# Get the product of two one dimensional numpy matrices

I have two one-dimensional numpy matrices:

`[[ 0.69 0.41]]` and `[[ 0.81818182 0.18181818]]`

I want to multiply these two to get the result

`[[0.883, 0.117]]` (the result is normalized)

If I use `np.dot` I get `ValueError: matrices are not aligned`

Does anybody have an idea what I am doing wrong?

EDIT

I solved it in a kind of hacky way, but it worked for me, regardless of if there is a better solution or not.

``````new_matrix = np.matrix([ a[0,0] * b[0,0], a[0,1] * b[0,1] ])
``````
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You can't multiply two 1x2 matrices. You have to transpose one of them to get a 2x1 matrix. But then the result is either 2x2 or 1x1, not 1x2. en.wikipedia.org/wiki/Matrix_multiplication – Joni Feb 19 '13 at 14:57
What do your arrays eventually look like? Maybe you can post the python output like `a = ...` – Jan Feb 19 '13 at 15:01
It's best to post runnable code that generates your problem, rather than incomplete snippets - see sscce.org – YXD Feb 19 '13 at 15:20
The arrays looks exatcly as i posted when i print them like "print a" – oleron Feb 19 '13 at 15:26
I'm sorry I didn't provide any good overview over the code, but it would have been a lot to post to give you the overview. I'm pretty new here, so I guess I need a bit of exercise. I found a solution that worked for me needs (updated original post). Thanks for your help! – oleron Feb 19 '13 at 15:43

It seems you want to do element-wise math. Numpy arrays do this by default.

``````In [1]: import numpy as np

In [2]: a = np.matrix([.69,.41])

In [3]: b = np.matrix([ 0.81818182, 0.18181818])

In [4]: np.asarray(a) * np.asarray(b)
Out[4]: array([[ 0.56454546,  0.07454545]])

In [5]: np.matrix(_)
Out[5]: matrix([[ 0.56454546,  0.07454545]])
``````
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Thank you so much! This was a little more pretty than what I did come up with! – oleron Feb 19 '13 at 16:01