# Thinking in Vectors with R

Facebook and Stack Exchange are now working together to support the Facebook developer community. Facebook engineers participate here along with the best Facebook developers in the world. If you have a technical question about Facebook, this is the best place to ask.

I know that R works most efficiently with vectors and looping should be avoided. I am having a hard time teaching myself to actually write code this way. I would like some ideas on how to 'vectorize' my code. Here's an example of creating 10 years of sample data for 10,000 non unique combinations of state, plan1 and plan2:

``````st<-NULL
p1<-NULL
p2<-NULL
year<-NULL
i<-0
starttime <- Sys.time()

while (i<10000) {
for (years in seq(1991,2000)) {
st<-c(st,sample(c(12,17,24),1,prob=c(20,30,50)))
p1<-c(p1,sample(c(12,17,24),1,prob=c(20,30,50)))
p2<-c(p2,sample(c(12,17,24),1,prob=c(20,30,50)))
year <-c(year,years)
}
i<-i+1
}
Sys.time() - starttime
``````

This takes about 8 minutes to run on my laptop. I end up with 4 vectors, each with 100,000 values, as expected. How can I do this faster using vector functions?

As a side note, if I limit the above code to 1000 loops on i it only takes 2 seconds, but 10,000 takes 8 minutes. Any idea why?

-
Hey JD, I ran across this older post tonight. One note: put your `c()` calls above the loop if they are not going to change. Each loop calls `c()` 6 times unnecessarily, which turns out to be 600,000 more function calls to `c()` then you need :-) – Vince Aug 27 '10 at 4:22
can you believe this was within my first few months of deciding to really start doing real work with R? I had done some simple regressions and such previously, but I had decided to move a stochastic modeling routine to R. It's both embarrassing and encouraging to look back at my learning process as documented by my questions ;) Just like Virginia Slim, I've come a long way, Baby. – JD Long Aug 27 '10 at 19:45
Heh, trust me, this is nothing. There's a few embarrassing questions I've posted to lists ages ago. Much, much more embarrassing. – Vince Aug 28 '10 at 0:07

Clearly I should have worked on this for another hour before I posted my question. It's so obvious in retrospect. :)

To use R's vector logic I took out the loop and replaced it with this:

``````st <-   sample(c(12,17,24),10000,prob=c(20,30,50),replace=TRUE)
p1 <-   sample(c(12,17,24),10000,prob=c(20,30,50),replace=TRUE)
p2 <-   sample(c(12,17,24),10000,prob=c(20,30,50),replace=TRUE)
year <- rep(1991:2000,1000)
``````

I can now do 100,000 samples almost instantaneous. I knew that vectors were faster, but dang. I presume 100,000 loops would have taken over an hour using a loop and the vector approach takes <1 second. Just for kicks I made the vectors a million. It took ~2 seconds to complete. Since I must test to failure, I tried 10mm but ran out of memory on my 2GB laptop. I switched over to my Vista 64 desktop with 6GB ram and created vectors of length 10mm in 17 seconds. 100mm made things fall apart as one of the vectors was over 763mb which resulted in an allocation issue with R.

Vectors in R are amazingly fast to me. I guess that's why I am an economist and not a computer scientist.

-
 They look cool, never having seen the R language before. – Joe Philllips Jan 13 '09 at 18:06 JD: Investigate do.call, sapply, lapply, and tapply. These were turning points in R for me. Anonymous functions are useful too. – Vince Sep 9 '09 at 18:11 @Vince what are "anonymous functions?" – Zach Mar 18 '11 at 1:02