Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Suppose we have files file1.csv, file2.csv, ... , and file100.csv in directory C:\R\Data and we want to read them all into separate data frames (e.g. file1, file2, ... , and file100).

The reason for this is that, despite having similar names they have different file structures, so it is not that useful to have them in a list.

I could use lapply but that returns a single list containing 100 data frames. Instead I want these data frames in the Global Environment.

How do I read multiple files directly into the global environment? Or, alternatively, How do I unpack the contents of a list of data frames into it?

share|improve this question
@Roman Luštrik Please see comment to @hadley below. Note I did not ask "What is the best way to read X number of files into R?". My question is more specific for a reason. I guess I should not have said I wanted to read 100 files (simply trying to be general) but 8 different files with similar names. But there are too many people here off on their high horse. –  Fred Mar 16 '11 at 13:22

6 Answers 6

up vote 12 down vote accepted

Quick draft, untested:

  1. Use list.files() aka dir() to dynamically generate your list of files.

  2. This returns a vector, just run along the vector in a for loop.

  3. Read the i-th file, then use assign() to place the content into a new variable file_i

That should do the trick for you.

share|improve this answer
@Dirk Eddelbuettel Thanks, that works. Indeed that is what I tried to do originally but using i <- read.csv(...) inside the loop instead of assign(i,read.csv(...)). Why doesn't the former work? –  Fred Mar 16 '11 at 1:19
Local scope versus global environment. You could try i <<- read.csv(...) as well. –  Dirk Eddelbuettel Mar 16 '11 at 1:21
@Dirk Eddelbuettel Many thanks, final question: Had I used lapply and dumped everything inside a list, how would I "unpack it"? I ask because lapply is much faster and I dislike loops. –  Fred Mar 16 '11 at 1:25
Prove that lapply is faster in reading N files. Moreover, if you dislike loops the burden is on you to read up on the *apply family. And again, these days they are not generally faster. –  Dirk Eddelbuettel Mar 16 '11 at 1:31
Yowser, assign and <<- in the same answer! Has someone hijacked Dirk's account? –  mdsumner Mar 16 '11 at 3:09

Use assign with a character variable containing the desired name of your data frame.

for(i in 1:100)
   oname = paste("file", i, sep="")
   assign(oname, read.csv(paste(oname, ".txt", sep="")))
share|improve this answer

Thank you all for replying.

For completeness here is my final answer for loading any number of (tab) delimited files, in this case with 6 columns of data each where column 1 is characters, 2 is factor, and remainder numeric:

##Read files named xyz1111.csv, xyz2222.csv, etc.
filenames <- list.files(path="../Data/original_data",

##Create list of data frame names without the ".csv" part 
names <-substr(filenames,1,7))

###Load all files
for(i in names){
    filepath <- file.path("../Data/original_data/",paste(i,".csv",sep=""))
    assign(i, read.delim(filepath,
    sep = "\t"))
share|improve this answer
A couple of things: 1) you don't need to use lapply to generate the data frame names, because substr is already vectorised; just use substr(filenames, 1, 7). And 2) if your data is not actually comma delimited, you shouldn't use read.csv. The point of that function is to read csv files, not general delimited data. If your data is tab delimited, consider read.delim (and you don't need the header=T part either). –  Hong Ooi Mar 16 '11 at 2:01
@Hong Ooi Many thanks! Corrected. The original files are tab delimited .txt with some weird encoding. If I import those I get garbage columns named X at end of dataframe. So I opened .txt Open Office Calc, saved as .csv and now they import fine. Somehow Calc did not replace tab separation when saving as csv file. –  Fred Mar 16 '11 at 2:17
A couple of very minor points: (1) using [single forward] slashes as path separators is platform-independent (and seems neater to me, but that's a matter of taste); (2) file.path() could be substituted for your outer paste() [again not a big deal but slightly more semantic] –  Ben Bolker Mar 16 '11 at 2:22
@Ben Bolker Thanks! Corrected. I am new to Stack Overflow. Learning a lot! –  Fred Mar 16 '11 at 2:40
This is really nice –  Filip Zembol Oct 30 at 12:58

Don't. Keep them as a list. It's the way to go.

share|improve this answer
- because anything you are likely to want to do with 100 data frames will be easier to do if they are in a list than if they are 100 data frames with names file1 to file100. –  Spacedman Mar 16 '11 at 8:16
@hadley @Spacedman I am actually not reading 100 files but 8. And although they have similar names they are very different in structure, so ill suited for working with *apply family of functions. There is a reason I asked the question I asked. –  Fred Mar 16 '11 at 13:13
@hadley If you want to make a point the way I would have done it is (1) Answer the question like Dirk did: "This is how you do x" and (2) Mention that it may not be a good idea to do so. Instead some people just impose the party line unawares that the reason some we come to this forum is precisely to ask the not so obvious. –  Fred Mar 16 '11 at 14:29
@Fred - if you asked me how to commit suicide, I would walk you over to the counselling center and make sure you got help. It's unethical to do anything else. I will continue to give answers that I think people need, not the answers people want. If you don't like it downvote me and move on with your life. –  hadley Mar 16 '11 at 16:43
@hadley I don't have enough reputation to down. Ethics is rather subjective. Euthanasia or assisted suicide is perfectly legitimate for many people. No matter. I was not even asking about something so thorny just how to: "Read multiple CSV files into separate data frames". If that sends you into a moral fit then maybe I ought to be the one walking you to the counseling service... –  Fred Mar 16 '11 at 17:15

A simple way to access the elements of a list from the global environment is to attach the list. Note that this actually creates a new environment on the search path and copies the elements of your list into it, so you may want to remove the original list after attaching to prevent having two potentially different copies floating around.

share|improve this answer

Here is a way to unpack a list of data.frames using just lapply

filenames <- list.files(path="../Data/original_data", pattern="xyz+.*csv")

filelist <- lappy(filenames, read.csv)

if necessary, assign names to data.frames

names(filelist) <- c("one","two","three")

note the invisible function keeps lapply from spitting out the data.frames to the console

invisible(lapply(names(filelist), function(x) assign(x,filelist[[x]],envir=.GlobalEnv)))

share|improve this answer

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.