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Multi-step image compositing for massively parallel rendering

机译:用于大规模并行渲染的多步图像合成

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High performance visualization has played an important role in computer-aided scientific discovery and has become an indispensable tool for computational scientists. Sort-last parallel rendering is a proven approach for visual data analytics by extracting meaningful information from huge data sets generated from large scale scientific computing. Image compositing is the last stage of sort-last parallel rendering pipeline and works by combining the images generated by the rendering nodes to generate the final image. Since it requires interprocess communication among the entire nodes, it usually dominates the total cost of the parallel rendering process. In current high-end massively parallel HPC systems, where tens or even hundreds of thousands of nodes can be involved, performance degradation is inevitable even using theoretically scalable image compositing algortithms such as the well-known Binary-Swap method. To minimize this undesirable performance degradation, we propose the multi-step image compositing method, where the image compositing nodes are divided into smaller groups and the entire process is performed in several steps. We evaluated the proposed image compositing method on RIKEN K computer, which is a massively parallel HPC system, and we obtained encouraging results showing the effectiveness of this method in a large-scale image compositing environment. We also foresee a great potential of this method to meet the large-scale image compositing demands brought about by the rapid increase in processor counts of current and next-generation HPC systems.
机译:高性能可视化在计算机辅助科学发现中发挥了重要作用,并已成为计算科学家的不可或缺的工具。排序最后并行渲染是通过从大规模科学计算产生的大型数据集中提取有意义的信息来证明可视化数据分析的方法。图像合成是排序最后的并行渲染管道的最后阶段,并通过组合渲染节点生成的图像来生成最终图像来工作。由于它需要在整个节点之间进行进程间通信,因此它通常占据并行渲染过程的总成本。在目前的高端大型平行HPC系统中,可以涉及数十甚至数千个节点,即使使用理论上可伸缩的图像合成诸如众所周知的二进制交换方法的理论上可伸缩图像合成算法,性能劣化也是不可避免的。为了最小化这种不希望的性能下降,我们提出了多步骤图像合成方法,其中图像合成节点被划分为较小的组,并且在几个步骤中执行整个过程。我们在Riken K计算机上评估了所提出的图像合成方法,它是一种大规模平行的HPC系统,我们获得了令人鼓舞的结果,显示了这种方法在大规模图像合成环境中的有效性。我们还预见了这种方法的巨大潜力,以满足大规模的图像合成需求,通过快速增加当前和下一代HPC系统的加工计数。

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