While climate models provide insights for climate decision-making, their use is constrained by significant computational and technical demands. Although machine learning (ML) emulators offer a way to bypass the high computational costs, their effective use remains challenging. The hurdles are diverse, ranging from limited accessibility and a lack of specialized knowledge to a general mistrust of ML methods that are perceived as insufficiently physical. Here, we introduce a framework to overcome these barriers by integrating both climate science and machine learning perspectives. We find that designing easy-to-adopt emulators that address a clearly defined task and demonstrating their reliability offers a promising path for bridging the gap between our two fields.
@article{arxiv.2603.22320,
title = {Bridging the Gap Between Climate Science and Machine Learning in Climate Model Emulation},
author = {Luca Schmidt and Nina Effenberger},
journal= {arXiv preprint arXiv:2603.22320},
year = {2026}
}