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I'm trying to find a vectorized procedure that can replace the following code (which takes a long time to run):

for (i in 2:nrow(z)) {
  if (z$customerID[i]==z$customerID[i-1]) 
     {z$timeDelta[i]<-(z$time[i]-z$time[i-1])} else {z$timeDelta[i]<- NA}
}

I tried looking for different apply snippets, but haven't found anything useful.

Here's some sample data:

customerID    time
    1         2013-04-17 15:30:00 IDT
    1         2013-05-19 11:32:00 IDT
    1         2013-05-20 10:14:00 IDT
    2         2013-03-14 18:41:00 IST
    2         2013-04-24 09:52:00 IDT
    2         2013-04-24 17:08:00 IDT

And I want to get the following output:

customerID    time                        timeDelta*
    1         2013-04-17 15:30:00 IDT     NA
    1         2013-05-19 11:32:00 IDT     31.83 
    1         2013-05-20 10:14:00 IDT     0.94 
    2         2013-03-14 18:41:00 IST     NA
    2         2013-04-24 09:52:00 IDT     40.59
    2         2013-04-24 17:08:00 IDT     0.3 

 *I prefer the time will be in days
share|improve this question
    
Please provide sample data. – Tyler Rinker Aug 18 '13 at 12:26
1  
Give us sample data, reproducible code that works on your data without errors and gives the desired output (and it'd be great if could also show and explain us the desired output). – Arun Aug 18 '13 at 12:26
1  
Can you use dput to provide the sample data? It's much easier to read in that way. – Tyler Rinker Aug 18 '13 at 12:49
up vote 10 down vote accepted
z$timeDelta <- NA
z$timeDelta[-1] <- ifelse(tail(z$customerID,-1) == head(z$customerID,-1), diff(z$time)/24, NA)

or a shorter version

z$timeDelta <- NA
z$timeDelta[-1] <- ifelse(!diff(z$customerID), diff(z$time)/24, NA)
share|improve this answer
    
Clever approach +1 – Tyler Rinker Aug 18 '13 at 13:08
    
It took 0.1 sec to run it on an 80K data frame. – Guest3290 Aug 18 '13 at 13:53

This works:

## z <- read.table(text="customerID    time
##     1         2013-04-17.15:30:00.IDT
##     1         2013-05-19.11:32:00.IDT
##     1         2013-05-20.10:14:00.IDT
##     2         2013-03-14.18:41:00.IST
##     2         2013-04-24.09:52:00.IDT
##     2         2013-04-24.17:08:00.IDT", header=TRUE)
## 
## mydf$time <- z$time <- as.POSIXlt(gsub("\\.", " ", z$time))


do.call(rbind, lapply(split(z, z$customerID), function(x) {
    x$timeDelta <- c(NA, round(as.numeric(diff(x$time), units = "days"), 2))
    x
}))

##     customerID                time timeDelta
## 1.1          1 2013-04-17 15:30:00        NA
## 1.2          1 2013-05-19 11:32:00     31.83
## 1.3          1 2013-05-20 10:14:00      0.95
## 2.4          2 2013-03-14 18:41:00        NA
## 2.5          2 2013-04-24 09:52:00     40.63
## 2.6          2 2013-04-24 17:08:00      0.30
share|improve this answer

This should work for you:

do.call(rbind,lapply(split(mydf,mydf$customerID), function(df)
    within(df,timeDelta<-c(NA,diff(time)/24))))

Result:

    customerID                time  timeDelta
1.1          1 2013-04-17 15:30:00         NA
1.2          1 2013-05-19 11:32:00 31.8347222
1.3          1 2013-05-20 10:14:00  0.9458333
2.4          2 2013-03-14 18:41:00         NA
2.5          2 2013-04-24 09:52:00 40.5909722
2.6          2 2013-04-24 17:08:00  0.3027778
share|improve this answer

With some help of firstobs from package doBy:

z$timeDelta <- c(NA, diff(z$time))
z$timeDelta[firstobs(z$customerID)] <- NA
share|improve this answer

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