mesogeos
Wildfire predictor
A multi-purpose dataset and code repository for training deep learning models to predict wildfire behavior in the Mediterranean region.
A multi-purpose dataset for data-driven wildfire modeling in the Mediterranean. Deep Learning models for wildfire modeling, e.g. danger forecasting, burned area prediction, etc
46 stars
3 watching
9 forks
Language: Jupyter Notebook
last commit: about 1 year ago
Linked from 1 awesome list
datacubedeep-learningforestsmediterraneanwildfire-forecastingzarr
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