Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Im trying to produce a usual matrix multiplication between two huge matrices (10*25,000,000). My memory runs out when I do so. How could I use numpy's memmap to be able to handle this? Is this even a good idea? I'm not so worried about the speed of the operation, I just want the result even if it means waiting some time. Thank you in advanced!

8 gbs ram, I7-2617M 1.5 1.5 ghz, Windows7 64 bits. Im using the 64 bit version of everything: python(2.7), numpy, scipy.


Maybe h5py is a better option?

share|improve this question
You talk about "usual matrix multiplication" as opposed to element-wise multiplication I suppose. What is the type of an element ? int8 ? float64 ? Is the resulting matrice supposed to be 25,000,000*25,000,000 or 10*10 ? If 10*10 you should be OK. 10*25,000,000*8bytes = 2GBytes. –  Félix Cantournet May 30 '12 at 14:40
(10;25,000,000)*(25,000,000;10) any ideas? do these packages help at all to overcome this or am I reasoning in the wrong direction. float64. I could maybe work with float32 but it still wont work. @FélixCantournet –  JEquihua Jun 6 '12 at 2:20

1 Answer 1

you might try to use np.memmap, and compute the 10x10 output matrix one element at a time.

so you just load the first row of the first matrix and the first column of the second, and then np.sum(row1 * col1).

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.