An Indicator-Based Algorithm for Task Scheduling in Multi-Cloud Environments

S. K. Pande, Priyanka Swain, S. K. Nayak, S. K. Panda
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引用次数: 1

Abstract

Cloud computing is the ability to scale various resources and services that can be dynamically configured by the cloud service provider (CSP) and delivered on demand by the customers. The objective of most of the task scheduling algorithms is to ensure that the overall processing time of all the tasks (i.e., makespan) is minimized. Here, minimization of makespan in no way guarantees the minimization of execution cost. In indicator-based (IBTS) task scheduling algorithm for the multi-cloud environment, we can outline the significant contributions as the following: (1) IBTS achieves multi-objective solutions while considering parameters, makespan, and execution cost. (2) IBTS proposes a normalization framework with time and cost length indicators for efficient task scheduling. (3) The efficacy of the IBTS algorithm is demonstrated using both the benchmark and synthetic datasets. (4) The simulation outcomes of the IBTS algorithm in comparison with three existing task scheduling algorithms, namely ETBTS, MOTS, and PBTS, clearly exhibit superiority, which proves acceptance of IBTS algorithm.
多云环境下基于指标的任务调度算法
云计算是一种扩展各种资源和服务的能力,这些资源和服务可以由云服务提供商(CSP)动态配置,并根据客户的需求交付。大多数任务调度算法的目标是确保所有任务的总体处理时间(即makespan)最小化。在这里,最小化makespan并不能保证最小化执行成本。在多云环境下基于指标(indicator-based, IBTS)的任务调度算法中,我们可以概括如下重要贡献:(1)IBTS在考虑参数、完工时间和执行成本的情况下实现了多目标解决方案。(2) IBTS提出了一种具有时间和成本长度指标的标准化框架,用于高效的任务调度。(3)利用基准数据集和合成数据集验证了IBTS算法的有效性。(4)与现有的三种任务调度算法(ETBTS、MOTS和PBTS)相比,IBTS算法的仿真结果显示出明显的优越性,证明了IBTS算法的可接受性。
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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