ParticleGrid: Enabling Deep Learning using 3D Representation of Materials
Shehtab Zaman, Ethan Ferguson, Cecile Pereira, Denis Akhiyarov,, Mauricio Araya-Polo, Kenneth Chiu

TL;DR
ParticleGrid introduces a 3D representation for materials that enables deep learning models to predict molecular properties accurately and efficiently, bridging a gap in transferable representations for chemical structures.
Contribution
The paper presents ParticleGrid, a SIMD-optimized library for generating 3D material representations that integrate with deep learning frameworks, improving efficiency and accuracy in property prediction.
Findings
Achieved 0.006 MSE in molecular energy prediction
Nearly matched density functional theory accuracy
Reduced computational and memory requirements
Abstract
From AlexNet to Inception, autoencoders to diffusion models, the development of novel and powerful deep learning models and learning algorithms has proceeded at breakneck speeds. In part, we believe that rapid iteration of model architecture and learning techniques by a large community of researchers over a common representation of the underlying entities has resulted in transferable deep learning knowledge. As a result, model scale, accuracy, fidelity, and compute performance have dramatically increased in computer vision and natural language processing. On the other hand, the lack of a common representation for chemical structure has hampered similar progress. To enable transferable deep learning, we identify the need for a robust 3-dimensional representation of materials such as molecules and crystals. The goal is to enable both materials property prediction and materials generation…
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Taxonomy
TopicsMachine Learning in Materials Science · Hydrocarbon exploration and reservoir analysis · Graph Theory and Algorithms
MethodsLib · Diffusion
