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
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Problem 4 – Using Python to create models of housing data

Let's take a look at a problem where we want to display trends and information about the housing market in Brooklyn, New York. The dataset includes information from the NYC Housing Sales Data for 2003-2017. The dataset used has the information merged in a usable format and can be found on Kaggle here (https://www.kaggle.com/tianhwu/brooklynhomes2003to2017). In addition, a copy of the .csv file can be found in the GitHub repository under the name brooklyn_sales_map.csv.

Defining the problem

We have a large data file for this particular problem. We can look at information by neighborhood, sale prices by year, compare the year built to the neighborhood to find trends, history, and so on. We could spend hours, days, and weeks just on this one dataset. So let's try to focus our energy into what we are going to accomplish with this example. For this, we're going to create two visual models. The first is...