Orbital Transformers for Predicting Wavefunctions in Time-Dependent Density Functional Theory
Xuan Zhang, Haiyang Yu, Chengdong Wang, Jacob Helwig, Shuiwang Ji, Xiaofeng Qian

TL;DR
This paper introduces OrbEvo, a graph transformer model that efficiently predicts the time evolution of molecular wavefunctions in TDDFT, enabling faster quantum dynamics simulations under external fields.
Contribution
The work presents a novel equivariant graph transformer architecture for learning wavefunction evolution, incorporating external field encoding and density matrix pooling, improving efficiency over traditional methods.
Findings
OrbEvo accurately predicts time-dependent wavefunctions and dipole moments.
The model reproduces optical absorption spectra with high fidelity.
It demonstrates efficient learning on large molecular datasets.
Abstract
We aim to learn wavefunctions simulated by time-dependent density functional theory (TDDFT), which can be efficiently represented as linear combination coefficients of atomic orbitals. In real-time TDDFT, the electronic wavefunctions of a molecule evolve over time in response to an external excitation, enabling first-principles predictions of physical properties such as optical absorption, electron dynamics, and high-order response. However, conventional real-time TDDFT relies on time-consuming propagation of all occupied states with fine time steps. In this work, we propose OrbEvo, which is based on an equivariant graph transformer architecture and learns to evolve the full electronic wavefunction coefficients across time steps. First, to account for external field, we design an equivariant conditioning to encode both strength and direction of external electric field and break the…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Code & Models
Videos
