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Evaluation of Likelihood Functions for Data Analysis on Graphics Processing Units

机译:图形处理单元数据分析的似然函数评估

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Data analysis techniques based on likelihood function calculation play a crucial role in many High Energy Physics measurements. Depending on the complexity of the models used in the analyses, with several free parameters, many independent variables, large data samples, and complex functions, the calculation of the likelihood functions can require a long CPU execution time. In the past, the continuous gain in performance for each single CPU core kept pace with the increase on the complexity of the analyses, maintaining reasonable the execution time of the sequential software applications. Nowadays, the performance for single cores is not increasing as in the past, while the complexity of the analyses has grown significantly in the Large Hadron Collider era. In this context a breakthrough is represented by the increase of the number of computational cores per computational node. This allows to speed up the execution of the applications, redesigning them with parallelization paradigms. The likelihood function evaluation can be parallelized using data and task parallelism, which are suitable for CPUs and GPUs (Graphics Processing Units), respectively. In this paper we show how the likelihood function evaluation has been parallelized on GPUs. We describe the implemented algorithm and we give some performance results when running typical models used in High Energy Physics measurements. In our implementation we achieve a good scaling with respect to the number of events of the data samples.
机译:基于似然函数计算的数据分析技术在许多高能物理测量中起着至关重要的作用。根据分析中使用的模型的复杂性,具有多个自由参数,许多自变量,大数据样本和复杂函数,似然函数的计算可能需要较长的CPU执行时间。过去,每个CPU核心的性能持续增长与分析复杂性的增长保持同步,从而保持了顺序软件应用程序的合理执行时间。如今,单核性能并没有像过去那样提高,而在“大型强子对撞机”时代,分析的复杂性却大大提高了。在这种情况下,突破之处在于每个计算节点的计算核心数量的增加。这样可以加快应用程序的执行速度,并使用并行化范式重新设计它们。可以使用分别适合于CPU和GPU(图形处理单元)的数据和任务并行性来并行化似然函数评估。在本文中,我们展示了似然函数评估如何在GPU上并行化。我们将描述实现的算法,并在运行用于高能物理测量的典型模型时给出一些性能结果。在我们的实现中,我们就数据样本的事件数量实现了良好的缩放。

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