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I have to read in about 300 individual CSVs. I have managed to automate the process using a loop and structured CSV names. However each CSV has 14-17 lines of rubbish at the start and it varies randomly so hard coding a 'skip' parameter in the read.table command won't work. The column names and number of columns is the same for each CSV.

Here is an example of what I am up against:

QUICK STATISTICS:

      Directory: Data,,,,
           File: Final_Comp_Zn_1
      Selection: SEL{Ox*1000+Doma=1201}
         Weight: None,,,
     ,,Variable: AG,,,

Total Number of Samples: 450212  Number of Selected Samples: 277


Statistics

VARIABLE,Min slice Y(m),Max slice Y(m),Count,Minimum,Maximum,Mean,Std.Dev.,Variance,Total Samples in Domain,Active Samples in Domain AG,  
6780.00,   6840.00,         7,    3.0000,   52.5000,   23.4143,   16.8507,  283.9469,        10,        10 AG,   
6840.00,   6900.00,         4,    4.0000,    5.5000,    4.9500,    0.5766,    0.3325,        13,        13 AG,   
6900.00,   6960.00,        16,    1.0000,   37.0000,    8.7625,    9.0047,   81.0848,        29,        29 AG,   
6960.00,   7020.00,        58,    3.0000,   73.5000,   10.6931,   11.9087,  141.8172,       132,       132 AG,   
7020.00,   7080.00,        23,    3.0000,  104.5000,   15.3435,   23.2233,  539.3207,        23,        23 AG,   
7080.00,   7140.00,        33,    1.0000,   15.4000,    3.8152,    2.8441,    8.0892,        35,        35 AG,

Basically I want to read from the line VARIABLE,Min slice Y(m),Max slice Y(m),.... I can think of a few solutions but I don't know how I would go about programming it. Is there anyway I can:

  1. Read the CSV first and somehow work out how many lines of rubbish there is and then re-read it and specify the correct number of lines to skip? Or
  2. Tell read.table to start reading when it finds the column names (since these are the same for each CSV) and ignore everything prior to that?

I think solution (2) would be the most appropriate, but I am open to any suggestions!

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2 Answers 2

up vote 7 down vote accepted

The function fread from the package data.table does automatic detection of number of rows to be skipped. The function is in development stage currently.

Here is an example code:

require(data.table)

cat("blah\nblah\nblah\nVARIABLE,X1,X2\nA,1,2\n", file="myfile1.csv")
cat("blah\nVARIABLE,A1,A2\nA,1,2\n", file="myfile2.csv")
cat("blah\nblah\nVARIABLE,Z1,Z2\nA,1,2\n", file="myfile3.csv")

lapply(list.files(pattern = "myfile.*.csv"), fread)
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1  
Could you add a code example, right now your answer is rather short. –  Paul Hiemstra Mar 11 '13 at 7:53
    
@PaulHiemstra, a code example added. Thanks for the suggestion! –  djhurio Mar 11 '13 at 7:59
    
How does fread detect the number of lines to skip? –  Paul Hiemstra Mar 11 '13 at 8:30
1  
@PaulHiemstra, see the documentation of fread. There is some description given in Details. –  djhurio Mar 11 '13 at 8:49

Here's a minimal example of one approach that can be taken.

First, let's make up some csv files similar to the ones you describe:

cat("blah\nblah\nblah\nVARIABLE,X1,X2\nA,1,2\n", file="myfile1.csv")
cat("blah\nVARIABLE,A1,A2\nA,1,2\n", file="myfile2.csv")
cat("blah\nblah\nVARIABLE,Z1,Z2\nA,1,2\n", file="myfile3.csv")

Second, identify where the data start:

linesToSkip <- sapply(list.files(pattern = "myfile.*.csv"), 
                      function(x) grep("^VARIABLE", readLines(x))-1)

Third, use that information to read in your files into a single list.

lapply(names(linesToSkip), 
       function(x) read.csv(file=x, skip = linesToSkip[x]))
# [[1]]
#   VARIABLE X1 X2
# 1        A  1  2
# 
# [[2]]
#   VARIABLE A1 A2
# 1        A  1  2
# 
# [[3]]
#   VARIABLE Z1 Z2
# 1        A  1  2

Edit #1

An alternative to reading the data twice is to read it once into a list, and then perform the same type of processing:

myRawData <- lapply(list.files(pattern = "myfile.*.csv"), readLines)
lapply(myRawData, function(x) {
  linesToSkip <- grep("^VARIABLE", x)-1
  read.csv(text = x, skip = linesToSkip)
})

Or, for that matter:

lapply(list.files(pattern = "myfile.*.csv"), function(x) {
  temp <- readLines(x)
  linesToSkip <- grep("^VARIABLE", temp)-1
  read.csv(text = temp, skip = linesToSkip)
})

Edit #2

As @PaulHiemstra notes, you can use the argument n to only read a few lines of each file into memory, rather than reading the whole file. Thus, if you know for certain that there aren't more than 20 lines of "rubbish" in each file, if you are using the first approach described, you can use:

linesToSkip <- sapply(list.files(pattern = "myfile.*.csv"), 
                      function(x) grep("^VARIABLE", readLines(x, n = 20))-1)
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1  
+1, although you are reading every thing twice. You could add n = 1000 to the call to readlLines to limit the amount of data that is being read in order to determine the header that needs to be skipped. In this way, larger csv files wont be read twice, but only the relevant part will be read twice. This 1000 line boundary is a bit arbitrary, but seems appropriate as a header more than 100 lines long seems a bit strange. –  Paul Hiemstra Mar 11 '13 at 6:49
    
@PaulHiemstra, thanks. Do you know whether read.csv will work faster reading from a list in R versus reading from disk? Considering the details in the OP's question, adding n = 20 might actually be sufficient. –  Ananda Mahto Mar 11 '13 at 6:56
    
I don't know...but getting the data in memory first, and then performing all the operations, and not reading the stuff twice from disk would be faster I think. Although only reading the first 20 lines, and then reading everything should perform just fine. –  Paul Hiemstra Mar 11 '13 at 6:58

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