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In my work I use to have several tables (customer details, transaction records, etc). Being some of them are very big (millions of rows), I've recently switched to the data.table package (thanks Matthew). However, some of them are quite small (few hundreds of rows and 4/5 column) and are called several times. Therefore I started to think about [.data.table overhead in retrieving data rather then set()ting value as already clearly described in ?set, where, regardless the size of table one item is set in around 2 microseconds (depending on cpu).

However it doesn't seem to exist the equivalent of set for getting a value from a data.table knowing the exact row and column. A sort of loopable [.data.table.


m = matrix(1,nrow=100000,ncol=100)
DF =
DT =  # same data used in ?set

> microbenchmark(DF[3450,1] , DT[3450, V1], times=1000) # much more overhead in DT

Unit: microseconds
expr     min      lq   median      uq      max neval
DF[3450, 1]  32.745  36.166  40.5645  43.497  193.533  1000
DT[3450, V1] 788.791 803.453 813.2270 832.287 5826.982  1000

> microbenchmark(DF$V1[3450], DT[3450, 1, with=F], times=1000)  # using atomic vector and
                                                                # removing part of DT overhead
Unit: microseconds                                              
expr     min      lq  median      uq      max neval
DF$V1[3450]   2.933   3.910   5.865   6.354   36.166  1000
DT[3450, 1, with = F] 297.629 303.494 305.938 309.359 1878.632  1000

> microbenchmark(DF$V1[3450], DT$V1[3450], times=1000) # using only atomic vectors
Unit: microseconds
        expr   min    lq median    uq    max neval
 DF$V1[3450] 2.933 2.933  3.421 3.422 40.565  1000    # DF seems still a bit faster (23%)
 DT$V1[3450] 3.910 3.911  4.399 4.399 16.128  1000

The last method is indeed the best one to fast retrieve a single element several times. However, set is even faster

> microbenchmark(set(DT,1L,1L,5L), times=1000)
Unit: microseconds
                expr   min    lq median    uq    max neval
 set(DT, 1L, 1L, 5L) 1.955 1.956  2.444 2.444 24.926  1000

the question is: if we can set a value in 2.444 microseconds shouldn't be possible to get a value in a smaller (or at least similar) amount of time? Thanks.

EDIT: adding two more options as suggested:

> microbenchmark(`[.data.frame`(DT,3450,1), DT[["V1"]][3450], times=1000)
Unit: microseconds
                        expr    min     lq median     uq      max neval
 `[.data.frame`(DT, 3450, 1) 46.428 47.895 48.383 48.872 2165.509  1000
            DT[["V1"]][3450] 20.038 21.504 23.459 24.437  116.316  1000

which unfortunately are not faster than the previous attempts.

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But I am a bit skeptical about your perceived need for repeated subsetting. Often this means you can optimize by changing your algorithm. – Roland Jun 2 '13 at 11:35
@Arun @Roland Thanks guys for your interest. Regarding Roland opinion I would say that he's right in most situation. Even if for me would mean re-design the entire solution. However, my question is just what you read in the last line, which is also based on the idea of M Dowle of having a 'loopable' :=, which is set – Michele Jun 2 '13 at 11:44
+1. For your use case ("few hundreds of rows and 4/5 column", which should take up a small amount of memory), maybe you could store copies of your small data.tables as matrices, and use the latter whenever you're accessing elements...? On my computer, m[3450,1] is still ~10x faster than DT$V1[3450]; I don't think you'll be able to achieve that kind of performance with anything but a matrix. On the other hand, every column in a matrix needs to have the same class... – Frank Jun 2 '13 at 12:53
Try .subset2(DT, "V1")[3450] - .subset2 is the internal version of [[ that doesn't do S3 dispatch and is much faster. – hadley Jun 3 '13 at 12:54
@hadley thanks a lot. Your comment is indeed the answer. Why don't you write your solution below? thanks. – Michele Jun 3 '13 at 13:51

1 Answer 1

up vote 5 down vote accepted

Thanks to @hadley we have the solution!

> microbenchmark(DT$V1[3450], set(DT,1L,1L,5L), .subset2(DT, "V1")[3450], times=1000, unit="us")
Unit: microseconds
                     expr   min    lq median    uq    max neval
              DT$V1[3450] 2.566 3.208  3.208 3.528 27.582  1000
      set(DT, 1L, 1L, 5L) 1.604 1.925  1.925 2.246 15.074  1000
 .subset2(DT, "V1")[3450] 0.000 0.321  0.322 0.642  8.339  1000
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