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Property Prediction

Property prediction involves forecasting or estimating a molecule's inherent physical and chemical properties based on information derived from its structural characteristics. It facilitates high-throughput evaluation of an extensive array of molecular properties, enabling the virtual screening of compounds. Additionally, it provides the means to predict the unknown attributes of new molecules, thereby bolstering research efficiency and reducing development times.

Papers

Showing 261270 of 691 papers

TitleStatusHype
Predicting performance-related properties of refrigerant based on tailored small-molecule functional group contribution0
Machine Learning - Driven Materials Discovery: Unlocking Next-Generation Functional Materials -- A minireview0
Lyra: An Efficient and Expressive Subquadratic Architecture for Modeling Biological Sequences0
Chem42: a Family of chemical Language Models for Target-aware Ligand Generation0
MetaFAP: Meta-Learning for Frequency Agnostic Prediction of Metasurface Properties0
Ensemble Knowledge Distillation for Machine Learning Interatomic Potentials0
A Materials Map Integrating Experimental and Computational Data via Graph-Based Machine Learning for Enhanced Materials Discovery0
A Generalist Cross-Domain Molecular Learning Framework for Structure-Based Drug Discovery0
Transformers for molecular property prediction: Domain adaptation efficiently improves performanceCode0
Integrating Predictive and Generative Capabilities by Latent Space Design via the DKL-VAE ModelCode0
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