That is the wrong mental model for using NumPy efficiently. NumPy arrays are stored in contiguous blocks of memory. To append rows or columns to an existing array, the entire array needs to be copied to a new block of memory, creating gaps for the new elements to be stored. This is very inefficient if done repeatedly.

Instead of appending rows, allocate a suitably sized array, and then assign to it row-by-row:

>>> import numpy as np

>>> a = np.zeros(shape=(3, 2))
>>> a
array([[ 0.,  0.],
       [ 0.,  0.],
       [ 0.,  0.]])

>>> a[0] = [1, 2]
>>> a[1] = [3, 4]
>>> a[2] = [5, 6]

>>> a
array([[ 1.,  2.],
       [ 3.,  4.],
       [ 5.,  6.]])
Answer from Stephen Simmons on Stack Overflow
Top answer
1 of 16
611

That is the wrong mental model for using NumPy efficiently. NumPy arrays are stored in contiguous blocks of memory. To append rows or columns to an existing array, the entire array needs to be copied to a new block of memory, creating gaps for the new elements to be stored. This is very inefficient if done repeatedly.

Instead of appending rows, allocate a suitably sized array, and then assign to it row-by-row:

>>> import numpy as np

>>> a = np.zeros(shape=(3, 2))
>>> a
array([[ 0.,  0.],
       [ 0.,  0.],
       [ 0.,  0.]])

>>> a[0] = [1, 2]
>>> a[1] = [3, 4]
>>> a[2] = [5, 6]

>>> a
array([[ 1.,  2.],
       [ 3.,  4.],
       [ 5.,  6.]])
2 of 16
149

A NumPy array is a very different data structure from a list and is designed to be used in different ways. Your use of hstack is potentially very inefficient... every time you call it, all the data in the existing array is copied into a new one. (The append function will have the same issue.) If you want to build up your matrix one column at a time, you might be best off to keep it in a list until it is finished, and only then convert it into an array.

e.g.


mylist = []
for item in data:
    mylist.append(item)
mat = numpy.array(mylist)

item can be a list, an array or any iterable, as long as each item has the same number of elements.
In this particular case (data is some iterable holding the matrix columns) you can simply use


mat = numpy.array(data)

(Also note that using list as a variable name is probably not good practice since it masks the built-in type by that name, which can lead to bugs.)

EDIT:

If for some reason you really do want to create an empty array, you can just use numpy.array([]), but this is rarely useful!

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GeeksforGeeks
geeksforgeeks.org โ€บ python โ€บ how-to-create-an-empty-matrix-with-numpy-in-python
How to create an empty matrix with NumPy in Python? - GeeksforGeeks
July 23, 2025 - Since there are no rows, the output ... data type (dtype) of the elements is float64. ... numpy.zeros() function creates a matrix where all elements are initialized to zero....
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NumPy
numpy.org โ€บ doc โ€บ 2.1 โ€บ reference โ€บ generated โ€บ numpy.empty.html
numpy.empty โ€” NumPy v2.1 Manual
Unlike other array creation functions (e.g. zeros, ones, full), empty does not initialize the values of the array, and may therefore be marginally faster. However, the values stored in the newly allocated array are arbitrary. For reproducible behavior, be sure to set each element of the array before reading. ... >>> import numpy as np >>> np.empty([2, 2]) array([[ -9.74499359e+001, 6.69583040e-309], [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized
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NumPy
numpy.org โ€บ doc โ€บ 2.3 โ€บ reference โ€บ generated โ€บ numpy.empty.html
numpy.empty โ€” NumPy v2.3 Manual
Unlike other array creation functions (e.g. zeros, ones, full), empty does not initialize the values of the array, and may therefore be marginally faster. However, the values stored in the newly allocated array are arbitrary. For reproducible behavior, be sure to set each element of the array before reading. ... Try it in your browser! >>> import numpy as np >>> np.empty([2, 2]) array([[ -9.74499359e+001, 6.69583040e-309], [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized
๐ŸŒ
GeeksforGeeks
geeksforgeeks.org โ€บ numpy โ€บ how-to-create-an-empty-and-a-full-numpy-array
How to create an empty and a full NumPy array - GeeksforGeeks
September 19, 2025 - import numpy as np fullArr = np.full((3, 4), 5) print(fullArr) Output ยท [[5 5 5 5] [5 5 5 5] [5 5 5 5]] Explanation: np.full((3, 4), 5): Creates an array of shape (3,4) where every element is 5. Unlike np.empty(), this array is fully initialized with the given value. Useful when you need a matrix with constant values for calculations.
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NumPy
numpy.org โ€บ doc โ€บ 1.25 โ€บ reference โ€บ generated โ€บ numpy.empty.html
numpy.empty โ€” NumPy v1.25 Manual
>>> np.empty([2, 2]) array([[ -9.74499359e+001, 6.69583040e-309], [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized
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w3resource
w3resource.com โ€บ numpy โ€บ array-creation โ€บ empty.php
NumPy: numpy.empty() function - w3resource
In the second example, an empty 2D array of size (2, 2) is created with the specified data type float. The resulting array contains four undefined floating-point values. The values shown in the output are also machine-dependent and may vary each time the function is called. ... import numpy as np # Define a custom data type dt = np.dtype([('Employee Name:', np.str_, 16), ('Age:', np.int32), ('Salary:', np.float64)]) # Create an empty array with the custom data type employee = np.empty((2, 3), dtype=dt) # Print the array print(employee)
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NumPy
numpy.org โ€บ doc โ€บ 2.2 โ€บ reference โ€บ generated โ€บ numpy.matlib.empty.html
numpy.matlib.empty โ€” NumPy v2.2 Manual
Unlike other matrix creation functions (e.g. matlib.zeros, matlib.ones), matlib.empty does not initialize the values of the matrix, and may therefore be marginally faster. However, the values stored in the newly allocated matrix are arbitrary. For reproducible behavior, be sure to set each element of the matrix before reading. ... >>> import numpy.matlib >>> np.matlib.empty((2, 2)) # filled with random data matrix([[ 6.76425276e-320, 9.79033856e-307], # random [ 7.39337286e-309, 3.22135945e-309]]) >>> np.matlib.empty((2, 2), dtype=int) matrix([[ 6600475, 0], # random [ 6586976, 22740995]])
Find elsewhere
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NumPy
numpy.org โ€บ doc โ€บ stable โ€บ reference โ€บ generated โ€บ numpy.empty.html
numpy.empty โ€” NumPy v2.4 Manual
Unlike other array creation functions (e.g. zeros, ones, full), empty does not initialize the values of the array, and may therefore be marginally faster. However, the values stored in the newly allocated array are arbitrary. For reproducible behavior, be sure to set each element of the array before reading. ... Try it in your browser! >>> import numpy as np >>> np.empty([2, 2]) array([[ -9.74499359e+001, 6.69583040e-309], [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized
๐ŸŒ
NumPy
numpy.org โ€บ devdocs โ€บ reference โ€บ generated โ€บ numpy.matlib.empty.html
numpy.matlib.empty โ€” NumPy v2.5.dev0 Manual
Unlike other matrix creation functions (e.g. matlib.zeros, matlib.ones), matlib.empty does not initialize the values of the matrix, and may therefore be marginally faster. However, the values stored in the newly allocated matrix are arbitrary. For reproducible behavior, be sure to set each ...
๐ŸŒ
Vultr Docs
docs.vultr.com โ€บ python โ€บ third-party โ€บ numpy โ€บ empty
Python Numpy empty() - Create Empty Array | Vultr Docs
November 18, 2024 - This initialization guarantees specific default values, unlike empty(). The numpy.empty() function is a valuable tool for creating arrays very quickly when initial values are not necessary.
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NumPy
numpy.org โ€บ doc โ€บ stable โ€บ reference โ€บ generated โ€บ numpy.matlib.empty.html
numpy.matlib.empty โ€” NumPy v2.4 Manual
Unlike other matrix creation functions (e.g. matlib.zeros, matlib.ones), matlib.empty does not initialize the values of the matrix, and may therefore be marginally faster. However, the values stored in the newly allocated matrix are arbitrary. For reproducible behavior, be sure to set each ...
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Reddit
reddit.com โ€บ r/learnpython โ€บ how can i create a truly empty numpy array which can be merged onto (by a recursive function)?
r/learnpython on Reddit: How can I create a truly empty numpy array which can be merged onto (by a recursive function)?
June 20, 2023 -

I'm kind of stuck conceptually on how to make this happen. I have a recursive method that builds a binary tree, and stores the tree as an instance variable. However, the function is not allowed to return anything, so each recursive call should (according to me) modify in-place the tree instance variable. However, I'm not sure how to set up my instance variable such that all said and done it holds a multidimensional array that represents the tree.

Say I set initialize it as a 1x1 array with element zero as a placeholder. Then as I go about recursing through my tree I can merge to it... but at the end I'm left with a spare [0] element that I don't need. In this case, I'd need some kind of final stop condition and function to remove that unnecessary placeholder stump. I don't think this is possible?

Otherwise, say I initialize the instance variable as None. Then when the first series of recursive calls, it would have to reassign the tree variable to change from None to an ndarray object, but all future calls would have to merge to the array. I don't think this is what the function should be asked to do?

Is there a way to make a truly empty array that I can merge onto? (e.g. np.empty doesn't reallly give an empty array, it gives an array with placeholder values so I'm still left with a useless stump at the end).

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NumPy
numpy.org โ€บ doc โ€บ 2.1 โ€บ reference โ€บ generated โ€บ numpy.matlib.empty.html
numpy.matlib.empty โ€” NumPy v2.1 Manual
Unlike other matrix creation functions (e.g. matlib.zeros, matlib.ones), matlib.empty does not initialize the values of the matrix, and may therefore be marginally faster. However, the values stored in the newly allocated matrix are arbitrary. For reproducible behavior, be sure to set each element of the matrix before reading. ... >>> import numpy.matlib >>> np.matlib.empty((2, 2)) # filled with random data matrix([[ 6.76425276e-320, 9.79033856e-307], # random [ 7.39337286e-309, 3.22135945e-309]]) >>> np.matlib.empty((2, 2), dtype=int) matrix([[ 6600475, 0], # random [ 6586976, 22740995]])
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Spark By {Examples}
sparkbyexamples.com โ€บ home โ€บ python โ€บ numpy empty array with examples
NumPy Empty Array With Examples - Spark By {Examples}
March 27, 2024 - Alternate, follow the below examples to create a NumPy empty 3 x 4 matrix using numpy.empty() function.
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NumPy
numpy.org โ€บ doc โ€บ 2.0 โ€บ reference โ€บ generated โ€บ numpy.matlib.empty.html
numpy.matlib.empty โ€” NumPy v2.0 Manual
Unlike other matrix creation functions (e.g. matlib.zeros, matlib.ones), matlib.empty does not initialize the values of the matrix, and may therefore be marginally faster. However, the values stored in the newly allocated matrix are arbitrary. For reproducible behavior, be sure to set each element of the matrix before reading. ... >>> import numpy.matlib >>> np.matlib.empty((2, 2)) # filled with random data matrix([[ 6.76425276e-320, 9.79033856e-307], # random [ 7.39337286e-309, 3.22135945e-309]]) >>> np.matlib.empty((2, 2), dtype=int) matrix([[ 6600475, 0], # random [ 6586976, 22740995]])
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NumPy
numpy.org โ€บ devdocs โ€บ reference โ€บ generated โ€บ numpy.empty.html
numpy.empty โ€” NumPy v2.5.dev0 Manual
Unlike other array creation functions (e.g. zeros, ones, full), empty does not initialize the values of the array, and may therefore be marginally faster. However, the values stored in the newly allocated array are arbitrary. For reproducible behavior, be sure to set each element of the array before reading. ... Try it in your browser! >>> import numpy as np >>> np.empty([2, 2]) array([[ -9.74499359e+001, 6.69583040e-309], [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized
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GeeksforGeeks
geeksforgeeks.org โ€บ numpy-empty-python
numpy.empty() in Python - GeeksforGeeks
November 29, 2018 - numpy.matlib.empty() function return a new matrix of given shape and type, without initializing entries. Syntax : numpy.matlib.empty(shape, dtype = None, order = 'C') Parameters : shape : [int or tuple of int] Shape of the empty matrix. dtype ...
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Programiz
programiz.com โ€บ python-programming โ€บ numpy โ€บ methods โ€บ empty
NumPy empty()
like (optional)- reference object to create arrays that are not NumPy arrays ยท The empty() method returns the array of given shape, order, and datatype filled with arbitrary data. import numpy as np ยท
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Educative
educative.io โ€บ answers โ€บ how-to-create-an-empty-numpy-array
How to create an empty NumPy array
numpy.zeros(shape, dtype=float, order='C') numpy.empty(shape, dtype=float, order='C') # Shape -> Shape of the new array, e.g., (2, 3) or 2. # dtype -> The desired data-type for the array,e.g., numpy.int8. Default is numpy.float64. This parameter is optional. # order -> Indicates whether multi-dimensional data should be stored in row-major (C-style) or column-major (Fortran-style) order in memory.