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I have the following, somewhat large dataset:

 > dim(dset)
 [1] 422105     25
 > class(dset)
 [1] "data.frame"
 > 

Without doing anything, the R process seems to take about 1GB of RAM.

I am trying to run the following code:

  dset <- ddply(dset, .(tic), transform,
                date.min <- min(date),
                date.max <- max(date),
                daterange <- max(date) - min(date),
                .parallel = TRUE)

Running that code, RAM usage skyrockets. It completely saturated 60GB's of RAM, running on a 32 core machine. What am I doing wrong?

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As a quick follow up, I tried this with a much smaller subset of the data, and RAM usage still shot up to 17 GB –  stevejb Dec 10 '11 at 2:57
3  
the <- look funny to me. What happens if you use = within the parentheses instead? –  Ben Bolker Dec 10 '11 at 3:01

3 Answers 3

up vote 12 down vote accepted

If performance is an issue, it might be a good idea to switch to using data.tables from the package of the same name. They are fast. You'd do something roughly equivalent something like this:

library(data.table)
dat <- data.frame(x = runif(100),
                  dt = seq.Date(as.Date('2010-01-01'),as.Date('2011-01-01'),length.out = 100),
                  grp = rep(letters[1:4],each = 25))

dt <- as.data.table(dat)
key(dt) <- "grp"

dt[,mutate(.SD,date.min = min(dt),
               date.max = max(dt),
               daterange = max(dt) - min(dt)), by = grp]
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1  
+1 -- I'll second that. I just did timings on a plyr and a slightly different data.table solution with 30000 levels of tic. ddply took 247.80 seconds to data.table's 3.75 seconds. In addition, data.table is also designed to use less memory, implementing pass-by-reference instead of memory consumptive pass-by-value for data.frames. –  Josh O'Brien Dec 10 '11 at 5:15
    
mutate(.SD,... should be changed to with(.SD,list(date.min = min(dt),... to get right answer. –  Wojciech Sobala Dec 10 '11 at 8:37
    
Thanks for the sample code. Trying with my dataset right now on a more modest machine (core i5, 6GB RAM) –  stevejb Dec 10 '11 at 23:36
    
@stevejb Be sure to try out Josh's strategy too, I just slapped together a quick example for illustration; his will probably perform better. –  joran Dec 11 '11 at 1:33
    
@joran I did that. Pretty cool code. I gave you the answer since you answered first, but my code is based on Josh's. Thanks! –  stevejb Dec 12 '11 at 23:25

Here's an alternative application of data.table to the problem, illustrating how blazing-fast it can be. (Note: this uses dset, the data.frame constructed by Brian Diggs in his answer, except with 30000 rather than 10 levels of tic).

(The reason this is much faster than @joran's solution, is that it avoids the use of .SD, instead using the columns directly. The style's a bit different than plyr, but it typically buys huge speed-ups. For another example, see the data.table Wiki which: (a) includes this as recommendation #1 ; and (b) shows a 50X speedup for code that drops the .SD).

library(data.table)
system.time({
    dt <- data.table(dset, key="tic")
    # Summarize by groups and store results in a summary data.table
    sumdt <- dt[ ,list(min.date=min(date), max.date=max(date)), by="tic"]
    sumdt[, daterange:= max.date-min.date]
    # Merge the summary data.table back into dt, based on key
    dt <- dt[sumdt]
})
# ELAPSED TIME IN SECONDS
# user  system elapsed 
# 1.45    0.25    1.77 
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This is indeed blazingly fast. For my dataset, 2.621 sec of elapsed time. Thanks so much! –  stevejb Dec 10 '11 at 23:53

A couple of things come to mind.

First, I would write it as:

dset <- ddply(dset, .(tic), summarise,
                date.min = min(date),
                date.max = max(date),
                daterange = max(date) - min(date),
                .parallel = TRUE)

Well, actually, I would probably avoid double calculating min/max date and write

dset <- ddply(dset, .(tic), function(DF) {
              mutate(summarise(DF, date.min = min(date),
                               date.max = max(date)),
                     daterange = date.max - date.min)},
              .parallel = TRUE)

but that's not the main point you are asking about.

With a dummy data set of your dimensions

n <- 422105
dset <- data.frame(date=as.Date("2000-01-01")+sample(3650, n, replace=TRUE),
    tic = factor(sample(10, n, replace=TRUE)))
for (i in 3:25) {
    dset[i] <- rnorm(n)
}

this ran comfortably (sub 1 minute) on my laptop. In fact the plyr step took less time than creating the dummy data set. So it couldn't have been swapping to the size you saw.

A second possibility is if there are a large number of unique values of tic. That could increase the size needed. However when I tried it increasing the possible number of unique tic values to 1000, it didn't really slow down.

Finally, it could be something in the parallelization. I don't have a parallel backend registered for foreach, so it was just doing a serial approach. Perhaps that is causing your memory explosion.

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1  
There are about 30000 levels of tic. I read the JSS article on plyr, and it said that it was careful not to make extra copies of the data. That is why the memory usage was so surprising. –  stevejb Dec 10 '11 at 3:39
    
@stevejb: I've had a similar experience; plyr doesn't seem to cope well with large numbers of classification levels (about 25000 in my case). I eventually went back to base R's split and tapply which did the job, albeit in a much more cumbersome way. –  Hong Ooi Dec 10 '11 at 4:38
2  
It's because plyr uses data frames internally, which are unfortunately slow and memory hogs. –  hadley Dec 10 '11 at 12:46
    
Thanks for the explanations. –  stevejb Dec 10 '11 at 23:32

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