayes algorithm which provides probability of newly submitted application job to fall in either of the categories Compute (C) intensive, Memory (M) intensive and GPU (G) intensive. Findings Experiment results showed that the proposed framework performed better than traditional cloud and fog computing paradigms. Originality/value The proposed framework combines types of applications and computation capabilities of Fog computing environment, which is not carried out to the best of knowledge of authors.
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