Deep learning directed synthesis of fluid ferroelectric materials
Charles Parton-Barr, Stuart R. Berrow, Calum J. Gibb, Jordan Hobbs, Wanhe Jiang, Caitlin O'Brien, Will C. Ogle, Helen F. Gleeson, Richard J. Mandle

TL;DR
This paper presents a deep learning pipeline for designing and synthesizing new fluid ferroelectric materials, combining data-driven prediction, molecular generation, and experimental validation to accelerate discovery.
Contribution
It introduces a novel integrated deep learning approach that automates the design and synthesis of fluid ferroelectrics, advancing materials discovery methods.
Findings
Graph neural networks predict ferroelectric behavior with 95% accuracy.
11 new fluid ferroelectric candidates were successfully synthesized.
Experimental results confirmed the predicted ferroelectric transitions.
Abstract
Fluid ferroelectrics, a recently discovered class of liquid crystals that exhibit switchable, long-range polar order, offer opportunities in ultrafast electro-optic technologies, responsive soft matter, and next-generation energy materials. Yet their discovery has relied almost entirely on intuition and chance, limiting progress in the field. Here we develop and experimentally validate a deep-learning data-to-molecule pipeline that enables the targeted design and synthesis of new organic fluid ferroelectrics. We curate a comprehensive dataset of all known longitudinally polar liquid-crystal materials and train graph neural networks that predict ferroelectric behaviour with up to 95% accuracy and achieve root mean square errors as low as 11 K for transition temperatures. A graph variational autoencoder generates de novo molecular structures which are filtered using an ensemble of…
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