3

I have two numpy arrays of the following shape:

print(a.shape) -> (100, 20, 3, 3)
print(b.shape) -> (100, 3)

Array a is empty, as I just need this predefined shape, I created it with:

a = numpy.empty(shape=(100, 20, 3, 3))

Now I would like to copy data from array b to array a so that the second and third dimension of array a gets filled with the same 3 values of the corresponding row of array b.

Let me try to make it a bit clearer: Array b contains 100 rows (100, 3) and each row holds three values (100, 3). Now every row of array a (100, 20, 3, 3) should also hold the same three values in the last dimension (100, 20, 3, 3), while those three values stay the same for the second and third dimension (100, 20, 3, 3) for the same row (100, 20, 3, 3).

How can I copy the data as described without using loops? I just can not get it done but there must be an easy solution for this.

2 Answers 2

2

We can make use of np.broadcast_to.

If you are okay with a view -

np.broadcast_to(b[:,None, None, :], (100, 2, 3, 3))

If you need an output with its own memory space, simply append with .copy().

If you want to save on memory and fill into already defined array, a :

a[:] = b[:,None,None,:]

Note that we can skip the trailing :s.

Timings :

In [20]: b = np.random.rand(100, 3)

In [21]: %timeit np.broadcast_to(b[:,None, None, :], (100, 2, 3, 3))
5.93 µs ± 64.4 ns per loop (mean ± std. dev. of 7 runs, 100000 loops each)

In [22]: %timeit np.broadcast_to(b[:,None, None, :], (100, 2, 3, 3)).copy()
11.4 µs ± 56.2 ns per loop (mean ± std. dev. of 7 runs, 100000 loops each)

In [23]: %timeit np.repeat(np.repeat(b[:,None,None,:], 20, 1), 3, 2)
39.3 µs ± 147 ns per loop (mean ± std. dev. of 7 runs, 10000 loops each)
2

You can use repeat along axis. You also do not need to predefine a. I would also suggest NOT to use broadcast_to since it returns readonly view and memory is shared among elements:

a = np.repeat(b[:,None,None,:], 20, 1) #adds dimensions 1 and 2 and repeats 20 times along axis 1
a = np.repeat(a, 3, 2) #repeats 3 times along axis 2

Smaller example:

b = np.arange(2*3).reshape(2,3)
#[[0 1 2]
# [3 4 5]]
a = np.repeat(b[:,None,None,:], 2, 1) 
a = np.repeat(a, 3, 2) 
#shape(2,2,3,3)
[[[[0 1 2]
   [0 1 2]
   [0 1 2]]

  [[0 1 2]
   [0 1 2]
   [0 1 2]]]


 [[[3 4 5]
   [3 4 5]
   [3 4 5]]

  [[3 4 5]
   [3 4 5]
   [3 4 5]]]]
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  • Thank you very much, this seems to work. Can you think of another way using just broadcasting and None without the np.repeat function? Just curious if there is another convenient way.
    – H123321
    Oct 26, 2020 at 0:32
  • @H123321 you can do np.broadcast_to(b, (2,3,2,3)).transpose(2,0,1,3) but like I mentioned in the post, I advise against it unless you are not going to do any processes on it later. broadcasting with None only adds dimension and does not copy the content (the shape of added dimension would be 1)
    – Ehsan
    Oct 26, 2020 at 3:11
  • 1
    @Ehsan Just making a copy on the view is enough and should be better than repeating twice, no?
    – Divakar
    Oct 26, 2020 at 6:19
  • @Divakar good idea. Thank you. Upvote. Would it have same time complexity if we only needed to repeat on one axis (instead of two)? or is there other reason as to why repeat is slower than copy?
    – Ehsan
    Oct 26, 2020 at 22:52
  • I would guess just two repeats entails two copies.
    – Divakar
    Oct 26, 2020 at 22:57

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