# Numpy: Fill in a Matrix With a Smaller One FAST

I'd like to fill in one matrix with copies of another one, like so:

``````for i in range(N):
for j in range(M):
matA[:,:,:,i,j] = matB
``````

But I have many big dimensions, so I am looking for a faster way.

• What's the shape of `matA` and `matB`? – hpaulj Nov 14 '18 at 20:31
• Hard to answer without details, including how big is big, how fast is the current solution (and why isn't that fast enough)? – user2699 Nov 14 '18 at 20:36

We could simply get a view into the input with `np.broadcast_to` to get the desired output -

``````matA = np.broadcast_to(matB[:,:,:,None,None], matB.shape + (N,M))
``````

Being a view, its virtually free -

``````In [292]: matB = np.random.rand(20,20,20)

In [293]: N,M = 20,20

In [294]: %timeit np.broadcast_to(matB[:,:,:,None,None], matB.shape + (N,M))
100000 loops, best of 3: 4.02 µs per loop
``````

If you need an output with its own memory space, create a copy with `matA.copy()`.

Alternatively, we could use `np.repeat` -

``````np.repeat(matB[:,:,:,None],N*M,axis=-1).reshape(matB.shape+(N,M))
``````