URegM: a unified prediction model of resource consumption for refactoring software smells in open source cloud

A. Imran, T. Kosar
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Abstract

The low cost and rapid provisioning capabilities have made the cloud a desirable platform to launch complex scientific applications. However, resource utilization optimization is a significant challenge for cloud service providers, since the earlier focus is provided on optimizing resources for the applications that run on the cloud, with a low emphasis being provided on optimizing resource utilization of the cloud computing internal processes. Code refactoring has been associated with improving the maintenance and understanding of software code. However, analyzing the impact of the refactoring source code of the cloud and studying its impact on cloud resource usage require further analysis. In this paper, we propose a framework called Unified Regression Modelling (URegM) which predicts the impact of code smell refactoring on cloud resource usage. We test our experiments in a real-life cloud environment using a complex scientific application as a workload. Results show that URegM is capable of accurately predicting resource consumption due to code smell refactoring. This will permit cloud service providers with advanced knowledge about the impact of refactoring code smells on resource consumption, thus allowing them to plan their resource provisioning and code refactoring more effectively.
URegM:用于重构开源云中的软件气味的资源消耗的统一预测模型
低成本和快速配置能力使云成为启动复杂科学应用程序的理想平台。然而,资源利用优化对于云服务提供商来说是一个重大挑战,因为早期的重点是优化在云上运行的应用程序的资源,而对优化云计算内部进程的资源利用的重视程度较低。代码重构一直与改进软件代码的维护和理解联系在一起。但是,分析重构云源代码的影响以及研究其对云资源使用的影响还需要进一步分析。在本文中,我们提出了一个名为统一回归建模(URegM)的框架,该框架预测代码气味重构对云资源使用的影响。我们使用一个复杂的科学应用程序作为工作负载,在真实的云环境中测试我们的实验。结果表明,由于代码气味重构,URegM能够准确地预测资源消耗。这将使云服务提供商对重构代码气味对资源消耗的影响有更深入的了解,从而使他们能够更有效地规划资源供应和代码重构。
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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