70

So, if one wishes to apply an operation row by row in dplyr, one can use the rowwise function, for example: Applying a function to every row of a table using dplyr?

Is there a unrowwise function which you can use to stop doing operations row by row? Currently, it seems adding a group_by after the rowwise removes row operations, e.g.

data.frame(a=1:4) %>% rowwise() %>% group_by(a)
# ...
# Warning message:
# Grouping rowwise data frame strips rowwise nature 

Does this mean one should use group_by(1) if you wish to explicitly remove rowwise?

2
  • 9
    Does ungroup() work?
    – r2evans
    Apr 21, 2015 at 3:44
  • I rolled-back the title edit as it is not clear to me that rowwise creates a grouped_df. Also, see this related issue. github.com/hadley/dplyr/pull/553
    – Alex
    Oct 22, 2015 at 22:00

3 Answers 3

90

As found in the comments and the other answer, the correct way of doing this is to use ungroup().

The operation rowwise(df) sets one of the classes of df to be rowwise_df. We can see the methods on this class by examining the code here, which gives the following ungroup method:

#' @export
ungroup.rowwise_df <- function(x) {
  class(x) <- c( "tbl_df", "data.frame")
  x
}

So we see that ungroup is not strictly removing a grouped structure, instead it just removes the rowwise_df class added from the rowwise function.

2
  • 1
    Link no longer works :-( Too bad the code wasn't copied here instead.
    – mkosmala
    Dec 18, 2018 at 17:28
  • but, it is, as in, the code block is the relevant code that deals with ungroup
    – Alex
    Dec 19, 2018 at 9:23
14

Just use ungroup()

The following produces a warning:

data.frame(a=1:4) %>% rowwise() %>% 
  group_by(a)
#Warning message:
#Grouping rowwise data frame strips rowwise nature

This does not produce the warning:

data.frame(a=1:4) %>% rowwise() %>% 
  ungroup() %>% 
  group_by(a)
6

You can use as.data.frame(), like below

> data.frame(a=1:4) %>% rowwise() %>% group_by(a)
# A tibble: 4 x 1
# Groups:   a [4]
      a
* <int>
1     1
2     2
3     3
4     4
Warning message:
Grouping rowwise data frame strips rowwise nature 

> data.frame(a=1:4) %>% rowwise() %>% as.data.frame() %>% group_by(a)
# A tibble: 4 x 1
# Groups:   a [4]
      a
* <int>
1     1
2     2
3     3
4     4

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