Parametric and nonparametric procedures are two broad classifications of statistical tests. Parametric tests make assumptions about the underlying data distribution, often assuming it is normal. Nonparametric tests do not rely on such distribution assumptions. If data strongly deviate from parametric assumptions, a nonparametric test may be more appropriate to avoid incorrect conclusions. However, nonparametric tests generally have less statistical power and their results can be harder to interpret. It is important to consider the assumptions of parametric tests and whether nonparametric alternatives should be used instead.