# way for multiplication of these tensors with gradients

I have a function with two inputs: heat maps and feature maps. The heatmaps have a shape of `(20, 14, 64, 64)` and the feature maps have a shape of `(20, 64, 64, 64)`. Where `20` is the batch size and `14` is the number of key points. Both heatmaps and feature maps have spatial dimensions of `64x64` and the featuremaps have `64` channels (on the second dimension).

Now I need to multiply each heatmap by each channel of the feature maps. So the first heatmap has to be multiplied by all `64` channels of the feature maps. The second with all channels, and so on.

After that, I should have a tensor of shape `(20, 14, 64, 64, 64)` on which I need to apply global max-pooling.

The problem is now that I can't create a new tensor to do that, because the gradients of the heatmaps and feature maps must be preserved.

My actual (slow and not-gradient-keeping) code is:

``````def get_keypoint_representation(self, heatmaps, features):
heatmaps = heatmaps[0]
pool = torch.nn.MaxPool2d(features.shape[2])
features = features[:, None, :, :, :]
features = features.expand(-1, 14, -1, -1, -1).clone()

for i in range(self.cfg.SINGLE_GPU_BATCH_SIZE):
for j in range(self.cfg.NUM_JOINTS):
for k in range(features.shape[2]):
features[i][j][k] = torch.matmul(heatmaps[i][j], features[i][j][k])

gmp = features.amax(dim=(-1, -2))
return gmp
``````

Given a tensor of heatmaps `hm` shaped `(b, k, h, w)` and a feature tensor `fm` shaped `(b, c, h, w)`.

You can perform such an operation with a single `einsum` operator

``````>>> z = torch.einsum('bkhw,bchw->bkchw', hm, FM)
>>> z.shape
torch.Size([20, 14, 64, 64, 64])
``````

Then follow with a max-pooling operation over the spatial dimensions using `amax`:

`````` >>> gmp = z.amax(dim=(-1,-2))
>>> gmp.shape
torch.Size([20, 14, 64])
``````
• Wow, that's a lot shorter than mine version ^^ But I get differnt results from your and mine version. So im not sure, that einsum does what I want. The tensors have to be multiplicated, but einsum sums it? Commented Jun 1, 2022 at 13:14
• Can you provide a minimal example with both inputs and the expected output?
– Ivan
Commented Jun 1, 2022 at 13:18
• I don't know if this example covers all cases, but: hm: (1, 1, 3, 3) with values (2, 4, 6, 1, 3, 5, 7, 8, 9) and ft: (1, 2, 3, 3) with values (1, 6, 4, 7, 2, 8, 5, 9, 3) and (1, 2, 3, 4, 5, 6, 7, 8, 9). Result should be res: (1, 2, 3, 3) with values (2, 24, 24, 7, 6, 40, 35, 72, 27) and (2, 8, 18, 4, 15, 30, 49, 64, 81) Commented Jun 1, 2022 at 13:32
• That's because I max pooled along the spatial dimensions, this seems to be the case in your figure. Are you sure this is what you want? Shouldn't your resulting tensor be `batch_size` x `channel` x `keypoints`?
– Ivan
Commented Jun 1, 2022 at 14:52
• Worked. Sorry, was a bit confused :D Thank you for your help and your patience :) Commented Jun 1, 2022 at 16:31