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I have a ~20,000x20,000 data, how do i convert the from data.table() to a matrix efficiently in terms of speed and memory?

I tried m = as.matrix(dt) but it takes very long with many warnings. df = data.frame(dt) takes very long and result in reaching memory limits as well.

Is there any efficient way to do this? Or, simply a function in data.table which returns dt as as matrix form(as required to feed into a statistical model using the glmnet package)?

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Please provide a reproducible example. – Joshua Ulrich Oct 2 '12 at 14:11
can you give a taste of what your data looks like (use dput(subsetofyourdata))? What were the warnings you saw when you tried as.matrix? – Justin Oct 2 '12 at 14:11
can you put the structure of your table in the question? – Null-Hypothesis Oct 2 '12 at 14:12
@Null-Hypothesis dt contains 1 character column (key) and integers for the rest. – Gibson Gay Oct 2 '12 at 15:20
@Chase Thanks alot, I agree data.table is super awesome. I have made an error on my part to include the character column into the matrix, which elevated the matrix's class to character for all columns. removing this column allowed a integer matrix to be made and it converted successfully without errors/warnings and ran the model fine.:) Thank you for all your help though, I will certainly keep Amazon EC2 in mind! – Gibson Gay Oct 2 '12 at 15:55

1 Answer 1

Just to answer an open question.
According to the comments the issue was related to limited memory which was not enough to handle as.matrix function.
In such case you should consider to use amazon EC2.
There is a good tutorial by Matt available here: Amazon EC2 for beginners

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