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Polymer informatics at-scale with multitask graph neural networks

About

Artificial intelligence-based methods are becoming increasingly effective at screening libraries of polymers down to a selection that is manageable for experimental inquiry. The vast majority of presently adopted approaches for polymer screening rely on handcrafted chemostructural features extracted from polymer repeat units -- a burdensome task as polymer libraries, which approximate the polymer chemical search space, progressively grow over time. Here, we demonstrate that directly "machine-learning" important features from a polymer repeat unit is a cheap and viable alternative to extracting expensive features by hand. Our approach -- based on graph neural networks, multitask learning, and other advanced deep learning techniques -- speeds up feature extraction by one to two orders of magnitude relative to presently adopted handcrafted methods without compromising model accuracy for a variety of polymer property prediction tasks. We anticipate that our approach, which unlocks the screening of truly massive polymer libraries at scale, will enable more sophisticated and large scale screening technologies in the field of polymer informatics.

Rishi Gurnani, Christopher Kuenneth, Aubrey Toland, Rampi Ramprasad• 2022

Related benchmarks

TaskDatasetResultRank
Ionization energy (Eib) predictionpolymer electronic property dataset (test)
RMSE (eV)0.577
18
Molecular Property Prediction (etac)Polymer
RMSE0.093
10
Molecular Property Prediction (Ei)Polymer
RMSE0.54
10
Molecular Property Prediction (Eea)Polymer
RMSE0.341
10
Molecular Property Prediction (Xc)Polymer
RMSE18.6
10
Electron affinity (Eea) predictionpolymer electronic/optical/physical property dataset (test)
RMSE (eV)0.309
9
Polymer property predictionEea (Electron affinity) S1 (test)
Test R20.917
9
Polymer property predictionNc Refractive index S1 (test)
R2 Score (Test)0.778
9
Refractive index (Nc) predictionpolymer electronic/optical/physical property dataset (test)
RMSE (Nc)0.109
9
Band gap (Egb) predictionpolymer electronic/optical/physical property dataset (test)
RMSE (eV)0.597
9
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