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I want to create multiple data sets with Amelia, but the data set is large so it takes a long time. As a result, I'm trying to run the multiple imputation with parallel processors in Windows. Could someone can help me?

library(Amelia)
library(parallel)
detectCores(all.tests = FALSE, logical = TRUE)
[1] 4

mi <- amelia(impute, m=10, 
             idvars=c("ID","SCHL","SEX","WAVE", "YEAR"), 
             parallel=c("snow"), cl=cluster(c("localhost")))

I don't know how to write up this command.

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Does your code work? Do you get an error? –  csgillespie Aug 21 '13 at 7:40
    
Yes, It works. But the speed of processing is the same as that without parallel. –  user2702330 Aug 26 '13 at 2:03

1 Answer 1

Try using the multicore package instead. Works for me:

library(Amelia)
library(multicore)

mi <- amelia(impute, m=10, 
             idvars=c("ID","SCHL","SEX","WAVE", "YEAR"), 
             parallel = "multicore" , ncpus = 4)

In the comments, you say that your posted code "works", but that execution time is the same when not using the parallel option. Perhaps your data set is relatively small and does not benefit from being split?

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