# mutate/transform in R dplyr (Pass custom function)

I am using the new package , dplyr and facing some difficulties.

``````mutate(df,isOdd=digit%%2) or transform(df,isOdd=digit%%2)
``````

Both of which work perfectly.

I am asking a question on passing custom method.

``````IsItOdd <- function(x) {
if(x%%2==0)
result<-"even"
else
result<-"odd"
return(result)
}

transform(df,isOdd=IsItOdd(digit))
``````

This doesnt work because the whole column of all the digit is passed to the function. Is there a way to make this work by just passing that one cell to the function instead of the whole column ?

• `transform(df,isOdd=vapply(digit, IsItOdd, ""))` or `transform(df,isOdd=Vectorize(IsItOdd)(digit))`? Commented Feb 18, 2015 at 8:55

With transform your function has to operate on the vector. You can use `ifelse` instead, which works on vectors:

`````` isOdd <- function(x){ ifelse(x %% 2 == 0, "even", "odd") }
``````

Alternatively you can apply the function to every value in the column with one of the `apply` functions:

`````` isOdd <- function(x){
sapply(x, function(x){
if(x %% 2 == 0){
return("even")
}else{
return("odd")
}
})}
``````
• Can you explain why with transform/mutate the function operates on the entire vector rather than on the individual values? This isn't true with base functions (e.g. sin() or log()). Commented Apr 21, 2018 at 19:03
• @rmcd I'm very interested in your question, maybe worth another thread? I guess `dplyr::mutate` is parsing the function and trying to guess whether to pass in a single value or the whole vector? Commented Apr 22, 2018 at 9:33
• btw you can force the proper behavior by using `dplyr::rowwise` but it's still an interesting question Commented Apr 22, 2018 at 9:39
• @WillCornwell Thanks for the response and the pointer to rowwise, which I was't aware of. I've posted a question here stackoverflow.com/questions/49967559/… Commented Apr 22, 2018 at 15:23

I think you could also use group_by() to tease apart the rows by unique values and subsequently do your computation, like so:

``````df %>% group_by(digit) %>% mutate(isOdd = IsItOdd(digit))
``````

You do not need to use mutate, you can do it in R base or in purr

``````get_rango_edad <- function(x) {
if (x <= 25) {
return("18-25")
} else{
return("26+")
}
}

``````encuestas\$rango_edad <- sapply(encuestas\$edad,get_rango_edad)