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I am currently running numerous apply lines that look like this:


I want to convert the second line to mclapply which produces the same result as lapply. I realize that I could extract each item from the lapply statement using a for loop then use mean on that vector but that would slow down performance which I am trying to improve by using mclapply. The problem is both lapply and mcapply return a list which mean cannot use. I can either use [[]] to get the actual value or test$t and test$e but the number of columns in test is variable and typically runs over 1,000. There must be an easier way to handle this. Basically I want to get the mean of this statement:


preferably without generating new variables or using for loops. The solution should be equivalent to getting the mean of this statement:

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2 Answers 2

up vote 2 down vote accepted

I'm confused -- a data.frame is after all list as well. So besides the obvious

R> testdf <- data.frame(t=seq(1,5,1),e=seq(6,10,1))
R> mean(testdf)
t e 
3 8 
R> mean(mean(testdf))
[1] 5.5

you could also do

R> lapply(testdf, mean)
[1] 3

[1] 8

R> mean(unlist(lapply(testdf, mean)))
[1] 5.5

So there for the inner lapply you could use mclapply as desired, no?

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The purpose of using mclapply would be to turn a 6 hour simulation to a 3 hour simulation so the mean(mean(test)) while elegant does not speed up the simulation. The unlist solution is precisely what I need! Thanks so much! Now I can just substitute mclapply for lapply and cut my simulation time is half! – ProbablePattern Aug 31 '10 at 21:42
"Now I can just substitute mclapply for lapply and cut my simulation time is half!" Maybe. Remember there are fixed costs to parallelizing something; threads need to be initiated, etc. – Vince Aug 31 '10 at 21:56
Yes, the mean(mean(testdf)) was merely to establish the overall mean which you had not shown. I understand it was a stylized example. Glad to have been of help. – Dirk Eddelbuettel Aug 31 '10 at 21:57
True, true. Burst my bubble why don't you:) I do understand that it doesn't work precisely like that but 4 cores should be substantially faster than 1 core on a 6 hour simulation. – ProbablePattern Aug 31 '10 at 21:58
It all depends. For some things you may get near-linear speed-ups, for others you will not. That's what follow-up questions are for :) – Dirk Eddelbuettel Aug 31 '10 at 22:02

I like to put the mclapply() results in a list, and then combine those lists to form a final product:

results.list <- list()
results.list <- mclapply(listOfData, analysisFunction, mc.cores = 7)

result <- rbindlist(results.list) 
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