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Automated Enforcement of SLA for Cloud Services

机译:用于云服务的SLA自动执行

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Orchestration and management of cloud computing entities necessitate measuring and analysis of real-time monitored performance metrics. However, decision making in current management platforms are addressed separately in different cloud stack layers. These isolated active management decisions may degrade the total performance of the cloud system. Since, cloud computing platforms lack an integrated analytics and management capability, in this paper, we propose an integrated platform to detect and predict situations where corrective actions are required. First, a Dynamic Bayesian Network (DBN) is trained and updated by collected data to calculate the causal dependencies among various entities in different cloud service layers. The correlation values are then fed into a Long Short-Term Memory (LSTM) neural network to predict the future states. States that violate the Service Level Agreement(SLA) of cloud services are learned with training data, and if the forecasted states threaten the SLA of cloud services, associated events are generated to trigger management actions. Next, management actions are assigned a different set of events using a reinforcement learning approach. A set of experiments based on collected data from a real cloud service environment is conducted to validate the proposed approach. Experimental results indicate that the proposed method outperforms the current management solutions and improves web request response time by up to 7% and decreases SLA violation by 79% in the context of web application auto-scaling.
机译:云计算实体的编排和管理需要测量和分析实时监测性能指标。但是,在不同的云堆栈层中单独解决了当前管理平台的决策。这些孤立的主动管理决策可能会降低云系统的总性能。由于云计算平台缺乏集成的分析和管理能力,在本文中,我们提出了一个集成平台来检测和预测需要纠正措施的情况。首先,通过收集的数据训练和更新动态贝叶斯网络(DBN),以计算不同云服务层中各种实体之间的因果依赖性。然后将相关值馈入长短的短期存储器(LSTM)神经网络以预测未来状态。违反云服务的服务级别协议(SLA)的状态是通过培训数据学习的,如果预测状态威胁到云服务的SLA,则会生成相关的事件以触发管理操作。接下来,使用强化学习方法为管理操作分配不同的事件集。进行了一组基于来自真实云服务环境的收集数据的实验,以验证所提出的方法。实验结果表明,所提出的方法优于当前管理解决方案,并在Web应用程序自动缩放的上下文中将Web请求响应时间提高到7 %,并在79 %中减少SLA违规。

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