I would like to take the unique rows from a data.table, given a subset of columns and a condition in `i`

. What is the best way of going about it? ("Best" in terms of computing speed and short or readable syntax)

```
set.seed(1)
jk <- data.table(c1 = sample(letters,60,replace = TRUE),
c2 = sample(c(TRUE,FALSE),60, replace = TRUE),
c3 = sample(letters,60, replace = TRUE),
c4 = sample.int(10,60, replace = TRUE)
)
```

Say I'd like to find the unique combinations of `c1`

and `c2`

where `c4`

is 10. I can think of a couple of ways to do it but am not sure what is optimal. Whether the columns to extract are keyed or not may also be important.

```
## works but gives an extra column
jk[c4 >= 10, TRUE, keyby = list(c1,c2)]
## this removes extra column
jk[c4 >= 10, TRUE, keyby = list(c1,c2)][,V1 := NULL]
## this seems like it could work
## but no j-expression with a keyby throws an error
jk[c4 >= 10, , keyby = list(c1,c2)]
## using unique with .SD
jk[c4 >= 10, unique(.SD), .SDcols = c("c1","c2")]
```

`unique(jk[c4 >= 10, list(c1, c2)])`

seems high on the list. – Justin Oct 24 '13 at 18:54