I'm trying to do a calculation using an home made function inside a `mutate`

call and it's not doing what I'm expecting it to do.

Here is a reproducible example:

```
library(dplyr)
#the data
dd <- structure(list(fire_zone = c("ET", "EJB", "WJB"), base_med = c(1, 1, 2)), class = "data.frame", row.names = c(NA, -3L))
# my home made function
med2lambda <- function(med) polyroot(c(-0.02, 1/3 - med, 1)) %>% {suppressWarnings(as.numeric(.))} %>% max
```

So, what my function does is to estimate the lambda associated to the median from a Poisson distribution by calculating the root of a quadratic function. Despite the long explanation, it's actually pretty basic:

```
med2lambda(1)
[1] 0.695426
med2lambda(2)
[1] 1.678581
```

Now, I want to use it in a `mutate`

call to add a field giving the lambda associated to each median in the table:

```
dd %>% mutate(lambda = med2lambda(base_med), log = log(base_med))
fire_zone base_med lambda log
1 ET 1 2.128966 0.0000000
2 EJB 1 2.128966 0.0000000
3 WJB 2 2.128966 0.6931472
```

The result is wrong, mutate actually gives me the results of:

```
med2lambda(dd$base_med)
[1] 2.128966
```

I've added the `log`

call in the `mutate`

to give an idea of what it should do. `log`

works great in the `mutate`

as it is called element by element.

Any insight about this behavior would be appreciated.

`group_by(base_med) %>%`

before your`mutate`

call. – JasonAizkalns Sep 14 at 16:56`log`

function for example – Bastien Sep 14 at 16:59`log`

is vectorised, your function`med2lambda`

is not. Please see my answer below. – Maurits Evers Sep 14 at 17:02