11

I have numerous csv files in multiple directories that I want to read into a R tribble or data.table. I use "list.files()" with the recursive argument set to TRUE to create a list of file names and paths, then use "lapply()" to read in multiple csv files, and then "bind_rows()" stick them all together:

filenames <- list.files(path, full.names = TRUE, pattern = fileptrn, recursive = TRUE)
tbl <- lapply(filenames, read_csv) %>% 
  bind_rows()

This approach works fine. However, I need to extract a substring from the each file name and add it as a column to the final table. I can get the substring I need with "str_extract()" like this:

sites <- str_extract(filenames, "[A-Z]{2}-[A-Za-z0-9]{3}")

I am stuck however on how to add the extracted substring as a column as lapply() runs through read_csv() for each file.

6 Answers 6

10

I generally use the following approach, based on dplyr/tidyr:

data = tibble(File = files) %>%
    extract(File, "Site", "([A-Z]{2}-[A-Za-z0-9]{3})", remove = FALSE) %>%
    mutate(Data = lapply(File, read_csv)) %>%
    unnest(Data) %>%
    select(-File)
3
  • Very slick. Thank you. I find mutate() and extract() and unnest() a little difficult to follow, but it worked great! Also, what is "select(-File)" doing?
    – kray
    Sep 19, 2017 at 13:26
  • @kray It’s just removing the File column, after we’re done with it. As for finding the workflow difficult to follow: it’s temporary. Once you get used to the dplyr pipeline flow, this will become effortless. That said, I’ve now rearranged the expressions to put the data reading code together. Sep 19, 2017 at 13:34
  • How might this be done if we are reading plain text files -- in my case, output reports from a batch process? I'd like to stack my batch output files, then read each to determine if an error is present.
    – Ben
    Mar 3 at 14:26
6

tidyverse approach:

Update:

readr 2.0 (and beyond) now has built-in support for reading a list of files with the same columns into one output table in a single command. Just pass the filenames to be read in the same vector to the reading function. For example reading in csv files:

(files <- fs::dir_ls("D:/data", glob="*.csv"))
dat <- read_csv(files, id="path")

Alternatively using map_dfr with purrr: Add the filename using the .id = "source" argument in purrr::map_dfr() An example loading .csv files:

 # specify the directory, then read a list of files
  data_dir <- here("file/path")
  data_list <- fs::dir_ls(data_dir, regexp = ".csv$")

 # return a single data frame w/ purrr:map_dfr 
 my_data = data_list %>% 
    purrr::map_dfr(read_csv, .id = "source")
  
 # Alternatively, rename source from the file path to the file name
  my_data = data_list %>% 
    purrr::map_dfr(read_csv, .id = "source") %>% 
    dplyr::mutate(source = stringr::str_replace(source, "file/path", ""))
  
5

You could use purrr::map2 here, which works similarly to mapply

filenames <- list.files(path, full.names = TRUE, pattern = fileptrn, recursive = TRUE)
sites <- str_extract(filenames, "[A-Z]{2}-[A-Za-z0-9]{3}")  # same length as filenames

library(purrr)
library(dplyr)
library(readr)
stopifnot(length(filenames)==length(sites))  # returns error if not the same length
ans <- map2(filenames, sites, ~read_csv(.x) %>% mutate(id = .y))  # .x is element in filenames, and .y is element in sites

The output of map2 is a list, similar to lapply

If you have a development version of purrr, you can use imap, which is a wrapper for map2 with an index

3

data.table approach:

If you name the list, then you can use this name to add to the data.table when binding the list together.

workflow

files <- list.files( whatever... )
#read the files from the list
l <- lapply( files, fread )
#names the list using the basename from `l`
# this also is the step to manipuly the filesnamaes to whatever you like
names(l) <- basename( l )
#bind the rows from the list togetgher, putting the filenames into the colum "id"
dt <- rbindlist( dt.list, idcol = "id" )
2
2

You just need to write your own function that reads the csv and adds the column you want, before combining them.

my_read_csv <- function(x) {
  out <- read_csv(x)
  site <- str_extract(x, "[A-Z]{2}-[A-Za-z0-9]{3}")
  cbind(Site=site, out)
}

filenames <- list.files(path, full.names = TRUE, pattern = fileptrn, recursive = TRUE)
tbl <- lapply(filenames, my_read_csv) %>% bind_rows()
1
  • or you could do this: map_dfr(filenames, my_read_csv) %>% as_tibble() Aug 22, 2020 at 18:46
0

You can build a filenames vector based on "sites" with the exact same length as tbl and then combine the two using cbind

### Get file names
filenames <- list.files(path, full.names = TRUE, pattern = fileptrn, recursive = TRUE)
sites <- str_extract(filenames, "[A-Z]{2}-[A-Za-z0-9]{3}")

### Get length of each csv
file_lengths <- unlist(lapply(lapply(filenames, read_csv), nrow))

### Repeat sites using lengths
file_names <- rep(sites,file_lengths))

### Create table
tbl <- lapply(filenames, read_csv) %>% 
  bind_rows()

### Combine file_names and tbl
tbl <- cbind(tbl, filename = file_names)

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