# Concatenate a NumPy array to another NumPy array

I have a numpy_array. Something like `[ a b c ]`.

And then I want to concatenate it with another NumPy array (just like we create a list of lists). How do we create a NumPy array containing NumPy arrays?

I tried to do the following without any luck

``````>>> M = np.array([])
>>> M
array([], dtype=float64)
>>> M.append(a,axis=0)
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
AttributeError: 'numpy.ndarray' object has no attribute 'append'
>>> a
array([1, 2, 3])
``````
• You can create an "array of arrays" (you use an object array), but you almost definitely don't want to. What are you trying to do? Do you just want a 2d array? Mar 19, 2012 at 18:00
• An array of arrays is called a nested array. Three answers in this thread are about np.append() which does not keep the nested structure. This is because of a question without a clear example. Jul 15, 2021 at 22:39

``````In [1]: import numpy as np

In [2]: a = np.array([[1, 2, 3], [4, 5, 6]])

In [3]: b = np.array([[9, 8, 7], [6, 5, 4]])

In [4]: np.concatenate((a, b))
Out[4]:
array([[1, 2, 3],
[4, 5, 6],
[9, 8, 7],
[6, 5, 4]])
``````

or this:

``````In [1]: a = np.array([1, 2, 3])

In [2]: b = np.array([4, 5, 6])

In [3]: np.vstack((a, b))
Out[3]:
array([[1, 2, 3],
[4, 5, 6]])
``````
• Hi when i run this i get this np.concatenate((a,b),axis=1) Output: array([1, 2, 3, 2, 3, 4]) But what I looking for is numpy 2d array?? Mar 19, 2012 at 18:05
• @Fraz: I've added Sven's `vstack()` idea. You know you can create the array with `array([[1,2,3],[2,3,4]])`, right? Mar 19, 2012 at 18:14
• concatenate() is the one I needed. Feb 19, 2015 at 0:17
• `numpy.vstack` can accept more than 2 arrays in the sequence argument. Thus if you need to combine more than 2 arrays, vstack is more handy. Oct 22, 2015 at 12:57
• @oneleggedmule `concatenate` can also take multiple arrays Oct 22, 2015 at 13:28

Well, the error message says it all: NumPy arrays do not have an `append()` method. There's a free function `numpy.append()` however:

``````numpy.append(M, a)
``````

This will create a new array instead of mutating `M` in place. Note that using `numpy.append()` involves copying both arrays. You will get better performing code if you use fixed-sized NumPy arrays.

• Hi.. when i try this.. I get this >>> np.append(M,a) array([ 1., 2., 3.]) >>> np.append(M,b) array([ 2., 3., 4.]) >>> M array([], dtype=float64) I was hoping M to be a 2D array?? Mar 19, 2012 at 18:06
• @Fraz: Have a look at `numpy.vstack()`. Mar 19, 2012 at 18:08
• I think this should be the accepted answer as it precisely answers to the point. Mar 27, 2020 at 19:15
• This answer does not fit to the question. It just makes a flattened array out of any structure you put in. For example for `np.append(arr1,arr2)` with arr1 and arr2 being 3x3 arrays, the output structure is 1x18: `array([1, 2, 0, 0, 1, 1, 1, 1, 2, 0, 1, 0, 0, 0, 1, 1, 0, 1])`. Which is not what was asked for, instead, a nested array was asked for. Jul 15, 2021 at 22:30

You may use `numpy.append()`...

``````import numpy

B = numpy.array([3])
A = numpy.array([1, 2, 2])
B = numpy.append( B , A )

print B

> [3 1 2 2]
``````

This will not create two separate arrays but will append two arrays into a single dimensional array.

• A nested array was asked for, not a flattened array. Jul 15, 2021 at 22:34

I found this link while looking for something slightly different, how to start appending array objects to an empty numpy array, but tried all the solutions on this page to no avail.

Then I found this question and answer: How to add a new row to an empty numpy array

The gist here:

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

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

Then you can use concatenate to add rows like so:

`arr = np.concatenate( ( arr, [[x, y, z]] ) , axis=0)`

• That's what I ended up having to use but it does seem rather a kludge. Oct 16, 2020 at 1:52

Sven said it all, just be very cautious because of automatic type adjustments when append is called.

``````In [2]: import numpy as np

In [3]: a = np.array([1,2,3])

In [4]: b = np.array([1.,2.,3.])

In [5]: c = np.array(['a','b','c'])

In [6]: np.append(a,b)
Out[6]: array([ 1.,  2.,  3.,  1.,  2.,  3.])

In [7]: a.dtype
Out[7]: dtype('int64')

In [8]: np.append(a,c)
Out[8]:
array(['1', '2', '3', 'a', 'b', 'c'],
dtype='|S1')
``````

As you see based on the contents the dtype went from int64 to float32, and then to S1

• A nested array was asked for. Jul 15, 2021 at 22:35

Actually one can always create an ordinary list of numpy arrays and convert it later.

``````In [1]: import numpy as np

In [2]: a = np.array([[1,2],[3,4]])

In [3]: b = np.array([[1,2],[3,4]])

In [4]: l = [a]

In [5]: l.append(b)

In [6]: l = np.array(l)

In [7]: l.shape
Out[7]: (2, 2, 2)

In [8]: l
Out[8]:
array([[[1, 2],
[3, 4]],

[[1, 2],
[3, 4]]])
``````

I had the same issue, and I couldn't comment on @Sven Marnach answer (not enough rep, gosh I remember when Stackoverflow first started...) anyway.

Adding a list of random numbers to a 10 X 10 matrix.

``````myNpArray = np.zeros([1, 10])
for x in range(1,11,1):
randomList = [list(np.random.randint(99, size=10))]
myNpArray = np.vstack((myNpArray, randomList))
myNpArray = myNpArray[1:]
``````

Using np.zeros() an array is created with 1 x 10 zeros.

``````array([[0., 0., 0., 0., 0., 0., 0., 0., 0., 0.]])
``````

Then a list of 10 random numbers is created using np.random and assigned to randomList. The loop stacks it 10 high. We just have to remember to remove the first empty entry.

``````myNpArray

array([[31., 10., 19., 78., 95., 58.,  3., 47., 30., 56.],
[51., 97.,  5., 80., 28., 76., 92., 50., 22., 93.],
[64., 79.,  7., 12., 68., 13., 59., 96., 32., 34.],
[44., 22., 46., 56., 73., 42., 62.,  4., 62., 83.],
[91., 28., 54., 69., 60., 95.,  5., 13., 60., 88.],
[71., 90., 76., 53., 13., 53., 31.,  3., 96., 57.],
[33., 87., 81.,  7., 53., 46.,  5.,  8., 20., 71.],
[46., 71., 14., 66., 68., 65., 68., 32.,  9., 30.],
[ 1., 35., 96., 92., 72., 52., 88., 86., 94., 88.],
[13., 36., 43., 45., 90., 17., 38.,  1., 41., 33.]])
``````

So in a function:

``````def array_matrix(random_range, array_size):
myNpArray = np.zeros([1, array_size])
for x in range(1, array_size + 1, 1):
randomList = [list(np.random.randint(random_range, size=array_size))]
myNpArray = np.vstack((myNpArray, randomList))
return myNpArray[1:]
``````

a 7 x 7 array using random numbers 0 - 1000

``````array_matrix(1000, 7)

array([[621., 377., 931., 180., 964., 885., 723.],
[298., 382., 148., 952., 430., 333., 956.],
[398., 596., 732., 422., 656., 348., 470.],
[735., 251., 314., 182., 966., 261., 523.],
[373., 616., 389.,  90., 884., 957., 826.],
[587., 963.,  66., 154., 111., 529., 945.],
[950., 413., 539., 860., 634., 195., 915.]])
``````

If I understand your question, here's one way. Say you have:

``````a = [4.1, 6.21, 1.0]
``````

so here's some code...

``````def array_in_array(scalarlist):
return [(x,) for x in scalarlist]
``````

``````In [72]: a = [4.1, 6.21, 1.0]

In [73]: a
Out[73]: [4.1, 6.21, 1.0]

In [74]: def array_in_array(scalarlist):
....:     return [(x,) for x in scalarlist]
....:

In [75]: b = array_in_array(a)

In [76]: b
Out[76]: [(4.1,), (6.21,), (1.0,)]
``````

This is for people working with `numpy's ndarrays`. The function `numpy.concatenate()` does work as well.

``````>>a = np.random.randint(0,9, size=(10,1,5,4))
>>a.shape
(10, 1, 5, 4)

>>b = np.random.randint(0,9, size=(15,1,5,4))
>>b.shape
(15, 1, 5, 4)

>>X = np.concatenate((a, b))
>>X.shape
(25, 1, 5, 4)
``````

Much the same way as `vstack()`

``````>>Y = np.vstack((a,b))
>>Y.shape
(25, 1, 5, 4)
``````

As you want to concatenate along an existing axis (row wise), `np.vstack` or `np.concatenate` will work for you.

For a detailed list of concatenation operations, refer to the official docs.

There is a handfull of method to stack arrays together, depending on the direction of the stack. You may consider np.stack() (doc), np.vstack() (doc) and np.hstack() (doc) for example.