⏩Level up your univariate EDA (Exploratory Data Analysis) in Python using real, practical steps with pandas and simple plots. We focus on understanding a single variable’s center, spread, and shape—then tie it to intuition with z-scores and the Empirical Rule (68–95–99.7).
What you’ll learn:
Descriptive stats: min/max, range, mean, median, variance, standard deviation, IQR
Distribution shape: skewness and kurtosis for quick shape diagnostics
Outliers: quick checks via z-scores and IQR
Normality intuition: z-statistics and the Empirical Rule (when it applies)
Visual EDA: histogram/KDE and box plot (matplotlib/plotly) to match the numbers
Why watch:
Build a solid foundation before bivariate analysis (saved for the next video)
Learn how numeric summaries and visuals confirm each other
Get repeatable patterns for quick, trustworthy EDA in pandas
Prereqs: Basic Python and pandas. No heavy math—just clear, applied intuition.
“Next: Bivariate EDA—correlation and scatterplots” + playlist link.
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