Hypothesis testing involves making assumptions about population parameters and using sample data to evaluate these assumptions through null and alternative hypotheses. The document explores the concepts of Type I and Type II errors, detailing their implications with real-world examples, such as in clinical trials and court cases. It emphasizes that efforts to reduce one type of error may increase the other, highlighting the complexity of statistical decision-making.