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Book Overview & Buying
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Table Of Contents
Python Data Analysis - Fourth Edition
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In this chapter, we began with Matplotlib to build static visualizations and learned how chart elements such as titles, labels, legends, subplots, and annotations make figures clearer and more presentation-ready. We then used Pandas to create quick visual summaries directly from DataFrames, and Seaborn to produce statistically meaningful views of distributions, relationships, correlations, and group-level patterns with less code. In addition, we learned how to create interactive visualizations using Plotly, including features like hover interactions, zooming, dropdowns, sliders, custom buttons, and multi-layer plots. Finally, we introduced the Dash framework for building interactive web-based dashboards, enabling the development of applications with interactive charts, data tables, multi-page layouts, and real-time data updates.
Because this chapter covers several chart types and visualization libraries, it is useful to pause and compare when each option is most appropriate...