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I'm doing some aggregations on a data.table (excellent package!!!) and I found the .SD variable very useful for many things. However, using it slows down computation significantly when there are many groups. Follows an example:

# A moderately big data.table
x = data.table(id=sample(1e4,1e5,replace=T),


system.time(x[,list(code2=nrow(.SD[code==2]), total=.N), by=id])
##  user  system elapsed 
##  6.226   0.000   6.242

system.time(x[,list(code2=sum(code==2), total=.N), by=id])
## user  system elapsed 
## 0.497   0.000   0.498

system.time(x[,list(code2=.SD[code==2,.N], total=.N), by=id])
## user  system elapsed 
## 6.152   0.000   6.168

Am I doing something wrong? Should I avoid .SD in favor of individual columns? Thanks in advance.

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2 Answers 2

up vote 8 down vote accepted

Am I doing something wrong i.e. should I avoid .SD in favor of individual columns ?

Yes, exactly. Only use .SD if you really are using all the data inside .SD. You might also find that the call to nrow() and the subquery call to [.data.table inside j are culprits too : use Rprof to confirm.

See the last few sentences of FAQ 2.1 :

FAQ 2.1 How can I avoid writing a really long j expression? You've said I should use the column names, but I've got a lot of columns.
When grouping, the j expression can use column names as variables, as you know, but it can also use a reserved symbol .SD which refers to the Subset of the Data.table for each group (excluding the grouping columns). So to sum up all your columns it's just DT[,lapply(.SD,sum),by=grp]. It might seem tricky, but it's fast to write and fast to run. Notice you don't have to create an anonymous function. See the timing vignette and wiki for comparison to other methods. The .SD object is efficiently implemented internally and more ecient than passing an argument to a function. Please don't do this though : DT[,sum(.SD[,"sales",with=FALSE]),by=grp]. That works but is very inefficient and inelegant. This is what was intended: DT[,sum(sales),by=grp] and could be 100's of times faster.

Also see the first bullet of FAQ 3.1 :

FAQ 3.1 I have 20 columns and a large number of rows. Why is an expression of one column so quick?
Several reasons:
-- Only that column is grouped, the other 19 are ignored because data.table inspects the j expression and realises it doesn't use the other columns.

When data.table inspects j and sees the .SD symbol, that efficiency gain goes out the window. It will have to populate the whole of the .SD subset for each group even if you don't use all its columns. It's very difficult for data.table to know which columns of .SD you are really using (j could contain ifs, for example). However, if you need them all anyway, it doesn't matter of course, such as in DT[,lapply(.SD,sum),by=...]. That's ideal use of .SD.

So, yes, avoid .SD wherever possible. Use column names directly to give data.table's optimization of j the best chance. The mere existence of the symbol .SD in j is important.

This is why .SDcols was introduced. So you can tell data.table which columns should be in .SD if you only want a subset. Otherwise, data.table will populate .SD with all the columns just in case j needs them.

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Thanks a lot! I was tricked by the phrase "The .SD object is efficiently implemented internally and more efficient than passing an argument to a function" and did not understand the "Please don't do this though : DT[,sum(.SD[,"sales",with=FALSE]),by=grp]" due to the with=FALSE. This will speedup a lot my code! –  vsalmendra Mar 7 '13 at 15:04
@vsalmendra Ah, yes it could be clearer. It's the sort of thing that's been left to community discussion in the past. Ultimately we're hoping to improve j optimization so that users don't need to know things like this. –  Matt Dowle Mar 7 '13 at 15:16
@vsalmendra I've now improved FAQ 2.1 for the next release. –  Matt Dowle Mar 7 '13 at 16:31

Try solving this by breaking the calculations into two steps, then merging the resulting data frames:

  x2 <- x[code==2, list(code2=.N), by=id]
  xt <- x[, list(total=.N), by=id]

On my machine it runs in 0.04 seconds as opposed to 7.42 seconds, i.e. ~200 times faster than your original code:

         id code2 total
   1:     1     6    14
   2:     2     8    10
   3:     3     7    13
   4:     4     5    13
   5:     5     9    18
9995:  9996     4     9
9996:  9997     3     6
9997:  9998     6    10
9998:  9999     3     4
9999: 10000     3     6
   user  system elapsed 
   0.05    0.00    0.04 
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(+1) I'd replace x2 with x2 <- x[J(unique(id), "2"), list(code2 = .N)][, code := NULL, keyby="id"]. Your code removes rows where code != 2 for a given id. –  Arun Mar 7 '13 at 14:44
+1 Actually that is a lot faster than x[,list(sum(code==2),.N),by=id] (example 2 in question) isn't it! Maybe because you're avoiding the repeated call to == for each group (associated allocation etc for those small vectors). –  Matt Dowle Mar 7 '13 at 15:02
@Arun Are you sure? x2[xt][is.na(code2)] has some rows. You just get NA instead of 0. Might be wrong, only looked quickly. –  Matt Dowle Mar 7 '13 at 15:10
@MatthewDowle, No, I just meant at the step of x2. x2 has 9921 rows instead of 9999. Of course at the end, with x[y], those rows get an NA. I thought indexing with J(key columns) should be faster than logical indexing... Did I get it wrong? –  Arun Mar 7 '13 at 15:12
@Arun A single vector scan on a single column is a special case: the unique(id) call has to scan every item too anyway, then plus the time to join. Just to check, it's not a problem that x2 has 9921 rows instead of 9999 rows then? (That's what your comment above seemed to suggest that it was). –  Matt Dowle Mar 7 '13 at 15:26

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