Performance analysis of edge, fog and cloud computing paradigms for real-time video quality assessment and phishing detection

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Pervasive Computing and Communications Pub Date : 2023-02-28 DOI:10.1108/ijpcc-09-2022-0327
T. P. Fowdur, M.A.N. Shaikh Abdoolla, Lokeshwar Doobur
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Abstract

Purpose The purpose of this paper is to perform a comparative analysis of the delay associated in running two real-time machine learning-based applications, namely, a video quality assessment (VQA) and a phishing detection application by using the edge, fog and cloud computing paradigms. Design/methodology/approach The VQA algorithm was developed using Android Studio and run on a mobile phone for the edge paradigm. For the fog paradigm, it was hosted on a Java server and for the cloud paradigm on the IBM and Firebase clouds. The phishing detection algorithm was embedded into a browser extension for the edge paradigm. For the fog paradigm, it was hosted on a Node.js server and for the cloud paradigm on Firebase. Findings For the VQA algorithm, the edge paradigm had the highest response time while the cloud paradigm had the lowest, as the algorithm was computationally intensive. For the phishing detection algorithm, the edge paradigm had the lowest response time, and the cloud paradigm had the highest, as the algorithm had a low computational complexity. Since the determining factor for the response time was the latency, the edge paradigm provided the smallest delay as all processing were local. Research limitations/implications The main limitation of this work is that the experiments were performed on a small scale due to time and budget constraints. Originality/value A detailed analysis with real applications has been provided to show how the complexity of an application can determine the best computing paradigm on which it can be deployed.
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用于实时视频质量评估和网络钓鱼检测的边缘、雾和云计算模式的性能分析
本文的目的是通过使用边缘、雾和云计算范式,对运行两个基于实时机器学习的应用程序(即视频质量评估(VQA)和网络钓鱼检测应用程序)相关的延迟进行比较分析。设计/方法/方法VQA算法是使用Android Studio开发的,并在移动电话上运行。对于雾范式,它托管在Java服务器上,对于云范式,它托管在IBM和Firebase云上。将网络钓鱼检测算法嵌入到边缘范式的浏览器扩展中。对于雾范式,它托管在Node.js服务器上,对于云范式,它托管在Firebase上。对于VQA算法,边缘范式具有最高的响应时间,而云范式具有最低的响应时间,因为算法是计算密集型的。对于网络钓鱼检测算法,由于算法的计算复杂度较低,边缘范式的响应时间最短,云范式的响应时间最长。由于响应时间的决定因素是延迟,因此边缘范式提供了最小的延迟,因为所有处理都是本地的。研究局限/启示这项工作的主要局限是由于时间和预算的限制,实验是在小规模上进行的。原创性/价值本文提供了对实际应用程序的详细分析,以说明应用程序的复杂性如何决定部署应用程序的最佳计算范式。
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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