I am implementing a function that reads data from file into a multi-dimensional `numpy`

array. Data is regularly structured in sense of dimension lengths, however, some dimensions may be missing, in which case, I would let the length of that dimension be `0`

. So I have stumbled upon this behavior:

```
In [1]: np.random.random((3,3))
Out[1]:
array([[ 0.59756568, 0.47198749, 0.23442854],
[ 0.29374254, 0.58289927, 0.40497268],
[ 0.00481053, 0.63471263, 0.90053086]])
In [2]: np.random.random((0,3,3))
Out[2]: array([], shape=(0, 3, 3), dtype=float64)
```

OK, so I get an empty array. This makes sense if I look at it as 2nd and 3rd dimensions are subset of the 1st, which is nil, and thus the whole array is nil. However, I would expect `np.random.random((3,3,0))`

to be equivalent to `np.random.random((3,3))`

. However,

```
In [3]: np.random.random((3,3,0))
Out[3]: array([], shape=(3, 3, 0), dtype=float64)
```

An empty array again.

Is this expected behavior? I understand the difference between `np.array((3,3))`

and `np.array((3,3,1))`

or `np.array((1,3,3))`

, but I am looking for an explanation why does a dimension of length `0`

degenerate the whole array and not only that dimension. Is it just me, or is this one of Python/Numpy WTFs?

I am a native Fortran programmer in science applications, and have been doing Python with Numpy for around a year now.

Thanks.

`np.random.random((3,3,0))`

will be`3 x 3 x 0 = 0`

? – Chris May 18 '12 at 17:47