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I have a directory containing close to 2,000 .csv files.

Each file has the following structure (showing 4 out of 500 rows):

                       Date;QOF
1    2004-01-04 - 2004-01-10;9
2    2004-01-11 - 2004-01-17;11
3    2004-01-18 - 2004-01-24;13
4    2004-01-25 - 2004-01-31;13

The column "QOF" is also the name of the .csv file and each file has a unique name (e.g. "MSTF", "XQS" etc.) I would like this column from each .csv file to be merged on to the first .csv file being read which also contains the date variable. In other words I want to keep all columns from the first file and merge only the second column from all other .csv files on to this file. End result should be something like:

                    Date;QOF;MSTF;XQS
1    2004-01-04 - 2004-01-10;9;10;8
2    2004-01-11 - 2004-01-17;11;11;5
3    2004-01-18 - 2004-01-24;13;31;2
4    2004-01-25 - 2004-01-31;13;45;23

So far I have tried this:

filenames <- list.files()

do.call("cbind", lapply(filenames, read.csv, header = TRUE))
  • Use merge not cbind. Make sure to pass in appropriate arguments. – stanekam Dec 18 '13 at 18:52
  • @iShouldUseAName : How exactly would you use merge here? And what do you mean by "Make sure to pass in appropriate arguments"? – Sunv Dec 18 '13 at 18:58
  • 3
    If the first column Date is exactly the same in all files, then I think cbind is a fine approach. Try do.call(cbind, lapply(filenames, read.table, header = TRUE, row.names = 1, sep = ';')) – flodel Dec 18 '13 at 19:05
  • @flodel : thanks, it worked perfectly! Say there is a file in the directory where the Date column has fewer rows - how could I modify the program to not include that file? – Sunv Dec 18 '13 at 20:05
  • Choose a different data structure. – 42- Dec 18 '13 at 21:05
4
mybig <- do.call( rbind, lapply( listfiles, function(nam){ 
                       cbind(name=nam, read.file(paste0(nam,".csv"), header=TRUE) )
                                                }
        )              )

Untested. And notice that I intentionally did not follow the structure you suggested. I cannot thnk of a more confusing data structure to work with down the line. You might be thinking of using that format for output and would first need to build a dataframe and then write it to a file with semi-colon delimiter.

  • Do you have a suggestion for how to include a condition that only includes files with e.g. nrow=500, using do.call(cbind, lapply(filenames, read.table, header = TRUE, row.names = 1, sep = ';'))? – Sunv Jan 9 '14 at 13:55
  • 1
    If you are asking to include files with 500 or more lines then you would first need to import and then test whether the file was sufficient. There is no line count attribute that the system could use to pre-qualify files. I suppose you could come up with a size surrogate. Take a look at: names( file.info(dir()) ) – 42- Jan 9 '14 at 20:18
  • Thanks for your useful comments @IShouldBuyABoat – Sunv Jan 11 '14 at 10:57
  • 1
    The other thought would be to use a system utility like 'awk' to pre-qualify the files. I'm not a regular user of 'awk' but I feel confident that you could get worked examples of appropriate doce to deliver line counts and then loop through dir() or list.files(). – 42- Jan 11 '14 at 17:52
  • If I wanted to merge these files using the date variable as the "by" variable instead of cbind, is there a convenient way to do this when dealing with 2,000 .csv files? – Sunv Jan 12 '14 at 17:38

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