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I have a list of data.frames. Each data.frame is not very big ~150,000 rows. But my list has over 1000s of these data.frames.

a data.frame looks like:

comp <- read.table(text = " G T H S B
                             1 1 1 1 x1
                             1 1 1 2 x2
                             1 2 6 1 x3
                             1 2 6 2 x4
                             2 1 7 1 x1
                             2 2 8 2 x2
                             2 2 8 1 x1
                             2 3 9 2 x2",header=TRUE,stringsAsFactors=FALSE)

so a list is:

complist <- list(comp,comp,comp)

I want to know for every data.frame, (comp), the length of B for each S in each H in each T in each G.

so for my small practice I use:

library(plyr)
listresults <- lapply(complist, function(x) {
                                res <- ddply(x, .(G,T,H,S),
                                function(z) data.frame(resultcol = length(z$B)) )
                                            } )

But on my larger list this is bruuutally long, could someone help me find a quicker way? Aggregate is not the option here, and I have been failing with a sapply(split)) alternative to the ddply. Suggestions even if not actual code will be just as helpful to me.

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+1 for all. to start data.table approach actually finished, although it will take some learning. –  user1322296 Jan 28 '13 at 15:29
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3 Answers

up vote 6 down vote accepted

This is a situation where data.table might be a very good option. data.table has consistently shown to be blisteringly fast, much more so that plyr. There are many examples here on SO, see e.g.:

This is just a very small portion of the information available, you can check out the documentation of data.table, or look at the [r][data.table] tags on SO.

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thanks for the links, looks like I'm going to have to just learn data.table! –  user1322296 Jan 28 '13 at 15:28
1  
The 'data.table' package is very good for summarizing this way. Keep in mind that you can often even beat the performance of 'data.table' by reformatting your data to specifically suit your problem. –  Dinre Jan 28 '13 at 15:33
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Using data.table may get this faster. Here's how you can do it.

require(data.table)
o <- lapply(1:length(complist), function(i) { 
    dt <- data.table(complist[[i]], key=c("S", "H", "T", "G"))
    dt[, list(resultcol = .N), by=c("S", "H", "T", "G")]
})
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1  
+1 did not know about the .N shortcut for length. This is just an nrow? –  user1317221_G Jan 28 '13 at 16:27
    
@user1317221_G, from the documentation: .N is an integer, length 1, containing the number of rows in the group. –  Arun Jan 28 '13 at 16:34
1  
@Arun Just for information, is there a reason for the order of the keys (SHTG instead of GTHS) ? –  juba Jan 28 '13 at 17:41
1  
@juba, not really. I thought of this from the way the OP explained the grouping. At the end the group you get by splitting in either way will be the same. And both our codes operate on the same group. –  Arun Jan 28 '13 at 18:02
    
@Arun Ok, thanks for the clarification ! –  juba Jan 28 '13 at 18:06
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One try with using data.table :

lapply(complist, function(df) {
  df <- data.table(df, key=c("G","T","H","S"))
  df[,length(B),by=c("G","T","H","S")]
})

Disclaimer : it's the first time I'm using data.table, so be careful with this answer :)

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