Decoding complexity: how machine learning is redefining scientific discovery
Abstract
As modern scientific instruments generate vast amounts of data and the volume of information in the scientific literature continues to grow, machine learning (ML) has become an essential tool for organising, analysing, and interpreting these complex datasets. This paper explores the transformative role of ML in accelerating breakthroughs across a range of scientific disciplines. By presenting key examples -- such as brain mapping and exoplanet detection -- we demonstrate how ML is reshaping scientific research. We also explore different scenarios where different levels of knowledge of the underlying phenomenon are available, identifying strategies to overcome limitations and unlock the full potential of ML. Despite its advances, the growing reliance on ML poses challenges for research applications and rigorous validation of discoveries. We argue that even with these challenges, ML is poised to disrupt traditional methodologies and advance the boundaries of knowledge by enabling researchers to tackle increasingly complex problems. Thus, the scientific community can move beyond the necessary traditional oversimplifications to embrace the full complexity of natural systems, ultimately paving the way for interdisciplinary breakthroughs and innovative solutions to humanity's most pressing challenges.
Cite
@article{arxiv.2405.04161,
title = {Decoding complexity: how machine learning is redefining scientific discovery},
author = {Ricardo Vinuesa and Paola Cinnella and Jean Rabault and Hossein Azizpour and Stefan Bauer and Bingni W. Brunton and Arne Elofsson and Elias Jarlebring and Hedvig Kjellstrom and Stefano Markidis and David Marlevi and Javier Garcia-Martinez and Steven L. Brunton},
journal= {arXiv preprint arXiv:2405.04161},
year = {2025}
}