Using standard Python arrays, I can do the following:

arr = []
# arr is now [[1,2,3],[4,5,6]]

However, I cannot do the same thing in numpy. For example:

arr = np.array([])
arr = np.append(arr, np.array([1,2,3]))
arr = np.append(arr, np.array([4,5,6]))
# arr is now [1,2,3,4,5,6]

I also looked into vstack, but when I use vstack on an empty array, I get:

ValueError: all the input array dimensions except for the concatenation axis must match exactly

So how do I do append a new row to an empty array in numpy?

  • 1
    If it's empty, why bother? Just start from an array holding only the first row.
    – jonrsharpe
    Commented Mar 13, 2014 at 22:50
  • 21
    I just want to know whether it is possible to append to an empty numpy array. Sometimes it's cleaner to write code like this since the append operations are in a loop.
    – Tony Stark
    Commented Mar 13, 2014 at 22:55
  • 7
    Given the way numpy arrays work, you are much better building an empty array then putting the data in, e.g. See stackoverflow.com/questions/568962/…
    – jonrsharpe
    Commented Mar 13, 2014 at 22:56
  • how one can create array of single dimension? np.empty(3,float) gives array([0.00e+000, 0.00e+000, 2.77e-322]), instead of array([]).
    – Mahesha999
    Commented Oct 17, 2020 at 21:49

7 Answers 7


The way to "start" the array that you want is:

arr = np.empty((0,3), int)

Which is an empty array but it has the proper dimensionality.

>>> arr
array([], shape=(0, 3), dtype=int64)

Then be sure to append along axis 0:

arr = np.append(arr, np.array([[1,2,3]]), axis=0)
arr = np.append(arr, np.array([[4,5,6]]), axis=0)

But, @jonrsharpe is right. In fact, if you're going to be appending in a loop, it would be much faster to append to a list as in your first example, then convert to a numpy array at the end, since you're really not using numpy as intended during the loop:

In [210]: %%timeit
   .....: l = []
   .....: for i in xrange(1000):
   .....:     l.append([3*i+1,3*i+2,3*i+3])
   .....: l = np.asarray(l)
1000 loops, best of 3: 1.18 ms per loop

In [211]: %%timeit
   .....: a = np.empty((0,3), int)
   .....: for i in xrange(1000):
   .....:     a = np.append(a, 3*i+np.array([[1,2,3]]), 0)
100 loops, best of 3: 18.5 ms per loop

In [214]: np.allclose(a, l)
Out[214]: True

The numpythonic way to do it depends on your application, but it would be more like:

In [220]: timeit n = np.arange(1,3001).reshape(1000,3)
100000 loops, best of 3: 5.93 µs per loop

In [221]: np.allclose(a, n)
Out[221]: True
  • 1
    what if I have to do this 10^5 or 10^6 times? it seems that neither of these methods will hold. any suggestion?
    – Rho Phi
    Commented Dec 5, 2016 at 9:00
  • @Roberto, usually there is some way to determine the size or shape (at the very least, values would be preferable) of the array in advance. Do you think you can do that? Appending should really be a one or two time operation.
    – askewchan
    Commented Dec 7, 2016 at 16:40
  • sometimes you cannot guess the dimensions, it's life. However you can allocate a big enough array and give values to its views. I do not like it though, because there are unwanted values that one has to find a way to "mask". This idea of masking really does not fit my taste.
    – Rho Phi
    Commented Dec 8, 2016 at 17:17
  • No need to mask, just slice! a = a[:N] Though I strongly believe you should find a way to vectorize it (post a new question with your specifics if you need help) or just use lists until the loop is over.
    – askewchan
    Commented Dec 8, 2016 at 20:15
  • how one can create array of single dimension? np.empty(3,float) gives array([0.00e+000, 0.00e+000, 2.77e-322]), instead of array([]).
    – Mahesha999
    Commented Oct 17, 2020 at 21:49

Here is my solution:

arr = []
np_arr = np.array(arr)
  • 1
    The resulting array has a dtype of object, which isn't acceptable in certain cases
    – zer0fool
    Commented May 29, 2020 at 17:26
  • This was simple solution to using matplotlib line collections, thanks!! Commented Nov 30, 2023 at 9:27

In this case you might want to use the functions np.hstack and np.vstack

arr = np.array([])
arr = np.hstack((arr, np.array([1,2,3])))
# arr is now [1,2,3]

arr = np.vstack((arr, np.array([4,5,6])))
# arr is now [[1,2,3],[4,5,6]]

You also can use the np.concatenate function.


  • 9
    Won't work if the second array has dimension >=2 like ones((2, 2)). It appears to me there is no way to avoid boundary cases if you are building up arrays from empty by concatenation.
    – Taozi
    Commented Oct 20, 2015 at 21:25
  • 1
    Not a good solution as one needs to check the dimension every time.
    – SKR
    Commented Nov 22, 2018 at 19:32

I want to do a for loop, yet with askewchan's method it does not work well, so I have modified it.

x = np.empty((0,3))
y = np.array([1,2,3])
for i in ...
    x = np.vstack((x,y))

using an custom dtype definition, what worked for me was:

import numpy

# define custom dtype
type1 = numpy.dtype([('freq', numpy.float64, 1), ('amplitude', numpy.float64, 1)])
# declare empty array, zero rows but one column
arr = numpy.empty([0,1],dtype=type1)
# store row data, maybe inside a loop
row = numpy.array([(0.0001, 0.002)], dtype=type1)
# append row to the main array
arr = numpy.row_stack((arr, row))
# print values stored in the row 0
print float(arr[0]['freq'])
print float(arr[0]['amplitude'])

In case of adding new rows for array in loop, Assign the array directly for firsttime in loop instead of initialising an empty array.

for i in range(0,len(0,100)):
        finalArrayCollection = SOMECALCULATEDARRAY
        finalArrayCollection = np.vstack(finalArrayCollection,SOMECALCULATEDARRAY)

This is mainly useful when the shape of the array is unknown


This is more efficient way when taking into account memory:

shape = (n, inp_len)
arr= np.empty(shape)

for i in range(n):
    arr[i] = np.expand_dims(arr, axis=0)

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