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CausalEarth



CausalEarth is an interdisciplinary ERC Starting grant, aiming to improve our understanding of the causal interdependencies between major drivers (modes) of climate variability by developing novel machine learning-based causal inference methods for both observations and model data. The modes' interdependencies are characterized by common drivers, indirect effects, nonlinearities, nonstationarity, and all these between highly complex spatio-temporal phenomena. CausalEarth will develop causal inference methods that account for such complex characteristics and apply them to observational and climate model data to improve our understanding of the climate system and climate change.

 

Start/End:

2021/2026

Project Leader:

Jakob Runge

 


Current Projects
CausalAnomalies
CausalEarth
XAIDA
iMIRACLI
CausalFlood
Causal Inference
Related Topics
Cybernetics, Artificial Intelligence and Robotics
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