Hi I'm try to speed up a ddly function.

Here is the (big) datastet I use :


First try :

system.time(ca_annee1<- ddply(.data = df, 
                .variables = .(code_client,annee), 
                .progress = progress_text(char = ".")))

# user   system  elapsed 
# 1439.278    1.774 1441.876 

It's really slow, I just want to count each combination between clode_client and annee.

I tried to use my 4cores:

registerDoSNOW(makeCluster(4, type = "SOCK"))
system.time(ca_annee2<- ddply(.data = df, 
                             .variables = .(code_client,annee), 
#user   system  elapsed 
#2054.860   13.618 2080.125

Tt's even more slow, why? (My cores where all 100% during calculation)

Anyway, I find a way to do this faster (quite instantly):


But I would like to find a way to user ddply( or agregate, or by or apply, wathever), because the summary trick will not be ok in other context.

So does anyone understand why the paralell approach is slower? And does someone give me some tips to boost the plyr functions ?


  • 3
    If you want speed, don't use ddply; switch to either the data.table or dplyr packages. – joran Oct 22 '14 at 15:23
  • library(data.table); setDT(df); df[,list(Count=.N),keyby=c("code_client","annee")] ? – nrussell Oct 22 '14 at 15:27
  • 2
    If you "just want to count each comibinaison between clode_client and annee", why not start with table? system.time(t <- table(df$code_client, df$annee)). user: 1.43; system: 0.10; elapsed: 1.53, on my quite ordinary laptop. – Henrik Oct 22 '14 at 15:29
  • I think the parallel approach may be slower because it creates multiple copies of the dataset – Matthew Oct 22 '14 at 15:41

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