boyanangelov/sdmbench
Benchmarking Species Distribution Models
This tool helps ecologists and conservation scientists efficiently evaluate different Species Distribution Models (SDMs) for a specific species. You input species occurrence data (either downloaded or your own CSV) and environmental data, and it outputs a benchmarked analysis showing which model and data processing combination has the highest predictive power, along with a habitat suitability map. Researchers can quickly test prototypes and avoid common model selection issues.
Use this if you need to reliably predict where a species might live, understand the impact of climate change on species, plan natural reserves, or monitor invasive species by finding the best-performing distribution model.
Not ideal if you primarily work with custom occurrence data and require mapping functionality for those models, as it's currently limited.
Stars
19
Forks
2
Language
R
License
MIT
Category
Last pushed
Mar 16, 2026
Commits (30d)
0
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