➀ Researchers from IISc and UCL have developed a machine learning method using transfer learning to predict material properties; ➁ The method is particularly useful for applications like semiconductors and energy storage; ➂ The study employs Graph Neural Networks (GNNs) and the Multi-property Pre-Training (MPT) framework to enhance predictive power.
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