I would like to broadcast a `tf.matmul`

operation between two tensors of ranks 2 and 3, one of which contains an "unknown" shaped dimension (basically a 'None' value in a particular dimension).

The problem is that with dynamic dimensions `tf.reshape`

and `tf.broadcast_to`

don't seem to work.

```
x = tf.placeholder(shape=[None, 5, 10], dtype=tf.float32)
w = tf.ones([10, 20])
y = x @ w
with tf.Session() as sess:
r1 = sess.run(y, feed_dict={x: np.ones([3, 5, 10])})
r2 = sess.run(y, feed_dict={x: np.ones([7, 5, 10])})
```

Take the above code as an example. In this case I'm feeding two different batches of 3 and 7 elements each. I would like `r1`

and `r2`

to be the result of matrix-multiplying `w`

by each of the 3 or 7 elements from these batches. Therefore the resulting shapes for `r1`

and `r2`

respectively would be (3, 5, 20) and (7, 5, 20), but instead I'm getting:

ValueError: Shape must be rank 2 but is rank 3 for 'matmul' (op: 'MatMul') with input shapes: [?,5,10], [10,20].