Book Image

Deep Learning Quick Reference

By : Mike Bernico
Book Image

Deep Learning Quick Reference

By: Mike Bernico

Overview of this book

Deep learning has become an essential necessity to enter the world of artificial intelligence. With this book deep learning techniques will become more accessible, practical, and relevant to practicing data scientists. It moves deep learning from academia to the real world through practical examples. You will learn how Tensor Board is used to monitor the training of deep neural networks and solve binary classification problems using deep learning. Readers will then learn to optimize hyperparameters in their deep learning models. The book then takes the readers through the practical implementation of training CNN's, RNN's, and LSTM's with word embeddings and seq2seq models from scratch. Later the book explores advanced topics such as Deep Q Network to solve an autonomous agent problem and how to use two adversarial networks to generate artificial images that appear real. For implementation purposes, we look at popular Python-based deep learning frameworks such as Keras and Tensorflow, Each chapter provides best practices and safe choices to help readers make the right decision while training deep neural networks. By the end of this book, you will be able to solve real-world problems quickly with deep neural networks.
Table of Contents (15 chapters)

Case studies for document classifications

Since I have presented two viable alternatives for document classifications, this chapter will contain two separate examples for document classification. Both will use embedding layers. One will use an LSTM and the other will use a CNN.

We will also compare the performance between learning an embedding layer and, starting with someone else's weights, applying a transfer learning approach.

The code for both of these examples can be found in the Chapter10 folder in the book's Git repo. Some of the data and the GloVe vectors will need to be downloaded separately. Instructions to do so exist in comments within the code.

Sentiment analysis with Keras embedding layers and LSTMs

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