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Hands-On Deep Learning with Go

You're reading from   Hands-On Deep Learning with Go A practical guide to building and implementing neural network models using Go

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Product type Paperback
Published in Aug 2019
Publisher Packt
ISBN-13 9781789340990
Length 242 pages
Edition 1st Edition
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Authors (2):
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Darrell Chua Darrell Chua
Author Profile Icon Darrell Chua
Darrell Chua
Gareth Seneque Gareth Seneque
Author Profile Icon Gareth Seneque
Gareth Seneque
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Table of Contents (15) Chapters Close

Preface 1. Section 1: Deep Learning in Go, Neural Networks, and How to Train Them FREE CHAPTER
2. Introduction to Deep Learning in Go 3. What Is a Neural Network and How Do I Train One? 4. Beyond Basic Neural Networks - Autoencoders and RBMs 5. CUDA - GPU-Accelerated Training 6. Section 2: Implementing Deep Neural Network Architectures
7. Next Word Prediction with Recurrent Neural Networks 8. Object Recognition with Convolutional Neural Networks 9. Maze Solving with Deep Q-Networks 10. Generative Models with Variational Autoencoders 11. Section 3: Pipeline, Deployment, and Beyond!
12. Building a Deep Learning Pipeline 13. Scaling Deployment 14. Other Books You May Enjoy

Vanilla RNNs

According to their more utopian description, RNNs are able to do something that the networks we've covered so far cannot: remember. More precisely, in a simple network with a single hidden layer, the network's output, as well as the state of that hidden layer, are combined with the next element in a training sequence to form the input for a new network (with its own trainable, hidden state). A vanilla RNN can be visualized as follows:

Let's unpack this a bit. The two networks in the preceding diagram are two different representations of the same thing. One is in a Rolled state, which is simply an abstract representation of the computation graph, where an infinite number of timesteps is represented by (t). We then use the Unrolled RNN as we feed the network data and train it.

For a given forward pass, this network takes two inputs, where X is a representation...

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