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Mastering PyTorch

You're reading from   Mastering PyTorch Build powerful neural network architectures using advanced PyTorch 1.x features

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Product type Paperback
Published in Feb 2021
Publisher Packt
ISBN-13 9781789614381
Length 450 pages
Edition 1st Edition
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Author (1):
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Ashish Ranjan Jha Ashish Ranjan Jha
Author Profile Icon Ashish Ranjan Jha
Ashish Ranjan Jha
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Table of Contents (20) Chapters Close

Preface 1. Section 1: PyTorch Overview
2. Chapter 1: Overview of Deep Learning using PyTorch FREE CHAPTER 3. Chapter 2: Combining CNNs and LSTMs 4. Section 2: Working with Advanced Neural Network Architectures
5. Chapter 3: Deep CNN Architectures 6. Chapter 4: Deep Recurrent Model Architectures 7. Chapter 5: Hybrid Advanced Models 8. Section 3: Generative Models and Deep Reinforcement Learning
9. Chapter 6: Music and Text Generation with PyTorch 10. Chapter 7: Neural Style Transfer 11. Chapter 8: Deep Convolutional GANs 12. Chapter 9: Deep Reinforcement Learning 13. Section 4: PyTorch in Production Systems
14. Chapter 10: Operationalizing PyTorch Models into Production 15. Chapter 11: Distributed Training 16. Chapter 12: PyTorch and AutoML 17. Chapter 13: PyTorch and Explainable AI 18. Chapter 14: Rapid Prototyping with PyTorch 19. Other Books You May Enjoy

Chapter 4: Deep Recurrent Model Architectures

Neural networks are powerful machine learning tools that are used to help us learn complex patterns between the inputs (X) and outputs (y) of a dataset. In the previous chapter, we discussed convolutional neural networks, which learn a one-to-one mapping between X and y; that is, each input, X, is independent of the other inputs and each output, y, is independent of the other outputs of the dataset.

In this chapter, we will discuss a class of neural networks that can model sequences where X (or y) is not just a single independent data point, but a temporal sequence of data points [X1, X2, .. Xt] (or [y1, y2, .. yt]). Note that X2 (which is the data point at time step 2) is dependent on X1, X3 is dependent on X2 and X1, and so on.

Such networks are classified as recurrent neural networks (RNNs). These networks are capable of modeling the temporal aspect of data by including additional weights in the model that create cycles in the...

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