CoDiCast: Conditional Diffusion Model for Global Weather Prediction with Uncertainty Quantification
Jimeng Shi, Bowen Jin, Jiawei Han, Sundararaman Gopalakrishnan, Giri, Narasimhan

TL;DR
CoDiCast is a novel conditional diffusion model that generates accurate 6-day global weather forecasts with uncertainty quantification, achieving high efficiency and outperforming existing data-driven methods.
Contribution
This work introduces CoDiCast, the first diffusion-based model for weather prediction that combines accuracy, uncertainty quantification, and computational efficiency.
Findings
Outperforms existing data-driven methods in accuracy.
Generates 6-day forecasts in about 12 minutes on a commodity GPU.
Effectively quantifies uncertainty through ensemble sampling.
Abstract
Accurate weather forecasting is critical for science and society. Yet, existing methods have not managed to simultaneously have the properties of high accuracy, low uncertainty, and high computational efficiency. On one hand, to quantify the uncertainty in weather predictions, the strategy of ensemble forecast (i.e., generating a set of diverse predictions) is often employed. However, traditional ensemble numerical weather prediction (NWP) is computationally intensive. On the other hand, most existing machine learning-based weather prediction (MLWP) approaches are efficient and accurate. Nevertheless, they are deterministic and cannot capture the uncertainty of weather forecasting. In this work, we propose CoDiCast, a conditional diffusion model to generate accurate global weather prediction, while achieving uncertainty quantification with ensemble forecasts and modest computational…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Meteorological Phenomena and Simulations · Neural Networks and Applications
MethodsSparse Evolutionary Training · Diffusion
