# is there more clear way to do matrix of random numbers

I am trying to create a matrix of random numbers, but my solution is too long and looks ugly

``````random_matrix = [[random.random() for e in range(2)] for e in range(3)]
``````

this looks ok, but in my implementation it is

``````weights_h = [[random.random() for e in range(len(inputs[0]))] for e in range(hiden_neurons)]
``````

which is extremly unreadable and doesn't fit on one line.

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## 5 Answers

You can drop the `range(len())`:

``````weights_h = [[random.random() for e in inputs[0]] for e in range(hiden_neurons)]
``````

But really, you should probably use numpy.

``````In [9]: numpy.random.random((3, 3))
Out[9]:
array([[ 0.37052381,  0.03463207,  0.10669077],
[ 0.05862909,  0.8515325 ,  0.79809676],
[ 0.43203632,  0.54633635,  0.09076408]])
``````
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Take a look at numpy.random.rand:

``````Docstring:
rand(d0, d1, ..., dn)

Random values in a given shape.

Create an array of the given shape and propagate it with
random samples from a uniform distribution
over ``[0, 1)``.
``````

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

In [2]: np.random.rand(2,3)
Out[2]:
array([[ 0.83276599,  0.76313678,  0.79153802],
[ 0.06499847,  0.97491117,  0.48335914]])
``````
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An answer using map-reduce:-

map(lambda x: map(lambda y: ran(),range(len(inputs[0]))),range(hiden_neurons))

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Looks like you are doing a Python implementation of the Coursera Machine Learning Neural Network exercise. Here's what I did for randInitializeWeights(L_in, L_out)

``````#get a random array of floats between 0 and 1 as Pavel mentioned
W = numpy.random.random((L_out, L_in +1))

#normalize so that it spans a range of twice epsilon
W = W * 2 * .12

#shift so that mean is at zero
W = W - .12
``````
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``````random_matrix = [[random.random for j in range(collumns)] for i in range(rows)
for i in range(rows):
print random_matrix[i]
``````
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