# How to add an extra column to a NumPy array

Let’s say I have a NumPy array, `a`:

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

And I would like to add a column of zeros to get an array, `b`:

``````b = np.array([
[1, 2, 3, 0],
[2, 3, 4, 0]
])
``````

How can I do this easily in NumPy?

I think a more straightforward solution and faster to boot is to do the following:

``````import numpy as np
N = 10
a = np.random.rand(N,N)
b = np.zeros((N,N+1))
b[:,:-1] = a
``````

And timings:

``````In [23]: N = 10

In [24]: a = np.random.rand(N,N)

In [25]: %timeit b = np.hstack((a,np.zeros((a.shape[0],1))))
10000 loops, best of 3: 19.6 us per loop

In [27]: %timeit b = np.zeros((a.shape[0],a.shape[1]+1)); b[:,:-1] = a
100000 loops, best of 3: 5.62 us per loop
``````
• I want to append (985,1) shape np araay to (985,2) np array to make it (985,3) np array, but it's not working. I am getting "could not broadcast input array from shape (985) into shape (985,1)" error. What is wrong with my code? Code: np.hstack(data, data1) – Outlier Dec 10 '14 at 15:28
• @Outlier you should post a new question rather than ask one in the comments of this one. – JoshAdel Dec 10 '14 at 16:37
• I'm just saying your answer didn't work on my data – Outlier Dec 10 '14 at 18:00
• @JoshAdel: I tried your code on ipython, and I think there's a syntax error. You might want to try changing `a = np.random.rand((N,N))` to `a = np.random.rand(N,N)` – hlin117 Apr 11 '15 at 15:23
• @hlin117, thanks, you're correct. – JoshAdel Apr 12 '15 at 11:31

`np.r_[ ... ]` and `np.c_[ ... ]` are useful alternatives to `vstack` and `hstack`, with square brackets [] instead of round ().
A couple of examples:

``````: import numpy as np
: N = 3
: A = np.eye(N)

: np.c_[ A, np.ones(N) ]              # add a column
array([[ 1.,  0.,  0.,  1.],
[ 0.,  1.,  0.,  1.],
[ 0.,  0.,  1.,  1.]])

: np.c_[ np.ones(N), A, np.ones(N) ]  # or two
array([[ 1.,  1.,  0.,  0.,  1.],
[ 1.,  0.,  1.,  0.,  1.],
[ 1.,  0.,  0.,  1.,  1.]])

: np.r_[ A, [A[1]] ]              # add a row
array([[ 1.,  0.,  0.],
[ 0.,  1.,  0.],
[ 0.,  0.,  1.],
[ 0.,  1.,  0.]])
: # not np.r_[ A, A[1] ]

: np.r_[ A[0], 1, 2, 3, A[1] ]    # mix vecs and scalars
array([ 1.,  0.,  0.,  1.,  2.,  3.,  0.,  1.,  0.])

: np.r_[ A[0], [1, 2, 3], A[1] ]  # lists
array([ 1.,  0.,  0.,  1.,  2.,  3.,  0.,  1.,  0.])

: np.r_[ A[0], (1, 2, 3), A[1] ]  # tuples
array([ 1.,  0.,  0.,  1.,  2.,  3.,  0.,  1.,  0.])

: np.r_[ A[0], 1:4, A[1] ]        # same, 1:4 == arange(1,4) == 1,2,3
array([ 1.,  0.,  0.,  1.,  2.,  3.,  0.,  1.,  0.])
``````

(The reason for square brackets [] instead of round () is that Python expands e.g. 1:4 in square -- the wonders of overloading.)

• just was looking for information about this, and definitively this is a better answer than the accepted one, because it covers adding an extra column at the beginning and at the end, not just at the end as the other answers – yzT Jul 23 '15 at 11:02
• @Ay0 Exactly, I was looking for a way to add a bias unit to my artificial neuronal network in batch on all layers at once, and this is the perfect answer. – gaborous Aug 18 '16 at 15:07
• And what if you want to add n columns in a time? – Riley Feb 26 at 15:09
• @Riley, can you give an example please ? Python 3 has "iterable unpacking", e.g. `np.c_[ * iterable ]`; see expression-lists . – denis Feb 27 at 10:59
• @denis, that was exactly what I was looking for! – Riley Feb 27 at 11:10

Use `numpy.append`:

``````>>> a = np.array([[1,2,3],[2,3,4]])
>>> a
array([[1, 2, 3],
[2, 3, 4]])

>>> z = np.zeros((2,1), dtype=int64)
>>> z
array([[0],
[0]])

>>> np.append(a, z, axis=1)
array([[1, 2, 3, 0],
[2, 3, 4, 0]])
``````
• This is nice when inserting more complicated columns. – Thomas Ahle Mar 14 '14 at 13:38
• This is more straightforward than the answer by @JoshAdel, but when dealing with large data sets, it is slower. I'd pick between the two depending on the importance of readability. – dvj Aug 22 '15 at 22:08
• `append` actually just calls `concatenate` – rll May 19 '16 at 15:05

One way, using hstack, is:

``````b = np.hstack((a, np.zeros((a.shape[0], 1), dtype=a.dtype)))
``````
• I think this is the most elegant solution. – silvado Dec 13 '11 at 8:44
• +1 - this is how I would do it - you beat me to posting it as an answer :). – Blair Dec 13 '11 at 8:45
• Remove the `dtype` parameter, it is not needed and even not allowed. While your solution is elegant enough, pay attention not to use it if you need to "append" frequently to an array. If you cannot create the whole array at once and fill it later, create a list of arrays and `hstack` it all at once. – eumiro Dec 13 '11 at 9:38
• @eumiro I'm not sure how I managed to get the dtype at the wrong location, but the np.zeros needs a dtype to avoid everything becoming float (while a is int) – Peter Smit Dec 13 '11 at 10:59

I find the following most elegant:

``````b = np.insert(a, 3, values=0, axis=1) # Insert values before column 3
``````

An advantage of `insert` is that it also allows you to insert columns (or rows) at other places inside the array. Also instead of inserting a single value you can easily insert a whole vector, for instance duplicate the last column:

``````b = np.insert(a, insert_index, values=a[:,2], axis=1)
``````

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

For the timing, `insert` might be slower than JoshAdel's solution:

``````In [1]: N = 10

In [2]: a = np.random.rand(N,N)

In [3]: %timeit b = np.hstack((a, np.zeros((a.shape[0], 1))))
100000 loops, best of 3: 7.5 µs per loop

In [4]: %timeit b = np.zeros((a.shape[0], a.shape[1]+1)); b[:,:-1] = a
100000 loops, best of 3: 2.17 µs per loop

In [5]: %timeit b = np.insert(a, 3, values=0, axis=1)
100000 loops, best of 3: 10.2 µs per loop
``````
• This is pretty neat. Too bad I can't do `insert(a, -1, ...)` to append the column. Guess I'll just prepend it instead. – Thomas Ahle Mar 14 '14 at 13:37
• @ThomasAhle You can append a row or column by getting the size in that axis using `a.shape[axis]`. I. e. for appending a row, you do `np.insert(a, a.shape[0], 999, axis=0)` and for a column, you do `np.insert(a, a.shape[1], 999, axis=1)`. – blubberdiblub Apr 17 '17 at 16:44

I was also interested in this question and compared the speed of

``````numpy.c_[a, a]
numpy.stack([a, a]).T
numpy.vstack([a, a]).T
numpy.ascontiguousarray(numpy.stack([a, a]).T)
numpy.ascontiguousarray(numpy.vstack([a, a]).T)
numpy.column_stack([a, a])
numpy.concatenate([a[:,None], a[:,None]], axis=1)
numpy.concatenate([a[None], a[None]], axis=0).T
``````

which all do the same thing for any input vector `a`. Timings for growing `a`:

Note that all non-contiguous variants (in particular `stack`/`vstack`) are eventually faster than all contiguous variants. `column_stack` (for its clarity and speed) appears to be a good option if you require contiguity.

Code to reproduce the plot:

``````import numpy
import perfplot

perfplot.show(
setup=lambda n: numpy.random.rand(n),
kernels=[
lambda a: numpy.c_[a, a],
lambda a: numpy.ascontiguousarray(numpy.stack([a, a]).T),
lambda a: numpy.ascontiguousarray(numpy.vstack([a, a]).T),
lambda a: numpy.column_stack([a, a]),
lambda a: numpy.concatenate([a[:, None], a[:, None]], axis=1),
lambda a: numpy.ascontiguousarray(numpy.concatenate([a[None], a[None]], axis=0).T),
lambda a: numpy.stack([a, a]).T,
lambda a: numpy.vstack([a, a]).T,
lambda a: numpy.concatenate([a[None], a[None]], axis=0).T,
],
labels=[
'c_', 'ascont(stack)', 'ascont(vstack)', 'column_stack', 'concat',
'ascont(concat)', 'stack (non-cont)', 'vstack (non-cont)',
'concat (non-cont)'
],
n_range=[2**k for k in range(20)],
xlabel='len(a)',
logx=True,
logy=True,
)
``````
• Nice graph! Just thought you'd like to know that under the hood, `stack`, `hstack`, `vstack`, `column_stack`, `dstack` are all helper functions built on top of `np.concatenate`. By tracing through the definition of stack I found that `np.stack([a,a])` is calling `np.concatenate([a[None], a[None]], axis=0)`. It might be nice to add `np.concatenate([a[None], a[None]], axis=0).T` to the perfplot to show that `np.concatenate` can always be at least as fast as its helper functions. – unutbu Sep 6 '17 at 2:02
• @unutbu Added that. – Nico Schlömer Sep 6 '17 at 12:48
• Nice library, never heard of it! Interesting enough that I got just the same plots except that stack and concat have changed places (in both ascont and non-cont variants). Plus concat-column and column_stack swapped as well. – Antony Hatchkins Dec 24 '17 at 14:28
• Wow, love these plots ! – jhegedus Jan 29 '18 at 2:42

I think:

``````np.column_stack((a, zeros(shape(a)[0])))
``````

is more elegant.

np.concatenate also works

``````>>> a = np.array([[1,2,3],[2,3,4]])
>>> a
array([[1, 2, 3],
[2, 3, 4]])
>>> z = np.zeros((2,1))
>>> z
array([[ 0.],
[ 0.]])
>>> np.concatenate((a, z), axis=1)
array([[ 1.,  2.,  3.,  0.],
[ 2.,  3.,  4.,  0.]])
``````
• `np.concatenate` seems to be 3 times faster than `np.hstack` for 2x1, 2x2 and 2x3 matrices. `np.concatenate` was also very slightly faster than copying the matrices manually into an empty matrix in my experiments. That's consistent with Nico Schlömer's answer below. – Lenar Hoyt May 28 '17 at 21:16

Assuming `M` is a (100,3) ndarray and `y` is a (100,) ndarray `append` can be used as follows:

``````M=numpy.append(M,y[:,None],1)
``````

The trick is to use

``````y[:, None]
``````

This converts `y` to a (100, 1) 2D array.

``````M.shape
``````

now gives

``````(100, 4)
``````
• You are a hero you know that?! That's precisely what I's pulling my hair for the past 1 hour! Ty! – John Doe Sep 25 '17 at 2:14

I like JoshAdel's answer because of the focus on performance. A minor performance improvement is to avoid the overhead of initializing with zeros, only to be overwritten. This has a measurable difference when N is large, empty is used instead of zeros, and the column of zeros is written as a separate step:

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

In [2]: N = 10000

In [3]: a = np.ones((N,N))

In [4]: %timeit b = np.zeros((a.shape[0],a.shape[1]+1)); b[:,:-1] = a
1 loops, best of 3: 492 ms per loop

In [5]: %timeit b = np.empty((a.shape[0],a.shape[1]+1)); b[:,:-1] = a; b[:,-1] = np.zeros((a.shape[0],))
1 loops, best of 3: 407 ms per loop
``````
• You can use broadcasting to fill the last column with zeros (or any other value), which might be more readable: `b[:,-1] = 0`. Also, with very large arrays, the performance difference to `np.insert()` becomes negligible, which might make `np.insert()` more desirable due to its succinctness. – blubberdiblub Apr 17 '17 at 17:07

`np.insert` also serves the purpose.

``````matA = np.array([[1,2,3],
[2,3,4]])
idx = 3
new_col = np.array([0, 0])
np.insert(matA, idx, new_col, axis=1)

array([[1, 2, 3, 0],
[2, 3, 4, 0]])
``````

It inserts values, here `new_col`, before a given index, here `idx` along one axis. In other words, the newly inserted values will occupy the `idx` column and move what were originally there at and after `idx` backward.

• Note that `insert` is not in place as one could assume given the name of the function (see docs linked in the answer). – jneuendorf Jul 27 at 20:41

A bit late to the party, but nobody posted this answer yet, so for the sake of completeness: you can do this with list comprehensions, on a plain Python array:

``````source = a.tolist()
result = [row + [0] for row in source]
b = np.array(result)
``````

In my case, I had to add a column of ones to a NumPy array

``````X = array([ 6.1101, 5.5277, ... ])
X.shape => (97,)
X = np.concatenate((np.ones((m,1), dtype=np.int), X.reshape(m,1)), axis=1)
``````

After X.shape => (97, 2)

``````array([[ 1. , 6.1101],
[ 1. , 5.5277],
...
``````

There is a function specifically for this. It is called numpy.pad

``````a = np.array([[1,2,3], [2,3,4]])
b = np.pad(a, ((0, 0), (0, 1)), mode='constant', constant_values=0)
print b
>>> array([[1, 2, 3, 0],
[2, 3, 4, 0]])
``````

Here is what it says in the docstring:

``````Pads an array.

Parameters
----------
array : array_like of rank N
Input array
Number of values padded to the edges of each axis.
((before_1, after_1), ... (before_N, after_N)) unique pad widths
for each axis.
((before, after),) yields same before and after pad for each axis.
(pad,) or int is a shortcut for before = after = pad width for all
axes.
mode : str or function
One of the following string values or a user supplied function.

'constant'
'edge'
Pads with the edge values of array.
'linear_ramp'
Pads with the linear ramp between end_value and the
array edge value.
'maximum'
Pads with the maximum value of all or part of the
vector along each axis.
'mean'
Pads with the mean value of all or part of the
vector along each axis.
'median'
Pads with the median value of all or part of the
vector along each axis.
'minimum'
Pads with the minimum value of all or part of the
vector along each axis.
'reflect'
Pads with the reflection of the vector mirrored on
the first and last values of the vector along each
axis.
'symmetric'
Pads with the reflection of the vector mirrored
along the edge of the array.
'wrap'
Pads with the wrap of the vector along the axis.
The first values are used to pad the end and the
end values are used to pad the beginning.
<function>
stat_length : sequence or int, optional
Used in 'maximum', 'mean', 'median', and 'minimum'.  Number of
values at edge of each axis used to calculate the statistic value.

((before_1, after_1), ... (before_N, after_N)) unique statistic
lengths for each axis.

((before, after),) yields same before and after statistic lengths
for each axis.

(stat_length,) or int is a shortcut for before = after = statistic
length for all axes.

Default is ``None``, to use the entire axis.
constant_values : sequence or int, optional
Used in 'constant'.  The values to set the padded values for each
axis.

((before_1, after_1), ... (before_N, after_N)) unique pad constants
for each axis.

((before, after),) yields same before and after constants for each
axis.

(constant,) or int is a shortcut for before = after = constant for
all axes.

Default is 0.
end_values : sequence or int, optional
Used in 'linear_ramp'.  The values used for the ending value of the
linear_ramp and that will form the edge of the padded array.

((before_1, after_1), ... (before_N, after_N)) unique end values
for each axis.

((before, after),) yields same before and after end values for each
axis.

(constant,) or int is a shortcut for before = after = end value for
all axes.

Default is 0.
reflect_type : {'even', 'odd'}, optional
Used in 'reflect', and 'symmetric'.  The 'even' style is the
default with an unaltered reflection around the edge value.  For
the 'odd' style, the extented part of the array is created by
subtracting the reflected values from two times the edge value.

Returns
-------
Padded array of rank equal to `array` with shape increased

Notes
-----

For an array with rank greater than 1, some of the padding of later
axes is calculated from padding of previous axes.  This is easiest to
think about with a rank 2 array where the corners of the padded array
are calculated by using padded values from the first axis.

The padding function, if used, should return a rank 1 array equal in
length to the vector argument with padded values replaced. It has the
following signature::

where

vector : ndarray
A 2-tuple of ints, iaxis_pad_width[0] represents the number of
values padded at the beginning of vector where
the end of vector.
iaxis : int
The axis currently being calculated.
kwargs : dict
Any keyword arguments the function requires.

Examples
--------
>>> a = [1, 2, 3, 4, 5]
>>> np.pad(a, (2,3), 'constant', constant_values=(4, 6))
array([4, 4, 1, 2, 3, 4, 5, 6, 6, 6])

array([1, 1, 1, 2, 3, 4, 5, 5, 5, 5])

>>> np.pad(a, (2, 3), 'linear_ramp', end_values=(5, -4))
array([ 5,  3,  1,  2,  3,  4,  5,  2, -1, -4])

array([5, 5, 1, 2, 3, 4, 5, 5, 5])

array([3, 3, 1, 2, 3, 4, 5, 3, 3])

array([3, 3, 1, 2, 3, 4, 5, 3, 3])

>>> a = [[1, 2], [3, 4]]
>>> np.pad(a, ((3, 2), (2, 3)), 'minimum')
array([[1, 1, 1, 2, 1, 1, 1],
[1, 1, 1, 2, 1, 1, 1],
[1, 1, 1, 2, 1, 1, 1],
[1, 1, 1, 2, 1, 1, 1],
[3, 3, 3, 4, 3, 3, 3],
[1, 1, 1, 2, 1, 1, 1],
[1, 1, 1, 2, 1, 1, 1]])

>>> a = [1, 2, 3, 4, 5]
array([3, 2, 1, 2, 3, 4, 5, 4, 3, 2])

>>> np.pad(a, (2, 3), 'reflect', reflect_type='odd')
array([-1,  0,  1,  2,  3,  4,  5,  6,  7,  8])

array([2, 1, 1, 2, 3, 4, 5, 5, 4, 3])

>>> np.pad(a, (2, 3), 'symmetric', reflect_type='odd')
array([0, 1, 1, 2, 3, 4, 5, 5, 6, 7])

array([4, 5, 1, 2, 3, 4, 5, 1, 2, 3])

...     return vector
>>> a = np.arange(6)
>>> a = a.reshape((2, 3))
array([[10, 10, 10, 10, 10, 10, 10],
[10, 10, 10, 10, 10, 10, 10],
[10, 10,  0,  1,  2, 10, 10],
[10, 10,  3,  4,  5, 10, 10],
[10, 10, 10, 10, 10, 10, 10],
[10, 10, 10, 10, 10, 10, 10]])
array([[100, 100, 100, 100, 100, 100, 100],
[100, 100, 100, 100, 100, 100, 100],
[100, 100,   0,   1,   2, 100, 100],
[100, 100,   3,   4,   5, 100, 100],
[100, 100, 100, 100, 100, 100, 100],
[100, 100, 100, 100, 100, 100, 100]])
``````

## Add an extra column to a numpy array:

Numpy's `np.append` method takes three parameters, the first two are 2D numpy arrays and the 3rd is an axis parameter instructing along which axis to append:

``````import numpy as np
x = np.array([[1,2,3], [4,5,6]])
print("Original x:")
print(x)

y = np.array([[1], [1]])
print("Original y:")
print(y)

print("x appended to y on axis of 1:")
print(np.append(x, y, axis=1))
``````

Prints:

``````Original x:
[[1 2 3]
[4 5 6]]
Original y:
[[1]
[1]]
x appended to y on axis of 1:
[[1 2 3 1]
[4 5 6 1]]
``````

For me, the next way looks pretty intuitive and simple.

``````zeros = np.zeros((2,1)) #2 is a number of rows in your array.
b = np.hstack((a, zeros))
``````

## protected by eyllanescJun 27 '18 at 20:24

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