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CriticNetwork.py
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import tensorflow.compat.v1 as tf
tf.disable_v2_behavior()
import tensorflow.compat.v1.keras.backend as K
from tensorflow.keras.models import Model
from tensorflow.keras.layers import Dense, Input
from keras.optimizer_v2.adam import Adam
# from tensorflow.python.keras.optimizer_v2.adam import Adam
from tensorflow.keras.layers import add
HIDDEN1_UNITS = 300
HIDDEN2_UNITS = 600
class CriticNetwork(object):
def __init__(self, sess, state_size, action_size, BATCH_SIZE, TAU, LEARNING_RATE):
self.sess = sess
self.BATCH_SIZE = BATCH_SIZE
self.TAU = TAU
self.LEARNING_RATE = LEARNING_RATE
self.action_size = action_size
K.set_session(sess)
# Now create the model
self.model, self.action, self.state = self.create_critic_network(state_size, action_size)
self.target_model, self.target_action, self.target_state = self.create_critic_network(state_size, action_size)
self.action_grads = tf.gradients(self.model.output, self.action) # GRADIENTS for policy update
self.sess.run(tf.initialize_all_variables())
def gradients(self, states, actions):
return self.sess.run(self.action_grads, feed_dict={
self.state: states,
self.action: actions
})[0]
def target_train(self):
critic_weights = self.model.get_weights()
critic_target_weights = self.target_model.get_weights()
for i in range(len(critic_weights)):
critic_target_weights[i] = self.TAU * critic_weights[i] + (1 - self.TAU) * critic_target_weights[i]
self.target_model.set_weights(critic_target_weights)
def create_critic_network(self, state_size,action_dim):
print("Now we build the model")
S = Input(shape=[state_size])
A = Input(shape=[action_dim], name='action2')
w1 = Dense(HIDDEN1_UNITS, activation='relu')(S)
a1 = Dense(HIDDEN2_UNITS, activation='linear')(A)
h1 = Dense(HIDDEN2_UNITS, activation='linear')(w1)
# h2 = merge([h1, a1], mode='sum')
h2 = add([h1, a1])
h3 = Dense(HIDDEN2_UNITS, activation='relu')(h2)
V = Dense(action_dim, activation='linear')(h3)
model = Model(inputs=[S, A], outputs=V)
adam = Adam(lr=self.LEARNING_RATE)
model.compile(loss='mse', optimizer=adam)
return model, A, S