25

I have a CSV file of size ~1 GB, and as my laptop is of basic configuration, I'm not able to open the file in Excel or R. But out of curiosity, I would like to get the number of rows in the file. How am I to do it, if at all I can do it?

  • 5
    Maybe just wc -l yourfile.csv from a command line prompt, or something? – joran Oct 2 '15 at 18:04
  • 3
    If the file size is 1 GB you should be able to import it. Of course, you shouldn't do this with read.table and friends. Use fread from package data.table. – Roland Oct 2 '15 at 18:05
  • so you're saying that nrow(read.csv("file.csv", header= T/F)) crashes R? And yes, fread certainly prefered – Alex W Oct 2 '15 at 18:05
  • 1
    @Alex Don't use read.csv with a 1 GB file. It's slow. – Roland Oct 2 '15 at 18:05
  • If all methods crash, you can use csv splitter to break the big file into chunks.. Not elegant, but might work – Alexey Ferapontov Oct 2 '15 at 18:06
37

For Linux/Unix:

wc -l filename

For Windows:

find /c /v "A String that is extremely unlikely to occur" filename
  • Regarding the "Windows" solution, note that: (1) this is run from cmd.exe; (2) filename includes the full path to the file (& turn the slashes around); (3) if there's a header, that 'row' is counted, ie, a file with a header + 10 rows will result in returning 11. (None of this detracts from the quality of the answer.) – gung - Reinstate Monica Dec 10 '19 at 22:10
22

Option 1:

Through a file connection, count.fields() counts the number of fields per line of the file based on some sep value (that we don't care about here). So if we take the length of that result, theoretically we should end up with the number of lines (and rows) in the file.

length(count.fields(filename))

If you have a header row, you can skip it with skip = 1

length(count.fields(filename, skip = 1))

There are other arguments that you can adjust for your specific needs, like skipping blank lines.

args(count.fields)
# function (file, sep = "", quote = "\"'", skip = 0, blank.lines.skip = TRUE, 
#     comment.char = "#") 
# NULL

See help(count.fields) for more.

It's not too bad as far as speed goes. I tested it on one of my baseball files that contains 99846 rows.

nrow(data.table::fread("Batting.csv"))
# [1] 99846

system.time({ l <- length(count.fields("Batting.csv", skip = 1)) })
#   user  system elapsed 
#  0.528   0.000   0.503 

l
# [1] 99846
file.info("Batting.csv")$size
# [1] 6153740

(The more efficient) Option 2: Another idea is to use data.table::fread() to read the first column only, then take the number of rows. This would be very fast.

system.time(nrow(fread("Batting.csv", select = 1L)))
#   user  system elapsed 
#  0.063   0.000   0.063 
  • #option 2 is better. data.table for the win. – Neal Barsch May 24 '19 at 22:39
3

Estimate number of lines based on size of first 1000 lines

size1000  <- sum(nchar(readLines(con = "dgrp2.tgeno", n = 1000)))

sizetotal <- file.size("dgrp2.tgeno")
1000 *  sizetotal / size1000

This is usually good enough for most purposes - and is a lot faster for huge files.

2

Here is something I used:

testcon <- file("xyzfile.csv",open="r")
readsizeof <- 20000
nooflines <- 0
( while((linesread <- length(readLines(testcon,readsizeof))) > 0 ) 
nooflines <- nooflines+linesread )
close(testcon)
nooflines

Check out this post for more: https://www.r-bloggers.com/easy-way-of-determining-number-of-linesrecords-in-a-given-large-file-using-r/

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