For a data.frame with n columns, I would like to be able to move a column from any of 1-(n-1) positions, to be the nth column (i.e. a non-last column to be the last column). I would also like to do it using dplyr. I would like to do so without simply typing out the names of all the columns.

For example:

data<-data.frame(a=1:5, b=6:10, c=11:15)

This works, but isn't the dplyr way:


This is the dplyr way to make column b first:

data%>%select(b, everything())

But this doesn't work to make column b last:

data%>%select(everything(), b)

This works, but requires me to type out all the columns:


So is there an elegant dplyr way to do this?

Related questions:


After some tinkering, the following works and requires very little typing.


  • Thanks a lot for this easy and simple way. Appreciated Dule. – HassanSh__3571619 Jul 7 '17 at 18:15
  • Dule, you could change the accepted answer to either this or Arthur Yip's, as they're decidedly cleaner and more 'elegant' than Arkun's (although it works fine.) – Umaomamaomao Jul 18 '17 at 7:25
  • The other answers teach me more about dplyr, but this answer is the shortest of them all! So I'd consider it a toss-up. – octern Dec 19 '18 at 15:55

will move variable b to the end.

This is because a negative variable in the first position of select elicits a special behavior from select(), which is to insert all the variables. Then it removes b, and then it gets added back with the everything() part.

Explained by Hadley himself: https://github.com/tidyverse/dplyr/issues/2838

Also see this other answer for other examples of how to move some columns to the end and other columns to the beginning: How does dplyr's select helper function everything() differ from copying?

  • 2
    This is cleaner than the answer from dule arnaux if you are moving several columns to the back. – Dannid Jan 8 at 23:59

We can either use

data %>%
    select(-one_of('b'), one_of('b'))
#  a  c  b
#1 1 11  6
#2 2 12  7
#3 3 13  8
#4 4 14  9
#5 5 15 10


data %>%
    select(matches("[^b]"), matches("b"))

or with the select_

data %>% 
    select_(.dots = c(setdiff(names(.), 'b'), 'b'))
#  a  c  b
#1 1 11  6
#2 2 12  7
#3 3 13  8
#4 4 14  9
#5 5 15 10
  • 1
    Great answer always, What does one_of do? , does it actually picks the name in quotes, unlike other options ? Thanks – PKumar May 10 '17 at 17:11
  • 1
    @Bankelal Thanks. You can have a vector of string names in one_of to match and pick it up – akrun May 10 '17 at 17:13
  • 1
    +1 for using one_of as protection for missing columns. Combine with Arthur Yip's answer for data %>% select(-one_of('b'), everything()), which puts the removed column back at the end with the everything() call. – Dannid Jan 8 at 23:58

Since there's no ready-made solution to this in dplyr you could define your own little function to do it for you:

move_last <- function(DF, last_col) {
    match(c(setdiff(names(DF), last_col), last_col), names(DF))

You can then use it easily in a normal select call:

mtcars %>% select(move_last(., "mpg")) %>% head()

You can also move multiple columns to the end:

mtcars %>% select(move_last(., c("mpg", "cyl"))) %>% head()

And you can still supply other arguments to select, for example to remove a column:

mtcars %>% select(move_last(., "mpg"), -carb) %>% head()
  • 1
    Why do you say there is no ready made solution in dplyr? Akrun's solution example apears to be one. – dule arnaux May 10 '17 at 20:22
  • True, dplyr does allow for this, but Hadley notes that moving/reordering variables is "not usually that important, so you'll need to muddy along with select() for now." github.com/tidyverse/dplyr/issues/2838 – Arthur Yip Jun 5 '17 at 4:01


  • The last two words in the question are: using dplyr. This answer does not use dplyr. – parasietje Jul 18 '18 at 13:48

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