Data Framework Design of EDISON 2.0 Digital Platform for Convergence Research

With improving computing performance, various digital platforms are being developed to enable easily utilization of high-performance computing environments. EDISON 1.0 is an online simulation platform widely used in computational science and engineering education. As the research paradigm changes, t...

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Veröffentlicht in:KSII transactions on Internet and information systems 2023-08, Vol.17 (8), p.2292
Hauptverfasser: Han, Sunggeun, Lee, Jaegwang, Jeon, Inho, Lee, Jeongcheol, Choi, Hoon
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Sprache:eng
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Zusammenfassung:With improving computing performance, various digital platforms are being developed to enable easily utilization of high-performance computing environments. EDISON 1.0 is an online simulation platform widely used in computational science and engineering education. As the research paradigm changes, the demand for developing the EDISON 1.0 platform centered on simulation into the EDISON 2.0 platform centered on data and artificial intelligence is growing. Herein, a data framework, a core module for data-centric research on EDISON 2.0 digital platform, is proposed. The proposed data framework provides the following three functions. First, it provides a data repository suitable for the data lifecycle to increase research reproducibility. Second, it provides a new data model that can integrate, manage, search, and utilize heterogeneous data to support a data-driven interdisciplinary convergence research environment. Finally, it provides an exploratory data analysis (EDA) service and data enrichment using an AI model, both developed to strengthen data reliability and maximize the efficiency and effectiveness of research endeavors. Using the EDISON 2.0 data framework, researchers can conduct interdisciplinary convergence research using heterogeneous data and easily perform data pre-processing through the web-based UI. Further, it presents the opportunity to leverage the derived data obtained through AI technology to gain insights and create new research topics. Keywords: Computational Science, Convergence Research, Data-driven Research, Data Framework, Digital Platform
ISSN:1976-7277
1976-7277
DOI:10.3837/tiis.2023.08.019