The F test, named after the renowned statistician Sir Ronald Fisher, compares the difference between population variances of two normally distributed populations. The F test uses the F statistic, which is the ratio of the sample variances and, thus, is never negative. Generally, for ease of calculations, the numerator represents the higher sample variance while the denominator denotes the smaller sample variance. As the difference between the sample variances reduces, the F statistic gets closer to unity. Computing the F statistic for several random samples of two independent normally distributed populations, and plotting the F statistic yields the F distribution curve, an asymmetric curve, similar to the chi-square distribution curve. However, unlike the chi-square-based tests, the F distribution has two sets of degrees of freedom, one for the numerator and another for the denominator. The exact shape of the F distribution curve depends on these two degrees of freedom. This distribution is helpful in the F test and methods involving the comparison of variances, such as ANOVA.