5

I'm attempting to merge multiple csv files using R. all of the CSV files have the same fields and are all a shared folder only containing these CSV files. I've attempted to do it using the following code:

multmerge=function(mypath) {
    filenames=list.files(path=mypath, full.names=TRUE)
    datalist= lapply(filenames, function (x) read.csv(file=x, header=True))
    Reduce(function(x,y) merge(x,y), datalist)}

I am entering my path as something like "Y:/R Practice/specdata". I do get an ouput when I apply the function to my 300 or so csv files, but the result gives me my columns names, but beneath it has <0 rows> (or 0-length row.names). Please let me know if you have any suggestions on why this isn't working and how I can fix it.

  • Are there any warnings when you output the files? Are you using the proper encoding for them? – Max Candocia May 14 '15 at 16:19
  • No there are no warnings. Everything processes fine. It's just that the output is nothing but my column names – Cole May 14 '15 at 17:32
16

For a shorter, faster solution

library(dplyr)
library(readr)
df <- list.files(full.names = TRUE) %>% 
  lapply(read_csv) %>% 
  bind_rows 
  • Thanks for the reply. I attempted your solution. Maybe I'm not using it correctly, but after copying and pasting your code into my console I come up with "There were 50 or more warnings (use warnings() to see the first 50)". All of the problems are with parsing if that means anything to you. Thanks. – Cole May 14 '15 at 19:47
  • Note that df is a default function in R. Maybe rename to d – Georges Feb 5 at 13:11
  • pasing problem can be solved by changing the function parameters. I could not find how to do it inside the dplyr code, so I created a different function I used inside the dplyr block: readmeta <- function (path){ read_tsv (path, col_types = cols( .default = col_character())) } – Julien Colomb May 13 at 11:13
3

Your code worked for me, but you need change header = True to header = TRUE.

  • So do you have any idea what the output that I got means? Also, thanks for replying. – Cole May 14 '15 at 17:26
  • I created a folder full of .csv files with the same column names as you described, then ran your code just with the change noted above, and it worked to combine all the .csv files. So I couldn't recreate your error. @Maiasaura's code is a much nicer solution though. – ivyleavedtoadflax May 14 '15 at 17:39
1

If all your csv files have exactly the same fields (column names) and you want simply to combine them vertically, you should use rbind instead of merge:

> a
             A         B
[1,]  2.471202 38.949232
[2,] 16.935362  6.343694
> b
            A          B
[1,] 0.704630  0.1132538
[2,] 4.477572 11.8869057
> rbind(a, b)
             A          B
[1,]  2.471202 38.9492316
[2,] 16.935362  6.3436939
[3,]  0.704630  0.1132538
[4,]  4.477572 11.8869057
0

Another option that has proved to work for my setup:

multmerge = function(path){
  filenames=list.files(path=path, full.names=TRUE)
  rbindlist(lapply(filenames, fread))
}


path <- "Dropbox/rstudio-share/dataset/MB"
DF <- multmerge(path)

If you need a much granular control of your CSV file during the loading process you can change the fread by a function like so:

multmerge = function(path){
  filenames=list.files(path=path, full.names=TRUE)
  rbindlist(lapply(filenames, function(x){read.csv(x, stringsAsFactors = F, sep=';')}))
}
0

I tried working with the same function but included the all=TRUE in the merge function and worked just fine.

The code I used is as follows:

multmerge = function(mypath){
  filenames=list.files(path=mypath, full.names=TRUE)
  datalist = lapply(filenames, function(x){read.csv(file=x,header=T)})
  Reduce(function(x,y) {merge(x,y,all = TRUE)}, datalist)
}

full_data = multmerge("path_name for your csv folder")

Hope this helps. Cheers!

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