Book Image

Python Deep Learning - Second Edition

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

Python Deep Learning - Second Edition

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

Overview of this book

With the surge in artificial intelligence in applications catering to both business and consumer needs, deep learning is more important than ever for meeting current and future market demands. With this book, you’ll explore deep learning, and learn how to put machine learning to use in your projects. This second edition of Python Deep Learning will get you up to speed with deep learning, deep neural networks, and how to train them with high-performance algorithms and popular Python frameworks. You’ll uncover different neural network architectures, such as convolutional networks, recurrent neural networks, long short-term memory (LSTM) networks, and capsule networks. You’ll also learn how to solve problems in the fields of computer vision, natural language processing (NLP), and speech recognition. You'll study generative model approaches such as variational autoencoders and Generative Adversarial Networks (GANs) to generate images. As you delve into newly evolved areas of reinforcement learning, you’ll gain an understanding of state-of-the-art algorithms that are the main components behind popular games Go, Atari, and Dota. By the end of the book, you will be well-versed with the theory of deep learning along with its real-world applications.
Table of Contents (12 chapters)

Summary

In this chapter, we discussed recurrent neural networks, how to train them, the training problems unique to RNNs, and how to solve those problems with LSTM and GRU. We described the task of language modeling and how RNNs help us solve some of the difficulties in modeling languages. Then, we put this all together in the form of a practical example on how to train a character-level language model to generate text based on Leo Tolstoy's War and Peace. Next, we introduced seq2seq models and the attention mechanism. Finally, we gave a brief overview of how to apply deep learning, and especially RNNs, to the problem of speech recognition.

In the next two chapters, we'll discuss how to teach a computer-controlled agent to navigate a physical or virtual environment with the help of reinforcement learning. Thanks to deep neural networks, this exciting ML area has seen...