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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
4  
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

1 Answer

up vote 26 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.

share|improve this answer
7  
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

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