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I am building a simple model of the Milky Way and one of the things I need to store is a 3D grid of mass densities.

The problem is that if I put a rectangular box around the galaxy, most of the grid cells are empty. Which leaves me saving a lot of useless zeros. So the naive array seems wasteful:

galaxy = [[[0 for k in xrange(1601)] for j in xrange(1601)] for i in xrange(253)]
# then fill in i,j,k values that are non-zero

I tried to build a sparse array using a dictionary:

for x in range(1601):
    for y in range(1601):
        for z in range (253):
            galaxy[str(x) + "," + str(y) + "," + str(z)] = # whatever

But, (aside from being ugly) the strings that I was using for keys were taking up more memory than I was saving. I got OutOfMemoryErrors because (I calculated) the keys alone were taking a couple of gigs of memory.

At some point, I will want to increase the resolution of my model, and that will mean a much larger grid. Is there a more efficient way to store my values than using a 3D-Array of floats?

I am also concerned about the time it takes to iterate through all the cells (or just the non-zero cells in my grid. This will be very important.

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Here's an n-dimensional sparse array implementation for Numpy: www2.maths.lth.se/matematiklth/personal/solem/downloads/… –  Blender Feb 28 '13 at 20:34
Curious: what percentage of cells will be zero? –  Robᵩ Feb 28 '13 at 20:59
@Rob perhaps 9/10 will end up being zero. –  theJollySin Feb 28 '13 at 21:17
@Blender What version of Numpy/Python was that made from? I can't seem to run that code without hand-modifying certain things. Like dense(), which requires numpy.ones (something my version of numpy doesn't recognize). –  theJollySin Mar 1 '13 at 1:36

3 Answers 3

up vote 2 down vote accepted

Quick math: 1601 * 1601 * 253 => 648489853 items. A test indicates that the dictionary takes about 24 bytes per entry on a 32-bit machine, 49 bytes on a 64-bit machine, so that's 15,563,756,472 bytes (or 30GB on 64-bit). 10% of that is 1.5GB (or 3.0GB on 64-bit). If you have a 64-bit system with a bunch of memory, I think you'll be okay with a sparse representation.

I recommend:

  1. Use a tuple as the key, not a string, and
  2. Use a sparse storage system where you don't store zero values.

Here is one possibility:

class SparseDict(dict):
  def __init__(self, default_value):
    self._value = default_value
  def __getitem__(self, key):
      return dict.__getitem__(self, key)
    except KeyError:
      return self._value
  def __setitem__(self, key, val):
    # I'm sure this can go faster if I were smarter
    if val == self._value:
      if  key in self:
        del self[key]
      dict.__setitem__(self, key, val)

def test(galaxy):
  import sys
  print len(galaxy), sys.getsizeof(galaxy)

  # test is 1/10th size in each dimension,
  # so 1/1000th of the volume
  for x in range(160):
    for y in range(160):
      for z in range (25):
        import random
        # 90% of space is essentially a vacuum
        if random.random() < .1:
          galaxy[x,y,z] = 1502100
          galaxy[x,y,z] = 0

  print len(galaxy), sys.getsizeof(galaxy)

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I really like the sparse array, for larger and large size grids, it saves me more memory. For some reason though, it is much slower to iterate over a large grid using SparseDict than using a normal 3d array. –  theJollySin Mar 1 '13 at 1:39
Try structuring your algorithms so you only need to iterate over the non-zero values, then use for location, mass in galaxy.iteritems(): .... That should make it go much faster. –  Robᵩ Mar 1 '13 at 2:44
I like your SparseDict solution! But I have one more question, why is iteritems so fast? –  theJollySin Mar 1 '13 at 16:10

Try using the dictionary approach, but only store key:value pairs for keys whose value is non-zero. A better key might be a tuple of (x,y,z).

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Right, that's what I tried. But the actual keys themselves take up non-trivial space. Strings of chars, and all that. I... did not try tuples as the key. But wouldn't tuples as a key have the same problem as strings? Arrays don't need the keys at all, so they have a smaller footprint that way. –  theJollySin Feb 28 '13 at 20:29
I don't know what densities you are talking about, but at 0.0001, you only have ~65000 keys. You don't store the zeros at all. –  cdjc Feb 28 '13 at 20:37

Maybe try to save your data in sql tables and load only a subset of the cube according to your needs. this will cost you in time to load parts , but will save you memory. as for the in memory represntation, use the methods suggested in the other answers such as dictionary etc...

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