The following is the kind of data "types/structure" i'm working with, it includes 3 factor variables.

```
library(data.table)
library(ggplot2)
DT <- data.table(mtcars)
DT[["cyl"]] <- factor(DT[["cyl"]])
DT[["gear"]] <- factor(DT[["gear"]])
DT[["vs"]] <- factor(DT[["vs"]])
DT <- DT[, c("cyl", "gear", "vs"), with=F]
setkey(DT, cyl, gear, vs)
```

**Context**
I've been using this function to aggregate data with `data.table`

interactively and works just fine.
The problem is when i try to include it in another function.
I don't have much experience programming, so any guidence will be greatly appreciated. I imagine this has to do with enviroments, and how the arguments are passed but i don't really know how to solve it.

```
grp <- function(x) {
percentage = as.numeric(table(x)/length(x))
list(x = levels(x),
percentage = percentage,
label = paste( round( as.numeric(table(x)/length(x), 0 ) * 100 ), "%")
)
}
```

This would be the expected output:

```
DT_agg <- DT[, grp(cyl), by=vs]
```

**Question**
The idea of the second function is to take a `data.frame/data.table`

object, apply the previous function including the option to use one or two grouping variables.
The final idea, would be to include this last object in a ggplot() call, and use the grouping variables as facets, calling the agg() function from the ggplot() call.

```
agg <- function(data, x, groupby1, groupby2 = NULL,...){
data = substitute(data)
x = substitute(x)
groupby1 = substitute(groupby1)
groupby2 = substitute(groupby2)
if(is.null(groupby2)){
DT_agg = data[, grp(x), by=groupby1]
} else {
DT_agg = data[, grp(x), by=groupby1,groupby2]
}
DT_agg
}
agg(data = DT, x = cyl, groupby1 = vs)
Error in unique.default(x, nmax = nmax) :
unique() applies only to vectors
```

## EDIT After agstudy's answer

```
agg <- function(data, x, groupby1, groupby2 = NULL,...){
data = eval(substitute(data))
x = substitute(data$x) # changed this bit (it was producing an error)
groupby1 = substitute(groupby1)
groupby2 = substitute(groupby2)
if(is.null(eval(substitute(groupby2)))) {
eval(data)[, grp(eval(x)), by=groupby1]
} else {
eval(data)[, grp(eval(x)), by=list(eval((groupby1)),eval(groupby2))]
}
}
```

For some reason the provided solution in the answer isn't working for me.
Agstudy's `agg()`

provides an answer, it runs but the output isn't. I've tried a few changes, but it's not working right.

Using the grp() function defined above i get this result that's correct:

```
ok = DT[, grp(cyl), by = vs]
print(ok)
# vs x percentage label
# 1: 1 4 0.71428571 71%
# 2: 1 6 0.28571429 29%
# 3: 1 8 0.00000000 0%
# 4: 0 4 0.05555556 6%
# 5: 0 6 0.16666667 17%
# 6: 0 8 0.77777778 78%
```

Using agstudy version of `agg()`

i get this that's not correct:

```
not_ok = agg(DT, cyl, vs)
print(not_ok)
# groupby1 x percentage label
# 1: 1 4 0.34375 34%
# 2: 1 6 0.21875 22%
# 3: 1 8 0.43750 44%
# 4: 0 4 0.34375 34%
# 5: 0 6 0.21875 22%
# 6: 0 8 0.43750 44%
```

I wonder how can the function work correctly on it's own (1st case) and not inside the agg function.

`DT[, grp(cyl), by = vs]`

or`agg(DT, cyl, vs)`

– mnel Jan 5 '14 at 21:52`data.table`

version? I'm using the cran version, 1.8.10. – marbel Jan 5 '14 at 22:23`data.table`

, agstudy's original answer worked perfect. I'b getting the ok version in both ways. I've written another "answer" with the complete working code so it's easier to find. – marbel Jan 5 '14 at 23:16