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I'm surprised by how long it takes R to read in a specific line from a large file (11GB+). For example:

> t0 = Sys.time()
> read.table('data.csv', skip=5000000, nrows=1, sep=',')
      V1       V2 V3 V4 V5   V6    V7
1 19.062 56.71047  1 16  8 2006 56281
> print(Sys.time() - t0)
Time difference of 49.68314 secs

OSX terminal can return a specific line in an instant. Does anyone know a more efficient way in R?

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4  
It's inefficient because read.table calls readLines(file, skip) which actually parses the lines and reads into R, then throws them away. To be more efficient I think you'd have to right some C code that seek()d through the connection until you saw enough newlines (and you'd need to using buffering appropriately to be fast) –  hadley Aug 14 '13 at 15:14

1 Answer 1

up vote 16 down vote accepted

Well you can use something like this

 dat <- read.table(pipe("sed -n -e'5000001p' data.csv"), sep=',')

to read just the line extracted with other shell tools.

Also note that system.time(someOps) is an easier way to measure time.

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Thanks Dirk. This formula works for me: dat <- read.table(pipe("sed '5000000q;d' data.csv"), sep=',') –  geotheory Aug 14 '13 at 15:33
    
Or for a range: read.table(pipe("sed -n '5000010q;5000000,5000010p' data.csv"), sep=',') –  geotheory Aug 14 '13 at 15:41
    
Sorry, missed the p after the address. Now corrected. If you know the range, both sed and awk ofter a multitude of choices. –  Dirk Eddelbuettel Aug 14 '13 at 15:46

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