Material Response
Material response research focuses on understanding and predicting how materials behave under various stimuli, aiming to accelerate materials discovery and design. Current efforts leverage machine learning, employing diverse model architectures like neural networks (including graph neural networks and convolutional recurrent networks), Bayesian optimization, and generative models (e.g., variational autoencoders, diffusion models) to efficiently explore vast material spaces and predict properties. This research is crucial for advancing fields like robotics, materials science, and engineering, enabling the design of novel materials with tailored functionalities for applications ranging from energy storage to flexible electronics.
Papers
Eclipse: Disambiguating Illumination and Materials using Unintended Shadows
Dor Verbin, Ben Mildenhall, Peter Hedman, Jonathan T. Barron, Todd Zickler, Pratul P. Srinivasan
Metrics for quantifying isotropy in high dimensional unsupervised clustering tasks in a materials context
Samantha Durdy, Michael W. Gaultois, Vladimir Gusev, Danushka Bollegala, Matthew J. Rosseinsky