Given a tensor of `shape=[batch_size, max_time, 128]`

(the output of an RNN), for which `max_time`

may vary, I would like to apply a fully connected layer to project the data onto a `[batch_size, max_time, 10]`

shape.

The question is: do I need to reshape the input Tensor first, merging the first two dimensions, then apply tf.layers.dense, then reshape back to 3D? Or can I simply use tf.layers.dense on the 3D tensor to obtain an equivalent effect ?

I would like to have a single weight matrix shared for all the connections between the 128 RNN units and the 10 output classes, allowing at the same a variable length `max_time`

for each batch.