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A Dual Framework and Algorithms for Targeted Online Data Delivery

机译:有针对性的在线数据传递的双重框架和算法

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摘要

A variety of emerging online data delivery applications challenge existing techniques for data delivery to human users, applications, or middleware that are accessing data from multiple autonomous servers. In this paper, we develop a framework for formalizing and comparing pull-based solutions and present dual optimization approaches. The first approach, most commonly used nowadays, maximizes user utility under the strict setting of meeting a priori constraints on the usage of system resources. We present an alternative and more flexible approach that maximizes user utility by satisfying all users. It does this while minimizing the usage of system resources. We discuss the benefits of this latter approach and develop an adaptive monitoring solution Satisfy User Profiles (SUPs). Through formal analysis, we identify sufficient optimality conditions for SUP. Using real (RSS feeds) and synthetic traces, we empirically analyze the behavior of SUP under varying conditions. Our experiments show that we can achieve a high degree of satisfaction of user utility when the estimations of SUP closely estimate the real event stream, and has the potential to save a significant amount of system resources. We further show that SUP can exploit feedback to improve user utility with only a moderate increase in resource utilization.
机译:各种新兴的在线数据传递应用程序都对现有技术的挑战,这些技术已将数据传递给正在从多个自治服务器访问数据的人类用户,应用程序或中间件。在本文中,我们开发了一个框架,用于形式化和比较基于拉的解决方案,并提出了双重优化方法。第一种方法是当今最常用的方法,它在满足先验约束系统资源使用的严格设置下,最大限度地提高了用户效用。我们提出了另一种更灵活的方法,通过满足所有用户的需求来最大化用户效用。它在最小化系统资源使用的同时做到了这一点。我们讨论了后一种方法的好处,并开发了一种满足用户配置文件(SUPs)的自适应监视解决方案。通过形式分析,我们确定了SUP的充分最优条件。使用真实(RSS提要)和合成轨迹,我们根据经验分析SUP在不同条件下的行为。我们的实验表明,当SUP的估计值紧密估计真实事件流时,我们可以达到很高的用户效用满意度,并且有可能节省大量系统资源。我们进一步表明,SUP可以利用反馈来改善用户的效用,而资源利用率仅适度提高。

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