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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

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