I have a `256x256x256`

Numpy array, in which each element is a matrix. I need to do some calculations on each of these matrices, and I want to use the `multiprocessing`

module to speed things up.

The results of these calculations must be stored in a `256x256x256`

array like the original one, so that the result of the matrix at element `[i,j,k]`

in the original array must be put in the `[i,j,k]`

element of the new array.

To do this, I want to make a list which could be written in a pseudo-ish way as `[array[i,j,k], (i, j, k)]`

and pass it to a function to be "multiprocessed".
Assuming that `matrices`

is a list of all the matrices extracted from the original array and `myfunc`

is the function doing the calculations, the code would look somewhat like this:

```
import multiprocessing
import numpy as np
from itertools import izip
def myfunc(finput):
# Do some calculations...
...
# ... and return the result and the index:
return (result, finput[1])
# Make indices:
inds = np.rollaxis(np.indices((256, 256, 256)), 0, 4).reshape(-1, 3)
# Make function input from the matrices and the indices:
finput = izip(matrices, inds)
pool = multiprocessing.Pool()
async_results = np.asarray(pool.map_async(myfunc, finput).get(999999))
```

However, it seems like `map_async`

is actually creating this huge `finput`

-list first: My CPU's aren't doing much, but the memory and swap get completely consumed in a matter of seconds, which is obviously not what I want.

Is there a way to pass this huge list to a multiprocessing function without the need to explicitly create it first? Or do you know another way of solving this problem?

Thanks a bunch! :-)

`get()`

on`map_async()`

, you probably don't want anasynchronousoperation and should use`Pool.map()`

instead. – Ferdinand Beyer Sep 5 '11 at 11:03