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I'm relatively new to R, but already wrote a few scripts and stared to get comfortable with it.

But few days ago I ran into an issue: I have a large data.frame jobs, this is what it looks like:

jobs[1,]
  submittime  starttime finishtime  cputime maxrmem  host
1 1367000999 1367000999 1367001001 0.017996      -1  i-sim-11-190
length(jobs$finishtime)
[1] 13280089

yes, it's big, 11GB in memory. Now I have a vector cputimenorm

length(cputimenorm)
[1] 13280089

So I wanted to add this vector as a column to jobs

jjj <- cbind( jobs, cputimenorm )

And this is still running for 16 hours already on a powerful Proliant server with 400GB RAM.

What am I doing wong?

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2  
Have you tried just doing jobs$cputimenorm <- cputimenorm ? –  Señor O Jun 11 '13 at 18:20
3  
In addition to @SeñorO's comment: You should absolutely not use a data.frame with a size like that. Working with a data.frame copies the whole object far to often. Make it a data.table and do as many operations by reference as possible. PS: Having 400 GB RAM is nice, but it will help you only so far. You still need to write efficient code. –  Roland Jun 11 '13 at 18:38
    
Thanks for replies, guys. –  Henry Jun 11 '13 at 19:29
1  
But maybe you should leave the data in the database and query the db directly? –  Roland Jun 11 '13 at 19:42
2  
Try doing system.time(cbind(jobs[1:i,], cputime[1:i])), where you start i off small and see how computing time changes as it increases. That may help you get to the bottom of why it's taking so long. –  Señor O Jun 11 '13 at 21:01

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