Subsetting data.table by not head(key(DT),m), using binary search not vector scan

If I specify n columns as a key of a `data.table`, I'm aware that I can join to fewer columns than are defined in that key as long as I join to the `head` of `key(DT)`. For example, for n=2 :

``````X = data.table(A=rep(1:5, each=2), B=rep(1:2, each=5), key=c('A','B'))
X
A B
1: 1 1
2: 1 1
3: 2 1
4: 2 1
5: 3 1
6: 3 2
7: 4 2
8: 4 2
9: 5 2
10: 5 2

X[J(3)]
A B
1: 3 1
2: 3 2
``````

There I only joined to the first column of the 2-column key of `DT`. I know I can join to both columns of the key like this :

``````X[J(3,1)]
A B
1: 3 1
``````

But how do I subset using only the second column colum of the key (e.g. `B==2`), but still using binary search not vector scan? I'm aware that's a duplicate of :

Subsetting data.table by 2nd column only of a 2 column key, using binary search not vector scan

so I'd like to generalise this question to `n`. My data set has about a million rows and solution provided in dup question linked above doesn't seem to be optimal.

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It's just `X[B==2,]`. Suggested reading: cran.r-project.org/web/packages/data.table/vignettes/… –  Matthew Plourde Apr 2 '13 at 16:57
@MatthewPlourde, are you sure? The vignette you reference has the following sentence that makes your solution sound sub-optimal: "We use the key to take advantage of the fact that the table is sorted and use binary search to find the matching rows. We didn't vector scan; we didn't use ==." –  GSee Apr 2 '13 at 17:08
I may have jumped the gun marking this as a duplicate... –  GSee Apr 2 '13 at 17:16
@GSee Seems like a dup to me. The accepted answer to the dup is good but we'd like to do better; e.g. when `set2key` is implemented. –  Matt Dowle Apr 2 '13 at 17:24
@MatthewDowle That solution doesn't give the correct result for OP's data. –  Matthew Plourde Apr 2 '13 at 17:26

Here is a simple function that will extract the correct unique values and return a data table to use as a key.

`````` X <- data.table(A=rep(1:5, each=4), B=rep(1:4, each=5),
C = letters[1:20], key=c('A','B','C'))
make.key <- function(ddd, what){
# the names of the key columns
zzz <- key(ddd)
# the key columns you wish to keep all unique values
whichUnique <- setdiff(zzz, names(what))
## unique data.table (when keyed)
ud <-  lapply([,whichUnique, with = FALSE], unique)
## append the `what` columns and  a Cross Join of the new
## key columns
do.call(CJ, c(ud,what)[zzz])
}

X[make.key(X, what = list(C = c('a','b'))),nomatch=0]
## A B C
## 1: 1 1 a
## 2: 1 1 b
``````

I'm not sure this will be any quicker than a couple of vector scans on a large data.table though.

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Adding secondary keys is on the feature request list :

FR#1007 Build in secondary keys

In the meantime we are stuck with either vector scan, or the approach used in the answer to the n=2 case linked in the question (which @mnel generalises nicely in his answer).

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