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Resource Bundles: Using Aggregation for Statistical Large-Scale Resource Discovery and Management

机译:资源束:使用聚合进行统计大规模资源发现和管理

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摘要

Resource discovery is an important process for finding suitable nodes that satisfy application requirements in large loosely coupled distributed systems. Besides internode heterogeneity, many of these systems also show a high degree of intranode dynamism, so that selecting nodes based only on their recently observed resource capacities can lead to poor deployment decisions resulting in application failures or migration overheads. However, most existing resource discovery mechanisms rely mainly on recent observations to achieve scalability in large systems. In this paper, we propose the notion of a resource bundleȁ4;a representative resource usage distribution for a group of nodes with similar resource usage patternsȁ4;that employs two complementary techniques to overcome the limitations of existing techniques: resource usage histograms to provide statistical guarantees for resource capacities and clustering-based resource aggregation to achieve scalability. Using trace-driven simulations and data analysis of a month-long PlanetLab trace, we show that resource bundles are able to provide high accuracy for statistical resource discovery, while achieving high scalability. We also show that resource bundles are ideally suited for identifying group-level characteristics (e.g., hot spots, total group capacity). To automatically parameterize the bundling algorithm, we present an adaptive algorithm that can detect online fluctuations in resource heterogeneity.
机译:资源发现是在大型松散耦合的分布式系统中寻找满足应用程序需求的合适节点的重要过程。除了节点间异构性之外,这些系统中的许多系统还显示出高度的节点内动态性,因此仅根据它们最近观察到的资源容量来选择节点可能会导致不良的部署决策,从而导致应用程序故障或迁移开销。但是,大多数现有的资源发现机制主要依靠最近的观察来在大型系统中实现可伸缩性。在本文中,我们提出了资源束的概念ȁ4;具有相似资源使用模式ȁ4的一组节点的代表性资源使用分布;它采用了两种互补的技术来克服现有技术的局限性:资源使用直方图为资源容量和基于群集的资源聚合以实现可伸缩性。使用跟踪驱动的模拟和长达一个月的PlanetLab跟踪的数据分析,我们显示资源包能够为统计资源发现提供高精度,同时实现高可伸缩性。我们还显示资源包非常适合识别组级别的特征(例如,热点,总组容量)。为了自动参数化捆绑算法,我们提出了一种自适应算法,可以检测资源异质性的在线波动。

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