资源池中平衡公平性的性能:递归方法

T. Bonald, Céline Comte, Fabien Mathieu
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引用次数: 2

摘要

了解服务器池的性能对于正确地划分维度至关重要。其中一个主要的挑战是要考虑服务器之间的复杂交互,这些服务器汇集在一起处理作业。特别是,由于数据局部性等各种限制,作业通常不能由集群的任何服务器处理。在本文中,我们用作业和服务器之间的分配图来表示这些约束。我们提出了一种递归方法来计算性能指标,如根据平衡公平性共享服务器容量时的平均响应时间。虽然在最坏的情况下,这些公式的计算成本可能与服务器数量呈指数关系,但我们通过介绍可以在多项式时间内精确分析的广泛类型的池结构来说明它们的实际意义。这在很大程度上扩展了可访问显式性能度量的模型类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of Balanced Fairness in Resource Pools: A Recursive Approach
Understanding the performance of a pool of servers is crucial for proper dimensioning. One of the main challenges is to take into account the complex interactions between servers that are pooled to process jobs. In particular, a job can generally not be processed by any server of the cluster due to various constraints like data locality. In this paper, we represent these constraints by some assignment graph between jobs and servers. We present a recursive approach to computing performance metrics like mean response times when the server capacities are shared according to balanced fairness. While the computational cost of these formulas can be exponential in the number of servers in the worst case, we illustrate their practical interest by introducing broad classes of pool structures that can be exactly analyzed in polynomial time. This extends considerably the class of models for which explicit performance metrics are accessible.
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