I have a simulation that has a huge aggregate and combine step right in the middle. I prototyped this process using plyr's ddply() function which works great for a huge percentage of my needs. But I need this aggregation step to be faster since I have to run 10K simulations. I'm already scaling the simulations in parallel but if this one step were faster I could greatly decrease the number of nodes I need.

Here's a reasonable simplification of what I am trying to do:


# Set up some example data
year <-    sample(1970:2008, 1e6, rep=T)
state <-   sample(1:50, 1e6, rep=T)
group1 <-  sample(1:6, 1e6, rep=T)
group2 <-  sample(1:3, 1e6, rep=T)
myFact <-  rnorm(100, 15, 1e6)
weights <- rnorm(1e6)
myDF <- data.frame(year, state, group1, group2, myFact, weights)

# this is the step I want to make faster
system.time(aggregateDF <- ddply(myDF, c("year", "state", "group1", "group2"),
                     function(df) wtd.mean(df$myFact, weights=df$weights)

All tips or suggestions are appreciated!

  • 1
    Not related to performance, but checkout weighted.mean in base
    – hadley
    Sep 10, 2010 at 15:18
  • 1
    Oh, that's handy. You can see I learned R by googling for what I need to do ;)
    – JD Long
    Sep 10, 2010 at 16:11

6 Answers 6


Instead of the normal R data frame, you can use a immutable data frame which returns pointers to the original when you subset and can be much faster:

idf <- idata.frame(myDF)
system.time(aggregateDF <- ddply(idf, c("year", "state", "group1", "group2"),
   function(df) wtd.mean(df$myFact, weights=df$weights)))

#    user  system elapsed 
# 18.032   0.416  19.250 

If I was to write a plyr function customised exactly to this situation, I'd do something like this:

  ids <- id(myDF[c("year", "state", "group1", "group2")], drop = TRUE)
  data <- as.matrix(myDF[c("myFact", "weights")])
  indices <- plyr:::split_indices(seq_len(nrow(data)), ids, n = attr(ids, "n"))

  fun <- function(rows) {
    weighted.mean(data[rows, 1], data[rows, 2])
  values <- vapply(indices, fun, numeric(1))

  labels <- myDF[match(seq_len(attr(ids, "n")), ids), 
    c("year", "state", "group1", "group2")]
  aggregateDF <- cbind(labels, values)

# user  system elapsed 
# 2.04    0.29    2.33 

It's so much faster because it avoids copying the data, only extracting the subset needed for each computation when it's computed. Switching the data to matrix form gives another speed boost because matrix subsetting is much faster than data frame subsetting.

  • 5
    idata.frame was added in plyr 1.0.
    – hadley
    Sep 10, 2010 at 15:32
  • I had messed around with making indexes and such with data.table and had all but given up on that idea. I was hoping for 50% improvement. This far exceeds my expectations.
    – JD Long
    Sep 10, 2010 at 16:13
  • having a little trouble making this run right... But I'm learning as I go... I had changed data to myDF but not sure where the issue is..
    – JD Long
    Sep 10, 2010 at 16:30
  • the code above seems to be missing the creation of the matrix 'data' (if I'm reading this right) possibly a data <- as.matrix(myDF[5:6]) at the top?
    – JD Long
    Sep 10, 2010 at 16:55
  • 1
    @lamecicle you're much better off using dplyr now
    – hadley
    Nov 5, 2014 at 15:01

Further 2x speedup and more concise code:

dtb <- data.table(myDF, key="year,state,group1,group2")
  res <- dtb[, weighted.mean(myFact, weights), by=list(year, state, group1, group2)] 
#   user  system elapsed 
#  0.950   0.050   1.007 

My first post, so please be nice ;)

From data.table v1.9.2, setDT function is exported that'll convert data.frame to data.table by reference (in keeping with data.table parlance - all set* functions modify the object by reference). This means, no unnecessary copying, and is therefore fast. You can time it, but it'll be negligent.

  res <- myDF[, weighted.mean(myFact, weights), 
             by=list(year, state, group1, group2)] 
#   user  system elapsed 
#  0.970   0.024   1.015 

This is as opposed to 1.264 seconds with OP's solution above, where data.table(.) is used to create dtb.

  • Good post! Thanks for the answer. To be consistent with the other methods, however, the step that creates the data table and index should be inside of the system.time() step.
    – JD Long
    Oct 29, 2010 at 22:20
  • 2
    Indeed, but it remains the fastest though. It would be nice to have an option in ddply to operate on data.tables or use data.tables under the hood (I just discovered data.table by looking for solutions to the very same problem, but I would prefer a more ddply-like syntax for this case).
    – datasmurf
    Oct 30, 2010 at 20:49

I would profile with base R

g <- with(myDF, paste(year, state, group1, group2))
x <- with(myDF, c(tapply(weights * myFact, g, sum) / tapply(weights, g, sum)))
aggregateDF <- myDF[match(names(x), g), c("year", "state", "group1", "group2")]
aggregateDF$V1 <- x

On my machine it takes 5sec compare to 67sec with original code.

EDIT Just found another speed up with rowsum function:

g <- with(myDF, paste(year, state, group1, group2))
X <- with(myDF, rowsum(data.frame(a=weights*myFact, b=weights), g))
x <- X$a/X$b
aggregateDF2 <- myDF[match(rownames(X), g), c("year", "state", "group1", "group2")]
aggregateDF2$V1 <- x

It takes 3sec!

  • 2
    Second one takes 5 seconds on my computer, so plyr is still narrowly beating base ;) (Plus it orders the rows correctly)
    – hadley
    Sep 10, 2010 at 16:33
  • 2
    But thanks for the pointer to rowsum - it's so hard to keep up with the plethora of aggregation functions in base R.
    – hadley
    Sep 10, 2010 at 16:34
  • I knew there had to be a tapply way of doing this as well but I was struggling to figure it out. I generally have this struggle with the apply family.
    – JD Long
    Sep 10, 2010 at 16:36
  • @hadley Agree. Some time ago I found replacement for apply(X,1,which.max) in col.max. I wonder how many other functions this type exists (like pmax/pmin), optimized for matrices objects by using .Internal level.
    – Marek
    Sep 13, 2010 at 8:17
  • 1
    @Marek: See 4dpiecharts.com/2010/09/14/… Sep 15, 2010 at 9:41

Are you using the latest version of plyr (note: this hasn't made it to all the CRAN mirrors yet)? If so, you could just run this in parallel.

Here's the llply example, but the same should apply to ddply:

  x <- seq_len(20)
  wait <- function(i) Sys.sleep(0.1)
  system.time(llply(x, wait))
  #  user  system elapsed 
  # 0.007   0.005   2.005 

  system.time(llply(x, wait, .parallel = TRUE))
  #  user  system elapsed 
  # 0.020   0.011   1.038 


Well, other looping approaches are worse, so this probably requires either (a) C/C++ code or (b) a more fundamental rethinking of how you're doing it. I didn't even try using by() because that's very slow in my experience.

groups <- unique(myDF[,c("year", "state", "group1", "group2")])
aggregateDF <- do.call("rbind", lapply(1:nrow(groups), function(i) {
   df.tmp <- myDF[myDF$year==groups[i,"year"] & myDF$state==groups[i,"state"] & myDF$group1==groups[i,"group1"] & myDF$group2==groups[i,"group2"],]
   cbind(groups[i,], wtd.mean(df.tmp$myFact, weights=df.tmp$weights))

aggregateDF <- data.frame()
for(i in 1:nrow(groups)) {
   df.tmp <- myDF[myDF$year==groups[i,"year"] & myDF$state==groups[i,"state"] & myDF$group1==groups[i,"group1"] & myDF$group2==groups[i,"group2"],]
   aggregateDF <- rbind(aggregateDF, data.frame(cbind(groups[i,], wtd.mean(df.tmp$myFact, weights=df.tmp$weights))))
  • that helps me in the single machine case but I'm already blowing this out to Hadoop & oversubscribing each node (more processes than processors). But I'm very pleased to see parallelization making it into plyr!
    – JD Long
    Sep 10, 2010 at 14:55

I usually use an index vector with tapply when the function being applied has multiple vector args:

system.time(tapply(1:nrow(myDF), myDF[c('year', 'state', 'group1', 'group2')], function(s) weighted.mean(myDF$myFact[s], myDF$weights[s])))
# user  system elapsed 
# 1.36    0.08    1.44 

I use a simple wrapper which is equivalent but hides the mess:

tmapply(list(myDF$myFact, myDF$weights), myDF[c('year', 'state', 'group1', 'group2')], weighted.mean)

Edited to include tmapply for comment below:

tmapply = function(XS, INDEX, FUN, ..., simplify=T) {
  FUN = match.fun(FUN)
  if (!is.list(XS))
    XS = list(XS)
  tapply(1:length(XS[[1L]]), INDEX, function(s, ...)
    do.call(FUN, c(lapply(XS, `[`, s), list(...))), ..., simplify=simplify)
  • 1
    Just to add: as.data.frame(as.table(RESULTS)) it's easy way to create data.frame from output.
    – Marek
    Sep 15, 2010 at 8:37
  • Is this the tmapply that you're using? stat.ethz.ch/pipermail/r-help/2002-October/025773.html
    – Shane
    Dec 29, 2010 at 15:22
  • There the m is being used to refer to "matrix". In my case it was meant more as a mashup of tapply and mapply - ie when you want to calculate a grouped aggregate using multiple inputs (cor, weighted.mean etc).
    – Charles
    Dec 29, 2010 at 19:25

Probably the fastest solution is to use collapse::fgroup_by. It's 8x faster than data.table:

myDF %>% 
  fgroup_by(year, state, group1, group2) %>% 
  fsummarise(myFact = fmean(myFact, weights))

bm <- bench::mark(
  collapse = myDF %>% 
  fgroup_by(year, state, group1, group2) %>% 
  fsummarise(myFact = fmean(myFact, weights)),
  data.table = dtb[, weighted.mean(myFact, weights), by=list(year, state, group1, group2)],
  check = FALSE)

#> bm
#  expression      min   median itr/se…¹ mem_a…² gc/se…³ n_itr  n_gc total…⁴
#1 collapse      101ms    105ms     9.10  8.84MB    0        5     0   549ms
#2 data.table    852ms    852ms     1.17 24.22MB    2.35     1     2   852ms

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