Fault Tolerance of Cloud Infrastructure with Machine Learning

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chetankumar Kalaskar, S. Thangam
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引用次数: 0

Abstract

Abstract Enhancing the fault tolerance of cloud systems and accurately forecasting cloud performance are pivotal concerns in cloud computing research. This research addresses critical concerns in cloud computing by enhancing fault tolerance and forecasting cloud performance using machine learning models. Leveraging the Google trace dataset with 10000 cloud environment records encompassing diverse metrics, we systematically have employed machine learning algorithms, including linear regression, decision trees, and gradient boosting, to construct predictive models. These models have outperformed baseline methods, with C5.0 and XGBoost showing exceptional accuracy, precision, and reliability in forecasting cloud behavior. Feature importance analysis has identified the ten most influential factors affecting cloud system performance. This work significantly advances cloud optimization and reliability, enabling proactive monitoring, early performance issue detection, and improved fault tolerance. Future research can further refine these predictive models, enhancing cloud resource management and ultimately improving service delivery in cloud computing.
利用机器学习实现云基础设施容错
摘要 提高云系统的容错性和准确预测云性能是云计算研究中的关键问题。本研究通过使用机器学习模型提高容错性和预测云计算性能,解决了云计算中的关键问题。利用谷歌跟踪数据集(包含 10000 条云环境记录,涵盖各种指标),我们系统地采用了机器学习算法(包括线性回归、决策树和梯度提升)来构建预测模型。这些模型的表现优于基准方法,其中 C5.0 和 XGBoost 在预测云行为方面表现出了卓越的准确性、精确性和可靠性。特征重要性分析确定了影响云系统性能的十个最具影响力的因素。这项工作大大推进了云优化和可靠性,实现了主动监控、早期性能问题检测和改进容错。未来的研究可以进一步完善这些预测模型,加强云资源管理,最终改善云计算的服务交付。
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来源期刊
Cybernetics and Information Technologies
Cybernetics and Information Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.20
自引率
25.00%
发文量
35
审稿时长
12 weeks
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