# concatenate numpy arrays which are elements of a list

I have a list containing numpy arrays something like L=[a,b,c] where a, b and c are numpy arrays with sizes N_a in T, N_b in T and N_c in T.
I want to row-wise concatenate a, b and c and get a numpy array with shape (N_a+N_b+N_c, T). Clearly one solution is run a for loop and use numpy.concatenate, but is there any pythonic way to do this?

Thanks

``````L = (a,b,c)
arr = np.vstack(L)
``````

`help('concatenate'` has this signature:

``````concatenate(...)
concatenate((a1, a2, ...), axis=0)

Join a sequence of arrays together.
``````

`(a1, a2, ...)` looks like your list, doesn't it? And the default axis is the one you want to join. So lets try it:

``````In : L = [np.ones((3,2)), np.zeros((2,2)), np.ones((4,2))]

In : np.concatenate(L)
Out:
array([[ 1.,  1.],
[ 1.,  1.],
[ 1.,  1.],
[ 0.,  0.],
[ 0.,  0.],
[ 1.,  1.],
[ 1.,  1.],
[ 1.,  1.],
[ 1.,  1.]])
``````

`vstack` also does this, but look at its code:

``````def vstack(tup):
return np.concatenate([atleast_2d(_m) for _m in tup], 0)
``````

All it does extra is make sure that the component arrays have 2 dimensions, which yours do.

• I see. So essentially, it should be faster to use concatenate here. Thanks – TNM Jan 25 '15 at 17:45
• `vstack` shouldn't add much time, since it is just fiddling with properties like shape and strides. Basically it's a convenience function. – hpaulj Jan 25 '15 at 22:34