Critical-path candidates: scalable performance modeling for MPI workloads

Jian Chen, R. Clapp
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引用次数: 12

Abstract

Efficient and scalable performance modeling is essential to high-performance cluster computing. The critical path based performance analysis has been widely used as it provides valuable insights into the performance of parallel programs, but it is also expensive, inefficient, and inflexible due to its strong reliance on trace-driven simulation. This paper presents an innovative performance modeling framework based on a novel concept of critical-path candidates. The critical-path candidates refer to a group of paths that could potentially be the critical path. Using the instruction and communication counts as the metrics, the critical-path candidate captures the intrinsic computation and communication dependencies, and hence can be reused for exploring multiple design options. Using real-world MPI workloads, we show that the proposed framework achieves a modeling accuracy within 10% compared with the measured runtime for up to 16K MPI ranks. This framework provides an efficient and scalable platform for performance analysis as well as load imbalance analysis.
关键路径候选:MPI工作负载的可伸缩性能建模
高效和可伸缩的性能建模对于高性能集群计算至关重要。基于关键路径的性能分析已经被广泛使用,因为它为并行程序的性能提供了有价值的见解,但是由于它强烈依赖于跟踪驱动的模拟,它也昂贵、低效和不灵活。本文提出了一种基于关键路径候选概念的创新性能建模框架。关键路径候选指的是可能成为关键路径的一组路径。使用指令和通信计数作为度量,关键路径候选捕获内在的计算和通信依赖,因此可以在探索多个设计选项时重用。使用真实的MPI工作负载,我们表明,与高达16K MPI排名的测量运行时相比,所提出的框架实现了在10%以内的建模精度。该框架为性能分析和负载不平衡分析提供了一个高效、可扩展的平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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