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I have a huge list (700 elements), each element being a vector of length = 16,000. I am looking for an efficient way of converting the list to a dataframe, in the following fashion (this is just a mock example):

lst <- list(a = c(1,2,3), b = c(4,5,6), c = c(7,8,9))

The end result I am looking for is:

 #  [,1] [,2] [,3]
 #a    1    2    3
 #b    4    5    6
 #c    7    8    9

This is what I have tried, but isn't working as I wish:

result = rbindlist(Map(as.data.frame, lst))

Any suggestion? Please keep in mind that my real example has huge dimensions, and I would need a rather efficient way of doing this operation.

Thank you very much!

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marked as duplicate by Joshua Ulrich, Dirk Eddelbuettel, sgibb, Ferdinand.kraft, Simon O'Hanlon Sep 11 '13 at 21:35

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

you really want them stacked like that and have 16k columns but only 700 rows? –  eddi Sep 11 '13 at 18:00
Would it be better from some standpoint to have 700 columns and 16,000 rows instead? –  Mayou Sep 11 '13 at 18:01
most likely yes (e.g. here you could just do as.data.frame(lst) or as.data.table(lst)), but it depends of course on what you're going to do next (ime it would be extremely unusual to want that many columns) –  eddi Sep 11 '13 at 18:04
Well, it is convenient for me to set the dataframe that way, but I guess I could do the opposite. Thanks for the tip. –  Mayou Sep 11 '13 at 18:05
@Metrics: I haven't checked, but I would guess that ldply is not fast ... –  Ben Bolker Sep 12 '13 at 13:57

3 Answers 3

up vote 7 down vote accepted

Try this. We assume the compoennts of L all are of the same length, n, and we also assume no row names:

L <- list(a = 1:4, b = 4:1) # test input

n <- length(L[[1]])
DF <- structure(L, row.names = c(NA, -n), class = "data.frame")
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Simply excellent! –  Mayou Sep 11 '13 at 18:12
If list lacks names then use this: structure(L, row.names = c(NA, -n), .Names = seq_along(L), class = "data.frame") –  G. Grothendieck Sep 11 '13 at 18:20
+1 cool trick. Does this do less copying than say do.call? It seems quite a bit faster. –  Simon O'Hanlon Sep 11 '13 at 18:47
I would assume that since its directly built up from its constituent parts that it would be fast. –  G. Grothendieck Sep 11 '13 at 19:23

I think

lst <- list(a = c(1,2,3), b = c(4,5,6), c = c(7,8,9))

works. I don't know if there's a sneakier/dangerous/corner-cutting way to do it that's more efficient.

You could also try

m <- matrix(unlist(lst),byrow=TRUE,ncol=length(lst[[1]]))
rownames(m) <- names(lst)

... maybe it's faster?

You may not be able to do very much about speeding up the as.data.frame step. Looking at as.data.frame.matrix to see what could be stripped to make it as bare-bones as possible, it seems that the crux is probably that the columns have to be copied into their own individual list elements:

for (i in ic) value[[i]] <- as.vector(x[, i])

You could try stripping down as.data.frame.matrix to see if you can speed it up, but I'm guessing that this operation is the bottleneck. In order to get around it you have to find some faster way of mapping your data from a list of rows into a list of columns (perhaps an Rcpp solution??).

The other thing to consider is whether you really need a data frame -- if your data are of a homogeneous type, you could just keep the results as a matrix. Matrix operations on big data are a lot faster anyway ...

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It does work, but it is very slow in case of large lists (which is my situation here) –  Mayou Sep 11 '13 at 17:42
The matrix() takes a few minutes to complete, but I guess I could work with that in the meantime. Converting the matrix to a dataframe completely freezes the R GUI though. Thanks! –  Mayou Sep 11 '13 at 17:52

How about just t(as.data.frame(List)) ?

> A = 1:16000
> List = list()
> for(i in 1:700) List[[i]] = A
> system.time(t(as.data.frame(List)))
   user  system elapsed 
   0.25    0.00    0.25 
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I get a very odd result when I do that.. Although my initial list didnt' have names for elements, the dataframe now has some odd column names when I do as.data.frame(List) –  Mayou Sep 11 '13 at 18:07
That's because I didn't give my sample data any names. –  Señor O Sep 11 '13 at 18:13

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