About this Abstract |
| Meeting |
2020 TMS Annual Meeting & Exhibition
|
| Symposium
|
ICME Gap Analysis in Materials Informatics: Databases, Machine Learning, and Data-Driven Design
|
| Presentation Title |
Combining Machine Learning and ICME for Alloy Development |
| Author(s) |
Bryce Meredig |
| On-Site Speaker (Planned) |
Bryce Meredig |
| Abstract Scope |
Machine learning (ML) has a number of unique advantages that make it an effective complement to existing ICME tools. Specifically, ML is (1) computationally cheaper than physics-based simulations; (2) able to flexibly model (in principle) any input data and output properties; and (3) useful for performing uncertainty-aware optimization. In this talk, we will present a perspective on using ML to orchestrate multifidelity ICME simulations and experiments to accelerate alloy development. |
| Proceedings Inclusion? |
Planned: Supplemental Proceedings volume |