What is the difference between ndarray and array in numpy?

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一个人的身影 2020-11-28 01:27

What is the difference between ndarray and array in Numpy? And where can I find the implementations in the numpy source code?

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  • 2020-11-28 01:49

    numpy.array is just a convenience function to create an ndarray; it is not a class itself.

    You can also create an array using numpy.ndarray, but it is not the recommended way. From the docstring of numpy.ndarray:

    Arrays should be constructed using array, zeros or empty ... The parameters given here refer to a low-level method (ndarray(...)) for instantiating an array.

    Most of the meat of the implementation is in C code, here in multiarray, but you can start looking at the ndarray interfaces here:

    https://github.com/numpy/numpy/blob/master/numpy/core/numeric.py

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  • 2020-11-28 01:50

    I think with np.array() you can only create C like though you mention the order, when you check using np.isfortran() it says false. but with np.ndarrray() when you specify the order it creates based on the order provided.

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  • 2020-11-28 01:51

    numpy.array is a function that returns a numpy.ndarray. There is no object type numpy.array.

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  • 2020-11-28 01:58

    Just a few lines of example code to show the difference between numpy.array and numpy.ndarray

    Warm up step: Construct a list

    a = [1,2,3]
    

    Check the type

    print(type(a))
    

    You will get

    <class 'list'>
    

    Construct an array (from a list) using np.array

    a = np.array(a)
    

    Or, you can skip the warm up step, directly have

    a = np.array([1,2,3])
    

    Check the type

    print(type(a))
    

    You will get

    <class 'numpy.ndarray'>
    

    which tells you the type of the numpy array is numpy.ndarray

    You can also check the type by

    isinstance(a, (np.ndarray))
    

    and you will get

    True
    

    Either of the following two lines will give you an error message

    np.ndarray(a)                # should be np.array(a)
    isinstance(a, (np.array))    # should be isinstance(a, (np.ndarray))
    
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  • 2020-11-28 02:09

    numpy.ndarray() is a class, while numpy.array() is a method / function to create ndarray.

    In numpy docs if you want to create an array from ndarray class you can do it with 2 ways as quoted:

    1- using array(), zeros() or empty() methods: Arrays should be constructed using array, zeros or empty (refer to the See Also section below). The parameters given here refer to a low-level method (ndarray(…)) for instantiating an array.

    2- from ndarray class directly: There are two modes of creating an array using __new__: If buffer is None, then only shape, dtype, and order are used. If buffer is an object exposing the buffer interface, then all keywords are interpreted.

    The example below gives a random array because we didn't assign buffer value:

    np.ndarray(shape=(2,2), dtype=float, order='F', buffer=None)
    
    array([[ -1.13698227e+002,   4.25087011e-303],
           [  2.88528414e-306,   3.27025015e-309]])         #random
    

    another example is to assign array object to the buffer example:

    >>> np.ndarray((2,), buffer=np.array([1,2,3]),
    ...            offset=np.int_().itemsize,
    ...            dtype=int) # offset = 1*itemsize, i.e. skip first element
    array([2, 3])
    

    from above example we notice that we can't assign a list to "buffer" and we had to use numpy.array() to return ndarray object for the buffer

    Conclusion: use numpy.array() if you want to make a numpy.ndarray() object"

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