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首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Efficient Gaussian Density Formulation of Volume and Surface Areas of Macromolecules on Graphical Processing Units
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Efficient Gaussian Density Formulation of Volume and Surface Areas of Macromolecules on Graphical Processing Units

机译:高斯高斯密度配方在图形加工单元上大分子的体积和表面积

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摘要

We present an algorithm to efficiently compute accurate volumes and surface areas of macromolecules on graphical processing unit (GPU) devices using an analytic model which represents atomic volumes by continuous Gaussian densities. The volume of the molecule is expressed by means of the inclusion-exclusion formula, which is based on the summation of overlap integrals among multiple atomic densities. The surface area of the molecule is obtained by differentiation of the molecular volume with respect to atomic radii. The many-body nature of the model makes a port to GPU devices challenging. To our knowledge, this is the first reported full implementation of this model on GPU hardware. To accomplish this, we have used recursive strategies to construct the tree of overlaps and to accumulate volumes and their gradients on the tree data structures so as to minimize memory contention. The algorithm is used in the formulation of a surface area-based non-polar implicit solvent model implemented as an open source plug-in (named GaussVol) for the popular OpenMM library for molecular mechanics modeling. GaussVol is 50 to 100 times faster than our best optimized implementation for the CPUs, achieving speeds in excess of 100 ns/day with 1 fs time-step for protein-sized systems on commodity GPUs. (C) 2017 Wiley Periodicals, Inc.
机译:我们介绍了一种算法,可以使用连续高斯密度表示原子量的图形处理单元(GPU)设备上有效地计算图形处理单元(GPU)设备上的准确卷和表面区域。分子的体积通过包含排除公式表示,其基于多个原子密度之间的重叠积分的总和。通过将分子量相对于原子半径分化而获得分子的表面积。模型的许多身体性质使得GPU设备挑战的港口。据我们所知,这是第一次报告在GPU硬件上全面实施此模型。为实现这一目标,我们使用递归策略来构建重叠树,并在树数据结构上累积卷及其渐变,以便最小化内存争用。该算法用于制定作为用于分子机械建模的流行OpenMM库的开源插入(名为Gaussvol)实现的基于表面积的非极性隐式溶剂模型。 Gaussvol比CPU的最佳优化实施方式速度快50至100倍,以1 FS为商品GPU上的蛋白质大小的蛋白质大小的系统实现超过100ns /天的速度。 (c)2017 Wiley期刊,Inc。

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