分布式流处理应用程序的最佳操作符放置

V. Cardellini, V. Grassi, F. L. Presti, Matteo Nardelli
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引用次数: 151

摘要

数据流处理(DSP)应用广泛用于从分布式数据源(如传感设备、监测站和社交网络)中及时提取信息。为了成功处理这种不断增长的数据量,最近的趋势是研究利用分散计算资源(例如,雾计算)来定义应用程序放置的可能性。文献中提出了几种放置策略,但它们基于不同的假设和优化目标,因此,它们之间不能完全比较。本文主要研究分布式DSP应用中的放置问题。我们的贡献是双重的。我们提供了最佳DSP放置(简称ODP)的一般公式,作为一个整数线性规划问题,该问题明确考虑了计算和网络资源的异质性,并包含-作为特殊情况-文献中提出的不同解决方案。我们为Apache Storm DSP框架提出了一个基于odp的调度器。这使我们能够比较一些知名的集中式和分散式放置解决方案。我们还根据各种参数设置广泛分析了ODP的可伸缩性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal operator placement for distributed stream processing applications
Data Stream Processing (DSP) applications are widely used to timely extract information from distributed data sources, such as sensing devices, monitoring stations, and social networks. To successfully handle this ever increasing amount of data, recent trends investigate the possibility of exploiting decentralized computational resources (e.g., Fog computing) to define the applications placement. Several placement policies have been proposed in the literature, but they are based on different assumptions and optimization goals and, as such, they are not completely comparable to each other. In this paper we study the placement problem for distributed DSP applications. Our contributions are twofold. We provide a general formulation of the optimal DSP placement (for short, ODP) as an Integer Linear Programming problem which takes explicitly into account the heterogeneity of computing and networking resources and which encompasses - as special cases - the different solutions proposed in the literature. We present an ODP-based scheduler for the Apache Storm DSP framework. This allows us to compare some well-known centralized and decentralized placement solutions. We also extensively analyze the ODP scalability with respect to various parameter settings.
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