Design your tables according to simple and sound design principles that will make it easy to implement the rest of your system. Easy to build, populate, use, and administer the database. Easy and fast to run queries and updates against. Easy to revise and extend the table design when the situation calls for it, and unnecessary to do so for light and transient reasons.
One set of design principles is normalization. Normalization leads to tables that are easy and fast to update (including inserts and deletes). Normalization obviates update anomalies, and obviates the possiblity of a database that contradicts itself. This prevents a whole lot of bugs by making them impossible. It also prevents a whole lot of update bottlenecks by making them unnecessary. This is good.
There are other sets of design principles. They lead to table designs that are less than fully normalized. But that isn't "denormalization". It's just a different design, somewhat incompatible with normalization.
One set of design principles that leads to a radically different design from normalization is star schema design. Star schema is very fast for queries. Even large scale joins and aggregations can be done in a reasonable time, given a good DBMS, good physical design, and enough hardware to get the job done. As you might expect, a star schema suffers update anomalies. You have to program around these anomalies when you keep the database up to date. You will will generally need a tightly controlled and carefully built ETL process that updates the star schema from other (perhaps normalized) data sources.
Using data stored in a star schema is dramatically easy. It's so easy that using some kind of OLAP and reporting engine, you can get all the information needed without writing any code, and without sacrificing performance too much.
It takes good and somewhat deep data analysis to design a good normalized schema. Errors and omissions in data analysis may result in undiscovered functional dependencies. These undiscovered FDs will result in unwitting departures from normalization.
It also takes good and somewhat deep data analysis to design and build a good star schema. Errors and ommissions in data analysis may result in unfortunate choices in dimensions and granularity. This will make ETL almost impossible to build, and/or make the information carrying capacity of the star inadequate for the emerging needs.
Good and somewhat deep data analysis should not be an excuse for analysis paralysis. The analysis has to be right and reasonably complete in a short amount of time. Shorter for smaller projects. The design and implementation should be able to survive some late additions and corrections to the data analysis and to the requirements, but not a steady torrent of requirements revisions.
This response expands on your original question, but I think it's relevant for the would be database designer.