I'm using R's caret package to do modeling for Coursera class on machine learning.
I'm currently building Random Forest with 500 trees on a data set of 11k observations and 40 features.
It took about 3 hours for single core implementation to compute results and I'm experimenting with multi-core implementation right now (code below)
library(parallel) library(caret) library(doParallel) library(foreach) cl <- makePSOCKcluster(4) clusterEvalQ(cl, library(foreach)) registerDoParallel(cl) trCtrl <- trainControl(allowParallel = TRUE) modFit2 <- train(classe~ ., data=training, trControl = trCtrl, method="parRF", prox=TRUE, ntree = 500)
Now my question is this: Is there a way to view progress on build model during run-time? Is there a package/implementation of parallelized RF that outputs for example progress on number of trees built as it run?
Obvious question is: why do I need to know? Cant I just wait this hour or two for results? It wont be faster but might be slower that way!
I have a lot of models to build for my class and I dont want to spend few hours on each model and wonder if it is running or not. I want to confirm that it is building trees, stop execution and schedule it for the night when I will run full models. I will be running different configurations of parameters for RF and also some other time intensive models so I would rather spend my day-time on writing code while leave my computer on the mercy of running computation full speed when I'm sleeping (my browser is barely working right now :P as both my RAM and CPU are almost at 100%)