53

I would like to read a text file in R, line by line, using a for loop and with the length of the file. The problem is that it only prints character(0). This is the code:

fileName="up_down.txt"
con=file(fileName,open="r")
line=readLines(con) 
long=length(line)
for (i in 1:long){
    linn=readLines(con,1)
    print(linn)
}
close(con)
  • 11
    The problem is that you read the entire file in (line=readLines(con)) and then you continue reading the file inside the loop; at the point, there is nothing left to read. – Brian Diggs Sep 27 '12 at 18:31
  • If you are looking for a way to load only one line at a time from a (maybe large) file, than the currently accepted answer is not solving your problem. If, instead, you just want to process the content of a file line by line, regardless of how you load it, maybe the question should be better formulated. – Francesco Napolitano Mar 1 '17 at 13:19
114

You should take care with readLines(...) and big files. Reading all lines at memory can be risky. Below is a example of how to read file and process just one line at time:

processFile = function(filepath) {
  con = file(filepath, "r")
  while ( TRUE ) {
    line = readLines(con, n = 1)
    if ( length(line) == 0 ) {
      break
    }
    print(line)
  }

  close(con)
}

Understand the risk of reading a line at memory too. Big files without line breaks can fill your memory too.

  • 8
    This should really be the accepted answer, as the others will run into issues with large files. – theduke Sep 7 '16 at 8:45
  • 2
    This is suggested to be a right way to parse large file line by line. Other answers read in all lines into the memory, and then loop that object in the memory, which is absolutely different from this. – Nan Zhou Mar 14 '17 at 9:09
  • readLines documentation: "If the connection is open it is read from its current position." It's what makes the loop work. – San Nov 24 '18 at 14:45
42

Just use readLines on your file:

R> res <- readLines(system.file("DESCRIPTION", package="MASS"))
R> length(res)
[1] 27
R> res
 [1] "Package: MASS"                                                                  
 [2] "Priority: recommended"                                                          
 [3] "Version: 7.3-18"                                                                
 [4] "Date: 2012-05-28"                                                               
 [5] "Revision: $Rev: 3167 $"                                                         
 [6] "Depends: R (>= 2.14.0), grDevices, graphics, stats, utils"                      
 [7] "Suggests: lattice, nlme, nnet, survival"                                        
 [8] "Authors@R: c(person(\"Brian\", \"Ripley\", role = c(\"aut\", \"cre\", \"cph\"),"
 [9] "        email = \"ripley@stats.ox.ac.uk\"), person(\"Kurt\", \"Hornik\", role"  
[10] "        = \"trl\", comment = \"partial port ca 1998\"), person(\"Albrecht\","   
[11] "        \"Gebhardt\", role = \"trl\", comment = \"partial port ca 1998\"),"     
[12] "        person(\"David\", \"Firth\", role = \"ctb\"))"                          
[13] "Description: Functions and datasets to support Venables and Ripley,"            
[14] "        'Modern Applied Statistics with S' (4th edition, 2002)."                
[15] "Title: Support Functions and Datasets for Venables and Ripley's MASS"           
[16] "License: GPL-2 | GPL-3"                                                         
[17] "URL: http://www.stats.ox.ac.uk/pub/MASS4/"                                      
[18] "LazyData: yes"                                                                  
[19] "Packaged: 2012-05-28 08:47:38 UTC; ripley"                                      
[20] "Author: Brian Ripley [aut, cre, cph], Kurt Hornik [trl] (partial port"          
[21] "        ca 1998), Albrecht Gebhardt [trl] (partial port ca 1998), David"        
[22] "        Firth [ctb]"                                                            
[23] "Maintainer: Brian Ripley <ripley@stats.ox.ac.uk>"                               
[24] "Repository: CRAN"                                                               
[25] "Date/Publication: 2012-05-28 08:53:03"                                          
[26] "Built: R 2.15.1; x86_64-pc-mingw32; 2012-06-22 14:16:09 UTC; windows"           
[27] "Archs: i386, x64"                                                               
R> 

There is an entire manual devoted to this...

  • I am using readLines, but I just dont get why I get that error – Layla Sep 27 '12 at 17:20
  • 7
    When you say there is a whole manual devoted to it, you should also tell us which manual it is. – U. Windl Jan 23 '18 at 15:26
  • I got hold of a few examples here: statistical-programming.com/r-readlines-example ...and readLines really works the simplest, even with a simple code as fn <- readLines("fn.txt") ! – Partha D. May 29 '19 at 13:29
36

Here is the solution with a for loop. Importantly, it takes the one call to readLines out of the for loop so that it is not improperly called again and again. Here it is:

fileName <- "up_down.txt"
conn <- file(fileName,open="r")
linn <-readLines(conn)
for (i in 1:length(linn)){
   print(linn[i])
}
close(conn)
  • 2
    You don't need the for loop at all since you're printing the entire vector. Just print(linn) suffices. – Assad Ebrahim Apr 7 '14 at 4:41
  • 2
    Very good answer. In R "<-" is normally used in convention instead of "=" – Ryan Aug 1 '14 at 19:06
  • 4
    well what happens if you have a 30 gig file? – Chris Oct 19 '15 at 23:13
4

I write a code to read file line by line to meet my demand which different line have different data type follow articles: read-line-by-line-of-a-file-in-r and determining-number-of-linesrecords. And it should be a better solution for big file, I think. My R version (3.3.2).

con = file("pathtotargetfile", "r")
readsizeof<-2    # read size for one step to caculate number of lines in file
nooflines<-0     # number of lines
while((linesread<-length(readLines(con,readsizeof)))>0)    # calculate number of lines. Also a better solution for big file
  nooflines<-nooflines+linesread

con = file("pathtotargetfile", "r")    # open file again to variable con, since the cursor have went to the end of the file after caculating number of lines
typelist = list(0,'c',0,'c',0,0,'c',0)    # a list to specific the lines data type, which means the first line has same type with 0 (e.g. numeric)and second line has same type with 'c' (e.g. character). This meet my demand.
for(i in 1:nooflines) {
  tmp <- scan(file=con, nlines=1, what=typelist[[i]], quiet=TRUE)
  print(is.vector(tmp))
  print(tmp)
}
close(con)
2

I suggest you check out chunked and disk.frame. They both have functions for reading in CSVs chunk-by-chunk.

In particular, disk.frame::csv_to_disk.frame may be the function you are after?

  • Also checkout LaF package. chunked is actually a wrapper for LaF which makes things easier sometimes. – San Nov 24 '18 at 14:55
  • disk.frame looks great and it includes support for two of my favorite packages - data.table and fst which are among the most efficient of their kind. Can you kindly point out further documentation/examples of disk.frame other than that available in the github page. – San Nov 24 '18 at 16:24
  • @san i am writing them at the moment. You can check out the vignette folder or go into inst/fannie_mae for more examples – xiaodai Nov 24 '18 at 20:46
  • For storing larger than RAM data sets, disk.frame can be an alternative to MonetDbLite. I hope it makes to CRAN early. – San Nov 25 '18 at 7:33
  • there's more doc github.com/xiaodaigh/disk.frame and a vignette now @San rpubs.com/xiaodai/intro-disk-frame – xiaodai Feb 1 '19 at 23:32

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