Explore and Visualize Data the Python Way
In this course, you'll learn to uncover and communicate insights through powerful data visualization techniques. You'll master both static and interactive visualization tools, from Matplotlib and Seaborn to Plotly, while conducting thorough exploratory data analysis. Using the EngageMetrics and MediTrack datasets, you'll develop the skills to transform complex data into compelling visual stories that drive decision-making.
Upon completion, you'll be able to:
• Conduct EDA to summarize datasets by using descriptive statistics, identify patterns, and detect anomalies.
• Create static visualizations such as line plots, bar charts, boxplots, histograms, and scatter plots.
• Build interactive plots that allow user engagement.
• Integrate EDA and visualization techniques in a two‑part challenge that requires both static and interactive outputs.
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