Just had a conversation with coworkers about this, and we thought it'd be worth seeing what people out in SO land had to say. Suppose I had a list with N elements, where each element was a vector of length X. Now suppose I wanted to transform that into a data.frame. As with most things in R, there are multiple ways of skinning the proverbial cat, such as as.dataframe, using the plyr package, comboing do.call with cbind, pre-allocating the DF and filling it in, and others.

The problem that was presented was what happens when either N or X (in our case it is X) becomes extremely large. Is there one cat skinning method that's notably superior when efficiency (particularly in terms of memory) is of the essence?

link|improve this question

65% accept rate
feedback

1 Answer

up vote 18 down vote accepted

Since a data.frame is already a list and you know that each list element is the same length (X), the fastest thing would probably be to just update the class and row.names attributes:

set.seed(21)
n <- 1e6
x <- list(x=rnorm(n), y=rnorm(n), z=rnorm(n))
x <- c(x,x,x,x,x,x)

system.time(a <- as.data.frame(x))
system.time(b <- do.call(data.frame,x))
system.time({
  d <- x  # Skip 'c' so Joris doesn't down-vote me! ;-)
  class(d) <- "data.frame"
  rownames(d) <- 1:n
  names(d) <- make.unique(names(d))
})

identical(a, b)  # TRUE
identical(b, d)  # TRUE

Update - this is ~2x faster than creating d:

system.time({
  e <- x
  attr(e, "row.names") <- c(NA_integer_,n)
  attr(e, "class") <- "data.frame"
  attr(e, "names") <- make.names(names(e), unique=TRUE)
})

identical(d, e)  # TRUE

Update 2 - I forgot about memory consumption. The last update makes two copies of e. Using the attributes function reduces that to only one copy.

set.seed(21)
f <- list(x=rnorm(n), y=rnorm(n), z=rnorm(n))
f <- c(f,f,f,f,f,f)
tracemem(f)
system.time({  # makes 2 copies
  attr(f, "row.names") <- c(NA_integer_,n)
  attr(f, "class") <- "data.frame"
  attr(f, "names") <- make.names(names(f), unique=TRUE)
})

set.seed(21)
g <- list(x=rnorm(n), y=rnorm(n), z=rnorm(n))
g <- c(g,g,g,g,g,g)
tracemem(g)
system.time({  # only makes 1 copy
  attributes(g) <- list(row.names=c(NA_integer_,n),
    class="data.frame", names=make.names(names(g), unique=TRUE))
})

identical(f,g)  # TRUE
link|improve this answer
2  
Leave "probably" out of the answer and it's correct. It's also correct if you make a function using those calls and replacing the cheat of knowing n with a length command. Your new function is roughly equivalent to data.frame() after removing all of the extensive checks. So, if you know for sure you're handing the call the right input then just do what Josh recommended for speed. If you're unsure then data.frame is safer and, do.call(data.frame, x)) is next fastest (oddly enough). – John May 9 '11 at 22:18
1  
See plyr::quickdf for exactly this function. – hadley May 9 '11 at 23:25
@hadley: plyr::quickdf doesn't provide exactly this function; namely it doesn't make unique column names. plyr:::make_names only replaces missing names and doesn't have a unique= arg like base::make.names. – Joshua Ulrich May 10 '11 at 0:58
1  
Ok, not exactly, but pretty close (unique column names aren't a prerequisite for a valid data frame). I'm not sure that memory hacks based on undocumented behaviour of attributes<- are a good idea. – hadley May 10 '11 at 3:09
1  
Nice demo of tracemem in action, and a good illustration of the difference between lists and data frames. – Richie Cotton May 10 '11 at 10:07
show 5 more comments
feedback

Your Answer

 
or
required, but never shown

Not the answer you're looking for? Browse other questions tagged or ask your own question.