This document discusses hypothesis testing using z- and t-tests. It begins by introducing key concepts like sampling distributions and the central limit theorem. It explains that as sample size increases, the sampling distribution of the mean approaches a normal distribution, even if the population is not normally distributed. It then provides an example to illustrate these concepts using a small population. The document discusses how the central limit theorem can be used to determine if a sampling distribution is approximately normal. It also explains that the rule of needing a sample size of 30 refers to approximating the t-distribution with the normal distribution, not the sampling distribution itself. Finally, it works through an example problem using a sampling distribution to solve a hypothesis test with a z-score.