About this Abstract |
Meeting |
2020 TMS Annual Meeting & Exhibition
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Symposium
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Characterization: Structural Descriptors, Data-Intensive Techniques, and Uncertainty Quantification
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Presentation Title |
Advancement of Data Intensive Approaches in Materials Discovery and Design |
Author(s) |
David C. Elbert, Brian Schuster, Nick Carey, Connor Krill, Ali Rachidi, William A. Phelan, Tyrel McQueen |
On-Site Speaker (Planned) |
David C. Elbert |
Abstract Scope |
Recent advances in data collection and application provide the promise of more efficient and innovative materials discovery to accelerate creation and use of novel materials to serve society. To realize the opportunities of such data requires a materials data infrastructure (MDI) including scalable visualization and analytics as well as open and integrated ways to understand and share information across the materials domain.
Our collaborative MDI leverages SciServer Big Data architecture, streaming data, and unified semantics to support data sharing and analysis. We're particularly focused on accelerating work with experimental data through automated analysis and real time applications. As an example, rapid image segmentation from deep learning models is transformative in a range of applications from synthesis to characterization. Ultimately the revolution in data-driven materials science depends on connecting such visions of MDI throughout the community. Functional methods and commitment to open data will be the fuel for AI/ML innovation. |
Proceedings Inclusion? |
Planned: Supplemental Proceedings volume |