# nested loop with array indexing in numpy

I would like to know how I can do the following :

def GetFlux(self, time):
bx = self.GetField("bx", time) * self.wpewce
by = self.GetField("by", time) * self.wpewce
bz = self.GetField("bz", time) * self.wpewce

flux  = np.zeros((self.ncells[0]+1,self.ncells[1]+1),"float32", order='FORTRAN')
flux2  = np.zeros((self.ncells[0]+1,self.ncells[1]+1),"float32", order='FORTRAN')

dx = self.dl[0]
dz = self.dl[1]

nx = self.ncells[0]
nz = self.ncells[1]

j = 0

for i in np.arange(1, nx):
flux2[i,0] = flux2[i-1,0] + bz[i-1,0]*dx
flux[1:,0] = flux[0,0] + np.cumsum(bz[:-1,0]*dx)

for j in np.arange(1,nz):
flux2[0,j] = flux2[0,j-1] - bx[0,j-1]*dz
flux[0,1:] = flux[0,0] - np.cumsum(bx[0,:-1]*dz)

for i in np.arange(1,nx):
for j in np.arange(1,nz):
flux2[i,j] = 0.5*(flux2[i-1,j] + bz[i-1,j]*dx) + 0.5*(flux2[i,j-1] - bx[i,j-1]*dz)

return flux2


But without the two nested loops, which take a very long time. Bx, Bz and flux are arrays of the same size.

I've managed to replace the first two single loops with array indexing and cumsum, but I can't find out how to replace the nested loops.

Any idea ?

Thanks

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Did you mean to use j in the most inner loop as well? And consider using xrange(n) instead of np.arange(n). The latter creates an array and wastes memory which you do not seem to be using. The former is simply an iterator. –  Nino Aug 7 '12 at 22:13
Also, you may have formatted your code wrong, because there is a triple nested for-loop and no single loops. –  Nino Aug 7 '12 at 22:16
Sorry Nino; the better code is here : pastebin.com/zu79fFD4 I could replace the first two single loops; but not the last two nested loops (lines33-35). –  Heimdall Aug 8 '12 at 3:29

The inner loop is reasonably simple to vectorize. You have a basic equation that looks like this:

X[n] = a * X[n-1] + b[n]


This equation can be expanded and rewritten without any dependency on X[n-1]:

X[n] = a^n * X[0] + a^(n-1) * b[0] + a^(n-2) * b[1] + ... + a^0 * b[n]


So if the original code looked like this:

for i in np.arange(1,nx+1):
for j in np.arange(1,nz+1):
flux2[i,j] = 0.5*(flux2[i-1,j] + bz[i-1,j]*dx) \
+ 0.5*(flux2[i,j-1] - bx[i,j-1]*dz)


You could get rid of the inner loop like this:

a = 0.5
aexp = np.arange(nz).reshape(nz, 1) - np.arange(nz).reshape(1, nz)
abcoeff = a**aexp
abcoeff[aexp<0] = 0
for i in np.arange(1,nx+1):
b = 0.5*flux2[i-1, 1:] + 0.5*bz[i-1, 1:]*dx - 0.5*bx[i,:-1]*dz
bvals = (abcoeff * b.reshape(1, nz)).sum(axis=1)
n = np.arange(1, nz+1)
x0 = flux2[i, 0]
flux2[i, 1:] = a**n * x0 + bvals


The values won't come out exactly the same due to floating point errors, but close enough. I guess in theory you could apply the same procedure to get rid of both loops, but it would become quite complex and, depending on the shape of your arrays, might not offer much performance benefit.

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Full test is here: pastebin.com/MUpChUnE –  Luke Aug 8 '12 at 18:23

There is a possibility to (ab)use scipy.ndimage.convolve for this kind of problem. Maybe using some filter methods in scipy might work too and be better as it does not rely on scipy.ndimage.convolve working in place (and I could imagine this changing in some far future). (EDIT: first wrote scipy.signal.convolve which like the numpy.convolve, cannot do this)

The trick is that this convolve function can be used in-place so the double for loop:

for i in xrange(1, flux.shape[0]):
for j in xrange(1, flux.shape[1]):
flux[i,j] = 0.5*(flux[i-1,j] + bz[i-1,j]*dx) + 0.5*(flux[i,j-1] - bx[i,j-1]*dz)


Can be replaced by (sorry, for the need of so many temporary arrays...):

from scipy.ndimage import convolve
_flux = np.zeros((flux.shape[0]+1, flux.shape[1]+1), dtype=flux.dtype)
temp_bx = np.zeros((bx.shape[0]+1, bx.shape[1]+1), dtype=bx.dtype)
temp_bz = np.zeros((bz.shape[0]+1, bz.shape[1]+1), dtype=bz.dtype)

_flux[:-1,:-1] = flux
convolve(_flux[:-1,:-1], [[0, 0.5], [0.5, 0]], _flux[1:,1:])

temp_bz[1:,1:-1] = bz[:,1:]*dx
temp_bx[1:-1,1:] = bx[1:,:]*dz

conv_b = np.array([[0.0, 0.5], [0.5, 0.5]])
convolve(temp_bz[:-1,:-1], [[0.5, 0.5], [0.5, 0.]], temp_bz[1:,1:])
convolve(temp_bx[:-1,:-1], [[-0.5, 0.5], [0.5, 0.]], temp_bx[1:,1:])

flux = _flux[:-1,:-1] + temp_by[:-1,:-1] + temp_bx[:-1,:-1]


Unfortunatly it means we need to fiddle apart how bx, bz go into the final results, but this approach avoids creating large powers of two and should be noticeably faster then the previous answer as well.

(Note that the numpy convolve function does not allow for this inplace usage.)

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