RAPTS: resource aware prioritized task scheduling technique in heterogeneous fog computing environment

Mazhar Hussain, Said Nabi, Mushtaq Hussain
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Abstract

The Internet of Things (IoT) is an emerging technology incorporating various hardware devices and software applications to exchange, analyze, and process a huge amount of data. IoT uses cloud and fog infrastructures, comprising different hardware and software components like computing machines, networking components, storage, and virtualization elements. They can receive, process, store, and exchange data in real time. A cloud is a centralized system containing large data centres that are far from client devices. However, as IoT generates massive amounts of data, issues like latency, response time, execution of tasks within their deadline, and bandwidth arise when data is sent to the cloud for processing. Compared to the cloud, fog computing is vital as a distributed system consisting of millions of devices located at the minimum distance from the client devices. In addition, fog infrastructure reduces bandwidth and latency because it is closer to the end-user. However, maximizing utilization of resources, minimizing response time, and ensuring the completion of deadline-constrained tasks within their deadline are important research problems in fog computing. This research proposes a task scheduling technique called Resource Aware Prioritized Task Scheduling (RAPTS) in a heterogeneous fog computing environment. The aim is to execute deadline-constrained tasks within their deadlines, minimize response time and cost, as well as makespan, and maximize resource utilization of the fog layer. The RAPTS is implemented using iFogSim and its performance is evaluated regarding response time, resource utilization, task deadlines, cost, and makespan. The results have been compared with state-of-the-art fog schedulers like RACE (CFP) and RACE (FOP). The results reveal that the RAPTS have shown up to 29%, 53%, 15%, 11%, and 43% improvement in terms of resource utilization, response time, makespan, cost, and meeting task deadlines, respectively.

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RAPTS:异构雾计算环境中的资源感知优先任务调度技术
物联网(IoT)是一项新兴技术,它结合了各种硬件设备和软件应用程序,用于交换、分析和处理海量数据。物联网使用云和雾基础设施,包括不同的硬件和软件组件,如计算机、网络组件、存储和虚拟化元素。它们可以实时接收、处理、存储和交换数据。云是一种集中式系统,包含远离客户端设备的大型数据中心。然而,由于物联网会产生海量数据,当数据被发送到云端进行处理时,就会出现延迟、响应时间、任务执行期限和带宽等问题。与云计算相比,雾计算是一个分布式系统,由数百万台设备组成,与客户端设备的距离最小。此外,由于雾基础设施更接近终端用户,因此可以减少带宽和延迟。然而,资源利用率最大化、响应时间最小化以及确保在截止日期前完成受限任务是雾计算的重要研究课题。本研究在异构雾计算环境中提出了一种名为 "资源感知优先任务调度(RAPTS)"的任务调度技术。其目的是在截止期限内执行受截止期限限制的任务,最大限度地减少响应时间、成本和时间跨度,并最大限度地提高雾层的资源利用率。RAPTS 是通过 iFogSim 实现的,其性能评估涉及响应时间、资源利用率、任务截止日期、成本和时间跨度。评估结果与 RACE (CFP) 和 RACE (FOP) 等最先进的雾调度器进行了比较。结果表明,RAPTS 在资源利用率、响应时间、间隔时间、成本和满足任务期限方面分别提高了 29%、53%、15%、11% 和 43%。
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