Machine learning for molecular and materials science
- PMID: 30046072
- DOI: 10.1038/s41586-018-0337-2
Machine learning for molecular and materials science
Abstract
Here we summarize recent progress in machine learning for the chemical sciences. We outline machine-learning techniques that are suitable for addressing research questions in this domain, as well as future directions for the field. We envisage a future in which the design, synthesis, characterization and application of molecules and materials is accelerated by artificial intelligence.
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