0

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?

1

tf.matmul can do a matmul over each training example in the batch. But you need to deal with some dimensions problem to achieve your goal.

import tensorflow as tf

b,n,m = 4,3,2
weight_list = tf.random.normal(shape=(b,n,m))
input_list = tf.random.normal(shape=(b,n))
result = tf.squeeze(tf.matmul(tf.expand_dims(input_list,axis=1),weight_list))
print(result.shape)

(4, 2)

Your Answer

By clicking "Post Your Answer", you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.