# building a matrix composed of alternative object in python

I'm fairly new to python and I am currently making use of the numPy library along with pyinterval library. I want to build a matrix that isn't composed of floats, but intervals.

however if I do the following:

``````A = [[interval([2,3]), interval([0,1]), interval([1,2]), interval([2,3])]]
m = np.matrix(A,interval)
``````

it gives the following error:

``````raise ValueError, "matrix must be 2-dimensional"
``````

In order to see how it was doing it I looked at this:

``````np.array(A)
``````

and got the following output:

``````array([[[[ 2.,  3.]],
[[ 0.,  1.]],
[[ 1.,  2.]],
[[ 2.,  3.]]]])
``````

when I wanted to see something like:

``````array([[interval(2,3), interval[0,1],
[interval(1,2), interval[2,3]])
``````

I'm not sure how to get it to understand the type that I am using, I have tried various things after doing some searches but nothing seems to work.

How can I get it to see one interval as only one element in the array/matrix?

Thank you,

-

each type specifier can be prefixed with a repetition number, or a shape. In these cases an array element is created, i.e., an array within a record. That array is still referred to as a single field.

So to specify it as one item in the array, you might try setting the dtype to `'(2,)object'`:

To make a 2x2 ndarray:

``````import interval
A = [(interval.interval([2,3]), interval.interval([0,1])),
(interval.interval([1,2]), interval.interval([2,3]))]
a = np.array(A,dtype='(2,)object')
``````

To make a 2x2 matrix:

``````m=np.matrix(A,dtype='(2,)object')
``````

Warning: I don't really understand dtype syntax. It is far too complicated and occasionally I see strange bug reports (#1955,#1760, #1580) related to use of exotic dtypes. My personal conclusion is that it is safer to stick to plain, simple dtypes. Or, if you need to use a more complicated dtype, unit test it to make sure it behaves as you expect.

An easier, better way to define the arrays is:

``````A = [(interval.interval([2,3]), interval.interval([0,1])),
(interval.interval([1,2]), interval.interval([2,3]))]
a = np.empty((2,2),dtype='object')
a[:]=A
``````

This tells numpy explicity what shape array you want, and then, since the dtype is `object`, you can stuff whatever you please into the cells of the array.

Moreover, unlike the `dtype='(2,)object'` solution above, it also works for 1D arrays:

``````bd = [interval.interval([0,1]),
interval.interval([6,7])]

b = np.empty(2,dtype='object')
b[:]=bd
``````
-
thank you, that solved it –  user812352 Nov 26 '11 at 3:22
it still acts a little strangely: If i have the following code: bd = [interval([0,1]), interval([6,7])] b = np.array(bd,dtype='(2,)object') i get: array([[(0.0, 1.0), (0.0, 1.0)], [(6.0, 7.0), (6.0, 7.0)]], dtype=object) rather than array([[interval(0.0, 1.0)], [(6.0, 7.0)]], dtype=object) do you know why this is? –  user812352 Nov 26 '11 at 16:56
Good point. It finally dawned on me there is an easier way to define the arrays without messing with `dtype`. I've edited the post to show what I mean. –  unutbu Nov 26 '11 at 19:17
thanks, this is a lot better –  user812352 Dec 6 '11 at 20:29