# What is the preferred way to preallocate NumPy arrays?

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):

``````np.zeros((8,5))
``````

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

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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`.

So

``````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

``````ar0[:,-1]=1
``````

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

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