351

How would one change this input (with the sequence: time, in, out, files):

Time   In    Out  Files
1      2     3    4
2      3     4    5

To this output (with the sequence: time, out, in, files)?

Time   Out   In  Files
1      3     2    4
2      4     3    5

Here's the dummy R data:

table <- data.frame(Time=c(1,2), In=c(2,3), Out=c(3,4), Files=c(4,5))
table
##  Time In Out Files
##1    1  2   3     4
##2    2  3   4     5
3
  • 4
    help(Extract) also known as ?'['
    – Joris Meys
    Apr 11 '11 at 12:03
  • 3
    In addition to @Joris's suggesting, Try reading sections 2.7 and section 5 of the "An Introduction to R" manual: cran.r-project.org/doc/manuals/R-intro.html Apr 11 '11 at 12:06
  • 5
    One additional issue: all the answers require the full list of columns, otherwise they result in subsetting. What if we only want to list a few columns to be ordered as the first ones, but also retaining all the others? May 24 '16 at 6:47

11 Answers 11

382

Your dataframe has four columns like so df[,c(1,2,3,4)]. Note the first comma means keep all the rows, and the 1,2,3,4 refers to the columns.

To change the order as in the above question do df2[,c(1,3,2,4)]

If you want to output this file as a csv, do write.csv(df2, file="somedf.csv")

9
  • 38
    This is ok when you have a limited number of columns, but what if you have for example 50 columns, it would take too much time to type all column numbers or names. What would be a quicker solution? Aug 30 '13 at 12:01
  • 61
    @user4050: in that case you can use the ":" syntax, e.g. df[,c(1,3,2,4,5:50)].
    – dalloliogm
    Feb 25 '14 at 12:20
  • 1
    to put the columns in idcols at the start: idcols <- c("name", "id2", "start", "duration"); cols <- c(idcols, names(cts)[-which(names(cts) %in% idcols)]); df <- df[cols]
    – kasterma
    Jun 10 '14 at 12:49
  • 15
    @user4050: you can also use df[,c(1,3,2,4:ncol(df))] when you don't know how many columns there are.
    – arekolek
    Mar 15 '16 at 14:28
  • 1
    You can also use dput(colnames(df)), it prints column names in R character format. You can then rearrange the names.
    – Chris
    Jul 27 '16 at 9:14
189
# reorder by column name
data <- data[c("A", "B", "C")]

#reorder by column index
data <- data[c(1,3,2)]
4
  • 1
    Question as a beginner, can you combine ordering by index and by name? E.g. data <- data[c(1,3,"Var1", 2)]? Dec 21 '14 at 15:56
  • 7
    @BramVanroy nope, c(1,3,"Var1", 2) will be read as c("1","3","Var1", "2") because vectors can contain data of only one type, so types are promoted to the most general type present. Because there are no columns with the character names "1", "3", etc. you'll get "undefined columns". list(1,3,"Var1", 2) keeps values without type promotion, but you can't use a list in the above context. Jan 18 '15 at 16:05
  • 2
    Why does the mtcars[c(1,3,2)] subsetting work? I would have expected an error relating to incorrect dimensions or similar... Shouldn't it be mtcars[,c(1,3,2)]?
    – landroni
    Aug 30 '15 at 13:07
  • 1
    data.frames are lists under the hood with columns as first order items Nov 24 '15 at 10:31
117

You can also use the subset function:

data <- subset(data, select=c(3,2,1))

You should better use the [] operator as in the other answers, but it may be useful to know that you can do a subset and a column reorder operation in a single command.

Update:

You can also use the select function from the dplyr package:

data = data %>% select(Time, out, In, Files)

I am not sure about the efficiency, but thanks to dplyr's syntax this solution should be more flexible, specially if you have a lot of columns. For example, the following will reorder the columns of the mtcars dataset in the opposite order:

mtcars %>% select(carb:mpg)

And the following will reorder only some columns, and discard others:

mtcars %>% select(mpg:disp, hp, wt, gear:qsec, starts_with('carb'))

Read more about dplyr's select syntax.

5
  • 6
    There are some reasons not to use subset(), see this question.
    – MERose
    Nov 16 '14 at 23:56
  • 2
    Thank you. In any case I would now use the select function from the dplyr package, instead of subset.
    – dalloliogm
    Nov 18 '14 at 14:14
  • 101
    When you want to bring a couple of columns to the left hand side and not drop the others, I find everything() particularly awesome; mtcars %>% select(wt, gear, everything())
    – guyabel
    Feb 19 '15 at 10:32
  • 2
    Here is another way to use the everything() select_helper function to rearrange the columns to the right/end. stackoverflow.com/a/44353144/4663008 github.com/tidyverse/dplyr/issues/2838 Seems like you will need to use 2 select()'s to move some columns to the right end and others to the left.
    – Arthur Yip
    Jun 5 '17 at 4:21
  • 4
    new function dplyr::relocate is exactly for this. see H 1 's answer below
    – Arthur Yip
    Apr 20 '20 at 7:03
45

As mentioned in this comment, the standard suggestions for re-ordering columns in a data.frame are generally cumbersome and error-prone, especially if you have a lot of columns.

This function allows to re-arrange columns by position: specify a variable name and the desired position, and don't worry about the other columns.

##arrange df vars by position
##'vars' must be a named vector, e.g. c("var.name"=1)
arrange.vars <- function(data, vars){
    ##stop if not a data.frame (but should work for matrices as well)
    stopifnot(is.data.frame(data))

    ##sort out inputs
    data.nms <- names(data)
    var.nr <- length(data.nms)
    var.nms <- names(vars)
    var.pos <- vars
    ##sanity checks
    stopifnot( !any(duplicated(var.nms)), 
               !any(duplicated(var.pos)) )
    stopifnot( is.character(var.nms), 
               is.numeric(var.pos) )
    stopifnot( all(var.nms %in% data.nms) )
    stopifnot( all(var.pos > 0), 
               all(var.pos <= var.nr) )

    ##prepare output
    out.vec <- character(var.nr)
    out.vec[var.pos] <- var.nms
    out.vec[-var.pos] <- data.nms[ !(data.nms %in% var.nms) ]
    stopifnot( length(out.vec)==var.nr )

    ##re-arrange vars by position
    data <- data[ , out.vec]
    return(data)
}

Now the OP's request becomes as simple as this:

table <- data.frame(Time=c(1,2), In=c(2,3), Out=c(3,4), Files=c(4,5))
table
##  Time In Out Files
##1    1  2   3     4
##2    2  3   4     5

arrange.vars(table, c("Out"=2))
##  Time Out In Files
##1    1   3  2     4
##2    2   4  3     5

To additionally swap Time and Files columns you can do this:

arrange.vars(table, c("Out"=2, "Files"=1, "Time"=4))
##  Files Out In Time
##1     4   3  2    1
##2     5   4  3    2
2
  • Very nice function. I added a modified version of this function to my personal package. Jul 6 '16 at 12:12
  • 2
    This is really useful - it's going to save me a lot of time when I just want to move one column from the end of a really wide tibble to the beginning
    – Mrmoleje
    May 20 '19 at 13:48
42

A dplyr solution (part of the tidyverse package set) is to use select:

select(table, "Time", "Out", "In", "Files") 

# or

select(table, Time, Out, In, Files)
5
  • 3
    The best option for me. Even if I had to install it, it is clearly the clearest possibility.
    – Garini
    Jun 18 '18 at 15:41
  • 20
    Tidyverse (dplyr in fact) also has the option to select groups of columns, for example to move the Species variable to the front: select(iris, Species, everything()). Also note that quotes are not needed. Aug 16 '18 at 12:34
  • 4
    It's important to note that this will drop all columns which are not explicitly specified unless you include everything() as in PaulRougieux's comment
    – divibisan
    Mar 21 '19 at 16:40
  • dplyr's group will also rearrange the variables, so watch out when using that in a chain. Oct 18 '19 at 11:15
  • As of dplyr version 1.0.0 they added a relocate() function that's intuitive and easy to read. It's especially helpful if you just want to add columns after or before a specific column.
    – otteheng
    Dec 16 '20 at 20:49
27

Maybe it's a coincidence that the column order you want happens to have column names in descending alphabetical order. Since that's the case you could just do:

df<-df[,order(colnames(df),decreasing=TRUE)]

That's what I use when I have large files with many columns.

1
  • !! WARNING !! data.table turns TARGET into an int vector: TARGET <- TARGET[ , order(colnames(TARGET), decreasing=TRUE)] to fix that: TARGET <- as.data.frame(TARGET) TARGET <- TARGET[ , order(colnames(TARGET), decreasing=TRUE)] Aug 10 '18 at 0:51
24

dplyr version 1.0.0 includes the relocate() function to easily reorder columns:

dat <- data.frame(Time=c(1,2), In=c(2,3), Out=c(3,4), Files=c(4,5))

library(dplyr) # from version 1.0.0 only

dat %>%
  relocate(Out, .before = In)

or

dat %>%
  relocate(Out, .after = Time)
1
  • That's a very neat solution. Thanks!
    – Sandy
    Jul 5 at 8:53
19

You can use the data.table package:

How to reorder data.table columns (without copying)

require(data.table)
setcolorder(DT,myOrder)
17

The three top-rated answers have a weakness.

If your dataframe looks like this

df <- data.frame(Time=c(1,2), In=c(2,3), Out=c(3,4), Files=c(4,5))

> df
  Time In Out Files
1    1  2   3     4
2    2  3   4     5

then it's a poor solution to use

> df2[,c(1,3,2,4)]

It does the job, but you have just introduced a dependence on the order of the columns in your input.

This style of brittle programming is to be avoided.

The explicit naming of the columns is a better solution

data[,c("Time", "Out", "In", "Files")]

Plus, if you intend to reuse your code in a more general setting, you can simply

out.column.name <- "Out"
in.column.name <- "In"
data[,c("Time", out.column.name, in.column.name, "Files")]

which is also quite nice because it fully isolates literals. By contrast, if you use dplyr's select

data <- data %>% select(Time, out, In, Files)

then you'd be setting up those who will read your code later, yourself included, for a bit of a deception. The column names are being used as literals without appearing in the code as such.

3
data.table::setcolorder(table, c("Out", "in", "files"))
1
  • pls state the library you take the function setcolorder from.
    – Triamus
    Jun 14 '19 at 9:44
1

The only one I have seen work well is from here.

 shuffle_columns <- function (invec, movecommand) {
      movecommand <- lapply(strsplit(strsplit(movecommand, ";")[[1]],
                                 ",|\\s+"), function(x) x[x != ""])
  movelist <- lapply(movecommand, function(x) {
    Where <- x[which(x %in% c("before", "after", "first",
                              "last")):length(x)]
    ToMove <- setdiff(x, Where)
    list(ToMove, Where)
  })
  myVec <- invec
  for (i in seq_along(movelist)) {
    temp <- setdiff(myVec, movelist[[i]][[1]])
    A <- movelist[[i]][[2]][1]
    if (A %in% c("before", "after")) {
      ba <- movelist[[i]][[2]][2]
      if (A == "before") {
        after <- match(ba, temp) - 1
      }
      else if (A == "after") {
        after <- match(ba, temp)
      }
    }
    else if (A == "first") {
      after <- 0
    }
    else if (A == "last") {
      after <- length(myVec)
    }
    myVec <- append(temp, values = movelist[[i]][[1]], after = after)
  }
  myVec
}

Use like this:

new_df <- iris[shuffle_columns(names(iris), "Sepal.Width before Sepal.Length")]

Works like a charm.

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