DeepMind's GNoME Unveils Structures of Two Million New Materials

Recently, Google DeepMind researchers have introduced a groundbreaking AI tool, GNoME, predicting structures of over 2 million materials, offering vast implications across multiple industries, including renewable energy, semiconductor design, and computing.

  • GNoME elevates 'stable materials' knowledge tenfold, critical for applications like computer chips and batteries, with 381,000 predicted to be most stable from the 2.2M structures.

AI Mechanism of GNoME

  • Graph Neural Network (GNN): GNoME, a graph neural network model, interprets input data as a graph, resembling atom connections, allowing predictions at atomic bond levels.
  • Active Learning Strategy: Trained using active learning, GNoME expands its dataset and improves precision from 50% to ....
Do You Want to Read More?
Subscribe Now

To get access to detailed content

Already a Member? Login here


Take Annual Subscription and get the following Advantage
The annual members of the Civil Services Chronicle can read the monthly content of the magazine as well as the Chronicle magazine archives.
Readers can study all the material since 2018 of the Civil Services Chronicle monthly issue in the form of Chronicle magazine archives.