树聚集网络建模的LogP扩展

Taylor L. Groves, S. Gutierrez, D. Arnold
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引用次数: 3

摘要

随着高性能系统在功率和尺寸上的不断扩展,可扩展的通信和数据传输对于促进下一代监控和分析是必要的。许多流行的框架,如MapReduce、MPI和MRNet,利用可伸缩约简操作来满足大型分布式系统的性能要求。处理这些聚合的结构可以简单地由单个层次组成,其中的子节点直接向父节点报告,或者可以分层以创建具有不同宽度和高度的大树。尽管它们很常见,但是对这些树聚合网络(TANs)建模的技术还很缺乏。本文通过引入树聚合网络LogP框架的新扩展来解决这一需求。我们的TAN模型遵循LogP模型的简单性,但利用结构洞察力来提供简单而精确的性能估计。此外,我们的模型没有假设潜在的NIC传输机制或树宽度的均匀性,使其适用于广泛的环境。为了评估我们的TAN模型,我们将其与传统的LogP模型进行比较,以预测组播约简网络(MRNet)框架的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A LogP Extension for Modeling Tree Aggregation Networks
As high-performance systems continue to expand in power and size, scalable communication and data transfer is necessary to facilitate next generation monitoring and analysis. Many popular frameworks such as MapReduce, MPI and MRNet utilize scalable reduction operations to fulfill the performance requirements of a large distributed system. The structures to handle these aggregations may simply consist of a single level with children reporting directly to the parent node, or it may be layered to create a large tree with varying breadth and height. Despite their common-place, the techniques for modeling these Tree Aggregation Networks (TANs) are lacking. This paper addresses this need by introducing a novel extension of the LogP framework for Tree Aggregation Networks. Our TAN model adheres to the simplicity of the LogP model, but utilizes structural insights to provide a simple yet precise performance estimate. Additionally, our model makes no assumptions of the underlying NIC transfer mechanisms or uniformity of tree breadth, making it suitable for a wide range of environments. To evaluate our TAN model, we compare it against the traditional LogP model for predicting the performance of the Multicast Reduction Network (MRNet) framework.
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