I am struggling to apply the Tensorflow eager execution (TF2) in order to train the actor of the actor-critic DDPG algorithm. The description in this example explains:
Use the actor’s online network to get the action mean values using the current states as the inputs. Then, use the critic online network in order to get the gradients of the critic output with respect to the action mean values ∇aQ(s,a) | s=s_t,a=μ(s_t). Using the chain rule, calculate the gradients of the actor’s output, with respect to the actor weights, given ∇aQ(s,a). Finally, apply those gradients to the actor network.
Actor and Critic are both Keras models. Apologies for not posting the complete code, though I hope my problem is comprehensible from these relevant snippets.
def fit_actor(self, state):
action = self.predict_actor(state) #online actor
q_value = self.predict_critic(state, action) #online critic
param_gradient = self.tape_online_critic.gradient(q_value, [action])
#=> is alway [None], also for tape_online_actor
gradient = zip(param_gradient, self.online_actor.trainable_weights)
self.optimizer_actor.apply_gradients(gradient)
and in 'predict_critic' the critic is fed with the state and action so 'tape_online_critic' has operations
#for online critic and online actor
def predict_critic(self, state, actions):
with self.tape_online_critic as tape:
return self.online_critic([state, actions])
def predict_actor(self, state):
with self.tape_online_actor as tape:
return self.online_actor([state])
I tried almost every thinkable combination of variables/tapes etc. but I always a gradient of [None] and a ValueError.
ValueError: No gradients provided for any variable: ['conv2d_2/kernel:0']
- I am unsure about the order of the arguments for the tape.gradient() function or even the nature of the arguements itself.
- As I understand, I have to call the tape.gradient() function on the tape of the online actor in order to get the gradient for the weights of the actor with respect to the operations recorded in the predict_actor function within the with tape: context. Do I additionally have to tape.watch(someTensor) something there? The documentation says variables are automatically watched, so I'd assume no.
- Is tf.GradientTape even the right thing to use here? There is also tfe.gradients_function?
predict_critic
return the prediction in the scope ofself.tape_online_critic
? It's hard to give you a clear answer when we're unable to see the code. Have you tried looking at TF Custom Gradient walkthrough ?It would be helpful for everyone (yourself included) if you came up with a ssimplified example that we can run