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I am trying to run the code below but it is taking over 2 hours and has not finished. I also tried using unlist(mclapply()) but did not finish either. Basically I am trying to calculate the earth-mover's distance between the matrices inside a 3D array called results2. The 3D array has ~9000 matrices that are 8 x 11.

[1] 8851    8   11

indx <- combn(dim(results2)[1],m=2)
res <- sapply(seq_len(ncol(indx)), function(i) { 
   x1 <- indx[,i];emd2d(results2[x1[1],,],results2[x1[2],,])})

If my code is run on a smaller dataset it works. How can I make this thing run faster? more than 2 hours is just not feasible.

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There are choose(8851,2) == 39165675 possibilities to compare 2 of the matrices. Is this really necessary? What do you want to do with the resulting vector of more then 39 million numbers? –  Sven Hohenstein Jan 10 at 20:22
You realize indx is going to have 78 million numbers? –  Señor O Jan 10 at 20:22
The first, very very small example in ?emd2d runs for me in around 0.01 seconds. You want to do that more than 39 million times. Do the math. If that's the minimum amount of time for a call to emd2d then you're not going to speed this up without writing your own (probably compiled) code. Note that a 2, 4 or even 8x speed up from parallelization isn't likely to be enough here. –  joran Jan 10 at 20:23
How can I optimize this? –  user3141121 Jan 10 at 20:26
You may want to consider whether you really need the distance between all matrices, or whether you can find a solution that could help you limit the matrices you need to compare. Otherwise see @joran's comment –  BrodieG Jan 10 at 20:48

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