Issue 3, 2025

ULaMDyn: enhancing excited-state dynamics analysis through streamlined unsupervised learning

Abstract

The analysis of nonadiabatic molecular dynamics (NAMD) data presents significant challenges due to its high dimensionality and complexity. To address these issues, we introduce ULaMDyn, a Python-based, open-source package designed to automate the unsupervised analysis of large datasets generated by NAMD simulations. ULaMDyn integrates seamlessly with the Newton-X platform and employs advanced dimensionality reduction and clustering techniques to uncover hidden patterns in molecular trajectories, enabling a more intuitive understanding of excited-state processes. Using the photochemical dynamics of fulvene as a test case, we demonstrate how ULaMDyn efficiently identifies critical molecular geometries and critical nonadiabatic transitions. The package offers a streamlined, scalable solution for interpreting large NAMD datasets. It is poised to facilitate advances in the study of excited-state dynamics across a wide range of molecular systems.

Graphical abstract: ULaMDyn: enhancing excited-state dynamics analysis through streamlined unsupervised learning

Article information

Article type
Paper
Submitted
19 Nov 2024
Accepted
07 Jan 2025
First published
08 Jan 2025
This article is Open Access
Creative Commons BY license

Digital Discovery, 2025,4, 666-682

ULaMDyn: enhancing excited-state dynamics analysis through streamlined unsupervised learning

M. Pinheiro, M. de Oliveira Bispo, R. S. Mattos, M. Telles do Casal, B. Chandra Garain, J. M. Toldo, S. Mukherjee and M. Barbatti, Digital Discovery, 2025, 4, 666 DOI: 10.1039/D4DD00374H

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