Communications Materials (Jul 2020)
Integrating multiple materials science projects in a single neural network
Abstract
Traditionally, machine learning for materials science is based on database-specific models and is limited in the number of predictable parameters. Here, a versatile graph-based neural network can integrate multiple data sources, allowing the prediction of more than 40 parameters simultaneously.