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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

  1. query returning scalar productivity value for an individual
  2. "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.

New approach:

  1. implement each measure within C# (we're a .Net shop…)
  2. 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?

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closed as not constructive by gbn, Filburt, Gabe, C. A. McCann, Bala R Dec 12 '11 at 18:58

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance.If this question can be reworded to fit the rules in the help center, please edit the question.

I believe you missed an important con: SQL allows you to change the calculation logic without writing a single line of code in C#, unless the format of the result needs to be interpreted differently. ORMs in my opition should deal only with persistence and DB layer abstraction, never with business logic. Business logic best works if it does not care what database is used for storage, and how the results are displayed. – Ivaylo Slavov Dec 12 '11 at 18:30
SQL is unmaintainable? What sorts of calculations are you performing, and what type of server do you use (MySQL, MSSQL, etc.)? – jwiscarson Dec 12 '11 at 18:32
Yes, kinda subjective. But, in comparison to C# code I think it's unmaintainable. SQL queries are not easily reformatted, refactored, or syntax-checked at compile time. – Alex Dec 12 '11 at 18:35
Do you want answers that debate pros and cons, or just answers that agree with you and reinforce your own prejudices? – gbn Dec 12 '11 at 18:37
@one.beat.consumer: If the client will always want the details as well as the sum value, the data layer seems perfectly reasonable place to put that. The distinction between the business layer and the data layer can be a little blurry at times.. and that's ok. – Sam Axe Dec 12 '11 at 18:44

For large amounts of data, I've found there is really no choice, you have to do it in SQL.

For instance when things are calculated over sets and weighted averages/allocations, the filter has to get in, then the aggregating with the analytic functions over the groups.

I cannot see pulling millions of rows of data into a client to do things like this.

You may be able to modularize it with inline table-valued functions and views so that it is testable to some extent.

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You're presenting two polar-opposite approaches: do everything in SQL or do everything in C#. But there is a middle ground.

I see two major requirements from the calculations you need to perform on data:

  • Composability
  • Performance

As you have found out, hand-written SQL doesn't compose very well, and that's your current pain point you're trying to solve. But if you switch to the other pole, where you use the database only as a data container, then you will be severely hit by performance. There's a huge benefit to performing calculation very close to the data, and the database engine is the closest, therefore (in most cases) the most performant. There can be an order of magnitude difference, so you have to keep it in mind.

So what's in the middle of SQL and C#? What is both performant and composable?

SQL generation in C#.

Take LINQ-to-SQL or LINQ-to-Entities or LINQ-to-NHibernate. You can write fragments of queries, then compose them together in code to automatically produce the exact SQL you need to fetch and calculate your data. You could have one method that is responsible for filtering, per the user's request, and another that performs aggregations and calculation logic. Then combine the two query fragments, which were created separately and by different parts of your system, and send the resulting query to your database.

You can achieve the same without LINQ, but it's already available and does the job, why reinvent the wheel? There will be several cases where the job won't be a good fit for LINQ, in those cases you can fall back to manual SQL query construction, which can still be composable but might be a bit more work.

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The option that I was argumenting for is not using an ORM that simply does SQL for you... but simply writing ones own code to to CRUD the data, and use LINQ (not LINQ to SQL or LINQ to Entities) to work with the objects in a familiar query form. You're right, it comes down to the particulars of scenario, but in general, highly scalable sites are moving more toward this idea... for instance, the NoSQL movement (ex. MongoDb). less time manipulating schema, and processing on a DB... more time on the problem domain. – one.beat.consumer Dec 12 '11 at 21:07
A reasonable answer to a poor question – gbn Dec 13 '11 at 8:40
@one.beat.consumer: If you need to retrieve a single record that matches a certain calculation and that resides in a table containing terabytes of data, it makes little sense to bring all those terabytes to an application server and wade through the mountains of data. Let the database narrow the number search down with indexes, joins, filters, etc, and then let it perform the calculation on just the subset of that data, and send you the single result to the application server. Especially if you're doing any set-based logic - databases excel at that. – Allon Guralnek Dec 13 '11 at 17:48
Document databases, such as MongoDB, are good for, well... documents. In fact, they're great at it, considerably better than relational databases. But the question is not about documents, its about data that requires computation. For that, a document database is ill-suited. Maybe OLAP is better suited for such calculations, but relational databases are not bad at all. – Allon Guralnek Dec 13 '11 at 17:51
@AllonGuralnek First off, I think it is well understood by most programmers that there is no "end all be all" solution that fits every scenario. Second, using an ORM, or your own custom repositories and factories for CRUD does not mean you would have to bring terabytes of data to an application server - the only difference is that you are composing your query from the C# domain rather than writing native SQL or whatever DB language you pick. The performance difference is moot since essentially it is translated to a query language for the DB... – one.beat.consumer Dec 13 '11 at 18:04

From a developer's perspective, one of the key benefits to implementing logic within an ORM/data-layer in C# is that the domain requirements are addressable by code... the developer can control the persistence and layered business logic in one syntax... you end up spending less time on schema tuning, restraints, etc... you can begin unit testing data logic better without a DB instance... etc.

Another issue when it comes to performance is scalability. Depending on your collections, how they are used, it is often preferable to touch the DB once for large collections and use the horsepower of the server to iterate, manipulate, reform, etc. the data fetched, rather than keep tapping the DB server for petty operations. This is particularly true in large scale systems and distributed architecture (ex. an extreme case where maybe the DB server is on a different circuit than your web app, etc.).

Those are two big ones in my head. Anything more specific you are curious about?

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You are going to be missing out on the power of set based processing if you drop SQL. Not sure what size of data sets your are handling, but you said your application is growing, is there going to be a tipping point for you where you need the power of sets?

Personally, I like to keep the data processing HP in SQL Server, and only deal with subsets in the application layer.

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You pretty much answered your own question with the Pros/Cons section of your query; A single query per measurement (exploded view) that feeds your business layer, which in turn can calculate your sum value seems like a much more reasonable design to me.

Good job on looking for a better architecture and coming up with a reasonable alternative.

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