A unified active learning framework for photosensitizer design

Abstract

The design of high-performance photosensitizers for next-generation photovoltaic and clean energy applications remains a formidable challenge due to the vast chemical space, competing photophysical trade-offs, and computational limitations of traditional quantum chemistry methods. While machine learning offers potential solutions, existing approaches suffer from data scarcity and inefficient exploration of molecular configurations. This work introduces a unified active learning framework that systematically integrates semi-empirical quantum calculations with adaptive molecular screening strategies to accelerate photosensitizer discovery. Our methodology combines three principal components: (1) A hybrid quantum mechanics/machine learning pipeline generating a chemically diverse molecular dataset while maintaining quantum chemical accuracy at significantly reduced computational costs; (2) a graph neural network architecture and uncertainty quantification; (3) Novel acquisition strategies that dynamically balance broad chemical space exploration with targeted optimization of photophysical objectives. The framework demonstrates superior performance in predicting critical energy levels (T1/S1) compared to conventional screening approaches, while effectively prioritizing synthetically feasible candidates. By open-sourcing both the curated molecular dataset and implementation tools, this work establishes an extensible platform for data-driven discovery of optoelectronic materials, with immediate applications in solar energy conversion and beyond.

Graphical abstract: A unified active learning framework for photosensitizer design

Supplementary files

Article information

Article type
Edge Article
Submitted
30 Jul 2025
Accepted
09 Nov 2025
First published
10 Nov 2025
This article is Open Access

All publication charges for this article have been paid for by the Royal Society of Chemistry
Creative Commons BY-NC license

Chem. Sci., 2026, Advance Article

A unified active learning framework for photosensitizer design

Y. Chen, S. Verma, K. P. Greenman, H. Yin, Z. Wang, L. Wang, J. Li, R. Gómez-Bombarelli, A. Walsh and X. Wang, Chem. Sci., 2026, Advance Article , DOI: 10.1039/D5SC05749C

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