In situ visualization of large-scale turbulence simulations in Nek5000 with ParaView Catalyst
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Published:2021-08-02
Issue:3
Volume:78
Page:3605-3620
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ISSN:0920-8542
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Container-title:The Journal of Supercomputing
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language:en
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Short-container-title:J Supercomput
Author:
Atzori MarcoORCID, Köpp Wiebke, Chien Steven W. D., Massaro Daniele, Mallor Fermín, Peplinski Adam, Rezaei Mohamad, Jansson Niclas, Markidis Stefano, Vinuesa Ricardo, Laure Erwin, Schlatter Philipp, Weinkauf Tino
Abstract
AbstractIn situ visualization on high-performance computing systems allows us to analyze simulation results that would otherwise be impossible, given the size of the simulation data sets and offline post-processing execution time. We develop an in situ adaptor for Paraview Catalyst and Nek5000, a massively parallel Fortran and C code for computational fluid dynamics. We perform a strong scalability test up to 2048 cores on KTH’s Beskow Cray XC40 supercomputer and assess in situ visualization’s impact on the Nek5000 performance. In our study case, a high-fidelity simulation of turbulent flow, we observe that in situ operations significantly limit the strong scalability of the code, reducing the relative parallel efficiency to only $$\approx 21\%$$
≈
21
%
on 2048 cores (the relative efficiency of Nek5000 without in situ operations is $$\approx 99\%$$
≈
99
%
). Through profiling with Arm MAP, we identified a bottleneck in the image composition step (that uses the Radix-kr algorithm) where a majority of the time is spent on MPI communication. We also identified an imbalance of in situ processing time between rank 0 and all other ranks. In our case, better scaling and load-balancing in the parallel image composition would considerably improve the performance of Nek5000 with in situ capabilities. In general, the result of this study highlights the technical challenges posed by the integration of high-performance simulation codes and data-analysis libraries and their practical use in complex cases, even when efficient algorithms already exist for a certain application scenario.
Funder
Stiftelsen för Strategisk Forskning Knut och Alice Wallenbergs Stiftelse Horizon 2020 Framework Programme Vetenskapsrådet Royal Institute of Technology
Publisher
Springer Science and Business Media LLC
Subject
Hardware and Architecture,Information Systems,Theoretical Computer Science,Software
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