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  • 11h30m

Last edited by Jungho Shin Jun 13, 2023
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11h30m

Data platforms for Data-driven Materials Science: ChemDX and MatDX

Information Photo
Name
Jungho Shin

Affiliation
Chemical Data-driven Research Center, Korea Research Institute of Chemical Technology
jungho_shin

Abstract

Jungho Shin, Yea-Lee Lee, Gyoung S. Na, , Seunghun Jang, Jino Im and Hyunju Chang

Korea Research Institute of Chemical Technology (KRICT)

In the field of materials science, the data-driven approach has played a crucial role in the discovery of novel materials over the past decade. This approach has been significantly accelerated by the emergence of valuable data infrastructures that adhere to FAIR (findable, accessible, interoperable, and reusable) data principles. Notable examples of these infrastructures include NOMAD, OPTIMADE, Materials Project, AFLOW, and OQMD. To effectively utilize these data infrastructures, it is necessary to integrate and classify various types of metadata related to materials properties. This integration and classification process enables the research community to make more accurate predictions using artificial intelligence techniques.

MatDX (Materials Data eXplorer) has been developed with a specific focus on the integration and classification of materials-related metadata based on materials ontologies. These ontologies encompass classes and instances related to material name, composition, compound, structure, property, and applications. MatDX utilizes a data warehouse solution to facilitate integration by connecting multiple databases. The introduction of material tags, derived from the materials ontologies, allows for easy and quick searching and retrieval of detailed information on materials of interest. Additionally, MatDX offers an interactive "Analysis" functionality that visually represents statistically significant relationships within the materials data.

The primary goal of these services is to enable researchers to discover new materials with desired properties based on a vast amount of research data. MatDX encompasses three sub-categories: PubDX, which focuses on published data; ExpDX, which pertains to experimental data; and CalcDX, which deals with calculated data. Researchers can access MatDX through the following web address: http://materials.chemdx.org.

Biography

Data platforms for Data-driven Materials Science

Dr. Jungho Shin is a researcher at the Korea Research Institute of Chemical Technology (KRICT), where he has been serving since 2019. He currently holds the position of Head of the Center for Chemical Data-Based Research at KRICT. He obtained his undergraduate and master's degrees in Chemistry from Sejong University (Korea) in 2007 and 2009, respectively. In 2015, he received his Ph.D. in Chemical Engineering from Yonsei University, specializing in computational and chemical research on catalytic materials.

Dr. Shin has been actively involved in the NOMAD project of the Horizon 2020 initiative in Europe, collaborating with the Fritz Haber Institute and Humboldt University in Germany since 2015. His research focuses on material data processing, platformization, and related areas. Alongside his work at KRICT, he continues to contribute to advancements in the field of chemical research.

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