Book Image

The Python Workshop - Second Edition

By : Corey Wade, Mario Corchero Jiménez, Andrew Bird, Dr. Lau Cher Han, Graham Lee
4.7 (3)
Book Image

The Python Workshop - Second Edition

4.7 (3)
By: Corey Wade, Mario Corchero Jiménez, Andrew Bird, Dr. Lau Cher Han, Graham Lee

Overview of this book

Python is among the most popular programming languages in the world. It’s ideal for beginners because it’s easy to read and write, and for developers, because it’s widely available with a strong support community, extensive documentation, and phenomenal libraries – both built-in and user-contributed. This project-based course has been designed by a team of expert authors to get you up and running with Python. You’ll work though engaging projects that’ll enable you to leverage your newfound Python skills efficiently in technical jobs, personal projects, and job interviews. The book will help you gain an edge in data science, web development, and software development, preparing you to tackle real-world challenges in Python and pursue advanced topics on your own. Throughout the chapters, each component has been explicitly designed to engage and stimulate different parts of the brain so that you can retain and apply what you learn in the practical context with maximum impact. By completing the course from start to finish, you’ll walk away feeling capable of tackling any real-world Python development problem.
Table of Contents (16 chapters)
13
Chapter 13: The Evolution of Python – Discovering New Python Features

Your first deep learning model

Let’s use deep learning to predict the median house values in Boston to compare our results to the standard machine learning algorithms used in Chapter 11, Machine Learning.

First deep learning libraries

Before building your first deep learning model, let’s take a brief look at the libraries that we will import and use:

  • pandas: We need data to build a deep learning model, and pandas, Python’s data analytics library, will remain our standard from Chapter 10, Data Analytics with pandas and NumPy, and Chapter 11, Machine Learning, to read and view data.
  • train_test_split: We will use train_test_split as in Chapter 11, Machine Learning, to split the data into a training set and a test set.
  • TensorFlow: TensorFlow has become the gold standard in deep learning. Created by Google in 2015, TensorFlow is a free, open source library developed by Google Brain. TensorFlow works on its own, but it is also the backend for keras...