Essentially I've got a large dataframe: 10,000,000x900 (rows,columns) and I'm trying to convert the class of each column in parallel. The end result needs to be a data.frame
Here's what I've got so far:
df is the dataframe already defined, all columns are a mixture of numeric and character classes
library(snow) cl=makeCluster(50,type="SOCK") cl.out=clusterApplyLB(cl,df,function(x)factor(x,exclude=NULL))
cl.out is a list of what I want, except what I need is for this to be as a data.frame class
So this is where I get stuck... do I try and combine all of the elements of cl.out into a data.frame which isn't going to be in parallel? (SLOW, time is an issue)
Can I implement something else with a different package? (foreach?)
Do I have to hard-code some c to get this done efficiently?
Any help would be appreciated.