# How to make List from Numpy Matrix in Python

I using the dot() function from numpy to multiply a matrix of 3x3 with a numpy.array of 1x3. The output is for example this:

[[ 0.16666667 0.66666667 0.16666667]]

which is of type:

``````<class 'numpy.matrixlib.defmatrix.matrix'>
``````

how can I convert this to a list. Because I know the result will always be a matrix of 1x3 so it should be coverted to a list because I need to be able to loop through it later for calculation the pearson distance of two of those lists.

So to summarize: how can I make a list from this matrix?

-

May not be the optimal way to do this but the following works:

``````a = numpy.matrix([[ 0.16666667, 0.66666667, 0.16666667]])
list(numpy.array(a).reshape(-1,))
``````

or

``````numpy.array(a).reshape(-1,).tolist()
``````

or

``````numpy.array(a)[0].tolist()
``````
-

If `a` is your matrix, try

``````a.ravel().tolist()
``````

but you don't need to turn it into a list to iterate over it.

-
I know I don't need that to iterate over it, but a whole class is written to handle lists, so it is easier if I make a list of it then to change the whole class. However, with your solution I too get a list with 1 element that is the matrix instead of a list with 3 elements. How can i make the latter? any ideas? –  Javaaaa Mar 3 '11 at 16:36
@Javaaaa: You get a list with a single item that is a list itself. Simply use `[0]` to retrieve that single item. –  Sven Marnach Mar 3 '11 at 17:14

Use the tolist() method on the matrix object :

``````>>> import numpy
>>> m = numpy.matrix([1, 2, 3])
>>> type(m)
<class 'numpy.core.defmatrix.matrix'>
>>> m.tolist()
[[1, 2, 3]]
``````
-
the problem is that the whole matrix then becomes 1 element fo a list with 1 element. Like: [[0.16666666666666666, 0.6666666666666666, 0.16666666666666666]]. I need every value to be an element of a new list of length 3. How can i do that? –  Javaaaa Mar 3 '11 at 16:34
Same as other comments said: numpy.array(a).reshape(-1,).tolist() or use ravel() –  tito Mar 3 '11 at 16:44

Another way:

``````>>> import numpy as np
>>> m = np.matrix([1,2,3])
>>> np.array(m).flatten().tolist()
[1,2,3]
``````
-
``````m = numpy.matrix([[ 0.16666667, 0.66666667, 0.16666667]])
a = numpy.array(m)[0]

for i in a:
print i
``````

results in

``````0.16666667
0.66666667
0.16666667
``````
-

I came here looking for a way to convert numpy matrices to typical 2D lists.

For a numpy matrix m:

``````my_2d_list = map(list, list(m.A))
``````

If you just want a one dimensional list from a 1 x n matrix m:

``````my_1d_list = list(list(m.A)[0])
``````
-
As shown in stackoverflow.com/a/5183572/901925 `tolist()` on a 2d array (e.g. matrix) produces a nested list. I assume that's what you are calling a 'typical 2D list`. –  hpaulj May 26 '14 at 4:14

Try this simplistic approach. It works with 1D arrays, do not know with higher dimensions.

``````import mumpy as np         # to create a numpy array example
a = np.array([1,2.5,3])    # your 1D numpy array
b = [i for i in a]        # your list out of the original numpy array
``````
-
``````import numpy as np
a = np.matrix([[1,2,3,4]])
b = map(float, a.transpose())
``````

This code snippet will apply the built-in function "float" - which converts something to a floating point number - to every element of a. Since the first element of a is an array itself, it has to be transposed, so that every number becomes an element of a itself. a.transpose() is equivalent to np.matrix([[1],[2],[3],[4]]) in this example.

-