I have a very large data.frame that I want to apply a fairly complicated function to, calculating a new column. I want to do it in parallel. This is similar to the question posted over on the r listserve, but the first answer is wrong and the second is unhelpful.

I've gotten everything figured out thanks to the parallel package, except how to put the output back onto the data frame. Here's a MWE that shows what I've got:


# Example Data
data <- data.frame(a = rnorm(200), b = rnorm(200),  
                   group = sample(letters, 200, replace = TRUE))

# Break into list
datagroup <- split(data, factor(data$group))

# execute on each element in parallel
options(mc.cores = detectCores())
output <- mclapply(datagroup, function(x) x$a*x$b)

The result in output is a list of numeric vectors. I need them in a column that I can append to data. I've been looking along the lines of do.call(cbind, ...), but I have two lists with the same names, not a single list that I'm joining. melt(output) gets me a single vector, but its rows are not in the same order as data.

  • can't you just melt then merge? merge(data, melt(output), by.x = 'group', by.y = 'L1') – rawr Aug 14 '14 at 19:43
  • How can I be sure, though, that the row order in data is the same as the row order in melt(output), after a merge? – gregmacfarlane Aug 14 '14 at 20:06
  • 1
    Maybe I'm missing something, but couldn't you just do data <- do.call(rbind, mclapply(split(data, data$group), function(x){z <- x$a*x$b;x <- as.data.frame(cbind(x, newcol = z));return(x)}))? – docendo discimus Aug 14 '14 at 20:24
  • Well, I guess what I was missing is that I didn't think to nest everything together like that. It may not be pretty, but I think it works. – gregmacfarlane Aug 14 '14 at 20:35

Converting from comment to answer..

This seems to work:

data <- 
    rbind, mclapply(
      split(data, data$group), 
         z <- x$a*x$b
         x <- as.data.frame(cbind(x, newcol = z))
rownames(data) <- seq_len(nrow(data))
#           a          b group      newcol
#1 -0.6482428  1.8136254     a -1.17566963
#2  0.4397603  1.3859759     a  0.60949714
#3 -0.6426944  1.5086339     a -0.96959055
#4 -1.2913493 -2.3984527     a  3.09724030
#5  0.2260140  0.1107935     a  0.02504087
#6  2.1555370 -0.7858066     a -1.69383520

Since you are working with a "very large" data.frame (how large roughly?), have you considered using either dplyr or data.table for what you do? For a large data set, performance may be even better with one of these than with mclapply. The equivalent would be:

data %>%
  group_by(group) %>%
  mutate(newcol = a * b)

setDT(data)[, newcol := a*b, by=group]
  • I use dplyr constantly, and would love use it in this application. The problem is that the function I am running is much more complicated than *, so I want to parallelize it. Also, I have a 12-core processor, so why not? Hopefully Hadley and Romain will parallelize dplyr soon. github.com/romainfrancois/parallelGroupBy – gregmacfarlane Aug 15 '14 at 11:37
  • 1
    @gmacfarlane, fair enough. Would still be interesting to compare the performances. – docendo discimus Aug 15 '14 at 11:43
  • applying my function (which itself uses dplyr do() commands) directly to the data frame was estimated to take about 4 hours (going off of the do() progress bar. In parallel, it took about 2 minutes. – gregmacfarlane Aug 27 '14 at 14:27

A bit dated, but this might help.

rbind will kill you in terms of performance if you have many splits.

It's much faster to use the unsplit function.

results <- mclapply( split(data, data$group), function(x) x$a*x$b) 

resultscombined <- unsplit (results, data$group)

data$newcol <-  resultscombined 

Yeah there's a memory hit so depends on what you'd like.


I'm currently unable to download the parallel package to my computer. Here I post a solution that works for my usual setup using the snow package for computation in parallel.

The solution simply orders the data.frame at the beginning, then merges the output list calling c(). See below:


# Example data
data <- data.frame(a = rnorm(200), b = rnorm(200),  
                   group = sample(letters, 200, replace = TRUE))
data <- data[order(data$group),]

# Cluster setup
clNode <- list(host="localhost")
localCl <- makeSOCKcluster(rep(clNode, 2))
clusterSetupRNG(localCl, type="RNGstream", seed=sample(0:9,6,replace=TRUE))
clusterExport(localCl, list=ls())

# Break into list
datagroup <- split(data, factor(data$group))

output <- clusterApply(localCl, datagroup, function(x){ x$a*x$b })

# Put back and check
data$output <- do.call(c, output)
data$check <- data$a*data$b


# Stop cluster

Inspired by @beginneR and our common love of dplyr, I did some more fiddling and think the best way to make this happen is

 rbind_all( mclapply(split(data, data$group), fun(x) as.data.frame(x$a*x$b)))

Compute the mean by group using a multicore process:

x <- group_by(iris, Species)
indices <- attr(x,"indices")
labels <- attr(x,"labels") 

result <- mclapply(indices,  function(indx){
                   data <- slice(iris, indx + 1)
                   ## Do something...
                   }, mc.cores =2)

 out <- cbind(labels,mean=unlist(result))
 ##      Species  mean
 ## 1     setosa 1.462
 ## 2 versicolor 4.260
 ## 3  virginica 5.552

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