Section outline

    • Lecture content: Descriptive statistics: univariate data analysis (measures of central tendency, variability, skewness, and kurtosis), bivariate and multivariate data analysis (covariance, correlation), Data visualization (scatter and box plots, histograms).

      Tutorial content: Computing means, variances, and correlations (Python libraries: numpy and scipy); Plotting data points and visualizing data analysis results (Python libraries: matplotlib and seaborn).

      Homework: Basic (visual) exploratory description of a given dataset.