大规模系统的统计多维资源发现

Michael Cardosa, A. Chandra
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引用次数: 1

摘要

资源发现使部署在异构大规模分布式系统中的应用程序能够找到满足QoS要求的资源。特别是,大多数应用程序需要同时满足多个资源(如CPU、内存和网络带宽)的资源需求。由于许多大型系统中的动态性,为这些需求提供统计保证对于避免应用程序故障和开销非常重要。然而,现有的技术要么只为单个资源提供保证,要么在多个维度上采用静态或无内存的方法。我们提出了HiDRA,一种可扩展的资源发现技术,为同时跨越多个维度的资源需求提供统计保证。通过跟踪分析和307个节点的PlanetLab实现,我们表明HiDRA虽然使用的数据比完全知情的算法少1400多倍,但性能几乎与完全知情的算法一样好,显示出更高的精度,召回率在3%以内。我们证明了HiDRA是一种可行的、低开销的分布式系统统计资源发现方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HiDRA: Statistical multi-dimensional resource discovery for large-scale systems
Resource discovery enables applications deployed in heterogeneous large-scale distributed systems to find resources that meet QoS requirements. In particular, most applications need resource requirements to be satisfied simultaneously for multiple resources (such as CPU, memory and network bandwidth). Due to dynamism in many large-scale systems, providing statistical guarantees on such requirements is important to avoid application failures and overheads. However, existing techniques either provide guarantees only for individual resources, or take a static or memoryless approach along multiple dimensions. We present HiDRA, a scalable resource discovery technique providing statistical guarantees for resource requirements spanning multiple dimensions simultaneously. Through trace analysis and a 307-node PlanetLab implementation, we show that HiDRA, while using over 1,400 times less data, performs nearly as well as a fully-informed algorithm, showing better precision and having recall within 3%. We demonstrate that HiDRA is a feasible, low-overhead approach to statistical resource discovery in a distributed system.
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