I have been wondering if anybody knows a way to create a loop that loads files/databases in R. Say i have some files like that: data1.csv, data2.csv,..., data100.csv.

In some programming languages you one can do something like this data +{ x }+ .csv the system recognizes it like datax.csv, and then you can apply the loop.

Any ideas?

up vote 47 down vote accepted

Sys.glob() is another possibility - it's sole purpose is globbing or wildcard expansion.

dataFiles <- lapply(Sys.glob("data*.csv"), read.csv)

That will read all the files of the form data[x].csv into list dataFiles, where [x] is nothing or anything.

[Note this is a different pattern to that in @Joshua's Answer. There, list.files() takes a regular expression, whereas Sys.glob() just uses standard wildcards; which wildcards can be used is system dependent, details can be used can be found on the help page ?Sys.glob.]

See ?list.files.

myFiles <- list.files(pattern="data.*csv")

Then you can loop over myFiles.

  • 1
    I assume you meant pattern="data*.csv" ... But will see if Gavin's advice helps me out here. Yeah it did... the "." is a wildcard in regex. – 42- Apr 22 '11 at 20:00
  • @DWin: I meant to match a single character zero or more times. – Joshua Ulrich Apr 22 '11 at 20:04
  • Perhaps safer to use "data.*\\.csv"? – 42- Apr 22 '11 at 20:07
  • 1
    @DWin: I'm not sure how that would be safer. My .* would capture the . before the file extension. If you really want to be safe/explicit, you could use "^data[[:digit:]]*\\.csv$". :-) – Joshua Ulrich Apr 22 '11 at 20:11
  • 2
    My thought was that "data.*csv" wouldn't require the "." to be there at all. – 42- Apr 22 '11 at 20:14

I would put all the CSV files in a directory, create a list and do a loop to read all the csv files from the directory in the list.

setwd("~/Documents/")
ldf <- list() # creates a list
listcsv <- dir(pattern = "*.csv") # creates the list of all the csv files in the directory
for (k in 1:length(listcsv)){
 ldf[[k]] <- read.csv(listcsv[k])
}
str(ldf[[1]]) 
fi<-list.files(directory_path,full.names=T)
dat<-lapply(fi,read.csv)

dat will contain the datasets in a list

  • 2
    that will list all files in directory_path which is not what is required. You need a pattern as per @Joshua's answer. – Gavin Simpson Apr 22 '11 at 18:55

Read the headers in a file so that we can use them for replacing in merged file

library(dplyr)
library(readr)

list_file <- list.files(pattern = "*.csv") %>% 
  lapply(read.csv, stringsAsFactors=F) %>% 
   bind_rows 

Let's assume that your files have the file format that you mentioned in your question and that they are located in the working directory.

You can vectorise creation of the file names if they have a simple naming structure. Then apply a loading function on all the files (here I used purrr package, but you can also use lapply)

library(purrr)
c(1:100) %>% paste0("data", ., ".csv") %>% map(read.csv)
  • I've been using a similar chunk of code to read in multiple .csv files, but is there a way to pass arguments to the read.csv function within map? Specifically, I want to pass strings_as_factors = F. Is this possible without creating my own custom read.csv function? – C. Denney Jun 21 at 15:27
  • Have you tried map(read.csv, strings_as_factors = FALSE) ? – epo3 Jun 21 at 16:48
  • yes it just returns a warning saying that there was an unused argument. – C. Denney Jun 21 at 19:44

This may be helpful if you have datasets for participants as in psychology/sports/medicine etc.

setwd("C:/yourpath")

temp <- list.files(pattern = "*.sav")

#Maybe you want to unselect /delete IDs
DEL <- grep('ID(04|08|11|13|19).sav', temp)
temp2 <- temp[-DEL]

#Make a list of that contains all data
read.all <- lapply(temp2, read_sav)
#View(read.all[1])

#Option 1: put one under the next
df <- do.call("rbind", read.all)

Option 2: make something within each dataset (single IDs) e.g. get the mean of certain parts of each participant

mw_extraktion <- function(data_raw){
  data_raw <- data.frame(data_raw)
  #you may now calculate e.g. the mean for a certain variable for each ID
  ID <- data_raw$ID[1]
  data_OneID <- c(ID, Var2, Var3) #put your new variables (e.g. Means) here
} #end of function   
data_combined <- t(data.frame(sapply(read.all, mw_extraktion) ) )

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