When I use group_by and summarise in dplyr, I can naturally apply different summary functions to different variables. For instance:

```
library(tidyverse)
df <- tribble(
~category, ~x, ~y, ~z,
#----------------------
'a', 4, 6, 8,
'a', 7, 3, 0,
'a', 7, 9, 0,
'b', 2, 8, 8,
'b', 5, 1, 8,
'b', 8, 0, 1,
'c', 2, 1, 1,
'c', 3, 8, 0,
'c', 1, 9, 1
)
df %>% group_by(category) %>% summarize(
x=mean(x),
y=median(y),
z=first(z)
)
```

results in output:

```
# A tibble: 3 x 4
category x y z
<chr> <dbl> <dbl> <dbl>
1 a 6 6 8
2 b 5 1 8
3 c 2 8 1
```

My question is, how would I do this with summarise_at? Obviously for this example it's unnecessary, but assume I have lots of variables that I want to take the mean of, lots of medians, etc.

Do I lose this functionality once I move to summarise_at? Do I have to use all functions on all groups of variables and then throw away the ones I don't want?

Perhaps I'm just missing something, but I can't figure it out, and I don't see any examples of this in the documentation. Any help is appreciated.

`Map`

functionality can do this,`Map(function(f,v) f(v), c(mean,median,first), df[c("x","y","z")])`

for instance. Maybe`purrr`

's`map`

could do something similar? – thelatemail Sep 13 '17 at 3:51`Map`

- see the results of`mean(df$x); median(df$y); first(df$z)`

and compare to the`Map`

code. – thelatemail Sep 13 '17 at 4:24