# Looking for a pure-python NxMxZ matrix library

I'm trying to deal with an arbitrary-sized (NxMxZ) 3D matrix in Python, about 50MB of floating point numbers in total. I need to do simple as-efficient-as-possible sum and average calculations across axes and diagonals, but nothing very fancy, and the matrix is dense.

Anyone know if such a library exists? I've found a number of "3D matrix" libraries for python, but they're all for 3D graphics, and are limited to, e.g. 4x4x4 matrices. Normally I'd use Numpy, but I'm on Google AppEngine, and can't use a library that requires C extensions.

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This makes no sense. You can't use C extensions? Isn't Python written in C? –  David Heffernan Aug 17 '11 at 16:03
possible duplicate of What alternatives are there to numpy on Google App Engine? –  Ferdinand Beyer Aug 17 '11 at 16:17

We just announced a trusted tester program for Python 2.7 support, which includes NumPy. You might want to consider signing up for it.

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``````class ndim:             # from 3D array to flat array
def __init__(self,x,y,z,d):
self.dimensions=[x,y,z]
self.numdimensions=d
self.gridsize=x*y*z
def getcellindex(self, location):
cindex = 0
cdrop = self.gridsize
for index in xrange(self.numdimensions):
cdrop /= self.dimensions[index]
cindex += cdrop * location[index]
return cindex
def getlocation(self, cellindex):
res = []
for size in reversed(self.dimensions):
res.append(cellindex % size)
cellindex /= size
return res[::-1]
""" how to use ndim class
n=ndim(4,4,5,3)
print n.getcellindex((0,0,0))
print n.getcellindex((0,0,1))
print n.getcellindex((0,1,0))
print n.getcellindex((1,0,0))

print n.getlocation(20)
print n.getlocation(5)
print n.getlocation(1)
print n.getlocation(0)
"""
``````
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