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Suppose we have a folder containing multiple data.csv files, each containing the same number of variables but each from from different times.

Is there a way in R to import them all simultaneously rather than having to import them all individually?

My problem is that I have around 2000 data files to import and having to import them individually just by using the code:

read.delim(file="filename", header=TRUE, sep="\t")

is not very efficient.

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6 Answers 6

up vote 22 down vote accepted

Something like the following should work:

temp = list.files(pattern="*.csv")
myfiles = lapply(temp, read.delim)

This assumes that you have those CSVs in a single directory--your current working directory--and that all of them have the lower-case extension .csv.

Update

Quick and dirty solution to get separate data.frames ("dirty" because I haven't bothered to clean up the .csv extension, but that's easy enough to do with some regex):

temp = list.files(pattern="*.csv")
for (i in 1:length(temp)) assign(temp[i], read.csv(temp[i]))
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Thanks! this works very well...how would I go about naming each file I have just imported so I can easily call them up? –  Jono Jul 11 '12 at 13:34
    
if you can show us the first few lines of some of your files we might have some suggestions - edit your question for that! –  Spacedman Jul 11 '12 at 14:13
    
The above code works perfectly for importing them as single objects but when I try to call up a column from the data set it doesnt recognise it as it is only a single object not a data frame i.e. my version of the above code is: setwd('C:/Users/new/Desktop/Dives/0904_003') temp<-list.files(pattern="*.csv") ddives <- lapply(temp, read.csv) So now each file is called ddives[n] but how would I go about writing a loop to make them all data frames rather than single objects? I can achieve this individually using the data.frame operator but am unsure as to how to loop this. @mrdwab –  Jono Jul 11 '12 at 15:07
    
@JosephOnoufriou, see my update. But generally, I find working with lists easier if I'm going to be doing similar calculations on all data frames. –  Ananda Mahto Jul 11 '12 at 15:56
    
can the files be read in parallel. –  MySchizoBuddy Mar 27 at 21:31

As well as using lapply or some other looping construct in R you could merge your CSV files into one file.

In Unix, if the files had no headers, then its as easy as:

cat *.csv > all.csv

or if there are headers, and you can find a string that matches headers and only headers (ie suppose header lines all start with "Age"), you'd do:

cat *.csv | grep -v ^Age > all.csv

I think in Windows you could do this with COPY and SEARCH (or FIND or something) from the DOS command box, but why not install cygwin and get the power of the Unix command shell?

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Here is another options to convert the .csv files into one data.frame.

# Get the files names
files = list.files(pattern="*.csv")

# First apply read.csv, then rbind
myfiles = do.call("rbind", lapply(files, function(x) read.csv(x, stringsAsFactors = FALSE)))
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1  
how does this perform vs. Reduce(rbind, lapply(...))? Just learning R but my guess is less performant –  aaron Jul 18 at 16:37
    
I haven't done a benchmark, this isn't an operation i do so often... Feel free to run some benchmarks and edit the answer. –  Martín Bel Jul 19 at 23:41

This is the code I developed to read all csv files into R. It will create a dataframe for each csv file individually and title that dataframe the file's original name (removing spaces and the .csv) I hope you find it useful!

path <- "C:/Users/cfees/My Box Files/Fitness/"
files <- list.files(path=path, pattern="*.csv")
for(file in files)
{
perpos <- which(strsplit(file, "")[[1]]==".")
assign(
gsub(" ","",substr(file, 1, perpos-1)), 
read.csv(paste(path,file,sep="")))
}
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This is a part of my script.

#This cycle read the files in a directory and assign the filenames to datasets
files <- list.files(pattern=".csv$")
for(i in files) {
    X <- read.table(i, header=TRUE)
    SN<-X$A/X$B 
    X<-cbind(X,SN)
    ds<-paste("data_",i, sep="")#this add "data_" to the name of file
    ds<-substr(ds, 1, nchar(ds)-4)#remove the last 4 char (.csv)
    assign(ds, X)
}
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I can't comment, because I'm a n00b, so you'll have to forgive answering this question instead. Ananda's answer above answers the original question perfectly for my use-case, but I wanted to add something that I had trouble finding: after importing all these CSV files, how do you then do anything with them? The answer is ls() and get().

 temp = list.files(pattern=".csv$") #list all the files in dir that have .csv at the end
for (i in 1:length(temp)) {
  assign(temp[i], prettify(toJSON(read.csv(temp[i])))) #read each csv, convert to  JSON,make pretty, give it a name
  write(get(temp[i]),paste(temp[i],"json", sep=".")) #write the json to a file
}  

My use case was to import a bunch of CSV files, convert them to JSON, prettify them, then write them out to a .json file. If you removed the ".csv" from the name of your newly imported data frames, then you might need to use ls() to find your data frames again.

I hope that helps someone.

source: http://stackoverflow.com/a/3585976/3063793

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