# Is it possible to create a 1million x 1 million matrix using numpy? [duplicate]

Possible Duplicate:
Python Numpy Very Large Matrices

I tried numpy.zeros((100k x 100k)) and it returned "array is too big". Response to comments: 1) I could create 10k x 10k matrix but not 100kx100k and 1milx1mil. 2) The matrix is not sparse.

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100k x 100k is 100 times less than 1m x 1m. –  zneak Jun 14 '11 at 4:17
Is it a million x a million or 100k x 100k? What do you mean, too big? You're allocating 10 billion elements, that's going to be big. –  Nick ODell Jun 14 '11 at 4:18
try sparse matrices; see Python Numpy Very Large Matrices –  Nick Dandoulakis Jun 14 '11 at 4:32
This just begs the question: what do you plan to do with a 1,000,000x1,000,000 matrix anyways? –  zneak Jun 14 '11 at 4:54

## marked as duplicate by Nick Dandoulakis, Haim Evgi, wallyk, gbn, karim79Jun 14 '11 at 9:28

We can do simple maths to find out. A 1 million by 1 million matrix has 1,000,000,000,000 elements. If each element takes up 4 bytes, it would require 4,000,000,000,000 bytes of memory. That is, 3.64 terabytes.

There are also chances that a given implementation of Python uses more than that for a single number. For instance, just the leap from a float to a double means you'll need 7.28 terabytes instead. (There are also chances that Python stores the number on the heap and all you get is a pointer to it, approximately doubling the footprint, without even taking in account metadata–but that's slippery grounds, I'm always wrong when I talk about Python internals, so let's not dig it too much.)

I suppose `numpy` doesn't have a hardcoded limit, but if your system doesn't have that much free memory, there isn't really anything to do.

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Python does use more than that for a single number (about 10 bytes IIRC), but numpy is written in C and Fortran. –  Nick ODell Jun 14 '11 at 4:34
Just as a side note, the point of numpy is that arrays are compact in memory, so a `numpy.float32` array only takes 4 bytes per element (plus a tiny bit of constant overhead for the whole array). What you said is quite true for python lists, though! –  Joe Kington Jun 14 '11 at 4:36
People are usually wrong when they ponder the internals of any complex system. Including the ones they built themselves. –  Nicholas Knight Jun 14 '11 at 4:39
Strictly (according to ISO) that's 3.64 tibibytes and 4 terabytes. But I hate the word “tibibyte” so +1. :-) –  Donal Fellows Jun 14 '11 at 8:34

Does your matrix have a lot of zero entries? I suspect it does, few people do dense problems that large.

You can easily do that with a sparse matrix. SciPy has a good set built in. http://docs.scipy.org/doc/scipy/reference/sparse.html The space required by a sparse matrix grows with the number of nonzero elements, not the dimensions.

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