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Acceleration of a Meteorological Limited Area Model with Dataflow Engines

机译:利用数据流引擎加速气象局域模型

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摘要

Climate and weather modeling is a significant consumer of High Performance Computing due to the hard deadlines inherent in predicting weather. Given the large data volumes and runtimes involved, climate and weather modeling is ideally suited for dataflow computation. In this paper, we demonstrate a dataflow implementation of the dynamic core of a meteorological limited area model. To achieve maximum performance we transform the computation by reordering operations and encoding the data. We present results for a domain of 13,600 x 3,333 x 30 km with 620 thousand grid points, and show speedups of up to 74x comparing an x86 CPU node to a dataflow node.
机译:气候和天气建模是高性能计算的重要消费者,这是由于预测天气固有的艰巨期限。考虑到涉及的大量数据量和运行时间,气候和天气建模非常适合数据流计算。在本文中,我们演示了气象有限区域模型的动态核心的数据流实现。为了获得最佳性能,我们通过重新排序操作并对数据进行编码来转换计算。我们给出的结果是在13,600 x 3,333 x 30 km的范围内,具有62万个网格点,并且将x86 CPU节点与数据流节点进行比较,可以显示出74倍的加速。

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