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Pipelining Computational Stages of the Tomographic Reconstructor for Multi-Object Adaptive Optics on a Multi-GPU System

机译:用于多GPU系统的多对象自适应光学层析成像重建器的流水线计算阶段

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The European Extremely Large Telescope project (E-ELT) is one of Europe's highest priorities in ground-based astronomy. ELTs are built on top of a variety of highly sensitive and critical astronomical instruments. In particular, a new instrument called MOSAIC has been proposed to perform multi-object spectroscopy using the Multi-Object Adaptive Optics (MOAO) technique. The core implementation of the simulation lies in the intensive computation of a tomographic reconstruct or (TR), which is used to drive the deformable mirror in real time from the measurements. A new numerical algorithm is proposed (1) to capture the actual experimental noise and (2) to substantially speed up previous implementations by exposing more concurrency, while reducing the number of floating-point operations. Based on the Matrices Over Runtime System at Exascale numerical library (MORSE), a dynamic scheduler drives all computational stages of the tomographic reconstruct or simulation and allows to pipeline and to run tasks out-of order across different stages on heterogeneous systems, while ensuring data coherency and dependencies. The proposed TR simulation outperforms asymptotically previous state-of-the-art implementations up to 13-fold speedup. At more than 50000 unknowns, this appears to be the largest-scale AO problem submitted to computation, to date, and opens new research directions for extreme scale AO simulations.
机译:欧洲超大型望远镜项目(E-ELT)是欧洲地面天文学的最高优先事项之一。 ELT建立在各种高度敏感和关键的天文仪器之上。尤其是,已经提出了一种称为MOSAIC的新仪器,以使用多目标自适应光学(MOAO)技术执行多目标光谱学。该模拟的核心实现方式是对X线断层重建或(TR)的密集计算,该断层重建用于从测量值实时驱动可变形反射镜。提出了一种新的数值算法(1)捕获实际的实验噪声,以及(2)通过公开更多的并发性来大大加快以前的实现,同时减少浮点运算的数量。基于Exascale数值库(MORSE)的运行时矩阵系统,动态调度程序可驱动断层扫描重建或仿真的所有计算阶段,并允许在异构系统上跨不同阶段以无序方式传递和运行任务,同时确保数据一致性和依赖性。拟议的TR仿真在性能上渐进地超过了以前的最新实现,最高可提高13倍。迄今为止,未知数超过50000,这似乎是提交给计算的最大规模的AO问题,并为极端规模AO模拟打开了新的研究方向。

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