Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

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

I recently discovered binary search in data.table. If the table is sorted on multiple keys it possible to search on the 2nd key only ?

DT = data.table(x=sample(letters,1e7,T),y=sample(1:25,1e7,T),rnorm(1e7))
setkey(DT,x,y)
#R> DT[J('x')]
#        x  y       V3
#     1: x  1  0.89109
#     2: x  1 -2.01457
#    ---
#384922: x 25  0.09676
#384923: x 25  0.25168
#R> DT[J('x',3)]
#       x y       V3
#    1: x 3 -0.88165
#    2: x 3  1.51028
#   ---
#15383: x 3 -1.62218
#15384: x 3 -0.63601

EDIT: thanks to @Arun

R> system.time(DT[J(unique(x), 25)])
user  system elapsed
0.220   0.068   0.288
R> system.time(DT[y==25])
user  system elapsed
0.268   0.092   0.359
-
This is now covered one of the Getting Started vignettes on the Rdatatable Github page. – MichaelChirico May 14 '15 at 0:52

Yes, you can pass all values to the first key value and subset with the specific value for the second key.

DT[J(unique(x), 25), nomatch=0]

If you need to subset by more than one value in the second key (e.g. the equivalent of DT[y %in% 25:24]), a more general solution is to use CJ

DT[CJ(unique(x), 25:24), nomatch=0]

Note that CJ by default sorts the columns and sets key to all the columns, which means the result would be sorted as well. If that's not desirable, you should use sorted=FALSE

DT[CJ(unique(x), 25:24, sorted=FALSE), nomatch=0]

There's also a feature request to add secondary keys to data.table in future. I believe the plan is to add a new function set2key.

FR#1007 Build in secondary keys

There is also merge, which has a method for data.table. It builds the secondary key inside it for you, so should be faster than base merge. See ?merge.data.table.

-
thanks, looks a bit inefficient compare t usual data.table performance, though better than R vector search... – statquant Mar 24 '13 at 11:15
Yes, I can't think of a better way. But I don't think it is intended to be used this way, in general. If you check for example, DF[DF\$x == "a" & DF\$y == "25", ] and DT[J("a", 25)] you'll see the difference. – Arun Mar 24 '13 at 11:18
sure but then you have to sort again... anything if we want DF[DF\$x == "a" | DF\$y == "25", ] (OR instead of AND) – statquant Mar 24 '13 at 11:21
@Arun Have edited in the nomatch=0. It's needed, right? Didn't spot that before. – Matt Dowle Apr 2 '13 at 17:34
@MatthewDowle I don't which method would be actually better (for speed and/or added functionality) but named columns in J could define the key to use would be a very hand and powerful option to have, thanks again for your data.table! – Michele Jun 14 '13 at 9:54

Based on this email thread I wrote the following functions:

create_index = function(dt, ..., verbose = getOption("datatable.verbose")) {
cols = data.table:::getdots()
res = dt[, cols, with=FALSE]
res[, i:=1:nrow(dt)]
setkeyv(res, cols, verbose = verbose)
}

JI = function(index, ...) {
index[J(...),i]\$i
}

Here are the results on my system with a larger DT (1e8 rows):

> system.time(DT[J("c")])
user  system elapsed
0.168   0.136   0.306

> system.time(DT[J(unique(x), 25)])
user  system elapsed
2.472   1.508   3.980
> system.time(DT[y==25])
user  system elapsed
4.532   2.149   6.674

> system.time(IDX_y <- create_index(DT, y))
user  system elapsed
3.076   2.428   5.503
> system.time(DT[JI(IDX_y, 25)])
user  system elapsed
0.512   0.320   0.831

If you are using the index multiple times it is worth it.

-
Thanks. I've extended your function for Nth key: github.com/Rdatatable/data.table/issues/804 – jangorecki Sep 10 '14 at 21:20