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Codeless Deep Learning with KNIME

You're reading from   Codeless Deep Learning with KNIME Build, train, and deploy various deep neural network architectures using KNIME Analytics Platform

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Product type Paperback
Published in Nov 2020
Publisher Packt
ISBN-13 9781800566613
Length 384 pages
Edition 1st Edition
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Authors (3):
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Kathrin Melcher Kathrin Melcher
Author Profile Icon Kathrin Melcher
Kathrin Melcher
KNIME AG KNIME AG
Author Profile Icon KNIME AG
KNIME AG
Rosaria Silipo Rosaria Silipo
Author Profile Icon Rosaria Silipo
Rosaria Silipo
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Toc

Table of Contents (16) Chapters Close

Preface 1. Section 1: Feedforward Neural Networks and KNIME Deep Learning Extension
2. Chapter 1: Introduction to Deep Learning with KNIME Analytics Platform FREE CHAPTER 3. Chapter 2: Data Access and Preprocessing with KNIME Analytics Platform 4. Chapter 3: Getting Started with Neural Networks 5. Chapter 4: Building and Training a Feedforward Neural Network 6. Section 2: Deep Learning Networks
7. Chapter 5: Autoencoder for Fraud Detection 8. Chapter 6: Recurrent Neural Networks for Demand Prediction 9. Chapter 7: Implementing NLP Applications 10. Chapter 8: Neural Machine Translation 11. Chapter 9: Convolutional Neural Networks for Image Classification 12. Section 3: Deployment and Productionizing
13. Chapter 10: Deploying a Deep Learning Network 14. Chapter 11: Best Practices and Other Deployment Options 15. Other Books You May Enjoy

Summary

In this chapter, we explored the topic of neural machine translation and trained a network to produce English-to-German translations.

We started with an introduction to automatic machine translation, covering its history from rule-based machine translation to neural machine translation. Next, we introduced the concept of encoder-decoder RNN-based architectures, which can be used for neural machine translation. In general, encoder-decoder architectures can be used for sequence-to-sequence prediction tasks or question-answer systems.

After that, we covered all the steps needed to train and apply a neural machine translation model at the character level, using a simple network structure with only one LSTM unit for both the encoder and decoder. The joint network, derived from the combination of the encoder and decoder, was trained using a teacher forcing paradigm.

At the end of the training phase and before deployment, a lambda layer was inserted in the decoder part to...

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