异构资源约束下任务图的部分任务分配

R. Szymanek, K. Kuchcinski
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引用次数: 15

摘要

本文提出了一种新的部分分配技术(PAT),该技术可以在不明确定义任务分配给特定资源的情况下决定哪些任务应该分配给同一资源。我们的方法简化了分配和调度步骤,同时对最终的解决方案质量施加很小或没有惩罚。这种技术特别适用于具有不同资源约束的问题。我们的方法不像典型的聚类技术那样将任务聚到一个新任务中,而是指定哪些任务需要在同一处理器上执行。我们的实验表明,当存在多资源约束时,可能产生非线性任务组的PAT比线性聚类具有更好的结果。结果表明,仅在有时间约束的情况下,线性聚类算法优于其他聚类算法。在本文中,我们证明,如果用于多资源综合问题,如目前经常使用的,线性聚类将产生较差的解。
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Partial task assignment of task graphs under heterogeneous resource constraints
This paper presents a novel partial assignment technique (PAT) that decides which tasks should be assigned to the same resource without explicitly defining assignment of these tasks to a particular resource. Our method simplifies the assignment and scheduling steps while imposing a small or no penalty on the final solution quality. This technique is specially suited for problems which have different resources constraints. Our method does not cluster tasks into a new task, as typical clustering techniques do, but specifies which tasks need to be executed on the same processor. Our experiments have shown that PAT, which may produce nonlinear groups of tasks, gives better results than linear clustering when multi-resource constraints are present. Linear clustering was proved to be optimal comparing to all other clusterings for problems with timing constraints only. In this paper, we show that, if used for multi-resource synthesis problem, as it is often used nowadays, linear clustering will produce inferior solutions.
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