Spiers Memorial Lecture: How to do impactful research in artificial intelligence for chemistry and materials science
Abstract
Machine learning has been pervasively touching many fields of science. Chemistry and materials science are no exception. While machine learning has been making a great impact, it is still not reaching its full potential or maturity. In this perspective, we first outline current applications across a diversity of problems in chemistry. Then, we discuss how machine learning researchers view and approach problems in the field. Finally, we provide our considerations for maximizing impact when researching machine learning for chemistry.
- This article is part of the themed collections: Data-driven discovery in the chemical sciences and The Spiers Memorial Lectures