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I am working on a project that imports all csv files from a given folder and merges them into one file. I was able to import the rows and columns I wanted from each of the files from the folder but now need help merging them all into one file. I do not know how many files I will eventually end up with (probably around 120) so I do not want to merge them 1 by 1.

Here is what I have so far:

 #Import All files
 filenames <- list.files("save", pattern="*.csv", full.names=TRUE)
 for (i in seq_along(filenames)) {
   assign(paste("df", i, sep = "."), read.csv(filenames[i])[!is.na(30),][c(9:104,657:752),c(15,27,28,29,30,33,35)])

 #Count number of dataframes

 #Merge into one file
 for (i in seq(1,2,by=1)) {

The first part of the code creates a series of dataframes labled df.1, df.2, etc. I would like them to end up in one final dataframe called df. All files are identical in structure.

I would really appreciate some help if someone has a few extra minutes! Thank you!

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Read them in as a list first and then use do.call(rbind, your_list). –  Ananda Mahto Apr 7 at 2:08

3 Answers 3

up vote 3 down vote accepted

Since you have already read the files in, you can try the following:

do.call(rbind, mget(ls(pattern = "df")))

The ls(pattern = df) should capture all of your "df.1", "df.2", and so on. Hopefully you don't have other things named with the same pattern, but if you do, experiment with a stricter pattern until the command lists just your data.frames.

mget() will bring all of these into a list on which you can use do.call(rbind, ...).

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This was a quick and easy solution with a nice explanation on how it works. As a relatively new R user, I had not heard of the ls() or mget() commands and appreciate the explanation. –  Xander Apr 7 at 3:31

Those all seem complicated ;). The answers above seem to be operating on "we have a list of objects with very similar names, how do we handle that". Answer: they don't need to have very similar names. They don't even have to be different objects.

If you read the files in not through a for loop, but through lapply(), you get a single object that contains all of the data frames - each one as a single element. These can then trivially be extracted. So you'd have something that looks like...

#Grab a list of filenames
filenames <- list.files("save", pattern="*.csv", full.names=TRUE)

#Iterate through that list of names, using lapply(), reading the data in.
list_of_data_frames <- lapply(filenames, function(x){

    #Read the data in
    to_return <- read.csv(x)[!is.na(30),][c(9:104,657:752),c(15,27,28,29,30,33,35)])

    #Return it. You could save lines of code (and processor time!) by just reading
    #straight into return(), but it would be a lot less clear.

#Now use do.call to turn it into a single data frame.
data.df <- do.call("rbind", list_of_data_frames)
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'The answers above seem to be operating on "we have a list of objects with very similar names, how do we handle that"' -- Well, that is what we have :-) –  Ananda Mahto Apr 7 at 2:19
Also, you can chop out the return(to_return) by not assigning the output of read.csv to anything in the first place, but +1 for an answer that elaborates on my comment above.... –  Ananda Mahto Apr 7 at 2:21
Nice suggestion! One of my friends has been writing R for years and only discovered there was an explicit return() call 3 months ago. And yeah, that's what we have - but we don't need to. It's a problem that doesn't need to exist, so why let it? ;). –  user3471268 Apr 7 at 2:25
Thank you both for contributing answers and continuing the discussion. The lappy suggestion was a great idea, and certainly cleans up the code. –  Xander Apr 7 at 3:33

Honestly, it feels like a complicated way of doing it.

You will need something like, to work with the way you name data.frames

 for (i in 1:k) {

I think that a more elegant solution in this case is to store all data.frames in a list

dfs <- list()
 for (i in seq_along(filenames)) {
   dfs[[length(List)+1]] <- read.csv(filenames[i])[!is.na(30),][c(9:104,657:752),c(15,27,28,29,30,33,35)])


Then merging can be done simply with one line (call)

do.call("rbind", dfs)
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