The Object-Oriented Approach to Problem Solving and Machine Learning with Python
Document Type
Book
Source of Publication
Object Oriented Approach to Problem Solving and Machine Learning with Python
Publication Date
1-1-2025
Abstract
This book is a comprehensive guide suitable for beginners and experienced developers alike. It teaches readers how to master object-oriented programming (OOP) with Python and use it in real-world applications. Start by solidifying your OOP foundation with clear explanations of core concepts such as use cases and class diagrams. This book goes beyond theory as you get practical examples with well-documented source code available in the book and on GitHub. This book doesn’t stop at the basics. Explore how OOP empowers fields such as data persistence, graphical user interfaces (GUIs), machine learning, and data science, including social media analysis. Learn about machine learning algorithms for classification, regression, and unsupervised learning, putting you at the forefront of AI innovation. Each chapter is designed for hands-on learning. You’ll solidify your understanding with case studies, exercises, and projects that apply your newfound knowledge to real-world scenarios. The progressive structure ensures mastery, with each chapter building on the previous one, reinforced by exercises and projects. Numerous code examples and access to the source code enhance your learning experience. This book is your one-stop shop for mastering OOP with Python and venturing into the exciting world of machine learning and data science.
DOI Link
ISBN
[9781032668338, 9781040296066]
First Page
1
Last Page
304
Disciplines
Computer Sciences | Education
Keywords
Object-Oriented Programming, Machine Learning, Python, Data Science, Graphical User Interfaces
Scopus ID
Recommended Citation
Mathew, Sujith Samuel; Kuhail, Mohammad Amin; Hadid, Maha; and Farooq, Shahbano, "The Object-Oriented Approach to Problem Solving and Machine Learning with Python" (2025). All Works. 7307.
https://zuscholars.zu.ac.ae/works/7307
Indexed in Scopus
yes
Open Access
no