Dive into a comprehensive 5.5-hour tutorial on statistics for data science, covering both descriptive and inferential statistics. Learn key concepts such as population and sampling techniques, variable types and measurement scales, measures of central tendency and dispersion, probability, hypothesis testing, and various statistical distributions. Explore practical applications with Python, including outlier detection and inferential statistics implementation. Master essential topics like confidence intervals, z-tests, t-tests, chi-square tests, and correlation analysis. Gain valuable insights for data analysis and interpretation, preparing you for real-world data science challenges and interview questions.