Book Image

Hands-On Deep Learning Architectures with Python

By : Yuxi (Hayden) Liu, Saransh Mehta
Book Image

Hands-On Deep Learning Architectures with Python

By: Yuxi (Hayden) Liu, Saransh Mehta

Overview of this book

Deep learning architectures are composed of multilevel nonlinear operations that represent high-level abstractions; this allows you to learn useful feature representations from the data. This book will help you learn and implement deep learning architectures to resolve various deep learning research problems. Hands-On Deep Learning Architectures with Python explains the essential learning algorithms used for deep and shallow architectures. Packed with practical implementations and ideas to help you build efficient artificial intelligence systems (AI), this book will help you learn how neural networks play a major role in building deep architectures. You will understand various deep learning architectures (such as AlexNet, VGG Net, GoogleNet) with easy-to-follow code and diagrams. In addition to this, the book will also guide you in building and training various deep architectures such as the Boltzmann mechanism, autoencoders, convolutional neural networks (CNNs), recurrent neural networks (RNNs), natural language processing (NLP), GAN, and more—all with practical implementations. By the end of this book, you will be able to construct deep models using popular frameworks and datasets with the required design patterns for each architecture. You will be ready to explore the potential of deep architectures in today's world.
Table of Contents (15 chapters)
Free Chapter
1
Section 1: The Elements of Deep Learning
5
Section 2: Convolutional Neural Networks
8
Section 3: Sequence Modeling
10
Section 4: Generative Adversarial Networks (GANs)
12
Section 5: The Future of Deep Learning and Advanced Artificial Intelligence

New Trends of Deep Learning

In the first seven chapters of this book, deep neural networks with varied architectures have demonstrated their ability to learn from image, text, and transactional data. Even though deep learning has been developing rapidly over recent years, its evolution doesn't seem to be decelerating anytime soon. We are seeing new deep learning architectures being proposed almost every month, and new solutions becoming state-of-the-art every now and then. Hence, in this last chapter, we would like to talk about a few ideas in deep learning that we found to be impactful this year and that should be more prominent in the future.

In this chapter, we will look at the following topics:

  • Bayesian neural networks
  • Limitation of deep learning models
  • Implementation of Bayesian neural networks
  • Capsule networks
  • Limitation of convolutional neural network (CNNs)
  • ...