News Release

Towards large materials model for AI-driven materials discovery

Peer-Reviewed Publication

Science China Press

FIG. 1. Sketch of universal materials model of deep-learning DFT Hamiltonian (DeepH)

image: 

(a) A feasible route for developing large materials models capable of describing the structure-property relationship of materials. The universal materials model of DeepH accepts an arbitrary material structure as input and generates the corresponding DFT Hamiltonian, enabling straightforward derivation of various material properties. (b) Working principle of DeepH, which learns and predicts DFT Hamiltonian matrix blocks separately based on local-structure information.

view more 

Credit: ©Science China Press

Following the success of large language models, the concept of large materials models as deep-learning computational models for materials design has attracted great interests. Nevertheless, the task of acquiring large materials models appears to be quite challenging, given the inherent complexity of the structure-property relationship in materials.

A research team from Tsinghua University, led by Prof. Yong Xu and Prof. Wenhui Duan, sought to overcome this challenge by developing large materials models using the deep-learning density functional theory Hamiltonian (DeepH) method. Density functional theory (DFT) has emerged as a highly valuable first-principles approach for computational materials design and is one of the most popular methods in computational materials science. The DFT Hamiltonian serves as a fundamental quantity in DFT computations, enabling the straightforward derviation of all other physical quantities, including total energy, charge density, band structure, physical responses, etc. (Fig. 1)

While the DeepH method has been widely applied to study specific materials, developing a universal materials model of DeepH capable of handling disverse material structures across most elements of the periodic table remains elusive. DeepH leverages prior knowledge of physics to enhance its model performance. The prior knowledge includes the fundamental principle of equivariance as well as the “quantum nearsightedness principle”. The latter principle states that local quantities, such as the DFT Hamiltonian, can be determined by the neighboring chemical enviorment rather than the entire material structure, ensuring good transferrability of DeepH models (Fig. 1). Compared to specific materials models, developing a universal materials model of DeepH represents a grand challenge in terms of the method’s generalizability and robustness.

The research team first established a large database of DFT, comprising computational data of over 10,000 material structures. Based on this materials database and an improved DeepH method (DeepH-2), researchers created a universal materials model of DeepH capable of handling diverse elemental compositions and material structures, achieving remarkable accuracy in predicting material properties (Fig. 2). The model’s robustness was demonstrated by accurately predicting material properties of complicated test material structures (Fig. 3).

This work not only demonstrates the concept of DeepH's universal materials model but also lays the groundwork for developing large materials models, opening up significant opportunities for advancing artificial intelligence-driven materials discovery.

See the article:

Universal materials model of deep-learning density functional theory Hamiltonian

https://doi.org/10.1016/j.scib.2024.06.011


Disclaimer: AAAS and EurekAlert! are not responsible for the accuracy of news releases posted to EurekAlert! by contributing institutions or for the use of any information through the EurekAlert system.