Book Image

Python Deep Learning

By : Valentino Zocca, Gianmario Spacagna, Daniel Slater, Peter Roelants
Book Image

Python Deep Learning

By: Valentino Zocca, Gianmario Spacagna, Daniel Slater, Peter Roelants

Overview of this book

With an increasing interest in AI around the world, deep learning has attracted a great deal of public attention. Every day, deep learning algorithms are used broadly across different industries. The book will give you all the practical information available on the subject, including the best practices, using real-world use cases. You will learn to recognize and extract information to increase predictive accuracy and optimize results. Starting with a quick recap of important machine learning concepts, the book will delve straight into deep learning principles using Sci-kit learn. Moving ahead, you will learn to use the latest open source libraries such as Theano, Keras, Google's TensorFlow, and H20. Use this guide to uncover the difficulties of pattern recognition, scaling data with greater accuracy and discussing deep learning algorithms and techniques. Whether you want to dive deeper into Deep Learning, or want to investigate how to get more out of this powerful technology, you’ll find everything inside.
Table of Contents (18 chapters)
Python Deep Learning
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface
Index

Summary


Anomaly detection is a very common problem that can be found in many applications.

At the start of this chapter, we described a few possible use cases and highlighted the major types and differences according to the context and application requirements.

We briefly covered some of the popular techniques for solving anomaly detection using shallow machine learning algorithms. The major differences can be found in the way features are generated. In shallow machine learning, this is generally a manual task, also called feature engineering. The advantage of using deep learning is that it can automatically learn smart data representations in an unsupervised fashion. Good data representations can substantially help the detection model to spot anomalies.

We have provided an overview of H2O and summarized its functionalities for deep learning, in particular the auto-encoders.

We have implemented a couple of proof-of-concept examples in order to learn how to apply auto-encoders for solving anomaly...