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I am new to NumPy/SciPy. From the documentation, it seems more efficient to preallocate a single array rather than call append/insert/concatenate.

For example, to add a column of 1's to an array, i think that this:

ar0 = np.linspace(10, 20, 16).reshape(4, 4)
ar0[:,-1] = np.ones_like(ar0[:,0])

is preferred to this:

ar0 = np.linspace(10, 20, 12).reshape(4, 3)
ar0 = np.insert(ar0, ar0.shape[1], np.ones_like(ar0[:,0]), axis=1)

my first question is whether this is correct (that the first is better), and my second question is, at the moment, I am just preallocating my arrays like this (which I noticed in several of the Cookbook examples on the SciPy Site):


what is the 'NumPy-preferred' way to do this?

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up vote 11 down vote accepted

Preallocation mallocs all the memory you need in one call, while resizing the array (through calls to append,insert,concatenate or resize) may require copying the array to a larger block of memory. So you are correct, preallocation is preferred over (and should be faster than) resizing.

There are a number of "preferred" ways to preallocate numpy arrays depending on what you want to create. There is np.zeros, np.ones, np.empty, np.zeros_like, np.ones_like, and np.empty_like, and many others that create useful arrays such as np.linspace, and np.arange.


ar0 = np.linspace(10, 20, 16).reshape(4, 4)

is just fine if this comes closest to the ar0 you desire.

However, to make the last column all 1's, I think the preferred way would be to just say


Since the shape of ar0[:,-1] is (4,), the 1 is broadcasted to match this shape.

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