WP-MIP: An Artificial Intelligence, Hybrid and Physically Based Model Intercomparison Project for Weather Prediction
Ron McTaggart-Cowan, Linus Magnusson, Inna Polichtchouk, Duncan Ackerley, Martin Koehler, Barbara Casati, Jan-Huey Chen, Debra Hudson, Masashi Ujiie, Nurizana Amir Aziz, Massimo Bonavita, Zied Ben Bouallegue, Catherine de Burgh-Day, Stephane Chamberland, Kyounngmi Cho

TL;DR
WP-MIP is a collaborative project creating a database of physically based, machine-learning, and hybrid weather models to evaluate and improve forecasting accuracy and consistency globally.
Contribution
It establishes a centralized database for model comparison, enabling assessment of different weather prediction approaches and guiding future model development.
Findings
Development of AI-ready verification techniques
Comparison of physically based, machine-learning, and hybrid models
Identification of strengths and weaknesses of each prediction system
Abstract
Rapid progress in the field of machine-learning for weather prediction has led to the emergence of algorithms whose forecasting skill can exceed that of traditional physically based models. This development represents an opportunity to improve the quality of forecasting services provided by operational centers, particularly given the speed at which machine-learning based models generate predictions. Despite the clear promise of these systems, questions remain about the ability of the current generation of machine-learning models to generate physically consistent predictions of the full suite of required forecast fields under all conditions. Answering these questions will require careful comparisons between the well-understood physically based models, current state-of-the-art machine-learning models, and the hybrid models that combine elements of these two archetypes. The Weather…
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