I have the following data structure.
dat <- as.data.table(cbind(var1=rep(1:5, 200), var2=rep(c("gp1", "gp2"), each=500), as.data.frame(matrix(rnorm(5000, 0, 1),ncol=5))))
What I'd like to do is to perform a t.test between gp1 and gp2 grouped by var1. I have read through some other posts when there is only one column of data using something like:
dat[, .(p.value = t.test(V1 ~ var2, .SD)$p.val), by=.(var1)]
What I can't figure out for the life of me is how I can do this over all of the other columns (i.e. V2 to V5). The vignettes have been helpful in pointing out the use of lapply(.SD, somefunction) to iterate over the columns but in this case I am not quite sure how to make that work for me.
The example above is a toy example, I am actually working with millions of rows of data and multiple hundreds of columns, so speed is a concern. I am currently using a nested apply to iterate through the rows and columns and the function takes hours to run. I am hoping for something speedier.
It would be even better if I can do this between 2 different data.tables. (i.e. gp1 in its own data.table and gp2 in another).
Long time user of R, noob when it comes to data.table.
Any ideas would be very helpful.