As has already been noted,
vapply does two things:
- Slight speed improvement
- Improves consistency by providing limited return type checks.
The second point is the greater advantage, as it helps catch errors before they happen and leads to more robust code. This return value checking could be done separately by using
sapply followed by
stopifnot to make sure that the return values are consistent with what you expected, but
vapply is a little easier (if more limited, since custom error checking code could check for values within bounds, etc.).
Here's an example of
vapply ensuring your result is as expected. This parallels something I was just working on while PDF scraping, where
findD would use a regex to match a pattern in raw text data (e.g. I'd have a list that was
split by entity, and a regex to match addresses within each entity. Occasionally the PDF had been converted out-of-order and there would be two addresses for an entity, which caused badness).
> input1 <- list( letters[1:5], letters[3:12], letters[c(5,2,4,7,1)] )
> input2 <- list( letters[1:5], letters[3:12], letters[c(2,5,4,7,15,4)] )
> findD <- function(x) x[x=="d"]
> sapply(input1, findD )
 "d" "d" "d"
> sapply(input2, findD )
 "d" "d"
> vapply(input1, findD, "" )
 "d" "d" "d"
> vapply(input2, findD, "" )
Error in vapply(input2, findD, "") : values must be length 1,
but FUN(X[]) result is length 2
As I tell my students, part of becoming a programmer is changing your mindset from "errors are annoying" to "errors are my friend."
vapply can be a bit faster because it already knows what format it should be expecting the results in.
input1.long <- rep(input1,10000)
m <- microbenchmark(
sapply(input1.long, findD ),
vapply(input1.long, findD, "" )
library(taRifx) # autoplot.microbenchmark is moving to the microbenchmark package in the next release so this should be unnecessary soon