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Complexity Results for Throughput and Latency Optimization of Replicated and Data-parallel Workflows

机译:复制和数据并行工作流的吞吐量和延迟优化的复杂性结果

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Mapping applications onto parallel platforms is a challenging problem, even for simple application patterns such as pipeline or fork graphs. Several antagonist criteria should be optimized for workflow applications, such as throughput and latency (or a combination). In this paper, we consider a simplified model with no communication cost, and we provide an exhaustive list of complexity results for different problem instances. Pipeline or fork stages can be replicated in order to increase the throughput by sending consecutive data sets onto different processors. In some cases, stages can also be data-parallelized, i.e. the computation of one single data set is shared between several processors. This leads to a decrease of the latency and an increase of the throughput. Some instances of this simple model are shown to be NP-hard, thereby exposing the inherent complexity of the mapping problem. We provide polynomial algorithms for other problem instances. Altogether, we provide solid theoretical foundations for the study of mono-criterion or bi-criteria mapping optimization problems.
机译:即使对于简单的应用程序模式(例如管道或分支图),将应用程序映射到并行平台上也是一个难题。应针对工作流应用程序优化几个不利条件,例如吞吐量和等待时间(或两者结合)。在本文中,我们考虑了一个没有通信成本的简化模型,并且针对不同问题实例提供了详尽的复杂性结果列表。可以复制管道或分支阶段,以通过将连续的数据集发送到不同的处理器来增加吞吐量。在某些情况下,阶段也可以是数据并行的,即,一个数据集的计算在多个处理器之间共享。这导致等待时间的减少和吞吐量的增加。该简单模型的某些实例显示为NP难解的,从而暴露了映射问题的内在复杂性。我们为其他问题实例提供多项式算法。总之,我们为研究单标准或双标准映射优化问题提供了坚实的理论基础。

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