Simple question: what is the advantage of each of these methods. It seems that given the right parameters (and ndarray shapes) they all work seemingly equivalently. Do some work in place? Have better performance? Which functions should I use when?

4 Answers 4


If you have two matrices, you're good to go with just hstack and vstack:

If you're stacking a matrice and a vector, hstack becomes tricky to use, so column_stack is a better option:

If you're stacking two vectors, you've got three options:

And concatenate in its raw form is useful for 3D and above, see my article Numpy Illustrated for details.

  • Then, when should we use append and when concatenate?
    – skan
    Aug 31, 2023 at 19:36
  • 2
    @skan append uses concatenate internally. There's no difference between append and concatenate except that append flattens both arguments if no axis is given. 'Append' saves a few keystrokes as compared to concatenate - and it's the only benefit of having it there :) In Pandas they are deprecating append in favor of concat (a shortcut for concatenate) because of the bad practice of using append to append rows to a dataframe incrementally instead of appending them to a python list and concatenating everything in one shot (which is faster). Sep 1, 2023 at 9:42

All the functions are written in Python except np.concatenate. With an IPython shell you just use ??.

If not, here's a summary of their code:

concatenate([atleast_2d(_m) for _m in tup], 0)
i.e. turn all inputs in to 2d (or more) and concatenate on first

concatenate([atleast_1d(_m) for _m in tup], axis=<0 or 1>)

transform arrays with (if needed)
    array(arr, copy=False, subok=True, ndmin=2).T

concatenate((asarray(arr), values), axis=axis)

In other words, they all work by tweaking the dimensions of the input arrays, and then concatenating on the right axis. They are just convenience functions.

And newer np.stack:

arrays = [asanyarray(arr) for arr in arrays]
shapes = set(arr.shape for arr in arrays)
result_ndim = arrays[0].ndim + 1
axis = normalize_axis_index(axis, result_ndim)
sl = (slice(None),) * axis + (_nx.newaxis,)

expanded_arrays = [arr[sl] for arr in arrays]
concatenate(expanded_arrays, axis=axis, out=out)

That is, it expands the dims of all inputs (a bit like np.expand_dims), and then concatenates. With axis=0, the effect is the same as np.array.

hstack documentation now adds:

The functions concatenate, stack and block provide more general stacking and concatenation operations.

np.block is also new. It, in effect, recursively concatenates along the nested lists.


numpy.vstack: stack arrays in sequence vertically (row wise).Equivalent to np.concatenate(tup, axis=0) example see: https://docs.scipy.org/doc/numpy/reference/generated/numpy.vstack.html

numpy.hstack: Stack arrays in sequence horizontally (column wise).Equivalent to np.concatenate(tup, axis=1), except for 1-D arrays where it concatenates along the first axis. example see: https://docs.scipy.org/doc/numpy/reference/generated/numpy.hstack.html

append is a function for python's built-in data structure list. Each time you add an element to the list. Obviously, To add multiple elements, you will use extend. Simply put, numpy's functions are much more powerful.


suppose gray.shape = (n0,n1)

np.vstack((gray,gray,gray)) will have shape (n0*3, n1), you can also do it by np.concatenate((gray,gray,gray),axis=0)

np.hstack((gray,gray,gray)) will have shape (n0, n1*3), you can also do it by np.concatenate((gray,gray,gray),axis=1)

np.dstack((gray,gray,gray)) will have shape (n0, n1,3).

  • except for 1-D arrays where it concatenates along the first axis. This line solved my problem thanks!
    – Dev_Man
    Jun 5, 2023 at 9:36

In IPython you can look at the source code of a function by typing its name followed by ??. Taking a look at hstack we can see that it's actually just a wrapper around concatenate (similarly with vstack and column_stack):

def hstack(tup):
    arrs = [atleast_1d(_m) for _m in tup]
    # As a special case, dimension 0 of 1-dimensional arrays is "horizontal"
    if arrs[0].ndim == 1:
        return _nx.concatenate(arrs, 0)
        return _nx.concatenate(arrs, 1)

So I guess just use whichever one has the most logical sounding name to you.


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