Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I'm working with a large data frame called exp (file here) in R. In the interests of performance, it was suggested that I check out the idata.frame() function from plyr. But I think I'm using it wrong.

My original call, slow but it works:


With idata.frame, Error: is not TRUE


So, I thought, perhaps it is my data. So I tried the baseball dataset. The idata.frame example works fine: dlply(idata.frame(baseball), "id", nrow) But if I try something similar to my desired call using baseball, it doesn't work:

>Error: is not TRUE

Perhaps my error is in how I'm specifying the groupings? Anyone know how to make my example work?


I also tried:

groupVars <- c("groupname","starttime","fPhase","fCycle")

ag.median <- aggregate(i[,voi], i[,groupVars], median)
Error in i[, voi] : object of type 'environment' is not subsettable

which uses a faster way of getting the medians, but gives a different error. I don't think I understand how to use idata.frame at all.

share|improve this question
Yes, idata.frame is still experimental so it's better to work with it directly rather than using of the summary functions like colwise – hadley Oct 21 '10 at 15:27
Given you are looking for performance with big data, I would invest time in looking at the data.table package – mnel Sep 10 '12 at 3:19

2 Answers 2

up vote 1 down vote accepted

Given you are working with 'big' data and looking for perfomance, this seems a perfect fit for data.table.

Specifically the lapply(.SD,FUN) and .SDcols arguments with by

Setup the data.table

DT <-
iexp <- idata.frame(exp)

Which columns are numeric

numeric_columns <- names(which(unlist(lapply(DT, is.numeric))))

dt.median <- DT[, lapply(.SD, median), by = list(groupname, starttime, fPhase, 
    fCycle), .SDcols = numeric_columns]

some benchmarking

benchmark(data.table = DT[, lapply(.SD, median), by = list(groupname, starttime, 
    fPhase, fCycle), .SDcols = numeric_columns], 
 plyr = ddply(exp, .(groupname, starttime, fPhase, fCycle), numcolwise(median), na.rm = TRUE), 
 idataframe = ddply(exp, .(groupname, starttime, fPhase, fCycle), function(x) data.frame(inadist = median(x$inadist), 
        smldist = median(x$smldist), lardist = median(x$lardist), inadur = median(x$inadur), 
        smldur = median(x$smldur), lardur = median(x$lardur), emptyct = median(x$emptyct), 
        entct = median(x$entct), inact = median(x$inact), smlct = median(x$smlct), 
        larct = median(x$larct), na.rm = TRUE)), 
 aggregate = aggregate(exp[, numeric_columns],
                       exp[, c("groupname", "starttime", "fPhase", "fCycle")], 
 replications = 5)

##         test replications elapsed relative user.self 
## 4  aggregate            5    5.42    1.789      5.30   
## 1 data.table            5    3.03    1.000      3.03    
## 3 idataframe            5   11.81    3.898     11.77       
## 2       plyr            5    9.47    3.125      9.45       
share|improve this answer
Nice! I may include this in the next refactor. – dnagirl Sep 10 '12 at 10:46

Strange behaviour, but even in the docs it says that idata.frame is experimental. You probably found a bug. Perhaps you could rewrite the check at the top of ddply that tests

In any case, this cuts about 20% off the time (on my system):

system.time(df.median<-ddply(exp, .(groupname,starttime,fPhase,fCycle), function(x) data.frame(

Shane asked you in another post if you could cache the results of your script. I don't really have an idea of your workflow, but it may be best to setup a chron to run this and store the results, daily/hourly whatever.

share|improve this answer
that's interesting that specifying the columns speeds things up (it does so on my system too), but so far the fastest solution is to use aggregate(). In any event, the reason I used my old slow call in this question was because it caused idata.frame() to choke. I have a lot of calls that use the exp data frame, and I thought if I could substitute an idata.frame, it might speed up all the calls significantly. – dnagirl Oct 21 '10 at 12:38
You can use idata.frame with this call - but it only gives about a 10% speed up because you're not making that many splits. – hadley Oct 21 '10 at 15:27
And yes, aggregate will currently beat ddply + colwise. Thinking about how to do better for the next version. – hadley Oct 21 '10 at 15:29

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.