Suppose I need to loop over the rows in a data frame for some reason.
I create a simple data.frame
df <- data.frame(id = sample(1e6, 1e7, replace = TRUE))
It seems that f2 is much slower than f1, while I expected them to be equivalent.
f1 <- function(v){
for (obs in 1:(1e6) ){
a <- v[obs]
}
a
}
system.time(f1(df$id))
f2 <- function(){
for (obs in 1:(1e6) ){
a <- df$id[obs]
}
a
}
system.time(f2())
Would you know why? Do they use exactly the same amount of memory?
$
once, in the second function you use it 1e6 times.$
is not the fastest subsetting function.f1
is twice as fast asf3 <- function(v)for(a in v){NULL}; system.time(f3(df$id))
. Oh, I see:1e6
is not the full length of the vector.system.time(f3(df$id[1:1e6]))
is fast.