MRS Meetings and Events

 

MT03.05.05 2024 MRS Spring Meeting

Fantastical Training Data and How To Generate It

When and Where

Apr 24, 2024
4:00pm - 4:30pm

Room 322, Level 3, Summit

Presenter

Co-Author(s)

Martijn Zwijnenburg1

University College London1

Abstract

Martijn Zwijnenburg1

University College London1
In an ideal world we would train machine learning models for organic materials on training data generated using coupled-cluster singles-doubles-triples-quadruples or something similar and fully take into account the environment of the molecules. In practice this is impossible considering the number of training points required for most models. As a result, we have to make choices. Even more so when we want our model not to predict ground state energies and/or geometries but excited state properties, such as optical excitation energies or electron affinities/ionisation potentials, as well as to be transferable. Models that could accurately predict excited state properties for a wide range of organic materials would be very useful in virtual high-throughput screening of materials for organic LEDs, photovoltaics and photocatalysts.<br/><br/>In my contribution I’ll discuss our work and that of others on training data generation for excited-state properties of organic materials. I’ll consider which properties to aim for, what the best possible training data might look like and how hybrid schemes based on tight-binding methods calibrated to higher-level methods can be exploited.

Keywords

organic | polymer

Symposium Organizers

Keith Butler, University College London
Kedar Hippalgaonkar, Nanyang Technological University
Shijing Sun, University of Washington
Jie Xu, Argonne National Laboratory

Publishing Alliance

MRS publishes with Springer Nature