If all you want is the row numbers rather than the rows themselves, then use `which = TRUE`

, *not* `.I`

.

```
DT[X > 20, which = TRUE]
# [1] 4 5
```

That way you get the benefits of optimization of `i`

, for example fast joins or using an automatic index. The `which = TRUE`

makes it return early with just the row numbers.

Here's the manual entry for the `which`

argument inside data.table :

`TRUE`

returns the row numbers of `x`

that `i`

matches to. If `NA`

, returns
the row numbers of `i`

that have no match in `x`

. By default `FALSE`

and the
rows in `x`

that match are returned.

### Explanation:

Notice there is a specific relationship between `.I`

and the `i = ..`

argument in `DT[i = .., j = .., by = ..]`

Namely, `.I`

is a vector of row numbers of the subsetted table.

```
### Lets create some sample data
set.seed(1)
LL <- sample(LETTERS[1:5], 20, TRUE)
DT <- data.table(X=LL)
```

### look at the difference between subsetting the whole table, and subsetting just `.I`

```
DT[X == "B", .I]
# [1] 1 2 3 4 5 6
DT[ , .I[X == "B"] ]
# [1] 1 2 5 11 14 19
```

`reproduce(<your data>)`

. Instructions are here: bit.ly/SORepro - How to make a great R reproducible example