# numpy 2D matrix- How to improve performance in this case?

I came to know that numpy is slow for individual element accesses for a very big matrix. The following part of the code takes about 7-8 minutes to run. Size of the Matrix is about 3000*3000

``````import numpy as np
................
................
ArrayLength=len(Coordinates)
for x in range(0, Arraylength):
for y in range(x+1, Arraylength-x):
distance=Distance(Coordinates[x],Coordinates[y)
``````

I am basically trying to construct an adjacency matrix for a graph that consists of about 3000 nodes. Can someone help me in doing this numpy way? Or any alternatives?

Edit: Here is the Distance() function

``````Def Distance(p1,p2):
distance=np.sqrt(np.square(p1[0]-p2[0])+np.square(p1[1]-p2[1]))
return distance
``````

By the way I am passing coordinates as tuples.. As in p[0]=x-coordinate and p[1]= y- coordinate.

-

Can you post the `Distance()` function? If it's common function, `scipy.spatial.distance.cdist` can calculate the distance matrix very quickly:

http://docs.scipy.org/doc/scipy/reference/generated/scipy.spatial.distance.cdist.html#scipy.spatial.distance.cdist

Edit:

You can use `pdist` indeed, here is an example:

``````from scipy.spatial.distance import pdist, squareform
coordinates = [(0.0, 0), (1.0, 2.0), (-1.0, 0.5), (3.1, 2.1)]
dist = squareform(pdist(coordinates))
print dist
``````

output:

``````[[ 0.          2.23606798  1.11803399  3.74432905]
[ 2.23606798  0.          2.5         2.1023796 ]
[ 1.11803399  2.5         0.          4.40113622]
[ 3.74432905  2.1023796   4.40113622  0.        ]]
``````

If you want to mask some data:

``````dist[dist > 3.0] = 0
print dist
``````

output:

``````[[ 0.          2.23606798  1.11803399  0.        ]
[ 2.23606798  0.          2.5         2.1023796 ]
[ 1.11803399  2.5         0.          0.        ]
[ 0.          2.1023796   0.          0.        ]]
``````
-
You can combine this with `AdjMatrix[AdjMatrix >= radius] = 0` to duplicate the above code, with no Python loops. –  mtrw Apr 5 '13 at 11:01
I have edited my question.please have a look. @mtrw Could you please elaborate? I am sorry.. I am not so familiar with python –  sandeep p Apr 5 '13 at 11:22