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Cataloging the Visible Universe Through Bayesian Inference at Petascale

机译:通过Petascale的贝叶斯推理对可见宇宙进行分类

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Astronomical catalogs derived from wide-field imaging surveys are an important tool for understanding the Universe. We construct an astronomical catalog from 55 TB of imaging data using Celeste, a Bayesian variational inference code written entirely in the high-productivity programming language Julia. Using over 1.3 million threads on 650,000 Intel Xeon Phi cores of the Cori Phase II supercomputer, Celeste achieves a peak rate of 1.54 DP PFLOP/s. Celeste is able to jointly optimize parameters for 188M stars and galaxies, loading and processing 178 TB across 8192 nodes in 14.6 minutes. To achieve this, Celeste exploits parallelism at multiple levels (cluster, node, and thread) and accelerates I/O through Cori's Burst Buffer. Julia's native performance enables Celeste to employ high-level constructs without resorting to hand-written or generated low-level code (C/C++/Fortran), and yet achieve petascale performance.
机译:从宽视场影像调查中得出的天文目录是了解宇宙的重要工具。我们使用Celeste(完全用高生产率编程语言Julia编写的贝叶斯变化推理代码)从55 TB的影像数据构建天文目录。 Celeste在Cori Phase II超级计算机的650,000个Intel Xeon Phi内核上使用了超过130万个线程,从而实现了1.54 DP PFLOP / s的峰值速率。 Celeste能够共同优化1.88亿颗恒星和星系的参数,在14.6分钟内在8192个节点上加载和处理178 TB数据。为了实现这一目标,Celeste在多个级别(集群,节点和线程)利用并行性,并通过Cori的突发缓冲区加速I / O。 Julia的本机性能使Celeste能够采用高级构造,而无需求助于手写或生成的低级代码(C / C ++ / Fortran),但仍可实现PB级性能。

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