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Predicting Response Latency Percentiles for Cloud Object Storage Systems

机译:预测云对象存储系统的响应延迟百分比

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As a fundamental cloud service for modern Web applications, the cloud object storage system stores and retrieves millions or even billions of read-heavy data objects. Serving for a massive amount of requests each day makes the response latency be a vital component of user experiences. Due to the lack of suitable understanding on the response latency distribution, current practice is to use overprovision resources to meet Service Level Agreement (SLA). Hence we build a performance model for the cloud object storage system to predict the percentiles of requests meeting SLA (response latency requirement), in the context of complicated disk operations and event-driven programming model. Furthermore, we find that the waiting time for being accept()-ed at storage servers may introduce significant delay. And we quantify the impacts on system response latency, due to requests waiting for being accept()-ed. In a variety of scenarios, our model reduces the prediction errors by up to 73% compared to baseline models, and the prediction error of our model is 4.44% on average.
机译:作为现代Web应用程序的基本云服务,云对象存储系统存储并检索数百万甚至数十亿的读重数据对象。为每天提供大量的请求使响应延迟成为用户体验的重要组成部分。由于对响应延迟分布缺乏合适的理解,目前的做法是使用过度保护资源来满足服务级别协议(SLA)。因此,我们为云对象存储系统构建一个性能模型,以预测会议SLA(响应延迟要求)的请求百分比,在复杂的磁盘操作和事件驱动的编程模型中。此外,我们发现在存储服务器处接受() - ed的等待时间可能会导致显着的延迟。并且我们量化了对等待接受() - ed的请求的对系统响应延迟的影响。在各种场景中,与基线模型相比,我们的模型将预测误差减少了高达73%,而我们模型的预测误差平均为4.44%。

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