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Optimizing Parallel Performance of Streamline Visualization for Large Distributed Flow Datasets

机译:优化大型分布式流数据集的Streamline可视化的并行性能

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Parallel performance has been a challenging topic in streamline visualization for large unstructured flow datasets on parallel distributed-memory computers. It depends strongly on domain partitions. Unsuitable partitions often lead to severe load imbalance and high frequent communications among the domain partitions. To address the problem, we present an approach to flow data partitioning taking account of flow directions and features. Multilevel spectral graph bisection method is employed to reduce communication and synchronization overhead among distributed domains. Edge weights in the corresponding adjacent matrix is defined based on an anisotropic local diffusion operator which assigns strong coupling along flow direction and weak coupling orthogonal to flow. Meanwhile, the distributions of seed points and flow features such as vortex structure are also considered in partitioning so as to obtain good load balance. The experimental results are given to show the feasibility and effectiveness of our method.
机译:并行性能是并行分布式记忆计算机上的大型非结构化流数据集的精简可视化的具有挑战性的主题。它依赖于域分区。不合适的分区通常会导致域分区之间的严重负载不平衡和高频繁通信。为了解决问题,我们介绍了一种方法来考虑流动方向和功能的流动数据分区。采用多级光谱曲线图分布式方法来减少分布式域之间的通信和同步开销。相应的相邻矩阵中的边缘重量基于各向异性局部扩散操作器来定义,该局部扩散算子沿流程方向分配强耦合和弱耦合正交流动。同时,在分区中也考虑了种子点和流量特征的分布,以便获得良好的负载平衡。给出了实验结果表明我们方法的可行性和有效性。

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