Near real-time streaming analysis of big fusion data

Author:

Kube RORCID,Churchill R MORCID,Chang C SORCID,Choi JORCID,Wang RORCID,Klasky SORCID,Stephey LORCID,Dart EORCID,Choi M JORCID

Abstract

Abstract Experiments on fusion plasmas produce high-dimensional data time series with ever-increasing magnitude and velocity, but turn-around times for analysis of this data have not kept up. For example, many data analysis tasks are often performed in a manual, ad-hoc manner some time after an experiment. In this article, we introduce the Delta framework that facilitates near real-time streaming analysis of big and fast fusion data. By streaming measurement data from fusion experiments to a high-performance compute center, Delta allows computationally expensive data analysis tasks to be performed in between plasma pulses. This article describes the modular and expandable software architecture of Delta and presents performance benchmarks of individual components as well as of an example workflow. Focusing on a streaming analysis workflow where electron cyclotron emission imaging (ECEi) data is measured at KSTAR on the National Energy Research Scientific Computing Center’s (NERSC’s) supercomputer we routinely observe data transfer rates of about 4 Gigabit per second. In NERSC, a demanding turbulence analysis workflow effectively utilizes multiple nodes and graphical processing units and executes them in under 5 min. We further discuss how Delta uses modern database systems and container orchestration services to provide web-based real-time data visualization. For the case of ECEi data we demonstrate how data visualizations can be augmented with outputs from machine learning models. By providing session leaders and physics operators, results of higher-order data analysis using live visualizations may make more informed decisions on how to configure the machine for the next shot.

Funder

Fusion Energy Sciences

U.S. Department of Energy

National Energy Research Scientific Computing Center

Publisher

IOP Publishing

Subject

Condensed Matter Physics,Nuclear Energy and Engineering

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Solving the Orszag–Tang vortex magnetohydrodynamics problem with physics-constrained convolutional neural networks;Physics of Plasmas;2024-01-01

2. 2022 Review of Data-Driven Plasma Science;IEEE Transactions on Plasma Science;2023-07

3. Accelerated Workflow for Advanced Kinetic Equilibria;2022 First Combined International Workshop on Interactive Urgent Supercomputing (CIW-IUS);2022-11

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