A `data.table`

answer for your consideration. We're just using `setattr()`

from it, which works on `data.frame`

, and columns of `data.frame`

. No need to convert to `data.table`

.

The test data again :

```
dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1L,2L,4L,5L,3L),50000))
dat <- cbind(dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat)
dat <- as.data.frame(dat)
re.codes <- c("This","That","And","The","Other")
```

Now change the class and set the levels of each column directly, by reference :

```
require(data.table)
system.time(for (i in 1:ncol(dat)) {
setattr(dat[[i]],"levels",re.codes)
setattr(dat[[i]],"class","factor")
}
# user system elapsed
# 0 0 0
identical(dat, <result in question>)
# [1] TRUE
```

Does 0.00 win? As you increase the size of the data, this method **stays at 0.00**.

Ok, I admit, I changed the input data slightly to be `integer`

for all columns (the question has `double`

input data in a third of the columns). Those `double`

columns have to be converted to `integer`

because `factor`

is only valid for `integer`

vectors. As mentioned in the other answers.

So, strictly with the input data in the question, and including the `double`

to `integer`

conversion :

```
dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1,2,4,5,3),50000))
dat <- cbind(dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat)
dat <- as.data.frame(dat)
re.codes <- c("This","That","And","The","Other")
system.time(for (i in 1:ncol(dat)) {
if (!is.integer(dat[[i]]))
set(dat,j=i,value=as.integer(dat[[i]]))
setattr(dat[[i]],"levels",re.codes)
setattr(dat[[i]],"class","factor")
})
# user system elapsed
# 0.06 0.01 0.08 # on my slow netbook
identical(dat, <result in question>)
# [1] TRUE
```

Note that `set`

also works on `data.frame`

, too. You don't have to convert to `data.table`

to use it.

These are very small times, clearly. Since it's only a small input dataset :

```
dim(dat)
# [1] 250000 36
object.size(dat)
# 68.7 Mb
```

Scaling up from this should reveal larger differences. But even so I think it should be (just about) measurably fastest. Not a significant difference that anyone minds about, at this size, though.

The `setattr`

function is also in the `bit`

package, btw. So the 0.00 method can be done with either `data.table`

or `bit`

. To do the type conversion by reference (if required) either `set`

or `:=`

(both in `data.table`

) is needed, afaik.