This is a generic question. I found that in the tensorflow, after we build the graph, fetch data into the graph, the output from graph is a tensor. but in many cases, we need to do some computation based on this output (which is a `tensor`

), which is not allowed in tensorflow.

for example, I'm trying to implement a RNN, which loops times based on data self property. That is, I need use a `tensor`

to judge whether I should stop (I am not using dynamic_rnn since in my design, the rnn is highly customized). I find `tf.while_loop(cond,body.....)`

might be a candidate for my implementation. But the official tutorial is too simple. I don't know how to add more functionalities into the 'body'. Can anyone give me few more complex example?

Also, in such case that if the future computation is based on the tensor output (ex: the RNN stop based on the output criterion), which is very common case. Is there an elegant way or better way instead of dynamic graph?