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# numpy array assigning values

technically what is the difference between

``````import numpy as np
a = np.random.random((100,3))
b = numpy.empty((100))

# what the difference between
b = a[:,0]
# and
b[:] = a[:,0]
``````

The reason I am asking that I am reading b with a fortran compiled function and the slicing in b is making all the difference. This has something to do with the column and row reading style between C and fortran. In default numpy convention is the C one.

-

The main difference is that

``````b = a[:,0]
``````

creates a view onto `a`'s data, whereas

``````b[:] = a[:,0]
``````

makes a copy of the data.

The former uses the same memory layout as `a`, whereas the latter preserves the memory layout of the original `b`. In particular this means that in the latter case all the data gets compacted into consecutive memory locations:

``````In [29]: b = numpy.empty((100))

In [30]: b = a[:,0]

In [31]: b.strides
Out[31]: (24,)

In [32]: b = numpy.empty((100))

In [33]: b[:] = a[:,0]

In [34]: b.strides
Out[34]: (8,)
``````
-
As a side note to NPE's answer, in the first case, the `numpy.empty((100))` array is discarded, because `b` no longer points to it. – Jaime Mar 2 '13 at 23:48