This online purrr tutorial highlights the convenience of not having to explicitly write out anonymous functions when using purrr, which along with type-specific map functions makes it very functional.
purrr::map is syntactically much more convenient than lapply
extract second element of the list
map(list, 2) # and it's done like magic
which as @F. Privé pointed out, is the same as:
map(list, function(x) x[])
lapply(list, 2) # doesn't work
we need to pass it the anonymous function
lapply(list, function(x) x[]) # now it works
or as @RichScriven pointed out, we can simply pass
[[ as an argument into
lapply(list, `[[`, 2) # a bit more simple syntantically
In the background,
purr takes either a numeric or character vector as an argument and uses that to subset. If find yourself applying functions to many, many of lists using
lapply, and tire of either defining a custom function or writing an anonymous function, convenience is one reason to move to purrr.
2. Type-specific map functions simply many lines of code
map_df() - my favorite, returns a data frame.
Each of these type-specific map functions returns an atomic list, rather than the list that
lapply() automatically return. If you're dealing with nested lists that have atomic vectors within, you can use these type-specific map functions to pull out the vectors directly, or coerce vectors up into int, dbl, chr vectors. Another point for convenience and functionality.
3. Convenience aside,
lapply is faster than
purrr's convenience functions, as @F. Privé pointed out slows down processing a bit. Let's race each of the 4 cases I presented above.
mbm <- microbenchmark(
lapply = lapply(got_chars[1:4], function(x) x[]),
lapply_2 = lapply(got_chars[1:4], `[[`, 2),
map_shortcut = map(got_chars[1:4], 2),
map = map(got_chars[1:4], function(x) x[]),
times = 100
And the winner is....
lapply(list, `[[`, 2)
In sum, if speed is what you're after:
If simple syntax is your jam: