Predicting Bond Energies with AI

in #ai7 years ago

Predicting-Bond-Energies.gif

University of Notre Dame researchers developed a deep learning-based system that can accurately determine bond energies.

“Neural networks can be used to make quantitative models of chemical concepts that are not possible with just quantum mechanics,” explains John Parkhill, Assistant Professor of Chemistry & Biochemistry at the University of Notre Dame in Indiana and co-author of the paper. “[Before], I got asked all the time: ‘How much stronger is this bond?’ […] Now I can answer that question, because my machine learnt chemical bonding concepts.”

Using Tesla K80 GPUs and the cuDNN-accelerated TensorFlow deep learning framework, Parkhill and his team trained their neural network on a database of over 130,000 molecules. The trained Bonds-in-Molecules Neural Network (BIM-NN) is able to make predictions of relative bond strengths as well as a trained synthetic chemist.“[Our network] predicts [data] quantitatively and reproducibly. It saves chemists from the impossible tedium of predicting an energy a billion times,” said Parkhill in regards to their software replacing trained chemists.

Sort:  

Nice to see an AI application in natural science : ) seldom see any news about applying machine learning techniques in chemistry. The atomic world is really mystery and has a lot yet to be explored. I know the field bioinformatics where scientists apply data mining skills in studying DNA profiling and sth like that. Would be lovely to see more about this : )

Thanx @manfredcml. Stay tuned