Writing some code in python to evaluate a basic function. I've got a 2d array with some values and I want to apply the function to each of those values and get a new 2-d array:

```
import numpy as N
def makeGrid(dim):
''' Function to return a grid of distances from the centre of an array.
This version uses loops to fill the array and is thus slow.'''
tabx = N.arange(dim) - float(dim/2.0) + 0.5
taby = N.arange(dim) - float(dim/2.0) + 0.5
grid = N.zeros((dim,dim), dtype='float')
for y in range(dim):
for x in range(dim):
grid[y,x] = N.sqrt(tabx[x]**2 + taby[y]**2)
return grid
import math
def BigGrid(dim):
l= float(raw_input('Enter a value for lambda: '))
p= float(raw_input('Enter a value for phi: '))
a = makeGrid
b= N.zeros ((10,10),dtype=float) #Create an array to take the returned values
for i in range(10):
for j in range (10):
b[i][j] = a[i][j]*l*p
return b
if __name__ == "__main__":
''' Module test code '''
size = 10 #Dimension of the array
newGrid = BigGrid(size)
newGrid = N.round(newGrid, decimals=2)
print newGrid
```

But all i get is the error message

```
Traceback (most recent call last):
File "sim.py", line 31, in <module>
newGrid = BigGrid(size)
File "sim.py", line 24, in BigGrid
b[i][j] = a[i][j]*l*p
TypeError: 'function' object has no attribute '__getitem__'
```

Please help.

`import numpy as np`

, as that's the numpy convention. 2) Use vector operations, ie:`a = b * l * p`

instead of the double loop. It will be hundreds or thousands of times faster, and it's easier to read. 3) Don't index numpy arrays as`array[i][j]`

, use this instead`array[i,j]`

it's much faster, and shorter to write ;). To summarize, read a numpy tutorial. – jorgeca Dec 10 '12 at 17:59