Applying on Node Aggregation Methods to MPI Alltoall Collectives: Matrix Block Aggregation Algorithm

G. Chochia, David G. Solt, Joshua Hursey
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引用次数: 1

Abstract

This paper presents algorithms for all-to-all and all-to-all(v) MPI collectives optimized for small-medium messages and large task counts per node to support multicore CPUs in HPC systems. The complexity of these algorithms is analyzed for two metrics: the number of messages and the volume of data exchanged per task. These algorithms have optimal complexity for the second metric, which is better by a logarithmic factor than that in algorithms designed for short messages, with logarithmic complexity for the first metric. It is shown that the balance between these two metrics is key to achieving optimal performance. The performance advantage of the new algorithm is demonstrated at scale by comparing performance versus logarithmic algorithm implementations in Open MPI and Spectrum MPI. The two-phase design for the all-to-all(v) algorithm is presented. It combines efficient implementations for short and large messages in a single framework which is known to be an issue in logarithmic all-to-all(v) algorithms.
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节点聚合方法在MPI全局集合中的应用——矩阵块聚合算法
本文提出了所有对所有和所有对所有(v) MPI集合的算法,这些算法针对每个节点的中小型消息和大型任务计数进行了优化,以支持HPC系统中的多核cpu。通过两个指标分析这些算法的复杂性:消息数量和每个任务交换的数据量。这些算法在第二个指标上具有最优的复杂度,它比为短消息设计的算法要好一个对数因子,在第一个指标上具有对数复杂度。结果表明,这两个指标之间的平衡是实现最佳性能的关键。通过比较Open MPI和Spectrum MPI中对数算法实现的性能,可以大规模地证明新算法的性能优势。给出了全对全(v)算法的两阶段设计。它在单个框架中结合了短消息和大消息的有效实现,这是对数全对全(v)算法中已知的一个问题。
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