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You're reading from  Deep Reinforcement Learning Hands-On. - Second Edition

Product typeBook
Published inJan 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781838826994
Edition2nd Edition
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Maxim Lapan
Maxim Lapan
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Maxim Lapan

Maxim has been working as a software developer for more than 20 years and was involved in various areas: distributed scientific computing, distributed systems and big data processing. Since 2014 he is actively using machine and deep learning to solve practical industrial tasks, such as NLP problems, RL for web crawling and web pages analysis. He has been living in Germany with his family.
Read more about Maxim Lapan

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The computation graph in PyTorch

Our first examples won't be around speeding up the baseline, but will show one common, and not always obvious, situation that can cost you performance. In Chapter 3, Deep Learning with PyTorch, we discussed the way PyTorch calculates gradients: it builds the graph of all operations that you perform on tensors, and when you call the backward() method of the final loss, all gradients in the model parameters are automatically calculated.

This works well, but RL code is normally much more complex than traditional supervised learning models, so the RL model that we are currently training is also being applied to get the actions that the agent needs to perform in the environment. The target network discussed in Chapter 6 makes it even more tricky. So, in DQN, a neural network (NN) is normally used in three different situations:

  1. When we want to calculate Q-values predicted by the network to get the loss in respect to reference Q-values approximated...
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Deep Reinforcement Learning Hands-On. - Second Edition
Published in: Jan 2020Publisher: PacktISBN-13: 9781838826994

Author (1)

author image
Maxim Lapan

Maxim has been working as a software developer for more than 20 years and was involved in various areas: distributed scientific computing, distributed systems and big data processing. Since 2014 he is actively using machine and deep learning to solve practical industrial tasks, such as NLP problems, RL for web crawling and web pages analysis. He has been living in Germany with his family.
Read more about Maxim Lapan