One of the most important opportunity TDD gives us, from my point of view, is to develop projects incrementally, adding features one by one, which means ideally we have working system at every point in time.
What I am asking is, when the project involves working with a database, can we use this incremental approach for creating database structure or should we work the structure out before start writing code? I know it's hard to predict what the structure of database will be like in 1 year from now, but generally, what's the best practice on it?

  • 1
    (+1) good question – skaffman Feb 27 '10 at 9:51
  • 2
    I love how the first two answers are in direct opposition to each other. – aehiilrs Feb 27 '10 at 9:56
  • Entireley depends on who you ask. Bob Martin, Martin Fowler et all seem to be in the 'always create your objects first, database later' camp. I would believe Joe Celko to be on the other side of the fence. Both make valid statements as to why you would follow their approach. – Lieven Keersmaekers Feb 27 '10 at 9:58
  • 5
    @Silky: That's simply not right. What most people in the ORM camp say is that not using an ORM is a waste of time, but it doesn't follow that you have to use a poor ORM that only allows you to define types based on an actual DB schema. Persistence Ignorant POCOs/POJOs are the way to go. – Mark Seemann Feb 27 '10 at 10:15
  • 2
    @silky: an ORM like Entity Framework does not require a one-to-one mapping to the database. It would allow you to do it either way. – John Saunders Feb 27 '10 at 11:01

The benefit of TDD and YAGNI is that it explicitly adresses the issue that we, as developers, can't predict future requirements. That is just as true for relational database design as it is for object-oriented code.

The database is an implementation detail. Its only purpose is to support the application by providing persistence services. If you don't know what your code is going to do three months from now, it would be illusory to think that you know what your database is going to look like.

  • 2
    No - the purpose of a database is to store data, that's its primary purpose. Application interaction is secondary. Refactoring data storage is hard. – skaffman Feb 27 '10 at 9:59
  • 1
    It's fairly easy to predict future requirements. I don't see why you would want to perpetuate such a myth. – Noon Silk Feb 27 '10 at 9:59
  • 3
    Yes, refactoring data storage is hard, and if I could solve the problem with BDUF and get it right in one go, I'd prefer that. However, I've never been able to successfully do that, and haven't met anyone else who could. – Mark Seemann Feb 27 '10 at 10:10
  • 1
    Perhaps my assumptions are wrong, but my answer assumes a pull-based, Lean/Agile approach to software development overall. In such an environment, it's next to impossible to predict future requirements, because stakeholder priorities will change. That's not a myth; it's reality. – Mark Seemann Feb 27 '10 at 10:12
  • 2
    @silky It's easy to predict future requirements!? Is this a joke? Our entire industry fails at predicting pseudo "known" requirement. Don't even talk about "future" requirement please. And even if you think you can, will you design your model up front to include low priorities things that will maybe not even happen? I won't. So indeed, I can predict that we won't agree and wish you a lot of fun with your waterfall style way of thinking. – Pascal Thivent Feb 27 '10 at 11:46

For me, this is a question with a "theoretical" answer and a "real world" answer.

In theory, you add a column as and when you need it, and you refactor your database as you go, because that's agile.

In the real world, your DBAs will kill you if they have to rebuild your test data every five minutes because you've changed the schema again. And in a smaller project, you'll get personally sick of having to spend half your time maintaining an unstable database.

As skaffman alluded to in a comment: database maintenance is generally more expensive than code maintenance. This is doubly true for rollout: you can roll an entire new application without a hitch, but try planning a live database upgrade without breaking your data.

It's a difficult discussion, because agile purists will insist that everything should be done "just in time." But, as in most things agile, the reality is that someone needs to be looking ahead of the next release. Priorities do change, but if there's not at least a vague idea of what the product will look like in 6 months then you've got bigger problems than development methodology...

The role of an architect (or tech lead, or chief DBA, or whatever flavour you have) is to be looking ahead those few months and planning for what you are 90% sure is coming, and part of that will be defining the data you're going to need and where it's likely to live.

So, perhaps instead of adding a column at a time, add a table at a time. Find the balance that suits your project and your development process, without doubling your workload.

  • 3
    In the real world, your DBAs will kill you if they have to rebuild your test data every five minutes because you've changed the schema again I would fire such a DBA and get a real Agile DBA (or no DBA at all for a small project). – Pascal Thivent Feb 27 '10 at 11:00
  • 1
    Well, yes - on a small project, you don't need a DBA. On a large production system with millions or billions of rows, doing constant maintenance because the developers can't fix their schema for more than a fortnight is liable to cause frustration. My intention was to point out that the data migration required if you're changing schemas often is a real pain, and the cost/benefit of that gets much worse the larger the project is. – Dan Puzey Feb 27 '10 at 11:08
  • First, what you are describing in your answer is BDUF, that's just anti Agile. And it doesn't have to happen, even on a big project (I did it on a big financial project). Second, the team should have the control, not an architect, a tech lead, or a chief DBA. There is no such thing in Agile. The team decides. – Pascal Thivent Feb 27 '10 at 11:12
  • Hence my comment about Agile purists! What we see as "ideal" development practice is simply too expensive and impractical in some situations. Yes, ideally we'd do Lean and refactor constantly... but realistically, the business will expect and need you to be closer to "right" first time. And "the team decides" doesn't always work in Enterprise-size projects - because what you end up with is ten people doing a job that one could do in half the time. It's not "anti-agile," it's just practical truth. – Dan Puzey Feb 27 '10 at 18:10
  • The Database Agile purists, in my experience, undersell the complexity, downtime, and downstream costs of extensive database refactoring on large production systems. The database layout is, in many cases, the interface, and one has to tread judiciously when refactoring. When laying out a design, I ask the business analyst very clearly about the cardinality of the relationships -- Can you ever imagine a case in which this relationship between entities is every optional? Ever multiple? It's not DBUF, it's Big Requirements Up Front, and that's the cheapest time to gather them. – Adam Musch Feb 28 '10 at 0:09

can we use this incremental approach for creating database structure or should we work the structure out before start writing code?

Yes you can (have a look at Fowler's Evolutionary Database Design). And no you shouldn't work the structure up front (this is BDUF). Scott Ambler has also written a lot on this and on the techniques that allow to apply it in real like. Chek out Agile Database Techniques, Refactoring Databases: Evolutionary Database Design and The Process of Database Refactoring: Strategies for Improving Database Quality for example.

And as I said in a comment, if your DBA doesn't like (if he acts with the model and data like Gollum with the precious), get another DBA, a DBA that understand the work of Fowler and Ambler. Period.

  • 1
    I have. And those folks don't understand the difference between the cost of refactoring departmental-scale systems, versus, say, a credit card system with billions of records and zero downtime requirements. It's analogous to the difference between chemistry and chemical engineering. It's trivial to extend a normalized model; it's not trivial to remove columns in all database engines. In DB2 as of a few years ago, you'd have to drop the table, and even modern DB2 will require eventually taking the table offline. However, Fully normalized databases tend to low performance and high complexity – Adam Musch Feb 28 '10 at 0:16
  • 1
    Yeah, Fowler and Ambler are known for their misunderstanding of real life problems... And by the way, the question was about development, not a live system (and if your database isn't tolerant to change and doesn't support your methodology, well, what can I say except don't use it?). – Pascal Thivent Feb 28 '10 at 15:45
  • Databases, much more so than code, are live systems. Once you've done the first deployment, refactoring become much more complicated than changing the implementation behind the interfaces, because the implementation is the interface. – Adam Musch Feb 28 '10 at 21:51

If your tables are in Boyce-Codd Normal Form or better, then they should be quite easily used by any application without modification, assuming they actually store the data needed. The whole point of relational databases and relational modeling is to develop a data model independent of any application's search paths or commonly used queries.

And it is quite easy to design a properly normalized database "up front," at least if you know what the data being managed up front is.

The only reason you would need to "refactor" an RDBMS schema is if the original design was prima facie unacceptable to any competent eye. Now, some tablespaces or indexing might need to be tweaked, but that has nothing to do with the design.

  • Until the properly normalized BCNF database doesn't perform under load. All the tablespace and index tweaking in the world can't save you in some cases. The volume of data, its distribution, and its use is a dimension of proper design as well. – Adam Musch Feb 28 '10 at 0:34
  • 2
    Yes, because the $CURRENCY cost of inconsistent data -- and the cost of catering to incompetents -- is also not a consideration. Just put everything into one denormalized table and blame the DBMS engine, because excuses are free. – Steven Huwig Mar 1 '10 at 3:35
  • 1
    I have worked on those systems. I think an architect would realize that transaction volume isn't measured in dollars, though. – Steven Huwig Mar 2 '10 at 21:49
  • 1
    Irrelevant statistics cited in an argument against a strawman is weak sauce too. – Steven Huwig Mar 3 '10 at 21:31
  • 1
    You need to learn the difference between refactoring and optimization. A normalized database needs no refactoring. It may need optimization. – Steven Huwig Mar 4 '10 at 2:19

The answer here is fairly obvious really, as far as I'm concerned.

You design the database structure. TDD, to a degree, isn't about testing logic (logic in the head) it's about testing implementation, and making sure it stays consistent.

Designing a DB, as with designing anything, is about getting it correct logically and conceptually. I.e. making sure you have the right fields, that the table will be useful, that it ensures and implies the right sort of relationships, and that it allows all the sorts of actions that you wish.

So, before you write any code you need to have this "thing", to know what your code will do. Thus, it follows trivially that you make the DB first, and then write code to test it.

Perhaps it will be shown, via testing, that you forgot something. Okay, this is good an appropriate; so go back and add it, and then continue testing.

  • The difference here is that refactoring a database is generally considerably harder than refactoring code – skaffman Feb 27 '10 at 9:55
  • @skaffman: Sometimes it may be harder. Sometimes not. I mean, clearly it's nonsense to design part of a table, then test it, then design the rest. It clearly makes sense to design and implement components of your system, in the DB, then make sure they all work, then add more. I'm not suggesting you make your DB perfect from Day 1 (it's of course unwise and not even necessary to strive for this, in general). I'm saying you complete a given model, then implement it. Repeat until the project is complete. – Noon Silk Feb 27 '10 at 10:03

Several approaches may be taken to reduce the difficulty of refactoring the database to match the code that TDD generates. Consider either generating your database from the classes you create as part of the TDD process.

Another possibility is to generate your database, test data, and possible even the basic repository code, from a conceptual database model using a tool like NORMA. The "ORM" here is Object-Role Modeling (the "other" ORM), and NORMA is a Visual Studio add-in that can generate DDL and code from a conceptual model.

The nice thing is, even if the conceptual model changes significantly (a relation becoming many-to-many, for instance), then both the code and DDL will change to reflect that.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.