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This is more of a conceptual question but answers specific to opensource products like (JBoss, etc) are also welcome.

If my enterprise app needs to scale and I want to choose the scale-out model (instead of the scale-up) model, how would the multiple app server instances preserve the singleton semantics of a piece of code/data?

Example: Let's say, I have an ID-generation class whose logic demands that it be instantiated as a singleton. This class may or may not talk to the underlying database. Now, how would I ensure that the singleton semantics of this class are maintained when scaling out?

Secondly, is there a book or an online resource that both lists such conceptual issues and suggests solutions?

EDIT: In general, how would one handle generic, application state in the app server layer to allow the application to scale out? What design patterns, software components/products, etc I should be exploring further?

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" I have an ID-generation class " - use a GUID then the need for that class goes away.... –  Mitch Wheat Jul 24 '13 at 9:15
    
Thanks, but that was a "let's say" situation. How does this problem addressed in general? If the answer happens to be "by avoiding the problem in the first place" then that would be fine by me but I'd still like to have a confirmation of sorts from web app and scaling experts. –  Harry Jul 24 '13 at 9:21
    
I didn't mean to suggest you're not a scaling expert, sorry if I conveyed the impression. But I did want a confirmation, and apparently you seem to giving one. But then my question is, how is state in general maintained in the app server layer that would allow the application to scale out? –  Harry Jul 24 '13 at 9:35
    
A standard technique to avoid round tripping for ID's is to use GUIDs generated in the middle tier. The question of general state scale out is a different question. –  Mitch Wheat Jul 24 '13 at 9:37
    
I've added an EDIT to my original question. –  Harry Jul 24 '13 at 9:43

1 Answer 1

up vote 1 down vote accepted

The further you scale out, the less able you are going to be to manage global static atomically. In other words, if you have 100 servers that need to share state (knowing which ID is next in an ID generating singleton class), then there is no technology I know of that will quickly and atomically get that ID for you.

Data has to travel from machine to machine in regards to the ID generation.

There are a few options I can think of for the scenario you mentioned:

  1. Wait for all machines to catch up/sync before accepting a new ID. You could generate the ID locally and then check that it's good across other machines - or - run a job to get the next ID across all machines (think map/reduce).

  2. Think sharding. With sharding you can generate IDs "locally" and be guaranteed to have uniqueness. So if you had 100 machines, machines 1-10 are for users in California, machines 11-20 are for users in New York, etc. Picking a sharding key can be tough.

  3. Start looking to messaging systems. You would create/modify your object locally on a machine and then send the result to a service bus/messaging system and the other machines subscribe to a topic/queue and can get the object and process it.

  4. Pick a horizontally scalable database to manage objects. They've already solved the issues of syncing and replication.

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Thanks. Am about to mark your answer as final but... Would you like to say a sentence or two on the handling of other, generic state in the application server instances... as the ID was just an example? This is obviously a newbie question -- I don't know how in the world developers are going about handling this issue! I can ask this question separately also if you'd like me to but please do get back asap either way. –  Harry Jul 25 '13 at 12:07
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States and objects in general ... the trend these days with NoSQL is to embrace eventually consistent data. The idea being that your writes will eventually propagate to all machines in your horizontally scalable cluster, but that for a time ... your data won't be consistent. If you think this way from the start you'll write code a bit differently. A quick example from YouTube: When you like a video, they increment the like count by 1 with Javascript and kick off a write. They give immediate feedback that looks like a write, but the actual write hasn't finished going all around yet. –  ryan1234 Jul 26 '13 at 14:48
    
Thanks for the YT example. –  Harry Jul 27 '13 at 8:18

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