并行数据处理任务的执行时间预测

S. Juhász, H. Charaf
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引用次数: 4

摘要

现在有很多高效的硬件组件可以作为并行分布式系统的构建模块,但是在软件方面出现了许多问题。对于合作任务的最优分配没有通用的解决方案,性能预测也是一个开放的问题。工作的重点是在一个精确的领域中创建和使用数学模型,即在相对大量的数据上进行适度计算的应用程序。本文在一个工作站集群环境中研究了预测和最小化执行时间的可能性,其中数据传输系统预计将成为性能瓶颈。以并行整数排序算法为例说明了所提出的通用模型的使用:建立公式以提供预期的执行时间和近似的最佳簇大小。最后,比较了不同问题和簇大小下排序算法的预测执行时间和实际执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Execution time prediction for parallel data processing tasks
Nowadays a wide range of highly efficient hardware components are available as possible building blocks for parallel distributed systems, however many questions arise on the software side. There is no common solution for optimal distribution of co-operating tasks, and performance prediction is also an open issue. Efforts are focused on creating and making use of mathematical models in a precise domain, namely applications making moderate computation effort on a relatively large amount of data. The possibilities to predict and to minimize execution times are investigated in a cluster of workstations environment, where the data transfer system is expected to become the performance bottleneck. The use of the presented generic model is shown on the example of a parallel integer sorting algorithm: formulas are built up to provide the expected execution times and to approximate the optimal cluster size. Finally, the predicted and the measured execution times of the sorting algorithm are compared for different problem and cluster sizes.
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