Modeling Email Server I/O Events As Multi-temporal Point Processes

Vinayaka Kamath, Evan Sinclair, Damon Gilkerson, V. Padmanabhan, Sreangsu Acharyya
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Abstract

We model the read-workload experienced by an email server as a superposition of reads performed by different software clients at non-deterministic times, each modeled as a dependent point process. The probability of a read event occurring on an email is affected, among others, by the age of an email and the time of the email recipient’s day. Unlike the more commonly encountered variants of point processes – the one-dimensional temporal, or the multi-dimensional spatial or spatio-temporal – the dependence between the different temporal axes, age and time of day, is incorporated by a point process defined over a non-Euclidean manifold. The used model captures the diverse patterns exhibited by the different clients, for example, the influence of age of an email, time of the user’s day, recent reads by the same or different clients, whether the client is controlled directly by the user, or is a software-agent acting semi-autonomously on the user’s behalf or is a server-side batch job that attempts to avoid adverse impact on user’s latency experience. We show how estimating this point process can be mapped to a Poisson regression, thereby saving the time to implement custom model training software.
将电子邮件服务器I/O事件建模为多时间点进程
我们将电子邮件服务器所经历的读取工作负载建模为不同软件客户端在不确定时间执行的读取的叠加,每个读取都建模为一个依赖点过程。电子邮件上发生阅读事件的概率受到电子邮件的年龄和电子邮件接收者当天的时间等因素的影响。不同于更常见的点过程变体-一维时间,或多维空间或时空-不同时间轴,年龄和时间之间的依赖关系,被定义在非欧几里得流形上的点过程所包含。所使用的模型捕获了不同客户端所表现出的不同模式,例如,电子邮件的年龄、用户一天中的时间、相同或不同客户端的最近阅读的影响、客户端是由用户直接控制的,还是代表用户进行半自主操作的软件代理,还是试图避免对用户延迟体验产生不利影响的服务器端批处理作业。我们展示了如何估计这个点过程可以映射到泊松回归,从而节省了实现自定义模型训练软件的时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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