# Increment by 1 for every change in column

Lets say I have the following data frame

``````set.seed(123)
df <- data.frame(var1=(runif(10)>0.5)*1)
``````

`var1` could have any type / number of levels not specifically 0 and 1s

I would like to create a `var2` which increments by 1 every time `var1` changes without using a `for loop`

Expected result in this case is:

``````data.frame(var1=(runif(10)>0.5)*1, var2=c(1, 2, 3, 4, 4, 5, 6, 6, 6, 7))

var1 var2
0    1
1    2
0    3
1    4
1    4
0    5
1    6
1    6
1    6
0    7
``````

Another option for the data frame could be:

``````df <- data.frame(var1=c("a", "a", "1", "0", "b", "b", "b", "c", "1", "1"))
``````

in this case the result should be:

``````var1 var2
a    1
a    1
1    2
0    3
b    4
b    4
b    4
c    5
1    6
1    6
``````

``````df\$var2 <- cumsum(c(0,as.numeric(diff(df\$var1))!=0))
``````

But if you don't want to use `diff` you can still use:

``````df\$var2 <- c(0,cumsum(as.numeric(with(df,var1[1:(length(var1)-1)] != var1[2:length(var1)]))))
``````

It starts at 0, not at 1 but I'm sure you see how to change it if you want to.

How about using `diff()` and `cumsum()`. For example

``````df\$var2 <- cumsum(c(1,diff(df\$var1)!=0))
``````
• The levels of `var1` could be anything not just 0 and or 1. Like `c("a", "a", "1", "0", "b", "b", "a", ....)` Commented Apr 15, 2015 at 21:33
• I get the `Warning message: In is.na(r) : is.na() applied to non-(list or vector) of type 'NULL'` Commented Apr 15, 2015 at 21:40
• you need to use `as.numeric(diff(df\$var1))==0` and not diff() alone Commented Apr 15, 2015 at 21:44

These look like a run-length encoding (rle)

``````x = c("a", "a", "1", "0", "b", "b", "b", "c", "1", "1")
r = rle(x)
``````

with

``````> rle(x)
Run Length Encoding
lengths: int [1:6] 2 1 1 3 1 2
values : chr [1:6] "a" "1" "0" "b" "c" "1"
``````

This says that the first value ("a") occurred 2 times in a row, then "1" occurred once, etc. What you're after is to create a sequence along the 'lengths', and replicate each element of sequence by the number of times the element occurs, so

``````> rep(seq_along(r\$lengths), r\$lengths)
[1] 1 1 2 3 4 4 4 5 6 6
``````

The other answers are semi-deceptive, since they rely on the column being a factor(); they fail when the column is actually a character().

``````> diff(x)
Error in r[i1] - r[-length(r):-(length(r) - lag + 1L)] :
non-numeric argument to binary operator
``````

A work-around would be to map the characters to integers, along the lines of

``````> diff(match(x, x))
[1]  0  2  1  1  0  0  3 -5  0
``````

Hmm, but having said that I find that rle's don't work on factors!

``````> f = factor(x)
> rle(f)
Error in rle(factor(x)) : 'x' must be a vector of an atomic type
> rle(as.vector(f))
Run Length Encoding
lengths: int [1:6] 2 1 1 3 1 2
values : chr [1:6] "a" "1" "0" "b" "c" "1"
``````

I am only copying Martin Morgan's `rle()` answer above, but implementing it using tidyverse conventions in order to add the grouping column directly to a dataframe/tibble, which is how I end up using is most of the time.

``````## Using run-length-encoding, create groups of identical values and put that
## common grouping identifier into a `grp` column.
library(tidyverse)

set.seed(42)

df <- tibble(x = sample(c(0,1), size=20, replace=TRUE, prob = c(0.2, 0.8)))

df %>%
mutate(grp = rle(x)\$lengths %>% {rep(seq(length(.)), .)})
#> # A tibble: 20 x 2
#>        x   grp
#>    <dbl> <int>
#>  1     0     1
#>  2     0     1
#>  3     1     2
#>  4     0     3
#>  5     1     4
#>  6     1     4
#>  7     1     4
#>  8     1     4
#>  9     1     4
#> 10     1     4
#> 11     1     4
#> 12     1     4
#> 13     0     5
#> 14     1     6
#> 15     1     6
#> 16     0     7
#> 17     0     7
#> 18     1     8
#> 19     1     8
#> 20     1     8
``````

Here is another solution with base R using `inverse.rle()`:

``````df <- data.frame(var1=c("a", "a", "1", "0", "b", "b", "b", "c", "1", "1"))
r <- rle(as.character(df\$var1))
r\$values <- seq_along(r\$values)
df\$var2 <- inverse.rle(r)
``````

Short version:

``````df\$var2 <- with(rle(as.character(df\$var1)), rep(seq_along(values), lengths))
``````

Here is a solution with `data.table`:

``````library("data.table")
dt <- data.table(var1=c("a", "a", "1", "0", "b", "b", "b", "c", "1", "1"))
dt[, var2:=rleid(var1)]
``````

As of `dplyr 1.1.0`, there is a `consecutive_id()` function you can use. It will increment each time a value changes. For example

``````library(dplyr)
df %>% mutate(var2=consecutive_id(var1))
#    var1 var2
# 1     0    1
# 2     1    2
# 3     0    3
# 4     1    4
# 5     1    4
# 6     0    5
# 7     1    6
# 8     1    6
# 9     1    6
# 10    0    7
``````

Using dplyr::lag

``````library(dplyr)
df <- df %>% mutate(var2 = cumsum(row_number() == 1 | (var1 != dplyr::lag(var1))))
``````