Something that kind of surprised me: let's compare two ways of getting the `class`

es for variables in a big data frame with many columns: an `sapply`

solution and a `for`

loop solution.

```
bigDF <- as.data.frame( matrix( 0, nrow=1E5, ncol=1E3 ) )
library( microbenchmark )
for_soln <- function(x) {
out <- character( ncol(x) )
for( i in 1:ncol(x) ) {
out[i] <- class(x[,i])
}
return( out )
}
microbenchmark( times=20,
sapply( bigDF, class ),
for_soln( bigDF )
)
```

gives me, on my machine,

```
Unit: milliseconds
expr min lq median uq max
1 for_soln(bigDF) 21.26563 21.58688 26.03969 163.6544 300.6819
2 sapply(bigDF, class) 385.90406 405.04047 444.69212 471.8829 889.6217
```

Interestingly, if we transform `bigDF`

into a list, `sapply`

is once again nice and speedy.

```
bigList <- as.list( bigDF )
for_soln2 <- function(x) {
out <- character( length(x) )
for( i in 1:length(x) ) {
out[i] <- class( x[[i]] )
}
return( out )
}
microbenchmark( sapply( bigList, class ), for_soln2( bigList ) )
```

gives me

```
Unit: milliseconds
expr min lq median uq max
1 for_soln2(bigList) 1.887353 1.959856 2.010270 2.058968 4.497837
2 sapply(bigList, class) 1.348461 1.386648 1.401706 1.428025 3.825547
```

Why are these operations, especially `sapply`

, taking so much longer with a `data.frame`

as compared to a `list`

? And is there a more idiomatic solution?

`sapply(bigDF, class)`

takes less time than`for_soln(bigDF)`

. – G. Grothendieck Jan 5 '13 at 19:48