SQL development in general does not ply well to the software development paradigm: it is not reusable, does not lead to DRY definitions and is hard to maintain. But the most important thing is that most techniques that improve this status-quo and lead to better quality code result is runtime problems. And a SQL run time problem is nothing like a suboptimal code construct in code, it results in bad plans that give results in tens and hundreds of times slower than an optimal plan. In other words, when a DRY query definition base don reasonable blocks results in a table scan plan that runs 10 seconds and an ugly single-use view has a better plan that runs in 10 ms, you forget everything about DRY and go with the ugly but fast view. The differences in run time between a good plan and a bad plan are just too big.
This is why with SQL development a good projects ends up with a few well tuned queries that are constantly measured and checked for performance. I'm sad to say but in my experience the more 'healthy' the SQL code was from a classic code pov (DRY, reusable, maintainable) the more problems it had in real world production when faced with large data size. I really wish there was an easy way to deploy reusable SQL blocks that could be assembled into complex structures. It just doesn't work that way. I know enough about how SQL query optimization works to understand that the query optimizers look at the resulted complex block as a whole and they cannot leverage the internal blocks as 'units of work', they are tasked to optimize the final, end result. And optimizing such complex queries, considering data access paths, IO costs, size of data, column values distribution probabilities is just very very very complex, orders of magnitude more complex than the task, say, a C# optimizer is asked to do.
My advice would be: keep few complex views that are tested and tuned. Freedom to compose basic building block will quickly be abused and you'll discover it too late.