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An R package that aims at creating an interface between software utilities in snowpack and avalanche research that are being developed in R and python.
Related R packages:
Python utilities embedded here:
Utilities developed by other research teams, but translated into native R:
Since this package employs python code next to R code, its installation can be slightly more challenging than standard R packages. In the following you will get a brief overview of your installation options.
This package depends on the R package reticulate
, which
was designed to handle the interface between python and R. In most
instances, reticulate
will successfully guide you through
an interactive installation session to setup the interface correctly. It
is capable of locating and linking your existing python installation, or
if there is no python installed on your machine, it will prompt you/
guide you through a process to install miniconda, which in turn manages
your python installation.
If you have python installed already (either with miniconda or pip),
in each R session you can specify preferred python environments to be
activated (see ?reticulate::use_python
). If you don’t
specify an environment, reticulate will search for one that satisfies
the python dependencies of this R package. If it doesn’t find such an
environment, it will automatically create a new one called
‘r-reticulate’ and will install the required dependencies (Note that
this automated step will often fail, see below for troubleshooting). All
R and python dependencies are listed in the DESCRIPTION file. More
in-depth information about reticulate
, its installation,
and the interface between python and R in general can be found at
https://rstudio.github.io/reticulate/.
In case the automated installation procedure fails on your system, you can use the following sequence of R commands to setup the package manually. This sequence of commands was used to successfully install the package on an Amazon server for operational use.
## install R package reticulate:
install.packages('reticulate')
## manually install miniconda (for python) with required dependencies from within R:
reticulate::install_miniconda()
reticulate::py_install('joblib')
reticulate::py_install('numpy')
reticulate::py_install('pandas')
reticulate::py_install('scikit-learn==0.22.1')
## see DESCRIPTION file for any additional dependencies
## and `?reticulate::py_install` for additional arguments to the installation, e.g. pip = TRUE
## install sarp.snowprofile.pyface from bitbucket repository
install_bitbucket('sfu-arp/sarp.snowprofile.pyface')
For additional tips and examples on how to install this package on a
HPC cluster that manages python with pip
, such as Compute
Canada’s cluster ‘Cedar’, see
sarp.snowprofile.pyface/inst/hpc_setup/README.md
.
After the successful installation of
sarp.snowprofile.pyface
, you can ignore the fact that some
of its code runs in python instead of R. You can therefore relax and use
the corresponding R functions from this package. However, if you do want
to include some python functions into your own scripts, check out the
two files test.R
and test.py
in
inst/python
to familiarize yourself with intermingling the
two languages.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.