How to repeat tensor in a specific new dimension in PyTorch

If I have a tensor `A` which has shape `[M, N]`, I want to repeat the tensor K times so that the result `B` has shape `[M, K, N]` and each slice `B[:, k, :]` should has the same data as `A`. Which is the best practice without a for loop. `K` might be in other dimension.

`torch.repeat_interleave()` and `tensor.repeat()` does not seem to work. Or I am using it in a wrong way.

`tensor.repeat` should suit your needs but you need to insert a unitary dimension first. For this we could use either `tensor.unsqueeze` or `tensor.reshape`. Since `unsqueeze` is specifically defined to insert a unitary dimension we will use that.

``````B = A.unsqueeze(1).repeat(1, K, 1)
``````

Code Description `A.unsqueeze(1)` turns `A` from an `[M, N]` to `[M, 1, N]` and `.repeat(1, K, 1)` repeats the tensor `K` times along the second dimension.

Einops provides repeat function

``````import einops
einops.repeat(x, 'm n -> m k n', k=K)
``````

`repeat` can add arbitrary number of axes in any order and reshuffle existing axes at the same time.

• This is very elegant and preferable! Commented May 28 at 9:22

`tensor.expand` might be a better choice than `tensor.repeat` because according to this: "Expanding a tensor does not allocate new memory, but only creates a new view on the existing tensor where a dimension of size one is expanded to a larger size by setting the stride to 0."

However, be aware that: "More than one element of an expanded tensor may refer to a single memory location. As a result, in-place operations (especially ones that are vectorized) may result in incorrect behavior. If you need to write to the tensors, please clone them first."

``````M = N = K = 3
A = torch.arange(0, M * N).reshape((M, N))
B = A.unsqueeze(1).expand(M, K, N)
B

'''
tensor([[[0, 1, 2],
[0, 1, 2],
[0, 1, 2]],

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

[[6, 7, 8],
[6, 7, 8],
[6, 7, 8]]])
'''

``````

Adding to the answer provided by @Alleo. You can use following Einops function.

``````einops.repeat(example_tensor, 'b h w -> (repeat b) h w', repeat=b)
``````

Where `b` is the number of times you want your tensor to be repeated and `h`, `w` the additional dimensions to the tensor.

Example -

``````example_tensor.shape -> torch.Size([1, 40, 50])
repeated_tensor = einops.repeat(example_tensor, 'b h w -> (repeat b) h w', repeat=8)
repeated_tensor.shape -> torch.Size([8, 40, 50])
``````

More examples here - https://einops.rocks/api/repeat/

Explicitly repeating values can quickly create huge memory cost. In most cases, you can keep the values implicit by utilizing broadcasting instead. So can use `A[:, None, :]` and get as new shape `A.shape==(M, 1, N)`.

One case where I would agree to repeating the values, is that of in-place operations in the following steps. As numpy and torch differ in their implementations I like the agnostic `(A * torch.ones(K, 1, 1)))` followed by a transpose.