AAAI2025

De Novo Molecular and Crystal Design with Latent Space Bayesian Optimization

Onur Boyar

Abstract

This thesis explores Latent Space Bayesian Optimization (LSBO) for the generation and optimization of de novo molecules and crystal materials. Our goal is to develop practical, sample-efficient de novo discovery algorithms with a focus on real-world applicability, and our results so far demonstrate significant progress toward practical implementation.