{pmice}, an experimental package for missing data imputation in parallel using {mice} and {furrr}
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Yesterday I wrote this blog post which showed how one could use {furrr}
and {mice}
to impute missing data in parallel, thus speeding up the process tremendously.
To make using this snippet of code easier, I quickly cobbled together an experimental package called {pmice}
that you can install from Github:
devtools::install_github("b-rodrigues/pmice")
For now, it returns a list of mids
objects and not a mids
object like mice::mice()
does, but I’ll be working on it. Contributions welcome!
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