## Update with `tf.layers`

If you use the `tf.layers`

module to build your network, you can simply use the argument `reuse=True`

for the second part of the Siamese network:

```
x = tf.ones((1, 3))
y1 = tf.layers.dense(x, 4, name='h1')
y2 = tf.layers.dense(x, 4, name='h1', reuse=True)
# y1 and y2 will evaluate to the same values
sess = tf.Session()
sess.run(tf.global_variables_initializer())
print(sess.run(y1))
print(sess.run(y2)) # both prints will return the same values
```

## Old answer with `tf.get_variable`

You can try using the function `tf.get_variable()`

. (See the tutorial)

Implement the first network using a variable scope with `reuse=False`

:

```
with tf.variable_scope('Inference', reuse=False):
weights_1 = tf.get_variable('weights', shape=[1, 1],
initializer=...)
output_1 = weights_1 * input_1
```

Then implement the second with the same code except using `reuse=True`

```
with tf.variable_scope('Inference', reuse=True):
weights_2 = tf.get_variable('weights')
output_2 = weights_2 * input_2
```

The first implementation will create and initialize every variable of the LSTM, whereas the second implementation will use `tf.get_variable()`

to get the same variables used in the first network. That way, variables will be **shared**.

Then you just have to use whatever loss you want (e.g. you can use the L2 distance between the two siamese networks), and the gradients will backpropagate through both networks, updating the shared variables with the **sum of the gradients**.