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I have a dataframe with only 1 row. To this I start to add rows by using rbind

df #mydataframe with only one row
for (i in 1:20000)
{
    df<- rbind(df, newrow)

}

this gets very slow as i grows. Why is that? and how can I make this type of code faster?

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4  
Because you are in the second circle of hell. –  joran Feb 4 '13 at 19:25
2  
@joran, that's an answer, not a comment. –  Roman Luštrik Feb 4 '13 at 19:30

2 Answers 2

up vote 10 down vote accepted

You are in the 2nd circle of hell, namely failing to pre-allocate data structures.

Growing objects in this fashion is a Very Very Bad Thing in R. Either pre-allocate and insert:

df <- data.frame(x = rep(NA,20000),y = rep(NA,20000))

or restructure your code to avoid this sort of incremental addition of rows. As discussed at the link I cite, the reason for the slowness is that each time you add a row, R needs to find a new contiguous block of memory to fit the data frame in. Lots 'o copying.

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great. Thanks for the tip. –  Mark Feb 4 '13 at 19:33
    
so I reallocated the dataframe and started inserting 1row dataframes into it (df[j]<- newrow). It seems to be also getting slow as the number of insertions grow. Have you seen this before? –  Mark Feb 4 '13 at 20:05
    
@Mark Yeah, like I said, this sort of thing is rather un-R-like. Modifying objects will still require a certain amount of copying of the entire object. Do you really want to copy the entire data frame each time you add a row? Probably not. Generate a list of each row using lapply and then stitch them together using do.call(rbind,...). But beyond that, the solution requires more refactoring than I can help with given the information you've provided. –  joran Feb 4 '13 at 20:08
    
Kudos. Thanks a lot. I have thought a lot about using apply here but the problem has such a weird shape my brain is incapable of comprehending a proper functional form for it :) thanks for the help –  Mark Feb 4 '13 at 20:10
    
I'm a little surprised that the df[j,] <- newrow is also slow, and particularly that it would get slower later in the run. I can appreciate that it would require some dataframe copying, but it should be orders of magnitude faster than the second-circle-of-hell approach ... –  Ben Bolker Feb 4 '13 at 22:05

I tried an example. For what it's worth, it agrees with the user's assertion that inserting rows into the data frame is also really slow. I don't quite understand what's going on, as I would have expected the allocation problem to trump the speed of copying. Can anyone either replicate this, or explain why the results below (rbind < appending < insertion) would be true in general, or explain why this is not a representative example (e.g. data frame too small)?

edit: the first time around I forgot to initialize the object in hell2fun to a data frame, so the code was doing matrix operations rather than data frame operations, which are much faster. If I get a chance I'll extend the comparison to data frame vs. matrix. The qualitative assertions in the first paragraph hold, though.

N <- 1000
set.seed(101)
r <- matrix(runif(2*N),ncol=2)

## second circle of hell
hell2fun <- function() {
    df <- as.data.frame(rbind(r[1,])) ## initialize
    for (i in 2:N) {
        df <- rbind(df,r[i,])
    }
}

insertfun <- function() {
    df <- data.frame(x=rep(NA,N),y=rep(NA,N))
    for (i in 1:N) {
        df[i,] <- r[i,]
    }
}

rsplit <- as.list(as.data.frame(t(r)))
rbindfun <-  function() {
    do.call(rbind,rsplit)
}

library(rbenchmark)
benchmark(hell2fun(),insertfun(),rbindfun())

##          test replications elapsed relative user.self 
## 1  hell2fun()          100  32.439  484.164    31.778 
## 2 insertfun()          100  45.486  678.896    42.978 
## 3  rbindfun()          100   0.067    1.000     0.076 
share|improve this answer
    
I'd suggest using rsplit <- split(data.frame(r), seq_len(nrow(r))) for a fairer comparison, and assign within the function. Then use data.table::rbindlist stackoverflow.com/a/12718498/1385941 –  mnel Feb 4 '13 at 22:38
    
will do when I get a chance (I don't understand the first sentence yet ... if I understand correctly, I don't think the matrix-splitting should be charged to the function -- I assumed that the rows would become available one by one within some sort of iterative procedure) –  Ben Bolker Feb 4 '13 at 22:45
    
assign the result (df <- do.call(rbind, rsplit)) within the function (on reading, my commentwasunintelligible). –  mnel Feb 4 '13 at 22:47

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