I have a big csv file and it takes ages to read. Can I read this in parallel in R using a package like "parallel" or related? I've tried using mclapply, but it is not working.

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    Hi, Have you checked out this post on SO? Also, check out fread in the data.table package. It might do what you need (but isn't in parallel). Commented Apr 29, 2015 at 15:50
  • What is big? Number of rows, columns, what is the size of CSV? Also, add your code, even if it is not working. I think you could use fread within mclapply and specify rownumber chunks.
    – zx8754
    Commented Apr 29, 2015 at 16:22
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    I was thinking that only using one core is a slow idea. Now using fread I can do it 5% of the time. It was a CSV file of 1.2GB, and with read.csv it took about 4-5 minutes and now just 14 seconds. Thanks Richard. I'll try to check if i can use fread() with mclapply zx, thanks.
    – Ansjovis86
    Commented Apr 29, 2015 at 20:38
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    @Ansjovis86 You can post what works best for you as an answer.
    – Frank
    Commented May 1, 2015 at 17:08
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    @Frank I wrote up my comment as an answer using the OP's comments. Commented May 1, 2015 at 18:52

1 Answer 1


Based upon the comment by the OP, fread from the data.table package worked. Here's the code:

dt <- fread("myFile.csv")

In the OP's case, read in time for a 1.2GB file with read.csv it took about 4-5 minutes and just 14 seconds with fread.

Update 29 January 2021: It appears that fread() now works in parallel per a Tweet from the package's creator.

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