Book Image

Applied Computational Thinking with Python

By : Sofía De Jesús, Dayrene Martinez
Book Image

Applied Computational Thinking with Python

By: Sofía De Jesús, Dayrene Martinez

Overview of this book

Computational thinking helps you to develop logical processing and algorithmic thinking while solving real-world problems across a wide range of domains. It's an essential skill that you should possess to keep ahead of the curve in this modern era of information technology. Developers can apply their knowledge of computational thinking to solve problems in multiple areas, including economics, mathematics, and artificial intelligence. This book begins by helping you get to grips with decomposition, pattern recognition, pattern generalization and abstraction, and algorithm design, along with teaching you how to apply these elements practically while designing solutions for challenging problems. You’ll then learn about various techniques involved in problem analysis, logical reasoning, algorithm design, clusters and classification, data analysis, and modeling, and understand how computational thinking elements can be used together with these aspects to design solutions. Toward the end, you will discover how to identify pitfalls in the solution design process and how to choose the right functionalities to create the best possible algorithmic solutions. By the end of this algorithm book, you will have gained the confidence to successfully apply computational thinking techniques to software development.
Table of Contents (21 chapters)
1
Section 1: Introduction to Computational Thinking
9
Section 2:Applying Python and Computational Thinking
14
Section 3:Data Processing, Analysis, and Applications Using Computational Thinking and Python
20
Other Books You May Enjoy

Using additional libraries for plotting and analysis

Before we end this chapter on experimental data, the use of libraries, and plotting and analyzing data, let's look at three more libraries that are helpful in data analysis and plotting. These are not the only libraries for analysis and plotting, nor will they be the only ones we explore throughout the rest of this book:

  • Seaborn is a library used for data visualization; built on top of Matplotlib.
  • SciPy is a library used for linear algebra, optimization, statistics, and more; built on top of NumPy.
  • Scikit-Learn is a library used in machine learning; part of the SciPy stack.

In the following chapters, we'll go deeper into the use of some of these libraries as we tackle some of the application problems that require their use. For now, let's take a quick look at what each of these libraries can help us with when looking at datasets.

Using the Seaborn library

The Seaborn library provides us...