I am using the `data.table`

package to complete some analyses. One of the steps I am taking involves using the `by =`

function to obtain aggregate statistics. However, the aggregates must be calculated on the unique results in each `by`

subset. I have been using `unique`

and keys to ensure that each `by`

group consists of distinct records. Something vaguely like the below:

```
dt_new <- dt_old[,uFunc_MyFunction(x = unique(.SD)),by = grouping_var]
```

I noticed that the key on `.SD`

seemed to vary based on the key set for `dt_old`

and the `by =`

statement. Obviously, this was having an effect on whether my resulting subsets were unique or not.

I wanted to get some clarity, so I wrote the below.

```
library(data.table)
set.seed(1554)
dt_example <- data.table(id = 1:50,
site = sample(x = c("A","B","C"),
size = 50,
replace = TRUE,
prob = c(0.4,0.4,0.2)),
group = sample(x = c("Eta","Mu","Omicron","Psi"),
size = 50,
replace = TRUE),
team = sample(x = 1:3,
size = 50,
replace = TRUE,
prob = c(0.2,0.3,0.5)))
setkey(x = dt_example,
group,
team)
> dt_example[,as.list(key(.SD)),by = site]
site V1 V2
1: B group team
2: A group team
3: C group team
setkey(x = dt_example,
site,
group,
team)
> dt_example[,as.list(key(.SD)),by = site]
Empty data.table (0 rows) of 1 col: site
```

What I am trying to understand is why, in the first version, the key for `.SD`

is consistent, while, in the second version, `.SD`

had no key at all. I think it has something to do with the fact that the `by =`

column isn't directly included in `.SD`

, which is breaking the key, but I wanted to confirm my logic.

So, my question is this: why does the subset of a data table, `.SD`

, have no key when one of the columns which comprises the key of the parent data table is used as a `by`

grouping variable?

`unique(.SD)`

by group in the first place? Feels very inefficient. Can't you just do`data_new <- unique(dt_old)`

and then run your function by group? – David Arenburg Jun 8 '16 at 17:58