# fast subsetting in data.table in R

Given a `data.table`, I would like to subset the items in there quickly. For example:

``````dt = data.table(a=1:10, key="a")
dt[a > 3 & a <= 7]
``````

This is pretty slow still. I know I can do joins to get individual rows but is there a way to fact that the `data.table` is sorted to get quick subsets of this kind?

This is what I'm doing:

``````dt1 = data.table(id = 1, ym = c(199001, 199006, 199009, 199012), last_ym = c(NA, 199001, 199006, 199009), v = 1:4, key=c("id", "ym"))
dt2 = data.table(id = 1, ym = c(199001, 199002, 199003, 199004, 199005, 199006, 199007, 199008, 199009, 199010, 199011, 199012), v2 = 1:12, key=c("id","ym"))
``````

For each `id`, here there is only 1, and `ym` in `dt1`, I would like to sum the values of `v2` between current `ym` in `dt1` and the last `ym` in `dt1`. That is, for `ym == 199006` in `dt1` I would like to return `list(v2 = 2 + 3 + 4 + 5 + 6)`. These are the values of `v2` in `dt2` that are equal to or less than the current `ym` (excluding the previous ym). In code:

``````expr = expression({ #browser();
cur_id = id;
cur_ym = ym;
cur_dtb = dt2[J(cur_id)][ym <= cur_ym & ym > last_ym];
setkey(cur_dtb , ym);
list(r = sum(cur_dtb\$v2))
})

dt1[,eval(expr ),by=list(id, ym)]
``````
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I don't see how this is slow at all? It took 0.28 sec using `system.time` on a `data.table` of 10 million rows. –  Señor O Jul 5 '13 at 18:38
yes but if you have to do this 100,000 times, that's slow! i might have to come up with a different alg for what i'm doing. –  Alex Jul 5 '13 at 18:48
Are you using a `for` loop? –  Señor O Jul 5 '13 at 18:51
no, i'm not. let me put an example up. –  Alex Jul 5 '13 at 18:52
Your example doesn't run at all for me. :/ –  joran Jul 5 '13 at 19:12

To avoid the logical condition, perform a rolling join of `dt1` and `dt2`. Then shift `ym` forward by one position within `id`. Finally, sum over `v2` by `id` and `ym`:

``````setkey(dt1, id, last_ym)
setkey(dt2, id, ym)
dt1[dt2,, roll = TRUE][
, list(v2 = v2, ym = c(last_ym[1], head(ym, -1))), by = id][
, list(v2 = sum(v2)), by = list(id, ym)]
``````

Note that we want to sum everything since the `last_ym` so the key on `dt1` must be `last_ym` rather than `ym`.

The result is:

``````   id     ym v2
1:  1 199001  1
2:  1 199006 20
3:  1 199009 24
4:  1 199012 33
``````

UPDATE: correction

-
sorry, i'm a bit confused by all the `setkey` expressions.. those don't look correct...? –  Alex Jul 5 '13 at 20:14
I have fixed them to correspond to what I was actually using and added some explanation. –  G. Grothendieck Jul 5 '13 at 20:25

Regardless of the fact that `data.table` is sorted, you will be limited to the amount of time it takes to evaluate `a > 3 & a <= 7` in the first place:

``````> dt = data.table(a=1:10000000, key="a")
> system.time(dt\$a > 3 & dt\$a <= 7)
user  system elapsed
0.18    0.01    0.20
> system.time(dt[,a > 3 & a <= 7])
user  system elapsed
0.18    0.05    0.24
> system.time(dt[a > 3 & a <= 7])
user  system elapsed
0.25    0.07    0.31
``````

Alternative approach:

``````> system.time({Indices = dt\$a > 3 & dt\$a <= 7 ; dt[Indices]})
user  system elapsed
0.28    0.03    0.31
``````

Multiple Subsets

There can be a speed issue here if you break up factors on an ad hoc basis rather than doing it all at once first:

``````> dt <- data.table(A=sample(letters, 10000, replace=T))
> system.time(for(i in unique(dt\$A)) dt[A==i])
user  system elapsed
5.16    0.42    5.59
> system.time(dt[,.SD,by=A])
user  system elapsed
0.32    0.03    0.36
``````
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just posted an example, maybe you can think of a better way to do this –  Alex Jul 5 '13 at 19:07