1

I've got an input file like this:

/tmp/file-16
31361
999
/tmp/file-38
5673
413
/tmp/file-118
7210
450
/tmp/file-105
140910
2117
/tmp/file-76
25857
956
/tmp/file-99
34416
774
/tmp/file-48
21
22
/tmp/file-77
117652
1397
/tmp/file-197
33448
1057

That I want to load in R turning it into a 3-column data frame where every 3 lines will become a row like this:

/tmp/file-16 31361 999 
/tmp/file-38 5673 413 
/tmp/file-118 7210 450 
/tmp/file-105 140910 2117 
/tmp/file-76 25857 956 
/tmp/file-99 34416 774 
/tmp/file-48 21 22 
/tmp/file-77 117652 1397 
/tmp/file-197 33448 1057 

I need to plot the numbers in R anyway, so the shortest would be to do the transformation in R. How can I do that?

3

3 Answers 3

4

Suppose your data is in a file called test.txt, then you can use scan() to read the data line by line and use a suitable command to transform it in tabular form as you wish:

tmp <- scan("test.txt", "character")
tmp2 <- matrix(tmp, ncol = 3, byrow = TRUE)

The matrix() command with byrow = TRUE will return it in a sutiable format:

      [,1]            [,2]     [,3]  
 [1,] "/tmp/file-16"  "31361"  "999" 
 [2,] "/tmp/file-38"  "5673"   "413" 
 [3,] "/tmp/file-118" "7210"   "450" 
 [4,] "/tmp/file-105" "140910" "2117"
 [5,] "/tmp/file-76"  "25857"  "956" 
 [6,] "/tmp/file-99"  "34416"  "774" 
 [7,] "/tmp/file-48"  "21"     "22"  
 [8,] "/tmp/file-77"  "117652" "1397"
 [9,] "/tmp/file-197" "33448"  "1057"

Make sure to use as.data.frame() and as.numeric() before you use the data.

1

Another approach. It makes use of the what parameter, which can be passed a list to read multi-line records. Here is an extract of the relevant documentation.

what: the type of what gives the type of data to be read. The supported types are logical, integer, numeric, complex, character, raw and list. If what is a list, it is assumed that the lines of the data file are records each containing length(what) items (‘fields’) and the list components should have elements which are one of the first six types listed or NULL

y <- data.frame(scan('test.txt', 
 what = list(a = 'character', b = 'character', c = 'character')))

              a      b    c
1  /tmp/file-16  31361  999
2  /tmp/file-38   5673  413
3 /tmp/file-118   7210  450
4 /tmp/file-105 140910 2117
5  /tmp/file-76  25857  956
6  /tmp/file-99  34416  774
7  /tmp/file-48     21   22
8  /tmp/file-77 117652 1397
9 /tmp/file-197  33448 1057
2
  • looks like your example returns the numeric data as a factor. I don't think this is what the OP wanted. Perhaps using "numeric" for b and c or stringsAsFactors = FALSE in the call to data.frame with a further change of the data.type for the last two columns will be suitable. (the same problem applies to my answer if handing over the matrix to as.data.frame without further processing)
    – Henrik
    Dec 8, 2011 at 16:15
  • The problem with that use of scan was identified by @Joshua.Ulrich in my answer (and I fixed my answer.)
    – IRTFM
    Dec 8, 2011 at 16:19
1
lines <- readLines(file)
newtext <- paste(lines[seq(1, length(lines)-2, by=3)],
      lines[seq(2, length(lines)-1, by=3)], 
      lines[seq(3, length(lines), by=3)]) # space is the default separator
dfrm <- read.table(textConnection(newtext))

I didn't think Joshua was correct in saying that my earlier answer was applicable, but it turned out to be even more general than I realized.

> scan(textConnection(lines), what=list(fil="char", N1 = 0, N2 = 0))
Read 9 records
$fil
[1] "/tmp/file-16"  "/tmp/file-38"  "/tmp/file-118" "/tmp/file-105"
[5] "/tmp/file-76"  "/tmp/file-99"  "/tmp/file-48"  "/tmp/file-77" 
[9] "/tmp/file-197"

$N1
[1]  31361   5673   7210 140910  25857  34416     21 117652  33448

$N2
[1]  999  413  450 2117  956  774   22 1397 1057

So as.data.frame() on that result would also give a solution.

1
  • what needs to be a bit different though, since the type of what is what matters: what=list(fil="", N1=0, N2=0). Perhaps you're confusing it with the colClasses argument to read.table et al? Dec 8, 2011 at 14:46

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