I'm trying to wrap some dplyr magic inside a function to produce a data.frame that I then print with xtable.

The ultimate aim is to have a dplyr version of this working, and reading around I came across the very useful `summarise_each()`

function which after subsetting with `regroup()`

(since this is within a function) I can then use to get all columns parsed.

The problem I've encountered (so far) is with calling `is.na()`

from within `summarise_each(funs(is.na))`

as I'm told `Error: expecting a single value`

.

I'm purposefully *not* posting my function just yet but a minimal example follows (NB - This uses `group_by()`

whilst in my function I replace this with `regroup()`

)...

```
library(dplyr)
library(magrittr)
> t <- data.frame(grp = rbinom(10, 1, 0.5),
a = as.factor(round(rnorm(10))),
b = rnorm(10),
c = rnorm(10))
t %>%
group_by(grp) %>% ## This is replaced with regroup() in my function
summarise_each(funs(is.na))
Error: expecting a single value
```

Running this fails, and its the call to `is.na()`

that is the problem since if I instead work out the number of observations in each (required to derive the proportion of missing) it works...

```
> t %>%
group_by(grp) %>% ## This is replaced with regroup() in my function
summarise_each(funs(length))
Source: local data frame [2 x 4]
grp a b c
1 0 8 8 8
2 1 2 2 2
```

The real problem though is that I do not need just `is.na()`

within each column, but the `sum(is.na())`

as per the linked example so what I really would like is...

```
> t %>%
group_by(grp) %>% ## This is replaced with regroup() in my function
summarise_each(funs(propmiss = sum(is.na) / length))
```

But the problem is that `sum(is.na)`

doesn't work as I expect it to (likely because my expectation is wrong!)...

```
> t %>%
group_by(grp) %>% ## This is replaced with regroup() in my function
summarise_each(funs(nmiss = sum(is.na)))
Error in sum(.Primitive("is.na")) : invalid 'type' (builtin) of argument
```

I tried calling `is.na()`

explicitly with the brackets but that too returns an error...

```
> t %>%
+ group_by(grp) %>% ## This is replaced with regroup() in my function
+ summarise_each(funs(nmiss = sum(is.na())))
Error in is.na() : 0 arguments passed to 'is.na' which requires 1
```

Any advice or pointers to documentation would be very gratefully received.

Thanks,

slackline