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Ok, I realize I might be downvoted into oblivion for this question, especially given my stance on the matter, but I really need to see some honest, thoughtful debate on the merits of the currently accepted enterprise application design paradigm.

I am not convinced that entity objects should exist.

By entity objects I mean the typical things we tend to build for our applications, like "Person", "Account", "Order", etc.

My current design philosophy is this:

  • All database access must be accomplished via stored procedures.
  • Whenever you need data, call a stored procedure and iterate over a SqlDataReader or the rows in a DataTable

(Note: I have also built enterprise applications with Java EE, java folks please substitute the equvalent for my .NET examples)

I am not anti-OO. I write lots of classes for different purposes, just not entities. I will admit that a large portion of the classes I write are static helper classes.

I am not building toys. I'm talking about large, high volume transactional applications deployed across multiple machines. Web applications, windows services, web services, b2b interaction, you name it.

I have used OR Mappers. I have written a few. I have used the Java EE stack, CSLA, and a few other equivalents. I have not only used them but actively developed and maintained these applications in production environments.

I have come to the battle-tested conclusion that entity objects are getting in our way, and our lives would be so much easier without them.

Consider this simple example: you get a support call about a certain page in your application that is not working correctly, maybe one of the fields is not being persisted like it should be. With my model, the developer assigned to find the problem opens exactly 3 files. An ASPX, an ASPX.CS and a SQL file with the stored procedure. The problem, which might be a missing parameter to the stored procedure call, takes minutes to solve. But with any entity model, you will invariably fire up the debugger, start stepping through code, and you may end up with 15-20 files open in Visual Studio. By the time you step down to the bottom of the stack, you forgot where you started. We can only keep so many things in our heads at one time. Software is incredibly complex without adding any unnecessary layers.

Development complexity and troubleshooting are just one side of my gripe.

Now let's talk about scalability.

Do developers realize that each and every time they write or modify any code that interacts with the database, they need to do a throrough analysis of the exact impact on the database? And not just the development copy, I mean a mimic of production, so you can see that the additional column you now require for your object just invalidated the current query plan and a report that was running in 1 second will now take 2 minutes, just because you added a single column to the select list? And it turns out that the index you now require is so big that the DBA is going to have to modify the physical layout of your files?

If you let people get too far away from the physical data store with an abstraction, they will create havoc with an application that needs to scale.

I am not a zealot. I can be convinced if I am wrong, and maybe I am, since there is such a strong push towards Linq to Sql, ADO.NET EF, Hibernate, Java EE, etc. Please think through your responses, if I am missing something I really want to know what it is, and why I should change my thinking.

[Edit]

It looks like this question is suddenly active again, so now that we have the new comment feature I have commented directly on several answers. Thanks for the replies, I think this is a healthy discussion.

I probably should have been more clear that I am talking about enterprise applications. I really can't comment on, say, a game that's running on someone's desktop, or a mobile app.

One thing I have to put up here at the top in response to several similar answers: orthogonality and separation of concerns often get cited as reasons to go entity/ORM. Stored procedures, to me, are the best example of separation of concerns that I can think of. If you disallow all other access to the database, other than via stored procedures, you could in theory redesign your entire data model and not break any code, so long as you maintained the inputs and outputs of the stored procedures. They are a perfect example of programming by contract (just so long as you avoid "select *" and document the result sets).

Ask someone who's been in the industry for a long time and has worked with long-lived applications: how many application and UI layers have come and gone while a database has lived on? How hard is it to tune and refactor a database when there are 4 or 5 different persistence layers generating SQL to get at the data? You can't change anything! ORMs or any code that generates SQL lock your database in stone.

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Are you saying the business logic is the helper objects, or in the stored procs? I'm asking as many people seem to think you are saying the later...but what I think you are saying is that you still have business logic in the coded objects, you are just getting data straight from the database and using that data, rather than an ORM or mapping to specialized objects to hold the data. I tend to feel the same way--but am also currently evaluating EF4 to see if it might be worth it. –  alchemical Jun 14 '10 at 18:32

40 Answers 40

I've been speculating whether relational databases driven by SQL aren't a bit at cross-purposes with these frameworks that use the ActiveRecord paradigm. One fundamental problem is that AR (and good OO design, for that matter), drive us to decompose logic; and SQL simply isn't amenable to statement decomposition.

I wonder if using an isam persistence model for the database wouldn't be a better idea; a better impedance match to OO; more agreement on the basic idea of data as tables; more consistent with the conventional artifacts of OO persistence. One good example is that FKs and their associations can be more explicit.

RoR has a rep for being a database slug, and I suspect this issue is a large part of the reason.

Has anyone tried to use an isam database for an ActiveRecord implementation?

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I'm puzzled about the "lock your database in stone" argument in favor of stored procs. I can take my ActiveRecord model and move it from MySQL to Postgres to SQLite, thank you very much. I couldn't do that with anything stored proc-based unless I wanted to rewrite them all.

I assume you mean that you're locking your database schema in stone. That argument is more interesting. To some extent I think it's argued from the perspective of an application with minimal unit tests and code coverage - the applications where you don't change your code out of sheer fear you're going to break "something."

My experience with stored-proc-based systems is minimal though. I'm curious, in large applications, how do you manage all of the data relations? On one page I show a product with a picture. On another page I show a product and the user who created it. On another page I show a product and the comments about it. On another page I need to show that product with no picture joined with a table of specifications about it.... etc. etc. I have a data model with a lot of relationships. I assume you don't write a stored proc for every combination? The DRY principle is the one that I worry about. How many queries am I writing where I'm re-left-joining (effectively re-coding) my relationships? And, while we're talking about locking the schema, how many stored procs am I going to need to re-write?

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The argument about changing rdbms vendors is not applicable to an enterprise application. If you face this possibility, you are not working on an enterprise app, IMO. –  Eric Z Beard Dec 3 '08 at 20:40

I think Entity objects are over emphasized in enterprise solution nowadays. They cannot contain business layer functions, since those belong in the Services in the service layer, or UI layer for UI specific functions, etc. Entity objects do allow the designers to think better in terms of designing the application well, but they do not necessarily have to contain all the application logic in them. They can be dumb objects that follow certain rules and interfaces and can be used to build other layers on top of them and act as data carriers between the layers.

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I don't see what entity objects have to do with scalability, you're probably talking about using ORM tools, in this case I agree with you.

I'm very interested in scalability. Entity objects are never in your way of building a highly scalable application but you have to do it the right way, in other words you need a hand-written DAL, as opposed to a DAL generated using some ORM. Actually this is why I don't like ORMs, there's nothing that beats a hand-written DAL, I also don't use LINQ as I read in many places that it has a big overhead. I tweak every query in my apps and create the needed indexes, I don't let some ORM generate the code for me.

I don't agree with you that Entity objects make the code harder to maintain, actually the whole purpose of this architecture is to make it to easier to maintain and modify your code and this is what I see in practice, I wrote spaghetti code for a long time (didn't use 3-tier or n-tier architectures) so I know what I'm talking about.

Also Entity objects are needed for caching, I wonder how you cache the data in your applications if you don't use Entity objects, do you use datasets or datatables?

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To be honest, I think if you can get away with data over forms, go for it! But the minute things get sticky, you would be wise to learn how to strucure things to gain some simplicity.

I haven't read all the answers but common points thigns get sticky:

  • Code is repeated Buggy, unstable code
  • HUGE classes loaded with static
    classes
  • Logic is everywhere and
    anywhere ( aspx, static methods, sql, triggers )
  • Interacting with multiple
    objects, sharing common features will proove difficult

As far as domain vs data. I think Data will always win, functionality is ALL that matters to the client. It has to work. I'm a proponent of refactoring when you can if you break a principle to deliver something that works on time.. you can always go back and refactor.

Also a quick word on debugger, complex domain. I have seem many people get scared because they hit interfaces, don't understand all the acrobatics that are possible in very advanced OOP/polymorphic code. I TOTALLY understand, sometimes you can get lost and deterred. This is why they make tools.. I'm less scared of a solution with 1000 files than a humongous method with 1000 lines. And I have seen both believe it or not.

There is a happy medium also if your'e willing to write tests you won't worry so much about the debugger and steppign through code. If you get good tools and find a balance you'll solve all the problems above and also keep things simple enough to get around.

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Well, I want to thank you for a fascinating discussion. I'm working my way through Stephen Walther's ASP.NET MVC Framework Unleashed, and I'm enjoying it as a sort of philosophical exercise, but I'm somewhat aghast at the amount of plumbing code his approach entails. Now that's not inherent in using an ORM -- Rails prides itself on freeing you from such housekeeping matters, but I'm really wrestling with whether I think it's worth it to have to write and maintain a separate Record class that can be used by the application and an EntityRecord class that maps the Record class to the database.

His gloss on the benefits are that you end up with a testable application where the tests run quickly, but frankly I'd rather trade some testing speed for executing code that's actually in the application. I think by the time you're spending your day slogging along and copying properties around so that your tests can run quickly, the testing tail has begun to wag the programmer dog -- who'd rather be chasing rabbits or having a nap in front of the fire.

The second cited benefit is that you can take your application and run it on a different database. Yeah, OK, maybe if you're writing something like a SalesForce for resale or something, that might be a goal, but for 90% or more of the applications out there, so what? I'm reminded of the neighbor in "It's a Wonderful Life" who gave George a jar of money and said: "I was saving this for a divorce in case I ever got a husband." Don't write it till you need it.

On the other hand, I do have a practical objection to stored procedures. It's not necessarily inherent in their use but more a feature of some of the brain-dead shops I've worked in: they sometimes put a DBA in the way of the code I want to write. I like to think I'm not a cowboy, but on the opposite end I don't like to have to convene a UN committee to add a field to a table.

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One question: what if your data source were a web service? I write applications using only distributed data via web services. Am I expected to write that using a different paradigm than if my data source were an RDBMS?

I'm not asking what do you do if you switch from RDBMS to web services (because, in an internal shop, that's unlikely), I'm asking what do you do when the data comes from web services from the start?

Is your programming model drastically different than if it'd have been an RDBMS? If it is, you need to consider maintainability. My developers would have an awful time, if every app they jump into is programmed using different paradigms.

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Some logic such as operations related to sets tend to be better represented in stored procedures. Yet there are times when an algorithm that has many branches and conditions is best represented in programming code. A grammar used for parsing commands that supports a runtime function for scripting actions can not be implemented in stored procedures.

The one weakness I see with stored procedures is that you tend to get a new stored procedure for new list or grid in the application. Or worse, one stored proc to rule them all, 10 parameters and case statements to further define them. In addition, the stored proc's become HUGE and even more difficult to debug.

All that said, I'm with you that an ORM may get in the way many times for the reasons you sited. In the end, it boils down to how you rule the technology.

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I have just recently stumbled upon this question. Realizing that this question has been pretty old, and that there are many answers, I understand that my response many not be looked at even once. Still, I would like to leave my comments here.

I would look at this question in three aspects. But before that, I have to state: 8 out of 10, a programmer coming from the imperative/OO-design world (C/C++, JAVA, C#, etc.) does not know how to write optimized, efficient SQL code. From my experience, it is rare to have someone who can do well at both application development and SQL development.

With that said, I would like to give three aspects for looking at this question.

First: Seperation of concern not according to program, but organizational hierarchy.

Frankly, there are many kinds of "enterprise" in this world, and each one has its own organizational hierarchy, varied by history and philosophy. In one particular company I have worked with, the programmers cannot modify or develop upon the database. They can read and consume the database API (i.e. stored procedure in SQL server), but not directly reading the database, and cannot write any query or stored procedure.

Any database request (data or functionality) has to be delegated to another role: Data Architect. S/he would be the one dealing with the development, and possibly the maintenance, of the database. (Although, maintenance part should be the job of DB Admin.) In such environment, the stored procedure is only consumable; even the source of the stored procedure in the PROD environment would be encrypted, and programmers are not allowed to see the SP's source.

However, in some other organizations, programmers are expect to do development of all aspects, including the interface, middleware and data storage. This is the majority case.

In these two scenarios (albeit the first one is rather extreme but real), it would affect how you view the author's question. In the first case, I would say the author would agree upon the Data Architect's role, but any non-database programmer in the organization would greatly despise. In the second case, however, because of my previous disclaimer about many developers not knowing how to write good SQL codes (and generally not liking to deal with it either), it is only natural to opt for the simpler approach: ORM.

Second: The role of database: pure data storage up to different interpretations, or provider of predefined schemes of information?

Definition: "data" is raw, while "information" is interpreted.

In many real-world situations, the database is only regarded as a pure data storage. It may contain data logic (e.g. integrity of relational data), but it does not contain business logic (e.g. any formula applied to the data not because of the data's nature, but because of this is how this particular section of business works).

In the aforementioned organization I have worked with, in one database, it stores various financial information of a customer. At first, there is only one formula to calculate an index regarding the customer's financial health, and this formula, along with the customer's status based on the formula, is stored within a stored procedure of the database. As the government kept changing rules in the past few years, however, many more formulas have been created to accommodate with the government.

Hence the problem: each branch in the organization, with its own distinct programming department (and little inter-organizational business between each branch), uses the same set of financial data, but with different formulas and operations.

In this case, the original model of storing the formula in the database brought a maintenance and office politics hell. At first, the Data Architect would create typed stored procedures to accommodate the changes, but soon the organization started to have trouble with this model. The HQ had determined that, each branch would maintain its own set of formulas, and nobody except that branch should know the owned formulas. The Data Architect, in this case, knew all the formulas, and that did not sit well with the HQ's policy. The quick pace in changing the formulas has also brought efficiency problem for testing between each branch, because every formula tweak had to go through the Data Architect.

In this case, the organization faces a rather profound question: should the database serve the interpreted information, or should it only serve the data without any meaning?

That is a good way to jump into the third aspect.

Third: Ideological warfare: single- vs multi-purpose, and monolithic vs modular?

The aforementioned example is a clear demonstration of data being used in a multipurpose fashion. The data, while remaining the same for every branch, had different interpretation and usage in different scenarios. And here is my take.

Does your database store and serve data that, in nature, has multipurpose, and performance is not a big concern?

If yes, then I would say, the database should be reduced to only serving the data, and any logic not related to data integrity should be stored somewhere else. This is more of a modular approach: others can plug whatever operations and interpretations they would like to have, but not in SQL.

If any part of the question is a negative (i.e. it's single purpose, or performance is a big big concern), and assuming that no office politics are in the way, then I would say, monolithic approach of putting the majority stuff into the database is fine. Preferred or not, that becomes an ideological choice.

I have the impression that the author, upon writing and editing the question, supports the opinion of monolithic approach. I do consider this case-by-case, but generally, I am in such approach:

  • Simple CRUD and nothing else: ORM
  • Formulas and Workflows based on data: middleware (like CSLA), not in database (unless performance is a concern)
  • Reporting: definitely in database (for performance reason)

Above is my 2 cents.

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Software that solves a large problem in a very generic way applicable to lots of real situations necessarily comes with a performance cost in and of itself. It takes code to handle all that genericity and code takes time to run.

Also, descending through a layer of abstraction always reveals that some things cost a little and some things cost a lot and those differences were hidden by the abstraction. The isolation the abstraction gives the developer from what ever is beneath always causes the developer to casually introduce more expensive operations than were necessary.

Whatever else can be said about this question, from a performance only perspective and from a scaling performance only perspective avoiding the double whammy caused by the extra isolation from the realities of ones own database is going to pay off in performance.

I currently spend my working days battling exactly the performance problems caused by these issues and they are terrible monsters to fight.

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