# how to set on zero 3d numpy array?

I have a 3d numpy array, A. the deminsions of the different elemnts is not equal to each other, i.e. the shape(A[0]) = (1,2), shape(A[1]) = (3,4), etc. I want to set the value of all the elements of A to zero the in the most efficient way. How can I do that?

thanks!

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I'm a little confused here ... generally, a numpy array has a single shape, not multiple shapes. Do you have a list or tuple of 2d numpy arrays? –  mgilson Jan 8 '14 at 5:27
I defiend it this way: A = np.array( [ [[1,2],[3,4]], [[1,2,3],[4,5,6],[7,8,9]] ] ) –  user1767774 Jan 8 '14 at 6:18
So you have an array of objects -- which is different than a 3d array. (notice that `dtype=object`). Out of curiosity, what are you doing with this array of objects? Generally there aren't a lot of advantages that you get from this sort of data-structure. –  mgilson Jan 8 '14 at 6:22
well, it should hold the values of the weights of artificial neural network...I am quite new to numpy, so If you have better option for this purpose, I'll be happy to hear. –  user1767774 Jan 8 '14 at 6:27

What you have is an `np.array` which is holding objects -- In your specific case, those objects are lists which hold more lists. This isn't a terribly good data structure for anything that I can think of unless you really need to be adding lots of elements to the inner lists. Might I propose a slight change to have an `np.array` which holds more `np.array`s?

``````A = np.array(map(np.array, [ [[1,2],[3,4]], [[1,2,3],[4,5,6],[7,8,9]] ] ))
``````

Now if we print it, it looks something like this:

``````>>> A
array([[[1 2]
[3 4]], [[1 2 3]
[4 5 6]
[7 8 9]]], dtype=object)
``````

And setting things to 0 becomes particularly easy:

``````for sub_array in A:
sub_array[...] = 0
``````

And for the proof (printing `A` again):

``````>>> A
array([[[0 0]
[0 0]], [[0 0 0]
[0 0 0]
[0 0 0]]], dtype=object)
``````
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thank you very much (: –  user1767774 Jan 8 '14 at 6:39

Edit: Sorry, I didn't realize you created A from lists of lists of different sizes. My code shouldn't work unless you convert each element of A to an `np.array` using `np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])` for example.

You can try array-slicing or using NumPy's own `iter` function for `ndarray`'s, called `np.nditer`:

``````In [7]: %%time
...: for arr in A:
...:     arr[:] = 0
...:
CPU times: user 43 µs, sys: 13 µs, total: 56 µs
Wall time: 52.9 µs

In [8]: %%time
...: for arr in A:
...:     for x in np.nditer(arr, op_flags=('readwrite',)):
...:         x[...] = 0
...:
CPU times: user 42 µs, sys: 5 µs, total: 47 µs
Wall time: 47 µs
``````

Also, since A is an `ndarray` that doesn't hold numbers, but rather holds references to other `ndarray`'s (check `A`'s `dtype`. It should be `object`), you shouldn't call `np.nditer` on A itself, but rather on the referenced arrays inside `A`. Otherwise, `A`'s structure is destroyed:

``````In [9]: %%time
...: for arr in np.nditer(A, flags=('refs_ok',), op_flags=('readwrite',)):
...:     for x in np.nditer(arr, flags=('refs_ok',), op_flags=('readwrite',)):
...:         x[...] = 12
...:
CPU times: user 31 µs, sys: 2 µs, total: 33 µs
Wall time: 34.1 µs

In [10]: A
Out[10]: array([12, 12], dtype=object)
``````
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thank you very much. –  user1767774 Jan 8 '14 at 6:27