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I have a large number of csv files that I want to read into R. All the Column headings in the csvs are the same. At first I thought I would need to create a loop based on the list of file names, but after searching I found a faster way. This reads in and combines all the csvs correctly (as far as i know).

filenames <- list.files(path = ".", pattern = NULL, all.files = FALSE, full.names = FALSE, recursive = FALSE, ignore.case = FALSE)

library(plyr)
import.list <- llply(filenames, read.csv)

combined <- do.call("rbind", import.list)

The only problem is that I want to know which csv a specific row of data comes from. I want a column labeled 'source' that contains the name of the csv that the particular row came from. so for example if the csv was called Chicago_IL.csv when the data got into R the row would look something like this:

> City    State   Market  etc Source  
> Burbank IL      Western etc Chicago_IL
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3 Answers 3

up vote 11 down vote accepted

You have already done all the hard work. With a fairly small modification this should be straight-forward.

The logic is:

  1. Create a small helper function that reads an individual csv and adds a column with the file name.
  2. Call this helper function in llply()

The following should work:

read_csv_filename <- function(filename){
    ret <- read.csv(filename)
    ret$Source <- filename #EDIT
    ret
}

import.list <- ldply(filenames, read_csv_filename)

Note that I have proposed another small improvement to your code: read.csv() returns a data.frame - this means you can use ldply() rather than llply().

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3  
using rep is optional, ret$Source <- filename would work too –  Karsten W. Mar 3 '11 at 22:19
    
@Karsten W, thank you. I have edited the code to reflect your suggestion. –  Andrie Mar 3 '11 at 23:30
    
This may be a somewhat silly question but... When using your change (ldply()), the data is reformatted in a way that all the column headings are transfered to row headings and the filenames (with numbers) become the column headings. Is there a way around this? Is there a disadvantage to using llply? –  Arndt Mar 4 '11 at 14:56
    
There is no inherent disadvantage in using llply rather than ldply. The only difference is that if you wish to get a data frame as output, ldply does this, so you might save a step. –  Andrie Mar 4 '11 at 15:08
    
I see, thanks again, this function works exactly the way that i had hoped. –  Arndt Mar 4 '11 at 15:11

Try this:

do.call("rbind", sapply(filenames, read.csv, simplify = FALSE))

The row names will indicate the source and line number.

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Kinda messy but works:

filenames <- c("foo.csv","bar.csv")
import.list <- list(matrix(,4,4),matrix(6,6))

source <- unlist(sapply(1:length(filenames),function(i)rep(gsub(".csv","",filenames[i]),nrow(import.list[[i]]))))

source
[1] "foo" "foo" "foo" "foo" "bar" "bar" "bar" "bar" "bar" "bar"

combined$source <- source
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