# How do I extract the unique rows from a subset of columns in a data table?

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")]
``````
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as far as clarity: `unique(jk[c4 >= 10, list(c1, c2)])` seems high on the list. –  Justin Oct 24 '13 at 18:54

The most straightforward, to me at least, would be either `unique(jk[c4 >= 10, list(c1, c2)])` as suggested by @Justin, or `unique(jk[c4 >= 10, c("c1", "c2"), with = F])`. The latter of these is the quickest of the four suggestions so far, at least on my laptop:

``````microbenchmark(
a=jk[c4 >= 10, list(c1,c2), keyby = list(c1,c2)][,c("c1","c2"),with=F],
b=jk[c4 >= 10, unique(.SD), .SDcols = c("c1","c2")],
c=unique(jk[c4>=10,list(c1,c2)]),
d=unique(jk[c4>=10,c("c1","c2"),with=F])
)

Unit: microseconds
expr      min       lq    median        uq      max neval
a 1378.742 1456.676 1494.9380 1531.1395 2515.796   100
b  906.404  943.072  963.7790  997.4930 3805.846   100
c 1167.125 1201.988 1232.3500 1272.2250 2077.047   100
d  627.768  653.314  669.8625  683.8045  739.808   100
``````
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