Introducing Aurora: The first large-scale AI foundation model of the atmosphere
Aurora, a new AI foundation model from Microsoft Research, can transform our ability to predict and mitigate extreme weather events and the effects of climate change by enabling faster and more accurate weather forecasts than ever before.
https://www.microsoft.com/en-us/research/blog/introducing-aurora-the-first-large-scale-foundation-model-of-the-atmosphere/

Aurora: A Foundation Model of the Atmosphere
Deep learning foundation models are revolutionizing many facets of science by leveraging vast amounts of data to learn general-purpose representations that can be adapted to tackle diverse downstream tasks. Foundation models hold the promise to also transform our ability to model our planet and its subsystems by exploiting the vast expanse of Earth system data. Here we introduce Aurora, a large-scale foundation model of the atmosphere trained on over a million hours of diverse weather and climate data. Aurora leverages the strengths of the foundation modelling approach to produce operational forecasts for a wide variety of atmospheric prediction problems, including those with limited training data, heterogeneous variables, and extreme events. In under a minute, Aurora produces 5-day global air pollution predictions and 10-day high-resolution weather forecasts that outperform state-of-the-art classical simulation tools and the best specialized deep learning models. Taken together, these results indicate that foundation models can transform environmental forecasting.
https://arxiv.org/html/2405.13063v2
Aurora: A Foundation Model of the Atmosphere — Aurora: A Foundation Model of the Atmosphere
Welcome to the documentation of Aurora!
Here you will detailed instructions for using the model.
If you just want to see the model in action, you can skip to a full-fledged example that runs the model on ERA5.
For details on how exactly the model works, please see the paper on arXiv.
https://microsoft.github.io/aurora/intro.html

Seonglae Cho