There are two aspects of a database that are more important than size, as far as design and management goes.
The first is complexity. How many user tables are there? How many columns in those tables? A database with several hundred user tables in the schema and over a thousand columns in those tables is very complex. A database with a half a dozen tables is not very complex, even if it contains petabytes of data.
The second is scope of data sharing. If a database is built to share data among six or more applications, developed by separate programming teams, you should design and manage it very differently than you would a database that's embedded in a single application.
Most of the database questions asked in SO pertain to single application databases.
Here are a few things to learn, in addition to what's already been mentioned.
Learn the difference between table partition and table decomposition. Some people decompose tables into multiple tables all with the same columns, when partitioning would serve them better.
Learn the real difference between the graph model of data and the relational model of data. Some people design databases as if foreign keys were essentially the same as pointers. What they end up with is a system that captures all the slowness of a relational system and all the unmanageability of a graph system.
(Note: the graph model is often called the hiearachical or network model).
Designing a real relational database is much more subtle, and much more worthwhile, than designing a database that pretends to be modeled relationally but is really graph modeled.