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Numerical Precision Effects on GPU Simulation of Massive Spatial Data, Based on the Modified Planar Rotator Model

机译:基于改进的平面转子模型的数值精度对海量空间数据的GPU仿真的影响

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The present research builds on a recently proposed spatial prediction method for discretized two-dimensional data, based on a suitably modified planar rotator (MPR) spin model from statistical physics. This approach maps the measured data onto interacting spins and, exploiting spatial correlations between them, which are similar to those present in geostatistical data, predicts the data at unmeasured locations. Due to the shortrange nature of the spin pair interactions in the MPR model, parallel implementation of the prediction algorithm on graphical processing units (GPUs) is a natural way of increasing its efficiency. In this work we study the effects of reduced computing precision as well as GPU-based hardware intrinsic functions on the speedup and accuracy of the MPR-based prediction and explore which aspects of the simulation can potentially benefit the most from the reduced precision. It is found that, particularly for massive data sets, a thoughtful precision setting of the GPU implementation can significantly increase the computational efficiency, while incurring little to no degradation in the prediction accuracy.
机译:本研究建立在最近提出的离散二维数据空间预测方法的基础上,该方法基于统计物理学的适当修改的平面旋转器(MPR)自旋模型。这种方法将测得的数据映射到相互作用的自旋上,并利用它们之间的空间相关性(类似于地统计数据中的相关性)来预测未测位置的数据。由于MPR模型中自旋对相互作用的短距离性质,在图形处理单元(GPU)上并行执行预测算法是提高其效率的自然方法。在这项工作中,我们研究了降低的计算精度以及基于GPU的硬件固有功能对基于MPR的预测的速度和准确性的影响,并探讨了模拟的哪些方面可能从降低的精度中受益最大。已经发现,特别是对于海量数据集,GPU实现的周到精度设置可以显着提高计算效率,而预测精度几乎没有下降。

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