This is a follow up to a previous question about learning multiple models.
The use case is that I have multiple observations for each subject, and I want to train a model for each of them. See Hadley's excellent presentation on how to do this.
In short, this is possible to do using
purrr like so:
library(purrr) library(dplyr) library(fitdistrplus) dt %>% split(dt$subject_id) %>% map( ~ fitdist(.$observation, "norm"))
So since the model building is an embarrassingly parallel task, I was
purrr have an easy to use parallelization mechanism for such tasks (like a parallel
If these libraries don't provide easy parallelization could it be done using the classic R parallelization libraries (