Modeling the idea of "equally-likely" in a continuous world requires a slightly different perspective since there are obviously infinitely many outcomes to consider. Instead, you should consider requiring that intervals in the domain which are of equal width should have the same probability regardless of where they are in that domain. This behaviour suggests
\begin{equation*}
P(u \lt X \lt v) = P(u + \Delta \lt X \lt v + \Delta)
\end{equation*}
for reasonable values of \(\Delta\) so that the interval remains inside \(R\text{.}\)
Theorem6.3.1.Continuous Uniform Probability Function.
For \(R\) = [a,b], with a < b, the continuous uniform probability function is given by
A man and a woman agree to meet at a cafe about noon. If the man arrives at a time uniformly distributed between \(11:30\) and \(12:15\) and if the woman independently arrives at a time uniformly distributed between \(11:55\) and \(12:40\text{,}\) what is the probability that the first to arrive waits no longer than \(5\) minutes?
Suppose you know that only one person showed up at the counter of a local business in a given 30 minute interval of time. Then, \(R\) = [0,30] given \(f(x) = 1/30\text{.}\)
Further, the probability that the person arrived within the first 6 minutes would be \(\int_0^6 \frac{1}{30} dx = 0.2\text{.}\)
Theorem6.3.8.Distribution Function for Continuous Uniform.