Litcius/Paper detail

Advances in the Design and Discovery of Organic Semiconductors Aided by Machine Learning

Moses Ogbaje, Vinayak Bhat, Chad Risko

2025Annual Review of Materials Research13 citationsDOIOpen Access PDF

Abstract

Organic semiconductors (OSC) offer the capacity for distinctive and finely tuned electronic, optical, thermal, and mechanical properties, making them of interest across a range of energy generation and storage, sensor, lighting, display, and electronics applications. The pathway from molecular building block design to material, however, is complicated by complex synthesis/processing-structure-property-function relationships that are inherent to OSC. The adoption of artificial intelligence (AI) tools, including the subset of AI referred to as machine learning (ML), into the materials design and discovery pipeline offers significant potential to overcome the multifaceted roadblocks along this pathway. Here, we review recent advances in the application of AI/ML for OSC, with a focus on the development and use of ML. We present a brief primer on ML models and then highlight efforts wherein ML is used to predict molecular and material properties and discover new molecular building blocks and OSC.

Topics & Concepts

Organic semiconductorMaterials scienceNanotechnologySemiconductorEngineering physicsComputer scienceEngineeringOptoelectronicsMachine Learning in Materials ScienceConducting polymers and applications