Let's say I have two tensors, whose shapes are `[b, n]`

and `[b, n, m]`

respectively. These can be interpreted as a batch of input vectors each of shape `[n]`

and a batch of weight matrices each of shape `[n, m]`

, where the batch size is `b`

. I would like to pair these up element-wise across the first dimension, so each input vector has a corresponding weight matrix, and then multiply each input by its weights, resulting in a tensor of shape `[b, m]`

.

In normal Python I suspect this would look something like

`output_list = [matmul(w, i) for w, i in zip(weight_list, input_list)]`

but haven't been able to find a Tensorflow analogue; is there a way of doing this?