8

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?

2
  • 3
    With the first function you use $ once, in the second function you use it 1e6 times. $ is not the fastest subsetting function.
    – Roland
    May 28, 2015 at 17:59
  • What surprises me is that f1 is twice as fast as f3 <- 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.
    – Frank
    May 28, 2015 at 18:16

2 Answers 2

7

If you instead write your timings like this and recognize that df$x is really a function call (to `$`(df,x)) the mystery disappears:

system.time(for(i in 1:1e6) df$x)
#    user  system elapsed 
#    8.52    0.00    8.53 
system.time(for(i in 1) df$x)
#    user  system elapsed 
#       0       0       0 
3

In f1, you bypass the data frame entirely by just passing a vector to your function. So your code is essentially "I have a vector! This is the first element. This is the second element. This is the third..."

By contrast, in f2, you give it a whole data frame and then get the each element of a single column each time. So your code is "I have a data frame. This is the first element of the ID column. This is the second element of the ID column. This is the third..."

It's much faster if you extract the simple data structure (vector) once, and then can only work with that, rather than repeatedly extracting the simple structure from the larger object.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.