I have a huge data table with millions of rows and dozens columns, so performance is a crucial issue for me. The data describes visits to a content site. I want to compute the ContentId of the earliest (i.e. minimum hit time) hit of each visit. What I did is: dt[,.(FirstContentOfVisit=ContentID[ContentID != ""][which.min(HitTime)]), by=VisitId,.SDcols=c("ContentID","HitTime")]

the problem is that I don't know if which.min first computes the min on all the HitTime vector (which I don't want!) or does it only on the filtered HitTime vector (the one which is corresponding to the non-empty ContentID).

In addition, after I compute it - how can I get the minimal HitTime of the ContentIDs that are different from the first (i.e. the earliest hit time of the non-first content id).

When I tried to have both actions with user-defined functions (first - sort the sub data table and then extract the desired value) it took ages (and actually never stopped), although I have a very strong machine (virtual) with 180 GB RAM. So I'm looking for an inline solution.

1 Answer 1


dplyr makes this much easier. You didn't share a sample of your data, but I assume the variables of interest look something like this.

web <- tibble(
  HitTime = sample(seq(as.Date('2010/01/01'), as.Date('2017/02/23'), by="day"), 1000),
  ContentID = 1:1000,
  SessionID = sample(1:100, 1000, replace = TRUE)

Then you can just use group_by and summarise to find the earliest value of HitTime for each SessionID.

web %>%
  group_by(SessionID) %>%
  summarise(HitTime = min(HitTime))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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