Parametric Markov chains occur quite naturally in various applications: they
can be used for a conservative analysis of probabilistic systems (no matter how
the parameter is chosen, the system works to specification); they can be used
to find optimal settings for a parameter; they can be used to visualise the
influence of system parameters; and they can be used to make it easy to adjust
the analysis for the case that parameters change. Unfortunately, these
advancements come at a cost: parametric model checking is---or rather
was---often slow. To make the analysis of parametric Markov models scale, we
need three ingredients: clever algorithms, the right data structure, and good
engineering. Clever algorithms are often the main (or sole) selling point; and
we face the trouble that this paper focuses on -- the latter ingredients to
efficient model checking. Consequently, our easiest claim to fame is in the
speed-up we have often realised when comparing to the state of the art