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Towards a Multi-model Cloud Workflow Resource Monitoring, Adaptation, and Prediction

机译:迈向多模型云工作流资源的监视,适应和预测

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摘要

Workflow configuration, re-configuration execution, monitoring and adaptation over a cloud environment are considered very challenging activities. This is due to the fact that such activities are resource-aware, require intensive processing, and should adapt to dynamic cloud changes. In this research, we propose a multi-model for workflow resource monitoring, resource prediction, and resource adaptations. Three adaptation strategies are proposed to capture changes in environment resources, categorize various violations and take the necessary actions to adapt resources according to workflow needs. Workflow resource prediction uses ARIMA to predict resource shortage and support adequate adaptation. However, extreme adaptation is supported by continuously monitoring various workflow environment entities. We also evaluate workflow trust based on QoS to support the different adaptations strategies. We implemented our model on a cloud environment and we experimented different adaptation scenarios. The results validated the effectiveness of our monitoring, prediction and adaptation schemes in detecting violations and hence, predicting accurately cloud resource shortages and takes the appropriate actions to deal with these violations.
机译:在云环境中进行工作流配置,重新配置执行,监视和适应被认为是非常具有挑战性的活动。这是由于这样的事实,即此类活动是资源感知的,需要密集的处理,并且应适应动态的云变化。在这项研究中,我们提出了一个用于工作流资源监视,资源预测和资源适应的多模型。提出了三种适应策略来捕获环境资源的变化,对各种违规行为进行分类并根据工作流需求采取必要的措施来适应资源。工作流资源预测使用ARIMA预测资源短缺并支持适当的适应。但是,通过持续监视各种工作流环境实体,可以支持极端适应。我们还基于QoS评估工作流信任度,以支持不同的适应策略。我们在云环境上实现了我们的模型,并尝试了不同的适应方案。结果验证了我们的监控,预测和适应方案在检测违规方面的有效性,因此可以准确地预测云资源短缺,并采取适当的措施来应对这些违规。

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