biomod2
Species Distribution Modeler
A software framework for ensemble forecasting of species distributions and model calibration in ecology.
BIOMOD is a computer platform for ensemble forecasting of species distributions, enabling the treatment of a range of methodological uncertainties in models and the examination of species-environment relationships.
92 stars
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22 forks
Language: R
last commit: 3 months ago
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