This question is related to another:
The software we're developing is an analytical tool that uses MS SQL Server 2005 to store relational data. Initial analysis can be slow (since we're processing millions or billions of rows of data), but there are performance requirements on recalling previous analyses quickly, so we "save" results of each analysis.
Our current approach is to save analysis results in a series of "run-specific" tables, and the analysis is complex enough that we might end up with as many as 100 tables per analysis. Usually these tables use up a couple hundred MB per analysis (which is small compared to our hundreds of GB, or sometimes multiple TB, of source data). But overall, disk space is not a problem for us. Each set of tables is specific to one analysis, and in many cases this provides us enormous performance improvements over referring back to the source data.
The approach starts to break down once we accumulate enough saved analysis results -- before we added more robust archive/cleanup capability, our testing database climbed to several million tables. But it's not a stretch for us to have more than 100,000 tables, even in production. Microsoft places a pretty enormous theoretical limit on the size of sysobjects (~2 billion), but once our database grows beyond 100,000 or so, simple queries like CREATE TABLE and DROP TABLE can slow down dramatically.
We have some room to debate our approach, but I think that might be tough to do without more context, so instead I want to ask the question more generally: if we're forced to create so many tables, what's the best approach for managing them? Multiple filegroups? Multiple schemas/owners? Multiple databases?
Another note: I'm not thrilled about the idea of "simply throwing hardware at the problem" (i.e. adding RAM, CPU power, disk speed). But we won't rule it out either, especially if (for example) someone can tell us definitively what effect adding RAM or using multiple filegroups will have on managing a large system catalog.