基于有限自动机的大规模并行系统任务分配

Zubair Khan Ravindra Singh, Sumit Sanwal, Arun Gangwar, Shabbir Alam
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引用次数: 0

摘要

本文提出了一种利用有限自动机进行大规模并行系统任务分配的新方法。基于有限自动机的任务流模型。在本文的第二部分,我们讨论了有限自动机和有向无环图作为并行系统的有向无环图,然后我们将有限自动机转化为大规模并行系统的DAG。所有的模拟都是在Intel c++并行编译器中进行的,并将这些结果与几种有趣的调度算法进行比较,我们得到了更好的周转时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Task allocation in a massively parallel system using Finite Automata
In this paper we are proposing a new approach for tasks allocation in a massively parallel system using Finite Automata. On the basis of task flow model of finite automata., we find the turnaround time for a parallel system using finite automata as a directed acyclic graph in the second section of the paper we discuss regarding the finite automata and directed acyclic graph after that we change finite automata into DAG for massively parallel system. All the simulations are performing in Intel C++ parallel compiler and compare these results with several interesting scheduling algorithms and we get better turnaround time.
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