This chapter discusses how properties of OLS estimators change as the sample size increases. It states that OLS estimators are consistent, meaning their probability of being close to the true population values approaches 1 as the sample size increases, assuming the explanatory variables are uncorrelated with the error term. The chapter also describes how OLS estimators are asymptotically normally distributed even if the errors are not normally distributed, allowing t-tests and F-tests to be valid in large samples. It provides a theorem demonstrating asymptotic normality of OLS under standard assumptions.