Efficient way to apply a function to a list of lists

I have 80 lists for the project in question. Each list is a list of length 1000. I'd like to run a function on each one (each of the 1000), and assign the results back to the original object. The total data is over 150 gigs so I want to make sure this is most efficient before running it on the actual data. Is this trivial example the best way to do what I need?

``````# my actual function is obviously more complicated.
# But let's say the goal is to keep 2/5 items in each list
trivial <- function(foo) {
keep <- c("S1", "S2")
foo[which(keep %in% names(foo))]
}

sublist <- replicate(5, as.list(1:5), simplify=FALSE)
names(sublist) <- paste0("S", 1:5)
eachlist <- replicate(5, sublist, simplify = F)
a1 <- a2 <- a3 <- a4 <- a5 <- eachlist

# To clarify the layout
length(a1)
[1] 5
> length(a1[[1]])
[1] 5
> names(a1[[1]])
[1] "S1" "S2" "S3" "S4" "S5"
# I need to drop S3-S5 from each of 5 sublists of a1.
# Now I'd like to repeat this for all 80 lists named a[0-9].

# all the objects have a pattern sometextNUMBER. This list is
# just the names of all the lists.
listz <-  as.list(ls(pattern="[a-z][0-9]"))
> listz
[[1]]
[1] "a1"

[[2]]
[1] "a2"

[[3]]
[1] "a3"

[[4]]
[1] "a4"

[[5]]
[1] "a5"
# I don't need anything returned, just for a1-a80 updated such that
# in each sublist, 3 of 5 items are dropped.

# This works fine, but my concern now is just scaling this up.
l_ply(listz, function(x){
assign(as.character(x), llply(get(x), trivial), envir = .GlobalEnv)
})
``````
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I bet using not plyr would be more efficient :) –  Justin Oct 17 '12 at 16:21
The plyr package is notoriously slow. You may want to consider just using lapply instead. –  Brandon Bertelsen Oct 17 '12 at 16:21
exactly the motivation for my question :) –  Maiasaura Oct 17 '12 at 16:21
Where is your list of lists? I expected something like `listz <- lapply(ls(pattern="[a-z][0-9]"), get)`. –  Joshua Ulrich Oct 17 '12 at 16:21
@BrandonBertelsen: `ddply` is slow because `data.frames` are slow. The plyr package as a whole is not slow. In this simple case, `l_ply` calls `lapply` directly. –  hadley Oct 17 '12 at 16:36

You could loop over the list of names, using `substitute()` and `eval()` to first construct and then execute the expressions you'd (not!) like to type individually at the command line:

``````objNames <- ls(pattern="[a-z][0-9]")

for(objName in objNames) {
expr <-
substitute({
OBJ <- lapply(OBJ, function(X) X[names(X) %in% c("S1", "S2")])
}, list(OBJ = as.symbol(objName)))
eval(expr)
}
``````
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This is a good use-case for `rapply`:

``````listz <- replicate(5, as.list(1:5), simplify=FALSE)
fun <- function(x) x*10
out <- rapply(listz, fun, how="replace")
``````
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This wont work above because `listz` is just a vector of listnames. Not an actual list itself. I'd still need to `get` the contents of each name in `listz` then recursively apply the function to its elements. –  Maiasaura Oct 17 '12 at 16:56
@Maiasaura: I still don't understand your example because your function doesn't operate on each terminal node of the list. It looks like you want to apply a function to a list, not a list of lists. –  Joshua Ulrich Oct 17 '12 at 16:57
The outer list is just the names of lists. I have `a1` through `a80` and so whatever I apply to each one needs to get assigned back to the original name. Does that make sense? –  Maiasaura Oct 17 '12 at 17:05
@Maiasaura: it makes sense, but you don't really have a list of lists. You have a vector of object names, and each object is a list. In that case, I'd just loop over the names and use a combination of `assign`, `get`, and `lapply`. That's basically what you did in your question, except I'd swap the `l_ply` with a for loop. –  Joshua Ulrich Oct 17 '12 at 17:10
But you are right that it doesn't operate on each terminal node. outer list 1 = names of all lists. middle list = list of lists. Function needs to operate on the middle list but not go any lower. So it's like putting an `lapply` inside a `lapply` –  Maiasaura Oct 17 '12 at 17:11
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