Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

Can you make this R code faster? Can't see how to vectorize it. I have a data-frame as follows (sample rows below):

> str(tt)
'data.frame':   1008142 obs. of  4 variables:
 $ customer_id: int, visit_date : Date, format: "2010-04-04", ...

I want to compute the diff between visit_dates for a customer. So I do diff(tt$visit_date), but have to enforce a discontinuity (NA) everywhere customer_id changes and the diff is meaningless, e.g. row 74 below. The code at bottom does this, but takes >15 min on the 1M row dataset. I also tried piecewise computing and cbind'ing the subresult per customer_id (using which()), that was also slow. Any suggestions? Thanks. I did search SO, R-intro, R manpages, etc.

   customer_id visit_date visit_spend ivi
72          40 2011-03-15       18.38   5
73          40 2011-03-20       23.45   5
74          79 2010-04-07      150.87  NA
75          79 2010-04-17      101.90  10
76          79 2010-05-02      111.90  15


all_tt_cids <- unique(tt$customer_id)

# Append ivi (Intervisit interval) column
tt$ivi <- c(NA,diff(tt$visit_date))
for (cid in all_tt_cids) {
  # ivi has a discontinuity when customer_id changes
  tt$ivi[min(which(tt$customer_id==cid))] <- NA

(Wondering if we can create a logical index where customer_id differs to the row above?)

share|improve this question

1 Answer 1

up vote 6 down vote accepted

to set NA to appropriate places, you again can use diff() and one-line trick:

> tt$ivi[c(1,diff(tt$customer_id)) != 0] <- NA


let's take some vector x

x <- c(1,1,1,1,2,2,2,4,4,4,5,3,3,3)

we want to extract such indexes, which start with new number, i.e. (0,5,8,11,12). We can use diff() for that.

y <- c(1,diff(x))
# y = 1  0  0  0  1  0  0  2  0  0  1 -2  0  0

and take those indexes, that are not equal to zero:

x[y!=0] <- NA
share|improve this answer
Awesome! You meant tt$ivi[c(1,diff(tt$customer_id)) != 0] <- NA –  smci Oct 31 '11 at 7:22
sure, customer_id, thank you –  Max Oct 31 '11 at 7:26
Sure I get the idea, I just don't get why this should be >1000x faster than the sequential access. –  smci Oct 31 '11 at 7:29
@smci, there are several discussions in SO about why R loops are slower than vectorization. for ex. take a look at stackoverflow.com/questions/7142767/why-are-loops-slow-in-r –  Max Oct 31 '11 at 8:17
@smci The bottleneck in your code is the assignment using <- to a data.frame, which is very slow. You should be able to get a substantial performance improvement by using lapply rather than a loop. (Note that I am not saying lapply is faster than loops in general. It's not lapply that is faster, but avoiding '<-.data.frame' during each iteration.) –  Andrie Oct 31 '11 at 8:17

Your Answer


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.