Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

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])[!,][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!

share|improve this question
Read them in as a list first and then use, your_list). – Ananda Mahto Apr 7 '14 at 2:08

2 Answers 2

up vote 3 down vote accepted

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

share|improve this answer
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 '14 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)[!,][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 to turn it into a single data frame.
data.df <-"rbind", list_of_data_frames)
share|improve this answer
'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 '14 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 '14 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 '14 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 '14 at 3:33

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.