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
bioc Bioclimatic variables for current scenario in
stars class.
rivs Hydrological variables for current scenario in
sf class.
occ Araucaria angustifolia occurrence data
as a dataframe.
salm Salminus brasiliensis occurrence data
as a dataframe.
parana Shapefile to use in sdm_area in
Simple Feature class.
scen Bioclimatic variables for future scenarios in
stars class.
scen_rs Bioclimatic variables for invasive
assessments vignette.
algorithms Dataframe with characteristics from every
algorithm available in caretSDM.
Articles
Adding New Algorithms to caretSDM do not found your
ideal algorithm already implemented? Here we show how to implement any
custom algorithm in our package.
caretSDM Workflow for Species Distribution Modeling
is the main vignette for terrestrial species modeling, where we model
the tree species Araucaria angustifolia.
Concatenate functions in caretSDM shows how to build
compact scripts, which is very useful to run your first tests.
Projecting Non-native Distribution using SDMs a
vignette demonstrating how to make invasiveness assessments.
Modeling Species Distributions in Continental Water Bodies
is the main vignette for continental aquatic species modeling, where we
model the fish species Salminus brasiliensis.
Modeling Rare Species using Ensemble of Small Models
we showcase how easy it is to apply SDMs to rare species with low number
of records.