

n the first half of the talk, we will discuss a generic and versatile BO approach to tackle a handful of optimization problems, including known and unknown constraints, multi-objective, multi-fidelity, parallelization on high-performance computers, Big Data, and high-dimensional problems. In the second half of the talk, we will discuss the applications of GP/BO to several ICME models, in the materials design under uncertainty context and in the spirit of the Material Genome Initiative (2011). In particular, using ICME applications as forward models in the process-structure-property relationship, we will discuss how GP/BO fits in as the data-driven fourth-paradigm for materials design using ICME models.
Anh Tran is currently a limited-term senior member of technical staff of Uncertainty Quantification and Optimization in Sandia National Laboratories, Albuquerque, New Mexico. He obtained his B.S., M.S., and Ph.D. in Mechanical Engineering from Georgia Institute of Technology in December 2011 and December 2018, respectively. He also held an M.S. in Applied Mathematics from Georgia Southern University in May 2014. His research interests include optimization, uncertainty quantification, and machine learning, with applications to multi-scale materials science.