Anubhab Chakraborty, Amol Thakkar, et al.
ChemRxiv
The quest for generating novel chemistry knowledge is critical in scientific advancement, and machine learning (ML) has emerged as an asset in this pursuit. Through interpolation among learned patterns, ML can tackle tasks that were previously deemed demanding to machines. This distinctive capacity of ML provides invaluable aid to bench chemists in their daily work. However, current ML tools are typically designed to prioritize experiments with the highest likelihood of success, i.e., higher predictive confidence. In this perspective, we build on current trends that suggest a future in which ML could be just as beneficial in exploring uncharted search spaces through simulated curiosity. We discuss how low and ‘negative’ data can catalyse one-/few-shot learning, and how the broader use of curious ML and novelty detection algorithms can propel the next wave of chemical discoveries. We anticipate that ML for curiosity-driven research will help the community overcome potentially biased assumptions and uncover unexpected findings in the chemical sciences at an accelerated pace.
Anubhab Chakraborty, Amol Thakkar, et al.
ChemRxiv
Alessandra Toniato, Mara Graziani, et al.
ACS Fall 2024
Marvin Alberts, Teodoro Laino
ACS Fall 2025
Carlo Pignedoli, Teodoro Laino, et al.
European Physical Journal B