Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'm trying to input a large tab-delimited file (around 2GB) using the fread function in package data.table. However, because it's so large, it doesn't fit completely in memory. I tried to input it in chunks by using the skip and nrow arguments such as:

chunk.size = 1e6
done = FALSE
chunk = 1
    temp = fread("myfile.txt",skip=(chunk-1)*chunk.size,nrow=chunk.size-1)
    #do something to temp
    chunk = chunk + 1
    if(nrow(temp)<2) done = TRUE

In the case above, I'm reading in 1 million rows at a time, performing a calculation on them, and then getting the next million, etc. The problem with this code is that after every chunk is retrieved, fread needs to start scanning the file from the very beginning since after every loop iteration, skip increases by a million. As a result, after every chunk, fread takes longer and longer to actually get to the next chunk making this very inefficient.

Is there a way to tell fread to pause every say 1 million lines, and then continue reading from that point on without having to restart at the beginning? Any solutions, or should this be a new feature request?

share|improve this question
There's a similar FR here. I'll also link to this post. –  Arun Nov 11 '13 at 8:12
Thanks for pointing this out and linking! Looks like a top priority FR. –  FBC Nov 12 '13 at 5:05
I wanted to do the same thing I think it needs to be a new request. –  xiaodai Dec 11 '14 at 4:36
Had the same problem today –  user3375672 Dec 17 '14 at 16:49
@Arun Is there a FR on the new github page? I can't seem to find it –  Zach Aug 20 at 22:55

1 Answer 1

You should use the LaF package. This introduces a sort of pointer on your data, thus avoiding the - for very large data - annoying behaviour of reading the whole file. As far as I get it fread() in data.table pckg need to know total number of rows, which takes time for GB data. Using pointer in LaF you can go to every line(s) you want; and read in chunks of data that you can apply your function on, then move on to next chunk of data. On my small PC I ran trough a 25 GB csv-file in steps of 10e6 lines and extracted the totally ~5e6 observations needed - each 10e6 chunk took 30 seconds.

share|improve this answer
Can you provide a code example? –  FBC Aug 20 at 20:47

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.