Description
Data visualization plays a major role in solving data science challenges with various capabilities it offers. This book aims to equip you with a sound knowledge of Python in conjunction with the concepts you need to master to succeed as a data visualization expert.
The book starts with a brief introduction to the world of data visualization and talks about why it is important, the history of visualization, and the capabilities it offers. You will learn how to do simple Python-based visualization with examples with progressive complexity of key features. The book starts with Matplotlib and explores the power of data visualization with over 50 examples. It then explores the power of data visualization using one of the popular exploratory data analysis-oriented libraries, Pandas.
The book talks about statistically inclined data visualization libraries such as Seaborn. The book also teaches how we can leverage bokeh and Plotly for interactive data visualization. Each chapter is enriched and loaded with 30+ examples that will guide you in learning everything about data visualization and storytelling of mixed datasets.
What you will learn
â— Learn to work with popular Python libraries and frameworks, including Seaborn, Bokeh, and Plotly.
â— Practice your data visualization understanding across numerous datasets and real examples.
â— Learn to visualize geospatial and time-series datasets.
â— Perform correlation and EDA analysis using Pandas and Matplotlib.
Who this book is for
This book is for all data analytics professionals, data scientists, and data mining hobbyists who want to be strong data visualizers by learning all the popular Python data visualization libraries. Prior working knowledge of Python is assumed.
Table of Contents
1. Introduction to Data Visualization
2. Why Data Visualization
3. Various Data Visualization Elements and Tools
4. Using Matplotlib with Python
5. Using NumPy and Pandas for Plotting
6. Using Seaborn for Visualization
7. Using Bokeh with Python
8. Using Plotly, Folium, and Other Tools for Data Visualization
9. Hands-on Examples and Exercises, Case Studies, and Further Resources
Key Features
â— Exciting coverage on loads of Python libraries, including Matplotlib, Seaborn, Pandas, and Plotly.
â— Tons of examples, illustrations, and use-cases to demonstrate visual storytelling of varied datasets.
â— Covers a strong fundamental understanding of exploratory data analysis (EDA), statistical modeling, and data mining.
Book Details
Language: English
Published: 2021
ISBN: 9391030076
Format: True EPUB