# numpy - scalar multiplication of column vector times row vector

What is the best and most efficient way to solve the following in python numpy:

given a weight vector:

``````weights = numpy.array([1, 5, 2])
``````

and a value vector:

``````values = numpy.array([1, 3, 10, 4, 2])
``````

as result I need a matrix, which contains on each row the `values` vector scalar multiplied with the value of `weights[row]`:

``````result = [
[1,  3, 10,  4,  2],
[5, 15, 50, 20, 10],
[2,  6, 20,  8,  4]
]
``````

One solution which I found is the following:

``````result = numpy.array([ weights[n]*values for n in range(len(weights)) ])
``````

Is there a better way?

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This operation is called the outer product. It can be performed using `numpy.outer()`:

``````In [6]: numpy.outer(weights, values)
Out[6]:
array([[ 1,  3, 10,  4,  2],
[ 5, 15, 50, 20, 10],
[ 2,  6, 20,  8,  4]])
``````
-
Nice!! Thanks! Exactly what I needed! –  SailAvid Apr 12 '13 at 12:30

You can reshape `weights` to a dimention (3,1) array and then multiply it to `values`

``````weights = numpy.array([1, 5, 2])[:,None]  #column vector
values = numpy.array([1, 3, 10, 4, 2])
result = weights*values

print(result)

array([[ 1,  3, 10,  4,  2],
[ 5, 15, 50, 20, 10],
[ 2,  6, 20,  8,  4]])
``````

This answer explains the `[:,None]`

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