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Python Data Analysis for Beginners: A Beginner's Handbook to Exploring and Visualizing Data (eBook)

Autor: Brian Murray
CHF 4.00
ISBN: 979-8-223-86368-7
Einband: Adobe Digital Editions
Verfügbarkeit: Download, sofort verfügbar (Link per E-Mail)
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Python Data Analysis for Beginners: A Beginner's Handbook to Exploring and Visualizing Data is a comprehensive guide designed to help readers master the fundamentals of data analysis using the Python programming language. Whether you're a beginner looking to get started with data analysis, or a professional looking to expand your skill set, this book provides a step-by-step approach to exploring and visualizing data with Python.

The book starts with an introduction to Python programming language and its essential libraries for data analysis. Readers will learn how to manipulate and transform data using Pandas library, and how to create visualizations using Matplotlib and Seaborn libraries. The book also covers exploratory data analysis (EDA) techniques using Python, including data preprocessing and visualization techniques.

In addition, the book introduces readers to machine learning concepts and provides an overview of supervised and unsupervised learning using Python. The book includes several case studies and real-world applications of data analysis using Python, including analyzing and visualizing social media data, financial data, and healthcare data.

Written in a clear and concise language, Python Data Analysis for Beginners provides readers with a solid foundation in data analysis using Python. The book is suitable for self-learners, as well as instructors teaching data analysis to students. With its step-by-step approach and real-world examples, this book is an essential resource for anyone looking to master data analysis with Python.

Autor Brian Murray
Verlag May Reads
Einband Adobe Digital Editions
Erscheinungsjahr 2024
Lieferstatus
Ausgabekennzeichen Englisch
Masse 217 KB
Plattform EPUB

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