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An Experimental Tool for Elasticity Management through Prediction Mechanisms

机译:通过预测机制进行弹性管理的实验工具

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Companies nowadays are widely adopting cloud computing. One important problem encountered to efficiently adopt public IaaS clouds is wasting leased computational resources, which remain active if no policy is established to implement elasticity according to the demand. As a consequence, the cloud use becomes more expensive than expected, leading to higher costs that may turn the company business unattractive for consumers. In this paper, we study this problem in a real company that currently provides resources for its peak demand, which occurs about only 8 hours in weekdays, in order to avoid service disruption. We implemented an experimental resource manager that, through a load prediction mechanism, identifies when the demand will surpass provisioning or when there will be over-provisioning. This enables automatic scaling (up and down) of the infrastructure as needed. We illustrate the application of the system using real data, concluding that through a well trained predicting system and with an intelligent resources manager, it is possible to reduce the waste of computational resources and, consequently, the infrastructure costs.
机译:如今的公司正在广泛采用云计算。有效采用公共IaaS云时遇到的一个重要问题是浪费租用的计算资源,如果没有建立根据需求实现弹性的策略,这些资源将保持活动状态。结果,云的使用变得比预期的贵,从而导致更高的成本,这可能会使公司的业务对消费者失去吸引力。在本文中,我们在一家真正的公司中研究此问题,该公司目前为其高峰需求提供资源,为了避免服务中断,这种高峰在工作日仅出现8个小时。我们实施了一个实验性资源管理器,该管理器通过负载预测机制来确定需求何时会超过供应或何时会出现过度供应。这样可以根据需要自动缩放(放大和缩小)基础架构。我们使用实际数据说明了该系统的应用,并得出结论,通过训练有素的预测系统和智能资源管理器,可以减少计算资源的浪费,从而减少基础架构成本。

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