How about this?

```
tmp = dt[dt[, list(I=.I[1]), by=list(v1)]$I]
setkey(dt)[tmp]
v1 v2
1: a 1
2: a 1
3: b 2
4: b 2
5: c 1
6: c 1
```

Bigger data and benchmarking:

```
# create some data
require(data.table)
require(microbenchmark)
set.seed(1)
ff <- function() paste0(sample(letters, sample(5:8, 1), TRUE), collapse="")
ll <- unique(replicate(1e4, ff()))
DT <- data.table(v1=sample(ll, 1e6, TRUE), v2=sample(1:1e4, 1e6, TRUE))
# add functions
eddi <- function(dt=copy(DT)) {
dt[, list(v2=v2[v2 == v2[1]]), by = v1]
}
andrey <- function(dt=copy(DT)) {
dt[, .SD[v2 == v2[1],], by = v1]
}
arun <- function(dt=copy(DT)) {
tmp = dt[dt[, list(I=.I[1]), by=list(v1)]$I]
setkey(dt)[tmp]
}
# benchmark
microbenchmark(a1 <- eddi(), a2 <- andrey(), a3 <- arun(), times=2)
Unit: milliseconds
expr min lq median uq max neval
a1 <- eddi() 342.4429 342.4429 348.1604 353.8780 353.8780 2
a2 <- andrey() 5810.8947 5810.8947 5829.0742 5847.2537 5847.2537 2
a3 <- arun() 494.6861 494.6861 509.3022 523.9182 523.9182 2
setkey(a3, NULL)
> identical(a1, a2) # [1] TRUE
> identical(a1, a3) # [1] TRUE
```