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You're reading from  Mastering PyTorch

Product typeBook
Published inFeb 2021
Reading LevelIntermediate
PublisherPackt
ISBN-139781789614381
Edition1st Edition
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Author (1)
Ashish Ranjan Jha
Ashish Ranjan Jha
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Ashish Ranjan Jha

Ashish Ranjan Jha received his bachelor's degree in electrical engineering from IIT Roorkee (India), a master's degree in Computer Science from EPFL (Switzerland), and an MBA degree from Quantic School of Business (Washington). He has received a distinction in all 3 of his degrees. He has worked for large technology companies, including Oracle and Sony as well as the more recent tech unicorns such as Revolut, mostly focused on artificial intelligence. He currently works as a machine learning engineer. Ashish has worked on a range of products and projects, from developing an app that uses sensor data to predict the mode of transport to detecting fraud in car damage insurance claims. Besides being an author, machine learning engineer, and data scientist, he also blogs frequently on his personal blog site about the latest research and engineering topics around machine learning.
Read more about Ashish Ranjan Jha

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Summary

RL is one of the fundamental branches of machine learning and is currently one of the hottest, if not the hottest, areas of research and development. RL-based AI breakthroughs such as AlphaGo from Google's DeepMind have further increased enthusiasm and interest in the field. This chapter provided an overview of RL and DRL and walked us through a hands-on exercise of building a DQN model using PyTorch.

First, we briefly review the basic concepts of RL. We then explored the different kinds of RL algorithms that have been developed over the years. We took a closer look at one such RL algorithm – the Q-learning algorithm. We then discussed the theory behind Q-learning, including the Bellman equation and the epsilon-greedy-action mechanism. We also explained how Q-learning differs from other RL algorithms, such as policy optimization methods.

Next, we explored a specific type of Q-learning model – the deep Q-learning model. We discussed the key concepts...

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Mastering PyTorch
Published in: Feb 2021Publisher: PacktISBN-13: 9781789614381

Author (1)

author image
Ashish Ranjan Jha

Ashish Ranjan Jha received his bachelor's degree in electrical engineering from IIT Roorkee (India), a master's degree in Computer Science from EPFL (Switzerland), and an MBA degree from Quantic School of Business (Washington). He has received a distinction in all 3 of his degrees. He has worked for large technology companies, including Oracle and Sony as well as the more recent tech unicorns such as Revolut, mostly focused on artificial intelligence. He currently works as a machine learning engineer. Ashish has worked on a range of products and projects, from developing an app that uses sensor data to predict the mode of transport to detecting fraud in car damage insurance claims. Besides being an author, machine learning engineer, and data scientist, he also blogs frequently on his personal blog site about the latest research and engineering topics around machine learning.
Read more about Ashish Ranjan Jha