This is your loop:

```
for x in matriztiempo:
```

This will set `x`

to values from the array. This does not find the position of the values; it just gets the values.

If you want to know the position, the best way is to use `enumerate()`

like so:

```
for i, x in enumerate(matriztiempo):
```

Now `x`

gets the value as before, but also `i`

gets the index of that value in the list.

I think in your case it might be easiest to write the loop like this:

```
for x in xrange(matriztiempo.shape[0]):
for y in xrange(matriztiempo.shape[1]):
if matrizvelocidades[x,y] != 0:
matriztiempo[x,y] /= matrizvelocidades[x,y]
else:
matriztiempo[x,y] = 0
```

Usually in Python when we are working with two lists we might want to use `zip()`

or `itertools.izip()`

to get values, but in this case you are rewriting an array in place using two index values, and I think writing it the above way might be best. Certainly it's the simplest.

Note that we don't need to test for `matriztiempo[x,y]`

being equal to zero; if it is, then the result will be zero for any valid divisor. We need to check that the divisor is valid to avoid a divide-by-zero exception. (We could also put a `try:`

/ `except`

block to catch this case, if zero is an unlikely value in `matrizvelocidades`

. If it is a likely value, this is a good way to go.

EDIT: But since this is NumPy there is a better way to do this, much faster. If we didn't need to worry about zeros in the divisor, we could simply do this:

```
matriztiempo /= matrizvelocidades
```

Since we do need to worry about zeros, we can make a "mask" to solve this.

```
good_mask = (matrizvelocidades != 0)
bad_mask = numpy.logical_not(good_mask)
matriztiempo[good_mask] /= matrizvelocidades[good_mask]
matriztiempo[bad_mask] = 0.0
```

This should be tremendously faster than the solution using `for`

loops.

You could also make `bad_mask`

like this:

```
bad_mask = (matrizvelocidades == 0)
```

But by explicitly computing `numpy.logical_not()`

we make sure that `bad_mask`

is always the correct logical inverse of `good_mask`

. If someone edits the line that creates `good_mask`

, the `numpy.logical_not()`

will find the correct inverse, but if we just had a second expression referencing `matrizvelocidades`

then editing one but not editing the other would introduce a bug.

`for x in matriztiempo`

is leaving you with`x`

which is an array, not an integer ... – mgilson Jun 13 '13 at 20:08