I need to create a NumPy array of length n, each element of which is v.

Is there anything better than:

a = empty(n)
for i in range(n):
    a[i] = v

I know zeros and ones would work for v = 0, 1. I could use v * ones(n), but it won't work when v is None, and also would be much slower.

  • 2
    On my computer, for the 0 case, using a = np.zeros(n) in the loop is faster than a.fill(0). This is counter to what I expected since I thought a=np.zeros(n) would need to allocate and initialize new memory. If anyone can explain this, I would appreciate it. Sep 27, 2016 at 23:40
  • You cannot put Nonein a numpy array, since the cells are created with a specific data type while None has it's own type and is in fact a pointer.
    – Camion
    May 15, 2019 at 18:07
  • @Camion Yeah I know now :) Of course v * ones(n) is still horrible, as it uses the expensive multiplication. Replace * with + though, and v + zeros(n) turns out to be surprisingly good in some cases (stackoverflow.com/questions/5891410/…).
    – max
    May 19, 2019 at 20:15
  • max, instead of creating an array with zeros before adding v, it is even faster to create it empty with var = np.empty(n) and then to fill it with 'var[:] = v'. (btw, np.full() is as fast as this)
    – Camion
    May 19, 2019 at 21:02

9 Answers 9


NumPy 1.8 introduced np.full(), which is a more direct method than empty() followed by fill() for creating an array filled with a certain value:

>>> np.full((3, 5), 7)
array([[ 7.,  7.,  7.,  7.,  7.],
       [ 7.,  7.,  7.,  7.,  7.],
       [ 7.,  7.,  7.,  7.,  7.]])

>>> np.full((3, 5), 7, dtype=int)
array([[7, 7, 7, 7, 7],
       [7, 7, 7, 7, 7],
       [7, 7, 7, 7, 7]])

This is arguably the way of creating an array filled with certain values, because it explicitly describes what is being achieved (and it can in principle be very efficient since it performs a very specific task).

  • 1
    This full() method is working well for me but I can't find a bit of documentation for it. Can anyone point me to the right place? Jan 17, 2014 at 16:39
  • 1
    You can at least do help(numpy.full) in a Python shell. I am also surprised that it is not in the web documentation. Jan 22, 2014 at 13:49
  • On my system (Python 2.7, Numpy 1.8), np.full() is actually slightly slower than np.empty() followed by np.fill(). Jul 25, 2014 at 8:37
  • 2
    For 10,000 elements, I observe the same thing (except that np.fill() does not exist and should be arr.fill()), with a difference of about 10 %. If the difference was bigger, I would raise an issue in the NumPy bug tracker. :) I prefer more explicit and clearer code, for such a small difference in executing time, so I go with np.full() all the time. Jul 26, 2014 at 8:03
  • On my machine np.full() is same speed as np.array.fill()
    – Fnord
    Apr 20, 2016 at 6:15

Updated for Numpy 1.7.0:(Hat-tip to @Rolf Bartstra.)

a=np.empty(n); a.fill(5) is fastest.

In descending speed order:

%timeit a=np.empty(10000); a.fill(5)
100000 loops, best of 3: 5.85 us per loop

%timeit a=np.empty(10000); a[:]=5 
100000 loops, best of 3: 7.15 us per loop

%timeit a=np.ones(10000)*5
10000 loops, best of 3: 22.9 us per loop

%timeit a=np.repeat(5,(10000))
10000 loops, best of 3: 81.7 us per loop

%timeit a=np.tile(5,[10000])
10000 loops, best of 3: 82.9 us per loop
  • 17
    Adding a timing for the more recent and direct np.full() would be useful. On my machine, with NumPy 1.8.1, it is about 15% slower than the less direct fill() version (which is unexpected, as full() has the potential of going slightly faster). May 14, 2014 at 6:44
  • @DavidSanders: I am not sure I am following you: fill() is the fastest solution. The multiplication solution is much slower. Jun 23, 2015 at 3:22
  • 2
    Note: if speed is really a concern, using a size of 10000 instead of 1e4 makes a noticeable difference, for some reason (full() is almost 50% slower, with 1e4). Jun 23, 2015 at 3:27
  • Just adding my results with full(), it runs considerably slower when the datatype isn't explicitly a float. Otherwise, it's comparable (but slightly slower) with the best methods here.
    – user2699
    Jul 26, 2016 at 23:51
  • @user2699 I am not observing this, with 100,000 elements: full(100000, 5), full(100000, 5, dtype=float), full(100000, 5, dtype=int) and a =np.empty(100000); a.fill(5) all take about the same time on my machine (with no caching: %timeit -r1 -n1 …) (NumPy 1.11.2). Oct 8, 2016 at 9:40

I believe fill is the fastest way to do this.

a = np.empty(10)

You should also always avoid iterating like you are doing in your example. A simple a[:] = v will accomplish what your iteration does using numpy broadcasting.

  • 1
    Thank you. In looking at fill, I saw that repeat suits my needs even better.
    – max
    May 5, 2011 at 0:57
  • Do you mind updating your answer to say that your recommendation of a[:]=v is actually faster overall than the fill?
    – max
    Oct 24, 2012 at 21:21
  • @max Is it faster? Broadcasting is a more general way to fill an array and I would guess is slower or equal to the very narrow use case of fill.
    – Paul
    Oct 24, 2012 at 22:52

I had np.array(n * [value]) in mind, but apparently that is slower than all other suggestions for large enough n. The best in terms of readability and speed is

np.full(n, 3.14)

Here is full comparison with perfplot (a pet project of mine).

enter image description here

The two empty alternatives are still the fastest (with NumPy 1.12.1). full catches up for large arrays.

Code to generate the plot:

import numpy as np
import perfplot

def empty_fill(n):
    a = np.empty(n)
    return a

def empty_colon(n):
    a = np.empty(n)
    a[:] = 3.14
    return a

def ones_times(n):
    return 3.14 * np.ones(n)

def repeat(n):
    return np.repeat(3.14, (n))

def tile(n):
    return np.repeat(3.14, [n])

def full(n):
    return np.full((n), 3.14)

def list_to_array(n):
    return np.array(n * [3.14])

    setup=lambda n: n,
    kernels=[empty_fill, empty_colon, ones_times, repeat, tile, full, list_to_array],
    n_range=[2 ** k for k in range(27)],

Apparently, not only the absolute speeds but also the speed order (as reported by user1579844) are machine dependent; here's what I found:

a=np.empty(1e4); a.fill(5) is fastest;

In descending speed order:

timeit a=np.empty(1e4); a.fill(5) 
# 100000 loops, best of 3: 10.2 us per loop
timeit a=np.empty(1e4); a[:]=5
# 100000 loops, best of 3: 16.9 us per loop
timeit a=np.ones(1e4)*5
# 100000 loops, best of 3: 32.2 us per loop
timeit a=np.tile(5,[1e4])
# 10000 loops, best of 3: 90.9 us per loop
timeit a=np.repeat(5,(1e4))
# 10000 loops, best of 3: 98.3 us per loop
timeit a=np.array([5]*int(1e4))
# 1000 loops, best of 3: 1.69 ms per loop (slowest BY FAR!)

So, try and find out, and use what's fastest on your platform.


without numpy

[2, 2, 2]
  • Suggesting [v] * n would be more directly relevant to the OP question.
    – lit
    Jul 9, 2018 at 14:10
  • This answer already mentioned this approach. Jul 9, 2018 at 14:55
  • what is i want three rows but only one column?
    – wawawa
    Feb 2 at 13:43

You can use numpy.tile, e.g. :

v = 7
rows = 3
cols = 5
a = numpy.tile(v, (rows,cols))
array([[7, 7, 7, 7, 7],
       [7, 7, 7, 7, 7],
       [7, 7, 7, 7, 7]])

Although tile is meant to 'tile' an array (instead of a scalar, as in this case), it will do the job, creating pre-filled arrays of any size and dimension.


We could also write


You can also use np.broadcast_to.

To create an array of shape (dimensions) s and of value v, you can do (in your case, the array is 1-D, and s = (n,)):

a = np.broadcast_to(v, s).copy()

if a only needs to be read-only, you can use the following (which is way more efficient):

a = np.broadcast_to(v, s)

The advantage is that v can be given as a single number, but also as an array if different values are desired (as long as v.shape matches the tail of s).

Bonus: if you want to force the dtype of the created array:

a = np.broadcast_to(np.asarray(v, dtype), s).copy()

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