2024
DOI: 10.1557/s43579-024-00616-6
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Materials data science using CRADLE: A distributed, data-centric approach

Thomas G. Ciardi,
Arafath Nihar,
Rounak Chawla
et al.

Abstract: There is a paradigm shift towards data-centric AI, where model efficacy relies on quality, unified data. The common research analytics and data lifecycle environment (CRADLE™) is an infrastructure and framework that supports a data-centric paradigm and materials data science at scale through heterogeneous data management, elastic scaling, and accessible interfaces. We demonstrate CRADLE’s capabilities through five materials science studies: phase identification in X-ray diffraction, defect segmentation in X-ra… Show more

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