**Q:** *Are random variables acting as a tool for us to be able to create multiple iterations (to measure and average) of an otherwise deterministic experiment?* An answer has two ingredients: - firstly, many deterministic questions can be formulated as asking for the expectation of a random variable. For example, the integral $\int_a^b f(x)dx$ is the expectation of $(b-a)f(x)$ for a random variable $x$ which is uniformly distributed in the interval $(a,b)$. - secondly, the law of large numbers allows us to approximate the expectation by random sampling. This is the essence of the Monte Carlo method. A further refinement could then be to reduce the variance of the estimator (<A HREF="https://en.wikipedia.org/wiki/Importance_sampling">importance sampling</A>). --- Follow-up question: *Why doesn't each iteration simply add random noise to the data?* **A:** After $N$ iterations, the signal has increased by a factor $N$, while the uncertainty due to the noise has increased by a factor $\sqrt N$, hence the *relative* uncertainty, which is what matters for the expectation, decays as $1/\sqrt N$.