# Numpy matrix to array

I am using numpy. I have a matrix with 1 column and N rows and I want to get an array from with N elements.

For example, if i have `M = matrix([[1], [2], [3], [4]])`, I want to get `A = array([1,2,3,4])`.

To achieve it, I use `A = np.array(M.T)[0]`. Does anyone know a more elegant way to get the same result?

Thanks!

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Ivnerse question: convert a 2D numpy array to a 2D numpy matrix –  Tobias Kienzler Jul 3 '13 at 8:56

If you'd like something a bit more readable, you can do this:

``````A = np.squeeze(np.asarray(M))
``````

Equivalently, you could also do: `A = np.asarray(M).reshape(-1)`, but that's a bit less easy to read.

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Little rant on my part...why does numpy have arrays and matrices as separate entities. It is so unpythonic IMHO. Thanks for this tip @Joe. –  Naijaba Feb 13 at 6:37
@Naijaba - For what it's worth, the matrix class is effectively (but not formally) depreciated. It's there mostly for historical purposes. Removing `numpy.matrix` is a bit of a contentious issue, but the numpy devs very much agree with you that having both is unpythonic and annoying for a whole host of reasons. However, the amount of old, unmaintained code "in the wild" that uses `matrix` makes it difficult to fully remove it. –  Joe Kington Feb 13 at 14:03
``````result = M.A1
``````

http://docs.scipy.org/doc/numpy/reference/generated/numpy.matrix.A1.html#numpy.matrix.A1

``````matrix.A1
1-d base array
``````
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hooray for legibility –  mbatchkarov May 22 at 20:18
``````A, = np.array(M.T)
``````

depends what you mean by elegance i suppose but thats what i would do

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Or you could try to avoid some temps with

``````A = M.view(np.ndarray)
A.shape = -1
``````
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You can try the following variant:

``````result=np.array(M).flatten()
``````
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``````np.array(M).ravel()
``````

If you care for speed; But if you care for memory:

``````np.asarray(M).ravel()
``````
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