# numpy array row major and column major

I'm having trouble understanding how `numpy` stores its data. Consider the following:

``````>>> import numpy as np
>>> a = np.ndarray(shape=(2,3), order='F')
>>> for i in xrange(6): a.itemset(i, i+1)
...
>>> a
array([[ 1.,  2.,  3.],
[ 4.,  5.,  6.]])
>>> a.flags
C_CONTIGUOUS : False
F_CONTIGUOUS : True
OWNDATA : True
WRITEABLE : True
ALIGNED : True
UPDATEIFCOPY : False
``````

This says that `a` is column major (`F_CONTIGUOUS`) thus, internally, `a` should look like the following:

``````[1, 4, 2, 5, 3, 6]
``````

This is just what it is stated in in this glossary. What is confusing me is that if I try to to access the data of `a` in a linear fashion instead I get:

``````>>> for i in xrange(6): print a.item(i)
...
1.0
2.0
3.0
4.0
5.0
6.0
``````

At this point I'm not sure what the `F_CONTIGUOUS` flag tells us since it does not honor the ordering. Apparently everything in python is row major and when we want to iterate in a linear fashion we can use the iterator `flat`.

The question is the following: given that we have a list of numbers, say: `1, 2, 3, 4, 5, 6`, how can we create a `numpy` array of shape `(2, 3)` in column major order? That is how can I get a matrix that looks like this

``````array([[ 1.,  3.,  5.],
[ 2.,  4.,  6.]])
``````

I would really like to be able to iterate linearly over the list and place them into the newly created `ndarray`. The reason for this is because I will be reading files of multidimensional arrays set in column major order.

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can you just reshape? –  dvreed77 Dec 3 '13 at 2:49
@dvreed77 reshape only change the shape, not the order –  Kill Console Dec 3 '13 at 2:52
I have check the doc of reshape, it says 'order : {'C', 'F', 'A'}, optional Determines whether the array data should be viewed as in C (row-major) order, FORTRAN (column-major) order, or the C/FORTRAN order should be preserved.' So I guess it just change the view, not the order it stores. –  Kill Console Dec 3 '13 at 3:07

The numpy stores data in row major order.

``````>>> a = np.array([[1,2,3,4], [5,6,7,8]])
>>> a.shape
(2, 4)
>>> a.shape = 4,2
>>> a
array([[1, 2],
[3, 4],
[5, 6],
[7, 8]])
``````

If you change the shape, the order of data do not change.

If you add a 'F', you can get what you want.

``````>>> b
array([1, 2, 3, 4, 5, 6])
>>> c = b.reshape(2,3,order='F')
>>> c
array([[1, 3, 5],
[2, 4, 6]])
``````
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The order is the one that needs to change. I guess there is no other way around it. I have to accept that matlab does column major and python is row major. Is there nothing better than creating a `(3, 2)` array and then use `transpose`? –  jmlopez Dec 3 '13 at 2:56

In general, numpy uses order to describe the memory layout, but the python behavior of the arrays should be consistent regardless of the memory layout. I think you can get the behavior you want using views. A view is an array that shares memory with another array. For example:

``````import numpy as np

a = np.arange(1, 6 + 1)
b = a.reshape(3, 2).T

a[1] = 99
print b
# [[ 1  3  5]
#  [99  4  6]]
``````

Hope that helps.

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