分布式环境下计算管道网络性能优化

C. Wu, Yi Gu, Mengxia Zhu, N. Rao
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引用次数: 20

摘要

支持广域网上的高性能计算管道对于实现大规模分布式科学应用至关重要,这些应用需要交互式操作的快速响应或数据流的流畅流。我们构建了计算模块、网络节点和通信链路的分析成本模型,以估计节点上的计算时间和连接上的数据传输时间。基于这些时间估计,我们提出了一种基于动态规划的高效线性管道配置方法,该方法将管道模块划分为组,并将它们策略性地映射到网络中一组选定的计算节点上,以实现最小的端到端延迟或最大的帧速率。我们实现了该方法,并在大量模拟应用程序管道和计算网络上进行了实验,评估了其有效性。实验结果表明,该方法优于流线算法和贪心算法。这些结果,加上多项式的计算复杂度,使我们的方法成为大型实际部署的潜在可扩展解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing network performance of computing pipelines in distributed environments
Supporting high performance computing pipelines over wide-area networks is critical to enabling large-scale distributed scientific applications that require fast responses for interactive operations or smooth flows for data streaming. We construct analytical cost models for computing modules, network nodes, and communication links to estimate the computing times on nodes and the data transport times over connections. Based on these time estimates, we present the efficient linear pipeline configuration method based on dynamic programming that partitions the pipeline modules into groups and strategically maps them onto a set of selected computing nodes in a network to achieve minimum end-to-end delay or maximum frame rate. We implemented this method and evaluated its effectiveness with experiments on a large set of simulated application pipelines and computing networks. The experimental results show that the proposed method outperforms the streamline and greedy algorithms. These results, together with polynomial computational complexity, make our method a potential scalable solution for large practical deployments.
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