Multihuntr/gff
A Global (near-coastal) Flood Forecasting (GFF) dataset
This project offers a global dataset for training and evaluating models that predict near-coastal flooding. It takes in historical flood data and outputs models capable of forecasting future flood events. Flood prediction specialists, hydrologists, or environmental engineers can use this to develop better early warning systems.
No commits in the last 6 months.
Use this if you need to train or test machine learning models for forecasting flood inundation in coastal or near-coastal regions worldwide.
Not ideal if you are looking for real-time operational flood forecasts or a tool for inland riverine flood prediction.
Stars
25
Forks
3
Language
Python
License
CC0-1.0
Category
Last pushed
Nov 19, 2024
Commits (30d)
0
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