19

I'm trying to add a common prefix to each of the variable names in a data.frame. For example, using the mtcars data, I could add the prefix "cars." using the following code:

> data(mtcars)
> names(mtcars)
 [1] "mpg"  "cyl"  "disp" "hp"   "drat" "wt"   "qsec" "vs"  
 [9] "am"   "gear" "carb"
> names(mtcars) <- paste0("cars.", names(mtcars))
> names(mtcars)
 [1] "cars.mpg"  "cars.cyl"  "cars.disp" "cars.hp"  
 [5] "cars.drat" "cars.wt"   "cars.qsec" "cars.vs"  
 [9] "cars.am"   "cars.gear" "cars.carb"

However, I would like to do this as part of a piped operation (i.e., a series of functions strung together using %>%), using some of the dplyr syntax. It seems like some combination of rename and everything() should do the trick, but I don't know how to make it work. Does anyone have any ideas?

31

Indeed, you can use rename_ (NSE rename itself doesn’t work):

data %>% rename_(.dots = setNames(names(.), paste0('cars.', names(.))))

… but honestly, why? Just assigning names directly is shorter and more readable:

data %>% setNames(paste0('cars.', names(.)))
8
  • Thanks! The actual use case is a little complicated -- in short, I'm doing a series of merges of one dataset to itself, and I don't want variables from the left hand side of the merge to get confused with variables of the same name from the right hand side of the merge. merge deals with this by assigning a suffix ".x" and ".y" to refer to the left- and right- hand sides of the merge, respectively, but I wanted the variables to have more descriptive names. I was also hoping to avoid saving an intermediate dataset with the new names, hence my effort to do this with a dplyr command. Nov 16 '15 at 18:05
  • 1
    setNames(cars, paste0("cars.", names(cars)) was effective, though. Thanks again. Nov 16 '15 at 18:10
  • @Jake Well my second code example doesn’t use an intermediate data set. But yes, might as well use setNames instead of ` names<- `. Nov 16 '15 at 18:48
  • 1
    I propose to use data.table::setnames() instead of setNames() from stats . This has the advantage of throwing an error if the lengths of the old and new name vectors do not match which is a little saver.
    – der_grund
    Jul 6 '17 at 7:58
  • @der_grund It would be a bit overkill to load data.table just for that, if (like me) you’re not otherwise using the package. One more reason to write smaller packages with self-contained functionality instead of the conventional, bloated R packages. Jul 6 '17 at 8:39
13

The latest solution (2020) seems to use rename_with, which is available in dplyr 1.0.0 and higher:

mtcars %>% rename_with(.fn = ~ paste0("Myprefix_", .x, "_Mypostfix")) -> mtcars.custom

Use the .cols = argument to specify a subset of variables, it defaults to everything().

3
  • Which package is that from? Please add a documentation link.
    – slhck
    Oct 27 '20 at 19:57
  • 1
    @slhck the package name is in the question title...
    – jiggunjer
    Oct 28 '20 at 15:07
  • It's not like suggestions for functions from other packages aren't common around here. In particular, if you do a web search for "rename_with r", you get various references for a function from tidytable before any results for dplyr appear. In my case I had a pre-1.0 version so it wasn't available.
    – slhck
    Oct 28 '20 at 18:42
10

For future readers, dplyr now can do this with the select_if, select_at, and select_all functions:

dplyr::select_all(mtcars, .funs = funs(paste0("cars.", .)))
2
  • with dplyr version 0.7.4 it says "Error in paste0("cars.", .) : object '.' not found"
    – Make42
    Jan 8 '19 at 13:05
  • Using cars, this works. However, on my data, it throws a different error using dplyr 0.7.6 (loaded via tidyverse 1.2.1): "Error: nm must be NULL or a character vector the same length as x. I'm confused by this.
    – aae
    Mar 7 '19 at 15:44
7

Another dplyr solution:

I find it easiest with the dplyr rename_all, rename_at, rename_if which from v.1.0.4. have been superseded by rename_with...

Try this for renaming all column names:

mtcars %>% rename_all(function(x){paste0("cars.", x)}) # older dplyr versions
mtcars %>% rename_with(.cols = everything(), function(x){paste0("cars.", x)}) # v.1.0.4.

Try this for renaming "some" column names:

mtcars %>% rename_at(vars(hp:wt) ,function(x){paste0("cars.", x)}) # older dplyr versions
mtcars %>% rename_with(.cols = hp:wt, function(x){paste0("cars.", x)}) # v.1.0.4.
2
  • 1
    from dplyr v1.0.4 documentation ("rename_if(), rename_at(), and rename_all() have been superseded by rename_with(). The matching select statements have been superseded by the combination of a select() + rename_with()."
    – Brian D
    Apr 9 at 22:03
  • I think you have your arguments backward in your rename_with() example, or at least the first one: your mtcars %>% rename_with(everything(), function(x){paste0("cars.", x)}) line threw an error for me, but mtcars %>% rename_with(function(x){paste0("cars.", x)}, everything()) worked as intended/described. (Perhaps the function has changed?) Oct 12 at 17:04
4

dplyr now expects lists and will throw a warning:

Warning message:
funs() is soft deprecated as of dplyr 0.8.0
Please use a list of either functions or lambdas: 

  # Simple named list: 
  list(mean = mean, median = median)

  # Auto named with `tibble::lst()`: 
  tibble::lst(mean, median)

  # Using lambdas
  list(~ mean(., trim = .2), ~ median(., na.rm = TRUE))

you can solve this example as follows:


dplyr::select_all(mtcars, list(~ paste0("cars.", .)))
#>                     cars.mpg cars.cyl cars.disp cars.hp cars.drat cars.wt
#> Mazda RX4               21.0        6     160.0     110      3.90   2.620
#> Mazda RX4 Wag           21.0        6     160.0     110      3.90   2.875
#> Datsun 710              22.8        4     108.0      93      3.85   2.320
#> Hornet 4 Drive          21.4        6     258.0     110      3.08   3.215
#> Hornet Sportabout       18.7        8     360.0     175      3.15   3.440
#> Valiant                 18.1        6     225.0     105      2.76   3.460
#> Duster 360              14.3        8     360.0     245      3.21   3.570
#> Merc 240D               24.4        4     146.7      62      3.69   3.190
#> Merc 230                22.8        4     140.8      95      3.92   3.150
#> Merc 280                19.2        6     167.6     123      3.92   3.440
#> Merc 280C               17.8        6     167.6     123      3.92   3.440
#> Merc 450SE              16.4        8     275.8     180      3.07   4.070
#> Merc 450SL              17.3        8     275.8     180      3.07   3.730
#> Merc 450SLC             15.2        8     275.8     180      3.07   3.780
#> Cadillac Fleetwood      10.4        8     472.0     205      2.93   5.250
#> Lincoln Continental     10.4        8     460.0     215      3.00   5.424
#> Chrysler Imperial       14.7        8     440.0     230      3.23   5.345
#> Fiat 128                32.4        4      78.7      66      4.08   2.200
#> Honda Civic             30.4        4      75.7      52      4.93   1.615
#> Toyota Corolla          33.9        4      71.1      65      4.22   1.835
#> Toyota Corona           21.5        4     120.1      97      3.70   2.465
#> Dodge Challenger        15.5        8     318.0     150      2.76   3.520
#> AMC Javelin             15.2        8     304.0     150      3.15   3.435
#> Camaro Z28              13.3        8     350.0     245      3.73   3.840
#> Pontiac Firebird        19.2        8     400.0     175      3.08   3.845
#> Fiat X1-9               27.3        4      79.0      66      4.08   1.935
#> Porsche 914-2           26.0        4     120.3      91      4.43   2.140
#> Lotus Europa            30.4        4      95.1     113      3.77   1.513
#> Ford Pantera L          15.8        8     351.0     264      4.22   3.170
#> Ferrari Dino            19.7        6     145.0     175      3.62   2.770
#> Maserati Bora           15.0        8     301.0     335      3.54   3.570
#> Volvo 142E              21.4        4     121.0     109      4.11   2.780
#>                     cars.qsec cars.vs cars.am cars.gear cars.carb
#> Mazda RX4               16.46       0       1         4         4
#> Mazda RX4 Wag           17.02       0       1         4         4
#> Datsun 710              18.61       1       1         4         1
#> Hornet 4 Drive          19.44       1       0         3         1
#> Hornet Sportabout       17.02       0       0         3         2
#> Valiant                 20.22       1       0         3         1
#> Duster 360              15.84       0       0         3         4
#> Merc 240D               20.00       1       0         4         2
#> Merc 230                22.90       1       0         4         2
#> Merc 280                18.30       1       0         4         4
#> Merc 280C               18.90       1       0         4         4
#> Merc 450SE              17.40       0       0         3         3
#> Merc 450SL              17.60       0       0         3         3
#> Merc 450SLC             18.00       0       0         3         3
#> Cadillac Fleetwood      17.98       0       0         3         4
#> Lincoln Continental     17.82       0       0         3         4
#> Chrysler Imperial       17.42       0       0         3         4
#> Fiat 128                19.47       1       1         4         1
#> Honda Civic             18.52       1       1         4         2
#> Toyota Corolla          19.90       1       1         4         1
#> Toyota Corona           20.01       1       0         3         1
#> Dodge Challenger        16.87       0       0         3         2
#> AMC Javelin             17.30       0       0         3         2
#> Camaro Z28              15.41       0       0         3         4
#> Pontiac Firebird        17.05       0       0         3         2
#> Fiat X1-9               18.90       1       1         4         1
#> Porsche 914-2           16.70       0       1         5         2
#> Lotus Europa            16.90       1       1         5         2
#> Ford Pantera L          14.50       0       1         5         4
#> Ferrari Dino            15.50       0       1         5         6
#> Maserati Bora           14.60       0       1         5         8
#> Volvo 142E              18.60       1       1         4         2

Created on 2019-07-31 by the reprex package (v0.3.0)

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