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I have code that at one place ends up with a list of data frames which I really want to convert to a single big data frame.

I got some pointers from an earlier question which was trying to do something similar but more complex.

Here's an example of what I am starting with (this is grossly simplified for illustration):

listOfDataFrames <- NULL

for (i in 1:100) {
    listOfDataFrames[[i]] <- data.frame(a=sample(letters, 500, rep=T),
                             b=rnorm(500), c=rnorm(500))
}

I am currently using this:

  df <- do.call("rbind", listOfDataFrames)

*EDIT*

whoops. In my haste to implement what I had "learned" in a previous question I totally screwed up. Yes, the unlist() is just plain wrong. I'm editing that out of the question above.

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Also see this question: stackoverflow.com/questions/2209258/… –  Shane May 17 '10 at 17:39
5  
The do.call("rbind", list) idiom is what I have used before as well. Why do you need the initial unlist ? –  Dirk Eddelbuettel May 17 '10 at 17:43
1  
Shane, I had just done the exact same test and caught my screw up. You're fast ;) –  JD Long May 17 '10 at 18:16

2 Answers 2

up vote 49 down vote accepted

One other option is to use a plyr function:

df <- ldply(listOfDataFrames, data.frame)

This is a little slower than the original:

> system.time({ df <- do.call("rbind", listOfDataFrames) })
   user  system elapsed 
   0.25    0.00    0.25 
> system.time({ df2 <- ldply(listOfDataFrames, data.frame) })
   user  system elapsed 
   0.30    0.00    0.29
> identical(df, df2)
[1] TRUE

My guess is that using do.call("rbind", ...) is going to be the fastest approach that you will find unless you can do something like (a) use a matrices instead of a data.frames and (b) preallocate the final matrix and assign to it rather than growing it.

Edit 1:

Based on Hadley's comment, here's the latest version of rbind.fill from CRAN:

> system.time({ df3 <- rbind.fill(listOfDataFrames) })
   user  system elapsed 
   0.24    0.00    0.23 
> identical(df, df3)
[1] TRUE

This is easier than rbind, and marginally faster (these timings hold up over multiple runs). And as far as I understand it, the version of plyr on github is even faster than this.

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10  
rbind.fill in the latest version of plyr is considerably faster than do.call and rbind –  hadley May 18 '10 at 0:34
    
interesting. for me rbind.fill was the fastest. Weird enough, do.call / rbind did not return identical TRUE, even if i could ne find a difference. The other two were equal but plyr was slower. –  Matt Bannert Nov 29 '10 at 15:32
    
I() could replace data.frame in your ldply call –  baptiste Aug 28 '13 at 15:13
1  
there's also melt.list in reshape(2) –  baptiste Aug 28 '13 at 15:14

For the purpose of completeness, I thought the answers to this question required an update. "My guess is that using do.call("rbind", ...) is going to be the fastest approach that you will find..." It was probably true for May 2010 and some time after, but in about Sep 2011 a new function rbindlist() was introduced in the data.table package version 1.8.2, with a remark that "This does the same as do.call("rbind",l), but much faster". How much faster?

library(benchmark)
benchmark(
  do.call = do.call("rbind", listOfDataFrames),
  plyr_rbind.fill = plyr::rbind.fill(listOfDataFrames), 
  plyr_ldply = plyr::ldply(listOfDataFrames, data.frame),
  data.table_rbindlist = as.data.frame(data.table::rbindlist(listOfDataFrames)),
  replications = 100, order = "relative", 
  columns=c('test','replications', 'elapsed','relative')
  ) 

                  test replications elapsed relative
4 data.table_rbindlist          100    0.11    1.000
1              do.call          100    9.39   85.364
2      plyr_rbind.fill          100   12.08  109.818
3           plyr_ldply          100   15.14  137.636
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Thank you so much for this -- I was pulling my hair out because my data sets were getting too big for ldplying a bunch of long, molten data frames. Anyways, I got an incredible speedup by using your rbindlist suggestion. –  KarateSnowMachine Sep 18 '13 at 5:52
1  
And one more for completeness: dplyr::rbind_all(listOfDataFrames) will do the trick as well. –  andyteucher Jul 15 at 22:56

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