Materials Property Prediction Based on Graph Neural Network and Multi-Task Learning

Masatoshi Hanai
Information Technology Center
Project Research Associate
Materials property prediction via computational physical simulation and machine learning is an essential task for materials discovery. This study focuses on the development of new machine learning methods based on the graph neural network and multi-task learning to effectively utilize small data sets as well as large data sets.
Machine Learning Model for Materials Property Prediction & Multi-task Learning

Research collaborators

School of Engineering, The University of Tokyo

SDGs

  • SDG7 Ensure access to affordable, reliable, sustainable and modern energy for all

Contact

  • Masatoshi Hanai
  • Email: hanai[at]ds.itc.u-tokyo.ac.jp
    ※[at]=@
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