I got curious about the speed of string comparison in R, when's the right time to use
== and was wondering how much shortcutting they do.
If I have a vector with two levels, one which occurs frequently, and another which is rare, (trying to multiply my desired effect).
x <- sample(c('ALICE', 'HAL90000000000'), replace = TRUE, 1000, prob = c(0.05,0.95))
I would assume (if there is shortcutting) that the operation
x != 'ALICE'
would be considerably faster than:
x == 'HAL90000000000'
since to check equality in the latter case, I would assume I need to check every character, while the former would be invalidated by either the first or last character (depending on which side the algorithm checks)
but when I benchmark, it either does not seem to be the case (it was inconclusive in repeated trials, though with a very slight bias toward the
== operation being faster ?!), or this isn't a fair trial:
> microbenchmark(x != 'ALICE', x == 'HAL90000000000') Unit: microseconds expr min lq mean median uq max neval x != "ALICE" 4.520 4.5505 4.61831 4.5775 4.6525 4.970 100 x == "HAL90000000000" 3.766 3.8015 4.00386 3.8425 3.9200 13.766 100
Why is this?
I'm assuming it's because it's doing full string matching, but if so, is there a way to get R to optimize these ones? I don't get any gains from the obfuscation of the amount of time it takes to match long or short strings, no worries about passwords.