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`

.

```
library(data.table)
library(microbenchmark)
m = matrix(1,nrow=100000,ncol=100)
DF = as.data.frame(m)
DT = as.data.table(m) # 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.

`:=`

, which is`set`

– Michele Jun 2 '13 at 11:44`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`.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