首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Parallelized Natural Extension Reference Frame: Parallelized Conversion from Internal to Cartesian Coordinates
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Parallelized Natural Extension Reference Frame: Parallelized Conversion from Internal to Cartesian Coordinates

机译:并行化自然延伸参考框架:从内部到笛卡尔坐标的并行转换

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The conversion of polymer parameterization from internal coordinates (bond lengths, angles, and torsions) to Cartesian coordinates is a fundamental task in molecular modeling, often performed using the natural extension reference frame (NeRF) algorithm. NeRF can be parallelized to process multiple polymers simultaneously, but is not parallelizable along the length of a single polymer. A mathematically equivalent algorithm, pNeRF, has been derived that is parallelizable along a polymer's length. Empirical analysis demonstrates an order-of-magnitude speed up using modern GPUs and CPUs. In machine learning-based workflows, in which partial derivatives are backpropagated through NeRF equations and neural network primitives, switching to pNeRF can reduce the fractional computational cost of coordinate conversion from over two-thirds to around 10%. An optimized TensorFlow-based implementation of pNeRF is available on GitHub at (c) 2018 Wiley Periodicals, Inc.
机译:从内部坐标(粘合长度,角度和扭转)到笛卡尔坐标的聚合物参数化转换为笛卡尔坐标是分子建模中的基本任务,通常使用自然延伸参考帧(NERF)算法进行。 Nerf可以并行化以同时处理多种聚合物,但沿着单个聚合物的长度不相平。 已经导出了一种数学上等同的算法,PNERF沿着聚合物的长度并行。 经验分析展示了使用现代GPU和CPU的数量级加速。 在基于机器学习的工作流程中,其中部分衍生物通过NERF方程和神经网络原语来反正,切换到PNERF可以将来自超过三分之二的坐标转换的分数计算成本降低到约10%。 基于优化的Tensorflow的PNERF实施是在Github上(C)2018 Wiley期刊,Inc。提供的

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