Considering the example code.

I would like to know How to apply gradient clipping on this network on the RNN where there is a possibility of exploding gradients.

```
tf.clip_by_value(t, clip_value_min, clip_value_max, name=None)
```

This is an example that could be used but where do I introduce this ? In the def of RNN

```
lstm_cell = rnn_cell.BasicLSTMCell(n_hidden, forget_bias=1.0)
# Split data because rnn cell needs a list of inputs for the RNN inner loop
_X = tf.split(0, n_steps, _X) # n_steps
tf.clip_by_value(_X, -1, 1, name=None)
```

But this doesn't make sense as the tensor _X is the input and not the grad what is to be clipped?

Do I have to define my own Optimizer for this or is there a simpler option?