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Integer linear programming-based cost optimization for scheduling scientific workflows in multi-cloud environments

机译:基于整数线性规划的成本优化,可在多云环境中调度科学工作流

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摘要

Given that multi-cloud environments contain considerably diverse resources, scheduling workflows in these environments significantly reduces financial costs and overcomes the resource limitations imposed by commercial cloud providers. Accordingly, this study addressed the problem of scientific workflow scheduling in multi-cloud settings under deadline constraint to minimize associated financial costs. To this end, we proposed integer linear programming models that can be solved in a reasonable time by available solvers. In a mathematical model, the objective of a problem and real and physical constraints or restrictions are formulated using exact mathematical functions. Such formulation enabled us to comprehensively understand the system under evaluation, consider secondary preferences and post-optimality analysis and apply useful revisions to inappropriately selected input data. We analyzed the treatment of optimal cost under variations in deadline and workflow size. As part of the post-optimality analysis, sensitivity analysis and deadline revision were implemented. Results indicated that our proposed approach outperforms previously developed methods in terms of financial cost reduction.
机译:鉴于多云环境包含大量不同的资源,因此在这些环境中调度工作流将显着降低财务成本并克服了商业云提供商所施加的资源限制。因此,本研究解决了在截止日期约束下将多云成本最小化的多云环境中科学工作流调度的问题。为此,我们提出了整数线性规划模型,可以使用可用的求解器在合理的时间内求解该模型。在数学模型中,使用精确的数学函数确定问题的目标以及实际和物理的约束或限制。这样的表述使我们能够全面了解正在评估的系统,考虑次要偏好和优化后分析,并对不适当选择的输入数据进行有用的修改。我们分析了在截止日期和工作流大小不同的情况下最佳成本的处理方法。作为优化后分析的一部分,实施了敏感性分析和截止日期修订。结果表明,我们提出的方法在降低财务成本方面优于以前开发的方法。

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