Big Data-Driven Materials Science and Its FAIR Data Infrastructure

  • Draxl C
  • Scheffler M
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Abstract

This chapter addresses the forth paradigm of materials research -- big-data driven materials science. Its concepts and state-of-the-art are described, and its challenges and chances are discussed. For furthering the field, Open Data and an all-embracing sharing, an efficient data infrastructure, and the rich ecosystem of computer codes used in the community are of critical importance. For shaping this forth paradigm and contributing to the development or discovery of improved and novel materials, data must be what is now called FAIR -- Findable, Accessible, Interoperable and Re-purposable/Re-usable. This sets the stage for advances of methods from artificial intelligence that operate on large data sets to find trends and patterns that cannot be obtained from individual calculations and not even directly from high-throughput studies. Recent progress is reviewed and demonstrated, and the chapter is concluded by a forward-looking perspective, addressing important not yet solved challenges.

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Draxl, C., & Scheffler, M. (2020). Big Data-Driven Materials Science and Its FAIR Data Infrastructure. In Handbook of Materials Modeling (pp. 49–73). Springer International Publishing. https://doi.org/10.1007/978-3-319-44677-6_104

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