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I have a list of data.frames. Within each data.frame I want to split by a grouping (z) run a function, put the results back together, then put all the results of the of the nested lapply together in a data.frame, then flatten the list of result data.frames into one data.frame.

library(plyr)
df <- data.frame(x = sample(1:200, 30000, replace = TRUE), 
                y = sample(1:200, 30000, replace = TRUE), 
                z = sample(LETTERS, 30000, replace = TRUE))

alist <- list(df,df,df) # longer in real life
answer <- lapply(alist, function(q) {
    a <- split(q,q$z)
    result.1 <- lapply(a, function(w) {
        neww <- cbind(w[,1],w[,2])
        result.2 <- colSums(neww)
    })
    ldply(result.1)
})
# cor(neww) can actually be a variey of foos I just use cor() for easy reproducibility
ldply(answer)

This has some really tough memory usage and is also slow. Thanks to @Andrie I know how to clear my workspace before I start like:

 rm(list=setdiff(ls(), "alist"))

But is there a way to modify my approach like junking w in the second lapply etc to try reduce memory usage and speed things up? In this case foo likes a matrix and so data.table won't be my answer. In other foos I will need all w and class will need to be a data.frame

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Please make your code reproducible. You need to show foo. –  Roland Jan 31 '13 at 12:12
2  
One strategy is probably to combine all data.frames into one data.table and then split-apply-combine that. –  Roland Jan 31 '13 at 12:15
    
I am using many foos for argument you can makes it cor. My focus was on the code surrounding foo but perhaps then I am missing the point. –  user1320502 Jan 31 '13 at 12:17
    
The point is to make it easy to answer. For that I need to be able to compare my result with yours. That means your code should run when copied into my R session. –  Roland Jan 31 '13 at 12:18
    
@Roland, just noticed that you mentioned the data.table solution as well. –  Arun Jan 31 '13 at 12:22

2 Answers 2

up vote 9 down vote accepted

Try something like this:

ldply(alist, ddply, "z", summarize, xy.foo = foo(x, y))

If you want x and y to show up in your final data.frame, replace summarize with transform. Also, looking at your foo usage, you might have to replace (x, y) with cbind(x, y).

Also, I would recommend you profile your code. In the end, foo might be what is slowing you down, not the split/combine part.

share|improve this answer
    
+1 thanks @ flodel this looks clearly less verbose and appealing and seems to save on the ldplys but I thought I should naturally steer away from ddply when thinking of speed. Is part of the memory saving here less explicit object creation? if you want to add any short explanation I would be greatful. And for sure foo is the horrible bottleneck, but hard to change. Therefore the surrounding approach to foo was my focus. –  user1320502 Jan 31 '13 at 12:38
    
@user1320502 If foo is the real bottleneck, parallelization might be the way to go. –  Roland Jan 31 '13 at 13:14
    
And if parallelization is the way to go, plyr does have that ability built in. See the .parallel argument and related arguments. –  Brian Diggs Jan 31 '13 at 17:16

Why aren't you use ddply and llply from plyr but only ldply??

# Note: @Flodel has a very nice, simple one-line plyr solution
# Please use that.
out <- ldply(alist, function(q) {
    ddply(q, .(z), function(w) {
        neww <- w[, -3]
        result.2 <- colSums(neww) # dummy function
    })
})

The first ldply passes elements of list alist one by one. Each time q is therefore the data.frame contained in each element of the list. Then, within this, we would like to split by z. Since the input is q is a data.frame and output also should be a data.frame we use ddply with the second argument .(z) to split by z. Here, you do your calculations, return whatever you want (colSums in this case). The ldply returns as a data.frame.

Data.table solution: An alternative fast solution would be to use a data.table on the combined data.frame which can be achieved as follows (what @Roland mentioned in his comments as well):

require(data.table)
# for creating a group 
group <- vapply(alist, nrow, integer(1))
dt <- data.table(do.call(rbind, alist))
# create group
dt[ , grp := rep(1:3, group)]
setkey(dt, "grp", "z")
# call your function (here column means)
dt[, lapply(.SD, mean), by="grp,z"]
# or if its correlation
dt[, list(cor_x_y = cor(x,y)), by="grp,z"]
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3  
isn't ldply(llply(...)) just the same thing as ldply(...), so you can save unnecessary processing? –  flodel Jan 31 '13 at 12:29
    
Also, you don't need to define a function(q)ddply(q, ...) function on the fly, just use a straight ddply, ... like I did. –  flodel Jan 31 '13 at 12:31
    
you are right on both occasions. The first one, I use it this way because I have observed this to be faster than just using a ldply, but maybe its a wrong hunch (I'll test it). And the 2nd comment, very true, there is no need to do it my way! thanks for the pointers. –  Arun Jan 31 '13 at 12:33
    
I'll leave the solution as such. Else it'll be identical to yours. It could serve as a how-not-to write a plyr function :) –  Arun Jan 31 '13 at 12:35
1  
Just swapped sapply for vapply because sapply behaves weirdly with empty input lists. –  Richie Cotton Jan 31 '13 at 14:13

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