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Essentially I've got a large dataframe: 10,000,000x900 (rows,columns) and I'm trying to convert the class of each column in parallel. The end result needs to be a data.frame

Here's what I've got so far:

Pretend df is the dataframe already defined, all columns are a mixture of numeric and character classes

library(snow) 
cl=makeCluster(50,type="SOCK")
cl.out=clusterApplyLB(cl,df,function(x)factor(x,exclude=NULL))

cl.out is a list of what I want, except what I need is for this to be as a data.frame class

So this is where I get stuck... do I try and combine all of the elements of cl.out into a data.frame which isn't going to be in parallel? (SLOW, time is an issue)

Can I implement something else with a different package? (foreach?)

Do I have to hard-code some c to get this done efficiently?

Any help would be appreciated.

Thanks,

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3 Answers 3

One useful paradigm is to subset and replace all columns, treating df as list-like

df[] <- lapply(df, factor, exclude=NULL)

Do you really have 50 cores on a single machine, as implied by your call to makeCluster? If you're not on a Windows machine, use the parallel package and mclapply instead

library(parallel)
options(mc.cores=50)
df[] <- mclapply(df, factor, exclude=NULL)

Is this really going to help you in your overall evaluation? It seems to cost as much to distribute and retrieve the data as to do the calculation.

> f = factor(rep("M", 10000000), levels=LETTERS)
> df = data.frame(f, f, f, f, f, f, f, f)
> system.time(lapply(df, factor, exclude=NULL))
   user  system elapsed 
  2.676   0.564   3.250 
> system.time(clusterApply(cl, df, factor, exclude=NULL))
   user  system elapsed 
  1.488   0.752   2.476 
> system.time(mclapply(df, factor, exclude=NULL))
   user  system elapsed 
  1.876   1.832   1.814 

(the multi-core and multi-process timings are probably highly variable).

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If you have a data.frame of that size, I think you will be running into memory issues very quickly.

I think it will be much faster, and more efficient.

You could use set

library(data.table)

# to set as a data.table without having to copy 
setattr(df, 'class', c('data.table','data.frame')
alloc.col(df)

for(nn in names(df)){
   set(df, j = nn, value = factor(df[[nn]])
 }

It is worth reading data.table and parallel computing

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Since a data.frame is a list, with a class attribute, you can just convert the list into a data.frame, with as.data.frame.

cl.out <- as.data.frame(cl.out)

I notice that the column names are lost: if you are sure that they are in the same order, you can set them back with:

names(cl.out) <- names(df)
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The conversion is quite slow using that process. I believe there is more going on under the hood than simply appending a class attribute onto the blob of data. –  Kyle B Apr 18 '13 at 21:14
    
It is not very clean, but you can try to change the attribute directly: class(cl.out) <- "data.frame". –  Vincent Zoonekynd Apr 18 '13 at 21:25
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