I work on a business intelligence app where we rely heavily upon raw sql queries (named queries a la NHibernate) and also NHibernate QueryOver API.
Generally speaking, a lot of the value we provide is from the measures we calculate. As an example, let's assume a measure called Productivity with queries
- query returning scalar productivity value for an individual
- "drill-down" version exposing the component pieces responsible for the value in 1 above. (this could be the top 10 activities which take up the individual's time + productivity for each activity.)
Both of these queries calculate Productivity, but from different viewpoints. Thus the queries will look similar, but still are unique from each other due to how we must filter data (in case of 2 above) and then calculate Productivity. In other words, the filtering logic + measure calculation logic end up mixed together within each SQL query.
Why I dislike SQL:
hard to maintain
viewpoint changes (going from 1 to 2 above), result in 2 different queries for the same calculation ==> query explosion!
hard to test- unit tests rely upon a DB instance + test data, etc. and are slow (compared to pure unit tests)
As our app grows and we implement more and more measures, I'm becoming more and more wary of our heavy usage of SQL and looking for some other approach/technology to leverage.
- implement each measure within C# (we're a .Net shop…)
- implement data resolvers which return specific set of data for filter or setting (to be passed into C# calculators). Likely will use SQL or ORM for this.
The basic idea is that a given measure calculation does not change- i.e. Productivity will ALWAYS be calculated the same way. The data over which we calculate may change based on the filters + settings we apply against our datasource (via data resolvers).
- I can write pure unit tests against all of my C# calculations (take the DB server out of the loop) (yay for speed + simple tests)
- reduce calculator implementations. With SQL approach, we have a large number of query variations on the same measure calculation. Moving to C#, I would expect to (ideally) only support 1 implementation for each measure calculation.
- much easier to maintain/fix calculation errors. Given that we've reduced our calculator implementations, any bugs we find can be quickly fixed and the fixes automatically permeate throughout system. In the SQL approach, we need to understand the bug and then figure out how it affects and plays into each SQL query! Painful!
- likely lose ability to perform calculations at runtime since we we must bring data from DB serve to app server where C# calculations live
- lose power of SQL; the power of set-based operations. (this is a significant tradeoff!)
tldr; SQL is unmaintainable and logic variations quickly result in query explosion. What are pros/cons of implementing logic in C# and using SQL as a data retrieval mechanism to feed data into C# logic implementations?
P.S. I also dislike ORMs because logic ends up scattered throughout codebase and it's hard to find one point of truth for how some calculation is implemented.
Anyone have experience with this and other pros/cons which I have missed?