December 1 - 6, 2024
Boston, Massachusetts
Symposium Supporters
2024 MRS Fall Meeting & Exhibit
BI01.01.05

Large Language Model-Guided Prediction Toward Quantum Materials Synthesis

When and Where

Dec 2, 2024
11:45am - 12:00pm
Sheraton, Second Floor, Constitution B

Presenter(s)

Co-Author(s)

Ryotaro Okabe1,Zack West1,Mingda Li1

Massachusetts Institute of Technology1

Abstract

Ryotaro Okabe1,Zack West1,Mingda Li1

Massachusetts Institute of Technology1
The synthesis of inorganic crystalline materials is essential for modern technology, especially in quantum materials development. However, designing efficient synthesis workflows remains a significant challenge due to the precise experimental conditions and extensive trial and error. Here, we present a framework using large language models (LLMs) to predict synthesis pathways for inorganic materials, including quantum materials. Our framework contains three models: LHS2RHS, predicting products from reactants; RHS2LHS, predicting reactants from products; and TGT2CEQ, generating full chemical equations for target compounds. Fine-tuned on a text-mined synthesis database, our model raises accuracy from under 40% with pretrained models, to under 80% using conventional fine-tuning, and further to around 90% with our proposed generalized Tanimoto similarity, while maintaining robust to additional synthesis steps. Our model further demonstrates comparable performance across materials with varying degrees of quantumness quantified using quantum weight, indicating that LLMs offer a powerful tool to predict balanced chemical equations for quantum materials discovery.

Keywords

chemical reaction

Symposium Organizers

Deepak Kamal, Solvay Inc
Christopher Kuenneth, University of Bayreuth
Antonia Statt, University of Illinois
Milica Todorović, University of Turku

Session Chairs

Christopher Kuenneth
Milica Todorović

In this Session