Luíz Fernando Esser
caretSDM is a under development R package that uses the powerful caret package as the main engine to obtain Species Distribution Models. As caret is a packaged turned to build machine learning models, caretSDM has a strong focus on this approach.
You can install the development version of caretSDM from GitHub with:
install.packages("devtools")
devtools::install_github("luizesser/caretSDM")The package is also available on CRAN. Users are able to install it using the following code:
install.packages("caretSDM")caretSDM is vastly documented and has included some objects that can guide your data management. If some of your data or code seem to be wrong, try to take a look at those objects or the articles in the website:
Objects
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biocBioclimatic variables for current scenario in stars class. -
rivsHydrological variables for current scenario in sf class. -
occAraucaria angustifolia occurrence data as a dataframe. -
salmSalminus brasiliensis occurrence data as a dataframe. -
paranaShapefile to use insdm_areain Simple Feature class. -
scenBioclimatic variables for future scenarios in stars class. -
scen_rsBioclimatic variables for invasive assessments vignette. -
algorithmsDataframe with characteristics from every algorithm available in caretSDM.
Articles
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Adding New Algorithms to caretSDMdo not found your ideal algorithm already implemented? Here we show how to implement any custom algorithm in our package. -
caretSDM Workflow for Species Distribution Modelingis the main vignette for terrestrial species modeling, where we model the tree species Araucaria angustifolia. -
Concatenate functions in caretSDMshows how to build compact scripts, which is very useful to run your first tests. -
Projecting Non-native Distribution using SDMsa vignette demonstrating how to make invasiveness assessments. -
Modeling Species Distributions in Continental Water Bodiesis the main vignette for continental aquatic species modeling, where we model the fish species Salminus brasiliensis. -
Modeling Rare Species using Ensemble of Small Modelswe showcase how easy it is to apply SDMs to rare species with low number of records.
