Book Image

Python Machine Learning - Third Edition

By : Sebastian Raschka, Vahid Mirjalili
5 (1)
Book Image

Python Machine Learning - Third Edition

5 (1)
By: Sebastian Raschka, Vahid Mirjalili

Overview of this book

Python Machine Learning, Third Edition is a comprehensive guide to machine learning and deep learning with Python. It acts as both a step-by-step tutorial, and a reference you'll keep coming back to as you build your machine learning systems. Packed with clear explanations, visualizations, and working examples, the book covers all the essential machine learning techniques in depth. While some books teach you only to follow instructions, with this machine learning book, Raschka and Mirjalili teach the principles behind machine learning, allowing you to build models and applications for yourself. Updated for TensorFlow 2.0, this new third edition introduces readers to its new Keras API features, as well as the latest additions to scikit-learn. It's also expanded to cover cutting-edge reinforcement learning techniques based on deep learning, as well as an introduction to GANs. Finally, this book also explores a subfield of natural language processing (NLP) called sentiment analysis, helping you learn how to use machine learning algorithms to classify documents. This book is your companion to machine learning with Python, whether you're a Python developer new to machine learning or want to deepen your knowledge of the latest developments.
Table of Contents (21 chapters)
20
Index

Summary

In this chapter, we covered TensorFlow's most essential and useful features. We started by discussing the migration from TensorFlow v1.x to v2. In particular, we used TensorFlow's dynamic computation graph approach, the so-called eager execution mode, which makes implementing computations more convenient compared to using static graphs. We also covered the semantics of defining TensorFlow Variable objects as model parameters, annotating Python functions using the tf.function decorator to improve computational efficiency via graph compilation.

After we considered the concept of computing partial derivatives and gradients of arbitrary functions, we covered the Keras API in more detail. It provides us with a user-friendly interface for building more complex deep NN models. Finally, we utilized TensorFlow's tf.estimator API to provide a consistent interface that is typically preferred in production environments. We concluded this chapter by converting a Keras...