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I have some data.tables like so:

x <- data.table(id=rep(1:3, 2), a=1:6)
y <- data.table(id=1:3, b=2:4)

I can merge them like this:

setkey(x, id)
setkey(y, id)
   id a b
1:  1 1 2
2:  1 4 2
3:  2 2 3
4:  2 5 3
5:  3 3 4
6:  3 6 4

Now, I want to create a new column in x based off a and b which is the sum of a and b. I can do this with:

x[y, val:=a + b]

However, now suppose for some reason that the '+' operator is not vectorised. How can I store a row-wise calculation into x where x[y] is needed for the calculation? Also, assume I cannot use mapply (because for my actual problem, mapply is not suited to the function).

I'm trying to use sapply like so to add in a row-wise manner:

x[y, sapply(1:nrow(x), function (i) a[i] + b[i])]

However this returns the incorrect result:

    id V1
 1:  1  3
 2:  1 NA
 3:  1 NA
 4:  1 NA
 5:  1 NA
 6:  1 NA
 7:  2  5
 8:  2 NA
 9:  2 NA
10:  2 NA
11:  2 NA
12:  2 NA
13:  3  7
14:  3 NA
15:  3 NA
16:  3 NA
17:  3 NA
18:  3 NA

If I do this it works:

x[y][, sapply(1:nrow(x), function (i) a[i] + b[i])]
# [1] 3 6 5 8 7 10

BUT when I try and assign this to a column in x, it is not stored (makes sense because it looks like I'm trying to save the new column into x[y]).

x[y][, val:=sapply(1:nrow(x), function (i) a[i] + b[i])]

Is there any way to do the above but save the output into x[, val]? Is this how I am supposed to do it, or is there a more data.table-y way?

x[, val:=x[y][, sapply(1:nrow(x), function (i) a[i] + b[i])]]
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This would be easier to answer if you give a better example of the function you want to vectorize. –  mnel Apr 30 '13 at 4:31
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1 Answer

up vote 5 down vote accepted

You are doing by-without-by without knowing it, (see below for the description from the help)

Advanced: Aggregation for a subset of known groups is particularly efficient when passing those groups in i. When i is a data.table, DT[i,j] evaluates j for each row of i. We call this by without by or grouping by i. Hence, the self join DT[data.table(unique(colA)),j] is identical to DT[,j,by=colA].

This means that j is evaluated for each row of i (cylcing through y one row at a time -- so that if you run sapply(1:nrow(x),...) in j it will create a vector of length nrow(x) each time, when this is not what you want.

So your second option is definitely a valid approach (as it is one of the recommended approaches for doing this)

Otherwise you could use .N (When grouping by i, .N is the number of rows in x matched to, for each row of i) not nrow(x), but you will have to think about the length of your objects and how your function is to be vectorized.

Take this as an example

x[y, {browser(); a+b}]
Called from: `[.data.table`(x, y, {
    a + b
Browse[1]> a
[1] 1 4
Browse[1]> b
[1] 2
Browse[1]> .N
[1] 2

a has length two, because value of the key matches with 2 rows from x. b only has length 1 because it only has length 1 in y.

I think the best approach is to correctly Vectorize your function (which is hard to give advice upon without more of an example)

another approach would be to replicate b to the length of a eg

 x[y, val := {
 bl <- rep_len(b, .N)
 sapply(seq_len(.N), function(i) a[i] + bl[i])}]
   id a val
1:  1 1   3
2:  1 4   6
3:  2 2   5
4:  2 5   8
5:  3 3   7
6:  3 6  10

or if you know that y has unique rows for each value of id, then you don't need to try and index any columns from it.

x[y, val2 := sapply(seq_len(.N), function(i) a[i] + b)]
# an alternative would be to use sapply on a (avoid creating another vector)
x[y, val3 := sapply(a, function(ai) ai + b)]
#    id a val val2 val3
# 1:  1 1   3    3    3
# 2:  1 4   6    6    6
# 3:  2 2   5    5    5
# 4:  2 5   8    8    8
# 5:  3 3   7    7    7
# 6:  3 6  10   10   10
share|improve this answer
Oh, thanks for the explanation on differing lengths of a and b. I asked because my function really is not vectorizable without using sapply as I have in the question (it almost fit mapply, but one of the arguments to the function is list(a[i], b[i]) and I don't want to generate the entire list of lists that I would need to feed this to mapply). –  mathematical.coffee Apr 30 '13 at 4:37
Although I'm not sure I understand the by-without-by documentation and how it is relevant to my question, unless I am doing by=1:nrow(x)? –  mathematical.coffee Apr 30 '13 at 4:38
Yes 1:nrow(x) is not what you want if it is within the same [] call as the i join that is implementing by-without-by. Moving to a separate [] call is one way to go. See my edit. –  mnel Apr 30 '13 at 4:44
Ohh, I get it now! Thanks! –  mathematical.coffee Apr 30 '13 at 4:47
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