Book Image

Deep Learning for Beginners

By : Dr. Pablo Rivas
Book Image

Deep Learning for Beginners

By: Dr. Pablo Rivas

Overview of this book

With information on the web exponentially increasing, it has become more difficult than ever to navigate through everything to find reliable content that will help you get started with deep learning. This book is designed to help you if you're a beginner looking to work on deep learning and build deep learning models from scratch, and you already have the basic mathematical and programming knowledge required to get started. The book begins with a basic overview of machine learning, guiding you through setting up popular Python frameworks. You will also understand how to prepare data by cleaning and preprocessing it for deep learning, and gradually go on to explore neural networks. A dedicated section will give you insights into the working of neural networks by helping you get hands-on with training single and multiple layers of neurons. Later, you will cover popular neural network architectures such as CNNs, RNNs, AEs, VAEs, and GANs with the help of simple examples, and learn how to build models from scratch. At the end of each chapter, you will find a question and answer section to help you test what you've learned through the course of the book. By the end of this book, you'll be well-versed with deep learning concepts and have the knowledge you need to use specific algorithms with various tools for different tasks.
Table of Contents (20 chapters)
1
Section 1: Getting Up to Speed
8
Section 2: Unsupervised Deep Learning
13
Section 3: Supervised Deep Learning

Summary

This advanced chapter has shown you one of the most interesting and simpler models that is able to generate data from a learned distribution using the configuration of an autoencoder and by applying variational Bayes principles leading to a VAE. We looked at the pieces of the model itself and explained them in terms of input data from the Cleveland dataset. Then, we generated data from the learned parametric distribution, showing that VAEs can easily be used for this purpose. To prove the robustness of VAEs on shallow and deep configurations, we implemented a model over the MNIST dataset. The experiment proved that deeper architectures produce well-defined regions of data distributions as opposed to fuzzy groups in shallow architectures; however, both shallow and deep models are particularly good for the task of learning representations.

By this point, you should feel confident in identifying the pieces of a VAE and being able to tell the main differences between a traditional...