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I'm looking for a high level answer, but here are some specifics in case it helps, I'm deploying a J2EE app to a cluster in WebLogic. There's one Oracle database at the backend.

A normal flow of the app is
- users feed data (to be inserted as rows) to the app
- the app waits for the data to reach a certain size and does a batch insert into the database (only 1 commit)

There's a constraint in the database preventing "duplicate" data insertions. If the app gets a constraint violation, it will have to rollback and re-insert one row at a time, so the duplicate rows can be "renamed" and inserted.

Suppose I had 2 running instances of the app. Each of the instances is about to insert 1000 rows. Even if there is only 1 duplicate, one instance will have to rollback and insert rows one by one.

I can easily see that it would be smarter to re-insert the non-conflicting 999 rows as a batch in this instance, but what if I had 3 running apps and the 999 rows also had a chance of duplicates?

So my question is this: is there a design pattern for this kind of situation?

This is a long question, so please let me know where to clarify. Thank you for your time.

EDIT: The 1000 rows of data is in memory for each instance, but they cannot see the rows of each other. The only way they know if a row is a duplicate is when it's inserted into the database.

And if the current application design doesn't make sense, feel free to suggest better ways of tackling this problem. I would appreciate it very much.

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What problem are you trying to solve by inserting rows in batches of 1000 rather than individually? – Tim Nov 15 '10 at 19:17
According to my DBA, batch insertion increases performance because we handle millions of rows daily. – Russell Nov 15 '10 at 19:20
It is unclear from the question if data is collected in memory and if the same data can be collected on the multiple nodes. – Eugene Kuleshov Nov 15 '10 at 19:21
BTW, 1M of rows is just about 11 rows per second for 24h day or 34 rows per second for 8h day, which isn't too much for a modern hardware. – Eugene Kuleshov Nov 15 '10 at 19:23
Then I might have got the numbers wrong. But the concern is performance anyway. I'll edit the question to clarify also. – Russell Nov 15 '10 at 19:25
up vote 2 down vote accepted


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Wow, this is new for me! Thanks! – Russell Nov 15 '10 at 20:11

The simplest would be to avoid parallel processing of the same data. For example, your size or time based event could run only on one node or post a massage to a JMS queue, so only one of the nodes would process it (for instance, by using similar duplicate-check, e.g. based on a timestamp of the message/batch).

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