Bulletin of the American Physical Society
63rd Annual Meeting of the APS Division of Plasma Physics
Volume 66, Number 13
Monday–Friday, November 8–12, 2021; Pittsburgh, PA
Session UP11: Poster Session VIII:
Fundamental Plasma Physics - Analytical and Computational Techniques; Magnetic Reconnection; Antimatter Heliospheric, Magnetospheric, and Ionospheric Plasma Phenomena and Their Scaled Laboratory Experiments
MFE - DIII-D Tokamak II, ITER, HBT-EP, and Other Tokamaks
2:00 PM - 5:00 PM
Thursday, November 11, 2021
Room: Hall A
Abstract: UP11.00092 : Near real-time streaming analysis of big fusion data
Presenter:
Ralph Kube
(Princeton Plasma Physics Laboratory)
Authors:
Ralph Kube
(Princeton Plasma Physics Laboratory)
Michael Churchill
(Princeton Plasma Physics Laboratory)
Jong Choi
(Oak Ridge National Laboratory)
Jason Wang
(Oak Ridge National Laboratory)
Laurie Stephey
(Lawrence Berkeley National Laboratory)
CS Chang
(Princeton Plasma Physics Laboratory)
Scott Klasky
(Oak Ridge National Laboratory)
(ECEI) diagnostics, routinely generate fast,
high-dimensional data-streams, typically of the order of Gigabytes per
second. Future devices, like ITER, are predicted to generate
multiple petabytes of measurement data per day. Such large datasets
can not be analyzed manually. Furthermore, interested
parties in the analysis results are scattered around the globe. To
address these issues, we are developing the Delta
(aDaptive nEar-raL Time Analysis framework) - a python framework that
allows to stream measurement data to a remote
compute center, perform data analysis using distributed compute
resources, and display visualizations of the analyzed
data on a web-based dashboard. In this contribution we demonstrate the use-case where we stream ECEi
measurements taken at the KSTAR tokamak in Korea
to the NERSC compute center in California. Using Delta, we achieve a
bandwidth of over 500 MB/seconds and perform
a turbulence analysis of the entire dataset in under 5 minutes. The
analyzed data can be presented in near real-time on a
web-based dashboard. Finally, we discuss how machine learning-based
classifiers can be used in Delta to automatically target data
analysis routines to relevant subsets of the data stream.
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