Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Consider the following script, which we will call Foo.r.

set.seed(1)                                       
x=matrix(rnorm(1000*1000),ncol=1000)              
x=data.frame(x)                                   


dummy = sapply(1:1000,function(i) sum(x[i,]) )    
#dummy = sapply(1:1000,function(i) sum(x[,i]) )  

When the first dummy line is commented out, we are summing columns, and the code takes less than a second to run on my machine.

$ time Rscript Foo.r  

real    0m0.766s
user    0m0.536s
sys     0m0.080s

When the second dummy line is commented out (and the first is commented in), we are summing rows, and the run time is closer to 30 seconds.

$ time Rscript Foo.r  

real    0m30.589s
user    0m30.248s
sys     0m0.104s

Note that I am aware of the standard summing functions rowSums and colSums, but I am using sum only as an example for this strange asymmetric performance behavior.

share|improve this question
    
you will find that if you use matrix instead of dataframes, the timings would be similar. I suppose the reason lies probably in the representation of columns in R. A dataframe is actually just a list of vectors. –  b70568b5 Dec 2 '13 at 1:11

1 Answer 1

This isn't really the result of sapply, rather it has to do with how data frames are stored and the implications that has for extracting rows versus columns. Data frames are stored as lists, where each element of the list is a column.

This means that extracting columns is easier than extracting rows.

To demonstrate that this has nothing to do with sapply, consider this, using your data frame x:

foo1 <- function(){
+   for (i in 1:1000){
+       tmp <- x[i, ]
+   }
+ }  
> 
> foo2 <- function(){
+   for (i in 1:1000){
+       tmp <- x[ ,i]
+   }
+ }
> system.time(foo2())
   user  system elapsed 
  0.029   0.000   0.031 
> system.time(foo1())  
   user  system elapsed 
 15.986   0.074  15.894 

If you need to do things row-wise and fast, data frames will often be a bad choice. To operate on rows, it has to extract corresponding elements from each list item. To operate on columns it only has to loop through the columns.

share|improve this answer
    
So what is it in rowSums/rowMeans that makes their efficiency on data.frames very close to their column variants? On a 1000x1000 matrix, by the way, column operators are almost three times as fast, while on a 1000x1000 data.frame it was only about 1.1 times as fast. –  Ananda Mahto Dec 2 '13 at 3:47
    
@AnandaMahto The first line of code in rowSums is if (is.data.frame(x)) x <- as.matrix(x). –  Roland Dec 2 '13 at 8:59
    
@joran I think you need to explain a bit more clearly that a data.frame is a list of (column) vectors with a class attribute. E.g., you could show unclass(x). –  Roland Dec 2 '13 at 9:05
1  
There is a great and detailed answer to a similar question I asked here... stackoverflow.com/a/16228567/1478381 –  Simon O'Hanlon Dec 3 '13 at 10:20

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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