I have a list of 2d numpy arrays. As a test, consider the following list:
lst = [np.arange(10).reshape(5,2)]*10
Now I can get at a particular data element by:
I would like to convert this to a numpy array so that I can index it:
i.e., the shape should be
(10, 5, 2).
This seems to work, but seems completely unnecessary:
z = np.empty((10,5,2)) for i,x in enumerate(z): x[:,:] = lst[i]
These don't work:
np.hstack(lst) np.vstack(lst) np.dstack(lst) #this is closest, but gives wrong shape (5, 2, 10)
I suppose I could pair a
np.dstack with a
np.rollaxis, but again, that doesn't seem quite right ...
Is there a good way to do this with numpy?
I've looked at this very related post, but I can't quite seem to work it out.