I wanna draw the weights of tf.layers.dense in tensorboard histogram, but it not show in the parameter, how could I do that?
The weights are added as a variable named
kernel, so you could use
x = tf.dense(...) weights = tf.get_default_graph().get_tensor_by_name( os.path.split(x.name) + '/kernel:0')
You can obviously replace
tf.get_default_graph() by any other graph you are working in.
I came across this problem and just solved it.
tf.layers.dense 's name is not necessary to be the same with the kernel's name's prefix. My tensor is "dense_2/xxx" but it's kernel is "dense_1/kernel:0". To ensure that
tf.get_variable works, you'd better set the
name=xxx in the
tf.layers.dense function to make two names owning same prefix. It works as the demo below:
l=tf.layers.dense(input_tf_xxx,300,name='ip1') with tf.variable_scope('ip1', reuse=True): w = tf.get_variable('kernel')
By the way, my tf version is 1.3.
The latest tensorflow layers api creates all the variables using the
tf.get_variable call. This ensures that if you wish to use the variable again, you can just use the
tf.get_variable function and provide the name of the variable that you wish to obtain.
In the case of a
tf.layers.dense, the variable is created as:
layer_name/kernel. So, you can obtain the variable by saying:
with tf.variable_scope("layer_name", reuse=True): weights = tf.get_variable("kernel") # do not specify # the shape here or it will confuse tensorflow into creating a new one.
[Edit]: The new version of Tensorflow now has both Functional and Object-Oriented interfaces to the layers api. If you need the layers only for computational purposes, then using the functional api is a good choice. The function names start with small letters for instance ->
tf.layers.dense(...). The Layer Objects can be created using capital first letters e.g. ->
tf.layers.Dense(...). Once you have a handle to this layer object, you can use all of its functionality. For obtaining the weights, just use
obj.trainable_weights this returns a list of all the trainable variables found in that layer's scope.
I am going crazy with tensorflow.
I run this:
after training, and I get the weights.
Comes from the properties described here.
I am saying that I am going crazy because it seems that there are a million slightly different ways to do something in tf, and that fragments the tutorials around.
Is there anything wrong with
After I create a model, compile it and run fit, this function returns a numpy array of the weights for me.
In TF 2 if you're inside a @tf.function (graph mode):
weights = optimizer.weights
If you're in eager mode (default in TF2 except in @tf.function decorated functions):
weights = optimizer.get_weights()