Difference between revisions of "Materials"
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| − | <youtube> | + | <youtube>28Ue_jteKI4</youtube> |
| − | <b>Machine Learning | + | <b>IACS Seminar: "Machine Learning for Materials Discovery" 11/30/2018 |
| − | </b><br> | + | </b><br>Presented by Dr. Julia Ling, Director of Data Science at Citrine Informatics Talk abstract: Materials science presents a unique set of challenges and opportunities for machine learning methods in terms of data size, data sparsity, available domain knowledge, and multi-scale physics. In this talk, Dr. Ling will discuss how machine learning can be used to accelerate materials discovery through a sequential learning workflow. You'll examine how domain knowledge can be integrated into data-driven models, the role of uncertainty quantification in driving exploration of new design candidates, and how to forecast the impact of a data-driven approach on a given materials discovery campaign. Speaker Bio: Dr. Julia Ling received her bachelors in Physics from Princeton University and her PhD in Mechanical Engineering from Stanford University. She was a Harry S. Truman Fellow at Sandia National Labs, where her researched focused on applying machine learning to turbulence modeling. She is currently the Director of Data Science at Citrine Informatics, leading a team that applies data-driven methods to materials science applications. |
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| − | <b> | + | <b>Machine Learning in Materials Science |
| − | </b><br> | + | </b><br>Presentation made by Prof. Ramprasad at an IPAM workshop in UCLA (September 2016) |
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Revision as of 14:45, 28 August 2020
Youtube search... ...Google search
- Case Studies
- NIST-JARVIS (Joint Automated Repository for Various Integrated Simulations) ...JARVIS-ML introduced Classical Force-field Inspired Descriptors (CFID) as a universal framework to represent a material’s chemistry-structure-charge related data
- Materials discovery and design using machine learning | Yue Liua, Tianlu Zhaoa, Wangwei Jua, Siqi Shi ScienceDirect
- How AI is helping us discover materials faster than ever | Angela Chen - The Verge
- Can AI Solve the Rare Earths Problem? Chinese and U.S. Researchers Think So | Patrick Tucker - Defense One ... research effort funded by China and the U.S. could speed up the discovery of new materials to use in electronics.
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