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?

  • 4
    @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
  • For people who happen upon this post and have a set of 100 identically (or nearly so) structured files, your best bet is to read the data into a named list as hadley and joran explain below. For an additional perspective, take a look at Gregor's response to this post as to why this is beneficial. – lmo Jul 28 at 18:53

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.

  • @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
  • 1
    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
  • 3
    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
  • 8
    Yowser, assign and <<- in the same answer! Has someone hijacked Dirk's account? – mdsumner Mar 16 '11 at 3:09

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"))

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="")))

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

filenames <- list.files(path="../Data/original_data",

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)))
  • You can "automate" the naming with paste0("sheet_",1:length(filelist)). – NelsonGon Apr 10 at 17:07
  • When I use this method, the space between my column names is replaced by a ".". For example column "Warehouse Code" becomes "Warehouse.Code". Do you know how to keep the column format unchanged? – Poopah Jun 12 at 15:07

This answer is intended as a more useful complement to Hadley's answer.

While the OP specifically wanted each file read into their R workspace as a separate object, many other people naively landing on this question may think that that's what they want to do, when in fact they'd be better off reading the files into a single list of data frames.

So for the record, here's how you might do that.

#If the path is different than your working directory
# you'll need to set full.names = TRUE to get the full
# paths.
my_files <- list.files("path/to/files")

#Further arguments to read.csv can be passed in ...
all_csv <- lapply(my_files,read.csv,...)

#Set the name of each list element to its
# respective file name. Note full.names = FALSE to
# get only the file names, not the full path.
names(all_csv) <- gsub(".csv","",
                       list.files("path/to/files",full.names = FALSE),
                       fixed = TRUE)

Now any of the files can be referred to by my_files[["filename"]], which really isn't much worse that just having separate filename variables in your workspace, and often it is much more convenient.


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.

  • I'm upvoting, but example code would be even better. – PatrickT Nov 30 '16 at 19:18
  • Not sure what you're looking for. Example code would be attach(mylist). – Aaron Nov 30 '16 at 20:40
  • Thanks Aaron. I was trying to connect your answer to the original question, how it relates to list.files to assign and other things mentioned in other answers. – PatrickT Nov 30 '16 at 21:08

Reading all the CSV files from a folder and creating vactors same as the file names:

setwd("your path to folder where CSVs are")

filenames <- gsub("\\.csv$","", list.files(pattern="\\.csv$"))

for(i in filenames){
  assign(i, read.csv(paste(i, ".csv", sep="")))
#copy all the files you want to read in R in your working directory
a <- dir()
#using lapply to remove the".csv" from the filename 
for(i in a){
list1 <- lapply(a, function(x) gsub(".csv","",x))
#Final step 
for(i in list1){
filepath <- file.path("../Data/original_data/..",paste(i,".csv",sep=""))
assign(i, read.csv(filepath))
  • Please ask a question to receive a response. – JJFord3 Oct 24 '16 at 16:57

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