I have been trying to get the trainable variables from my layers and can't figure out a way to make it work. So here is what I have tried:

I have tried accessing the kernel and bias attribute of the Dense or Conv2D object directly, but to no avail. The type of result that I get is "Dense object has no attribute 'kernel'".

```
trainable_variables.append(conv_layer.kernel)
trainable_variables.append(conv_layer.bias)
```

Similarly, I have tried using the attribute "trainable_variables" in the following way:

```
trainable_variables.extend(conv_layer.trainable_variables)
```

From what I know this is supposed to return a list of two variables, the weight and the bias variables. However, what I get is an empty list.

Any idea of how to get the variables from labels in TensorFlow 2.0? I want to be able to later feed those variables to an optimizer, in a way similar to the following:

```
gradients = tape.gradient(loss, trainable_variables)
optimizer.apply_gradients(zip(gradients, trainable_variables))
```

Edit: Here is part of my current code to serve as an example and help answering the question (Hope it is readable)

```
from tensorflow.keras.layers import Dense, Conv2D, Conv2DTranspose, Reshape, Flatten
...
class Network:
def __init__(self, params):
weights_initializer = tf.initializers.GlorotUniform(seed=params["seed"])
bias_initializer = tf.initializers.Constant(0.0)
self.trainable_variables = []
self.conv_layers = []
self.conv_activations = []
self.create_conv_layers(params, weights_initializer, bias_initializer)
self.flatten_layer = Flatten()
self.dense_layers = []
self.dense_activations = []
self.create_dense_layers(params, weights_initializer, bias_initializer)
self.output_layer = Dense(1, kernel_initializer=weights_initializer, bias_initializer=bias_initializer)
self.trainable_variables.append(self.output_layer.kernel)
self.trainable_variables.append(self.output_layer.bias)
def create_conv_layers(self, params, weight_init, bias_init):
nconv = len(params['stride'])
for i in range(nconv):
conv_layer = Conv2D(filters=params["nfilter"][i],
kernel_size=params["shape"][i], kernel_initializer=weight_init,
kernel_regularizer=spectral_norm,
use_bias=True, bias_initializer=bias_init,
strides=params["stride"][i],
padding="same", )
self.conv_layers.append(conv_layer)
self.trainable_variables.append(conv_layer.kernel)
self.trainable_variables.append(conv_layer.bias)
self.conv_activations.append(params["activation"])
def create_conv_layers(self, params, weight_init, bias_init):
nconv = len(params['stride'])
for i in range(nconv):
conv_layer = Conv2D(filters=params["nfilter"][i],
kernel_size=params["shape"][i], kernel_initializer=weight_init,
kernel_regularizer=spectral_norm,
use_bias=True, bias_initializer=bias_init,
strides=params["stride"][i],
padding="same", )
self.conv_layers.append(conv_layer)
self.trainable_variables.append(conv_layer.kernel)
self.trainable_variables.append(conv_layer.bias)
self.conv_activations.append(params["activation"])
```

As you can see I am trying to gather all my trainable variables into a list attribute called trainable_variables. However as I mentioned this code does not work because I get an error for trying to acquire the kernel and bias attributes of those layer objects.