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Deep Learning Quick Reference
book

Deep Learning Quick Reference

by Mike Bernico
March 2018
Intermediate to advanced
272 pages
7h 53m
English
Packt Publishing
Content preview from Deep Learning Quick Reference

Lunar Lander network architecture

The architecture for my Lunar Lander agent is only slightly more complicated than for CartPole, introducing just a few more neurons for the same three hidden layers. We will use the following code to define the model:

def build_model(state_size, num_actions):    input = Input(shape=(1, state_size))    x = Flatten()(input)    x = Dense(64, activation='relu')(x)    x = Dense(32, activation='relu')(x)    x = Dense(16, activation='relu')(x)    output = Dense(num_actions, activation='linear')(x)    model = Model(inputs=input, outputs=output)    print(model.summary())    return model

In the case of this problem, smaller architectures resulted in an agent that learned to control and hover the lander, but not actually land it. Of course, because ...

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Publisher Resources

ISBN: 9781788837996Supplemental Content