First of all, DB upgrades are evil, but that blog describes a total nightmare.
The one can create a Programmer Competency Matrix based on the upgrade approach:
- Level 0: No upgrades at all. Customers are terrified and move data manually using either UI provided by an application or third-party DB management solutions (believe me, it is really possible).
- Level 1: There is a script to upgrade a DB dump. Customers feel safe, but they will fix tiny and very irritating issues for the next 1-2 years. System is working, but no changes allowed.
- Level 2: Table altering. Monstrous downtime, especially in case of an issue during upgrade. Huge problems and virtually no guarantees to get 100% safe result. Data conversion is managed by a buggy script. Customers are not happy.
- Level 3: Schema-less design: One-two hours downtime to let buggy scripts to translate the configuration in the DB (this step may damage the DB in many cases). Support guys have all coffee reserves completely exhausted.
- Level 4: Lazy transparent upgrades: Zero downtime, but still some issues are possible. Customers are almost happy, but still remember previous experience.
- Level 5: Ideal architecture, no explicit upgrade is needed. Total happiness. Customers do not know what upgrade procedure is about. Developers are productive and calm.
I will describe all technical issues, but before that let me state the following (please forgive me quite a long answer):
- nowadays development cycles are very compressed and DBs are big
- virtually any feature may introduce scheme changes and break compatibility so either we have a simple and stable upgrade procedure or we may postpone a feature
- an issues may be identified by a customer, so there is a chance to have an urgent hot-fix build with some upgrade steps needed
- generally speaking, it is much better to avoid any barriers between you and your customer
Level 0 and Level 1
Both cases are obvious and stupid. Anybody should avoid that.
Altering is not that bad for a small tables, but it can be a problem for the big one. On really big tables (>1Gb) it will probably take several hours or even days for ALTER TABLE to complete. Moreover, it does solve only schema upgrade issue, but what about stored data? I also suggest to think about physical data layout to understand the actual impediments behind this approach. The whole procedure can be unsafe, so make sure you have backups.
The problem with schema upgrade is solved by moving schema on to the higher layer. Schema-less solution is somewhat limited, mainly because it disables the whole power behind a relational model. A hybrid approach can be proposed to have both fast upgrades and ability to use relational algebra. There are some interesting articles:
Please note, the complexity of upgrade procedure is still there, it just moved to the application level. There are many relevant scenarios, but I'm going to describe one hybrid system I've been working with for a several years. I can describe a data model as "Entities with relations". Relations between entities were represented on the DB level, entities itself were stored as XML blobs.
This system was mature and had enough customers. There were a lot of feature requests, so R&D and QA teams were a little bit stressed. Initially upgrade procedure was implemented as a standalone Java application reading XML blobs from the DB, upgrading it using DOM API and writing it back to the DB. The actual approach looks pretty straightforward, but there are several hidden issues behind:
- the upgrade logic can be a somewhat buggy, so there is a chance to write a wrong XML data significantly increasing downtime for a customer
- it can take some time to read-transform-write 1-2GBs of XMLs
- all upgrade procedure steps should be covered with automated tests (I would say CI is a MUST)
- hidden glitches might be found in a day or two, so backups are not helpful any more, because of the new data inserted
- upgrade code can became a little bit messy especially if you want/need to have upgrades between builds (normal requirement for any agile team)
I've tried to mitigate all potential risks by using more strict upgrade procedure definition, validation rules and extensive tests performed by the CI system against real-life data (collected across all customers). I was surprised to see some steps failing because of the old issues introduces long time ago by an old upgrade scripts. Separate upgrade steps were developed in order to fix that hidden issues. Some optimization was also performed to decrease upgrade time to reasonable 20-30 minutes. Console-based progress-bar implementation did the rest.
Quick note: any end-user is eager to see a progress for any long-running (>2 min) operation. Please do not forget to implement such a "pleasure".
Initially DB version was stored in the separate table. Please do not use this approach, because it is much better to have entities versioned separately and avoid entire DB locking during upgrade.
Will show one upgrade procedure as an example (all validation and verification steps are hidden behind
<version/> processing logic). '-' means less, '*' - any build
<!-- 5 scripts skipped -->
<script class="core.DatabaseUpdateVersion" version="7.6.48"/>
<script class="core.DatabaseUpdateVersion" version="8.0.40"/>
<!-- 7 scripts skipped -->
<build name="-53">... </build>
<build name="+52">... </build>
<build name="-8"> ... </build>
<build name="-89"> ... </build>
Each script is a small Java or Groovy implementation (XSLT was used too).
Later a downgrade procedure was also developed, but this is totally different story.
Data scheme on the application layer allows to do quite a lot of interesting stuff. For example, it is possible to replace XML with protobuf. As usual there are several reasons for doing that (it is simpler, faster, etc). If you do not like builders concept you can use thrift instead.
Anyway, protobuf allows to create a backward compatible system (in terms of a stored data) almost without a headache. Good advantage, by the way. Having your system backward compatible you can easily implement lazy and fully transparent upgrade. It can be a background process or upgrade upon a request, etc. The good news is zero-downtime, happy users and ability to do upgrades more frequently. Which means you can develop rapidly, promptly respond on customers requests, be more successful in the other words.
Sorry, not for this time. Please be careful with upgrade strategies. It is qutie easy to sell a system with some schema defined and lock yourself out. No new features -- no customers.
Simple but extremely useful checklist:
- Will you be able to promptly solve an issue coming from the customer side?
- Will it be safe for the customer to upgrade the system (what if it is at least mission critical)?
- How much time will be needed to identify a problem?
- Is there any automated verification?
Thank you for reading.