What are common database development mistakes made by application developers?
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1. Not using appropriate indexes This is a relatively easy one but still it happens all the time. Foreign keys should have indexes on them. If you're using a field in a 2. Not enforcing referential integrity Your database may vary here but if your database supports referential integrity--meaning that all foreign keys are guaranteed to point to an entity that exists--you should be using it. It's quite common to see this failure on MySQL databases. I don't believe MyISAM supports it. InnoDB does. You'll find people who are using MyISAM or those that are using InnoDB but aren't using it anyway. More here:
3. Using natural rather than surrogate (technical) primary keys Natural keys are keys based on externally meaningful data that is (ostensibly) unique. Common examples are product codes, two-letter state codes (US), social security numbers and so on. Surrogate or technical primary keys are those that have absolutely no meaning outside the system. They are invented purely for identifying the entity and are typically auto-incrementing fields (SQL Server, MySQL, others) or sequences (most notably Oracle). In my opinion you should always use surrogate keys. This issue has come up in these questions:
This is a somewhat controversial topic on which you won't get universal agreement. While you may find some people who think natural keys are, in some situations OK, you won't find any criticism of surrogate keys other than being arguably unnecessary. That's quite a small downside if you ask me. Remember, even countries can cease to exist (eg Yugoslavia). 4. Writing queries that require You often see this in ORM-generated queries. Look at the log output from Hibernate and you'll see all the queries begin with:
Thid is a bit of a shortcut to ensuring you don't return duplicate rows and thus get duplicate objects. You'll sometimes see people doing this as well. If you see it too much it's a real red flag. Not that From Why I Hate DISTINCT:
5. Favouring aggregation over joins Another common mistake by database application developers is to not realize how much more expensive aggregation (ie the To give you an idea of how widespread this is, I've written on this topic several times here and been downvoted a lot for it. For example: From SQL Statement - “Join” Vs “Group By and Having”:
6. Not simplifying complex queries through views Not all database vendors support views but for those that do, they can greatly simplify queries if used judiciously. For example, on one project I used a generic Party model for CRM. This is an extremely powerful and flexible modelling technique but can lead to many joins. In this model there were:
Example:
So there are five tables joined to link Ted to his employer. You assume all employees are Persons (not organisations) and provide this helper view:
And suddenly you have a very simple view of the data you want but on a highly flexible data model. 7. Not sanitizing input This is a huge one. Now I like PHP but if you don't know what you're doing it's really easy to create sites vulnerable to attack. Nothing sums it up better than the story of little Bobby Tables. Data provided by the user by way of URLs, form data and cookies should always be treated as hostile and sanitized. Make sure you're getting what you expect. 8. Not using prepared statements Prepared statements are when you compile a query minus the data used in insets, updates and
vs
or
depending on your platform. I've seen databases brought to their knees by doing this. Basically, each time any modern database encounters a new query it has to compile it. If it encounters a query it's seen before, you're giving the database the opportunity to cache the compiled query and the execution plan. By doing the query a lot you're giving the database the opportunity to figure that out and optimize accordingly (eg by pinning the compiled query in memory). Using prepared statements will also give you meaningful statistics about how often certain queries are used. Prepared statements will also better protect you against SQL injection attacks. 9. Not normalizing enough Database normalization is basically the process of optimizing database design or how you organize your data into tables. Just this week I ran across some code where someone had imploded an array and inserted it into a single field in a database. Normalizing that would be to treat element of that array as a separate row in a child table (ie a one-to-many relationship). This also came up in Best Method for Storing a List of User IDs:
But lack of normalization comes in many forms. More: 10. Normalizing too much This may seem like a contradiction to the previous point but normalization, like many things, is a tool. It is a means to an end and not an end in and of itself. I think many developers forget this and start treating a "means" as an "end". Unit testing is a prime example of this. I once worked on a system that had a huge hierarchy for clients that went something like:
such that you had to join about 11 tables together before you could get any meaningful data. It was a good example of normalization taken too far. More to the point, careful and considered denormalization can have huge performance benefits but you have to be really careful when doing this. More:
11. Using exclusive arcs An exclusive arc is a common mistake where a table is created with two or more foreign keys where one and only one of them can be non-null. Big mistake. For one thing it becomes that much harder to maintain data integrity. After all, even with referential integrity, nothing is preventing two or more of these foreign keys from being set (complex check constraints notwithstanding). From A Practical Guide to Relational Database Design:
11. Not doing performance analysis on queries at all Pragmatism reigns supreme, particularly in the database world. if you're sticking to principles to the point that they've become a dogma then you've quite probably made mistakes. Take the example of the aggregate queries from above. The aggregate version might look "nice" but it's performance is woeful. A performance comparison should've ended the debate (but it didn't) but more to the point: spouting such ill-informed views in the first place is ignorant, even dangerous. 12. Over-reliance on UNION ALL and particularly UNION constructs A UNION in SQL terms merely concatenates congruent data sets, meaning they have the same type and number of columns. The difference between them is that UNION ALL is a simple concatenation and should be preferred wherever possible whereas a UNION will implicitly do a DISTINCT to remove duplicate tuples. UNIONs, like DISTINCT, have their place. There are valid applications. But if you find yourself doing a lot of them, particularly in subqueries, then you're probably doing something wrong. That might be a case of poor query construction or a poorly designed data model forcing you to do such things. UNIONs, particularly when used in joins or dependent subqueries, can cripple a database. Try to avoid them whenever possible. 13. Using OR conditions in queries This might seem harmless. After all, ANDs are OK. OR should be OK too right? Wrong. Basically an AND condition restricts the data set whereas an OR condition grows it but not in a way that lends itself to optimisation. Particularly when the different OR conditions might intersect thus forcing the optimizer to effectively to a DISTINCT operation on the result. Bad:
Better:
Now your SQL optimizer may effectively turn the first query into the second. But it might not. Just don't do it. 14. Not designing their data model to lend itself to performant solutions This is a hard point to quantify. It is typically observed by its effect. If you find yourself writing gnarly queries for relatively simple tasks or that queries for finding out relatively straightforward information is not performant, then you probably have a poor data model. In some ways this point summarizes all the earlier ones but it's more of a cautionary tale that doing things like query optimisation is often done first when it should be done second. First and foremost you should ensure you have a good data model before trying to optimize the performance. As Knuth said:
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This has been said before, but: indexes, indexes, indexes. I've seen so many cases of poorly performing enterprise web apps that were fixed by simply doing a little profiling (to see which tables were being hit a lot), and then adding an index on those tables. This doesn't even require much in the way of SQL writing knowledge, and the payoff is huge. Avoid data duplication like the plague. Some people advocate that a little duplication won't hurt, and will improve performance. Hey, I'm not saying that you have to torture your schema into Third Normal Form, until it's so abstract that not even the DBA's know what's going on. Just understand that whenever you duplicate a set of names, or zipcodes, or shipping codes, the copies WILL fall out of synch with each other eventually. It WILL happen. And then you'll be kicking yourself as you run the weekly maintenance script. And lastly: use a clear, consistent, intuitive naming convention. In the same way that a well written piece of code should be readable, a good SQL schema or query should be readable and practically tell you what it's doing, even without comments. You'll thank yourself in six months, when you have to to maintenance on the tables. |
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I'd like to add: Favoring "Elegant"code over higly performing code. The code that works best against databases is often ugly to the application developer's eye. Believing that nonsense about premature optimization. Databases must consider performance in the original design and in any subsequent development. Performance is 50% of database design (40% is data integrity and the last 10% is security) in my opinion. Databases which are not built from the bottom up to perform will perform badly once real users and real traffic are placed against the database. Premature optimization doesn't mean no optimization! It doesn't mean you should write code that will amost always perform badly because you find it easier (cursors for example which should never be allowed in a production database unless all else has failed). It means you don't need to look at ekeing out that last little bit of performance until you need to. A lot is known about what will perform better on databases, to ignore this in design and development is short-sighted at best. |
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Not paying enough attention towards managing db connections in your app. Then you find out the app, the computer, the server, the network is clogged. |
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1 - Unnecessarily using a function on a value in a where clause with the result of that index not being used. Example:
instead of
And to a lesser extent: Not adding functional indexes to those values that need them... 2 - Not adding check constraints to ensure the validity of the data. Constraints can be used by the query optimizer, and they REALLY help to ensure that you can trust your invariants. There's just not reason not to use them. 3 - Adding unnormalized columns to tables out of pure laziness or time pressure. Things are usually not designed this way, but evolve into this. The end result, without fail, is a ton of work truing to clean up the mess when you're bitten by the lost data integrity in future evolutions. Think of this, a table without data is very cheap to redesign. A table with a couple of millions records with no integrity... not so cheap to redesign. Thus, doing the correct design when creating the column or table is amortized in spades. 4 - not so much about the database per se but indeed annoying. Not caring about the code quality of SQL. The fact that your SQL is expressed in Strings does not make it OK to hide the logic in heaps of string manipulation algorithms. It is perfectly possible to write SQL in Strings in a manner that is actually readable by your fellow programmer. |
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Key database design and programming mistakes made by developers
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Here is a link to video called ‘Classic Database Development Mistakes and five ways to overcome them’ by Scott Walz |
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Not using parameterized queries. They're pretty handy in stopping SQL Injection. This is a specific example of not sanitizing input data, mentioned in another answer. |
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Treating the database as just a storage mechanism (i.e. glorified collections library) and hence subordinate to their application (ignoring other applications which share the data) |
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Over-use and/or dependence on stored procedures. Some application developers see stored procedures as a direct extension of middle tier/front end code. This appears to be a common trait in Microsoft stack developers, (I'm one, but I've grown out of it) and produces many stored procedures that perform complex business logic and workflow processing. This is much better done elsewhere. Stored procedures are useful where it has actuallly been proven that some real technical factor necessitates their use (ie performance, security) For example, keeping aggregation/filtering of large data sets "close to the data". I recently had to maintain and enhance a large Delphi desktop application of which 70% of the business logic and rules were implemented in 1400 SQL Server stored procedures (the remainder in UI event handlers). This was a nightmare, primarily due to the difficuly of introducing effective unit testing to TSQL, lack of encapsulation and poor tools (Debuggers, editors). Working with a Java team in the past I quickly found out that often the complete opposite holds in that environment. A Java Architect once told me: "The database is for data, not code.". These days I think it's a mistake to not consider stored procs at all, but they should be used sparingly (not by default) in situations where they provide useful benefits (see above). |
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Number one problem? They only test on toy databases. So they have no idea that their SQL will crawl when the database gets big, and someone has to come along and fix it later (that sound you can hear is my teeth grinding). |
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Blaming the db engine when the query that ran sooo fast on your development machine blows up and choke once you throw some traffic at the application. |
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Trusting a DBA to do even the simplest task properly. |
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In my experience: |
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Using Access instead of a "real" database. There are plenty of great small and even free databases like SQL Express, MySQL, and SQLite that will work and scale much better. Apps often need to scale in unexpected ways. |
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Not doing the correct level of normalization. You want to make sure that data is not duplicated, and that you are splitting data into different as needed. You also need to make sure you are not following normalization too far as that will hurt performance. |
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very large transactions, inserting/updating a lot of data and then reloading it. Basically this is down to not considering the multi user environment the database works in. Overuse of functions, specifically as results in selects and in where clauses which causes the function to be called over and over again for the results. This I think fits under the general case of them trying to work in the procedural fashion they're more used to rather than use SQL to its full advantage. |
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Not using indexes. |
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a) Hardcoding query values in string both of which I have seen |
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Forgetting to set up relationships between the tables. I remember having to clean this up when I first started working at my current employer. |
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