Any answer will be a matter of opinion, but I have taught lots of courses using what I believe to be a fairly standard order of presentation. I think there are good reasons for it
and will discuss some of them.
Many elementary probability courses start with empirical discrete distributions. Proportions of various colors
of candy bits in a large package of M&M's Skittles, or whatever. Some combinatorial material provides a basis for a few elementary distributions. Some basic rules of of probability are discussed.
After that and a discussion of tossing fair
coins it is natural to get into a discussion of binomial distributions, which can involve some of the combinatorial
arguments and probability rules. Also, a proof or
discussion of the Law of Large numbers often appears at this point.
Next, depending on the level and applied nature of the course, it may be natural to discuss Poisson distributions as a limiting case of binomial one, and geometric and negative binomial distributions as waiting times for
events already discussed in a binomial context. and to consider hypergeometric distributions as a generalization of binomial distributions where trials are not independent.
At some point a bridge needs to be crossed to discuss
how continuous distributions differ fundamentally from discrete ones. Often starting with a brief mention of uniform distributions because of their mathematical simplicity, it is customary to spend a lot of time on
normal distributions, because of their widespread use
in applications, and because the Central Limit Theorem
shows (or illustrates) convergence to normal.
Then
a discussion of using normal distributions to approximate binomial probabilities seems mandatory. (At this point
it seems especially worthwhile nowadays to show how better results are available from statistical software.)
Next, some courses introduce exponential distributions, which are widely used in applications and are in many respects simpler to handle than normal distributions.
That can lead to a discussion of other gamma family distributions. If the course has any kind of Bayesian flavor, beta distributions are
often discussed as natural prior distributions for binomial success probabilities.
The specific distributions discussed later in the course depend on the purpose of the course in a theoretical or applied program. It is not possible in a single course
to deal with all of the distributions and relationships among them that are displayed on your link. From there
on there seems to be no traditional order as various
objectives are pursued.