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I am definitely confused on why accessing a data.table by row index is slower than data.frame. Any suggestions how i can access each row of data.table sequentially in loop that is faster?

m = matrix(1L, nrow=100000, ncol=100)

DF = as.data.frame(m)
DT = as.data.table(m)

identical(DF[100, ], DT[100, ])
[1] FALSE

> all(DF[100, ], DT[100, ])
[1] TRUE

> system.time(for (i in 1:1000) DT[i,])
   user  system elapsed 
  5.440   0.000   5.451 

R> system.time(for (i in 1:1000) DF[i,])
   user  system elapsed 
  2.757   0.000   2.784 
share|improve this question
3  
The simplest explanation is [.data.table does a lot more things than [.data.frame. – Arun Jan 10 '14 at 0:03
    
How may iterate the rows of the data.frame by row index faster then ? – user3147662 Jan 10 '14 at 0:18
    
I've created a FR #5260 here. Thanks for reporting. It should be possible to gain more speed. – Arun Jan 10 '14 at 0:30
    
@user3147662, why don't you provide more information about the problem you are trying to solve by iterating through rows of a data.table? You can do amazing powerful things without explicit iteration. Also, you should probably do that as a separate question. – BrodieG Jan 10 '14 at 1:09
1  
A nice starting point would be to edit your post with what your actual task is, clearly, and with producible examples, and showing your output. – Arun Jan 10 '14 at 10:44

A data.table query has more arguments (and it does more) so the small overhead of DT[...] is larger than DF[...]. This overhead adds up if you loop it. The intended use of data.table is to have it execute a large complex operation few times, rather than small trivial calculations multiple times. So let's reformulate your test:

> system.time(DT[seq(len=nrow(m)),])
 user  system elapsed 
0.08    0.02    0.09 
> system.time(DF[seq(len=nrow(m)),])
 user  system elapsed 
0.08    0.05    0.13 

Here, they are about the same. Since we only have one DT call, the overhead isn't that apparent because the overhead is only executed once. In your case you executed it 100K times (unnecessarily, I might add). If you are using data.table and you are making calls to it thousands of times, you are probably using it wrong. There almost certainly is a way to reformulate so you can have just one or a few data.table calls that do the same thing.

Also, note that even my reformulated test here is pretty trivial, which is why data.table performs comparably to data.frame.

share|improve this answer
    
Sorry, but what do you mean with your first line? What's the overhead with each data.table statement? – Arun Jan 10 '14 at 0:01
1  
[.data.table is 1000 lines of code when deparsed, whereas [.data.frame is 145. # of lines of code is definitely not a great comparison of overhead, but clearly data.table needs to do waaay more than [.data.frame to appropriate react to different inputs. This isn't bad at all, it just means that if you're going to do a completely trivial calculation with data.table, and keep calling [.data.table each time, you'll notice the overhead associated with handling all the special conditions that [data.table manages. Since this is not the correct usage of data table, it isn't a problem – BrodieG Jan 10 '14 at 1:06
    
Right all along. But we could get more speed-up. I'll write back once I manage test some ideas. – Arun Jan 10 '14 at 1:09
    
Perhaps you should edit out the first line to what you say in your comment. It's not clear you're talking about [.data.table. – Arun Jan 10 '14 at 1:10
    
@Arun, do you mean the line that starts "[.data.table is 1000 lines of code..."? I'm confused. – BrodieG Jan 10 '14 at 1:12

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