This document discusses sampling and sample distributions. It begins by defining key concepts like population parameters, sample statistics, and sampling distributions. It explains that sampling distributions can be used to make inferences about populations. The document then discusses properties of sampling distributions, including how the mean and standard deviation of sample means relate to the population mean and standard deviation. It introduces the central limit theorem, stating that sampling distributions will approach a normal distribution as sample size increases. Examples are provided to demonstrate calculating probabilities involving sampling distributions.