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Please note: although my question here specifically involves Camel (2.11.0) and ActiveMQ (5.8.0), its really about the proper design of a concurrent messaging solution, and could very conceivably be answered by anybody with any formidable messaging and/or concurrency experience.

I have a Camel route that starts by reading messages off of an ActiveMQ queue (myQueue) and sending them to a bean (processorBean) for processing:

<camelContext id="my-camel-context" xmlns="http://camel.apache.org/schema/spring">
    <endpoint id="myQueue" uri="myBroker01:queue:myQueue" />

    <route id="my-route">
        <from ref="myQueue" />
        <to uri="bean:processorBean?method=process" /> 


public class ProcessorBean {
    public void process(Exchange exchange) {
        String messageJSON = (String)exchange.getIn().getBody();

        // Example: now messageID might be "12345"
        String messageID = parseJSON(messageJSON, "messageID");

        // Look up DB records based on this messageID.
        // The same messageID will *always* return the same list of widgets.
        List<Widget> widgets = dao.getWidgetsByMessageID(messageID);

        // Make updates to widgets.
        for(Widget widget : widgets) {

        // Persist all updates to the widget list.

This bean uses the message's ID (a String messageID field) to look up a bunch of records in a DB, make a change to them, and then saves them. It's also very important to note that the messages arrive at myQueue from an external process that I have no control over. In other words, I can't prevent messages with identical messageID values (hereafter "duplicates" or duplicate messages) from showing up on the thread. Hence this external process could send 1,000 messages onto myQueue, and 20 of them could all have messageID=12345.

Currently, I only have 1 Camel consumer configured to be running (hence it's "single threaded"). So there currently isn't any harm (besides possible unnecessary performance issues) when duplicates show up. Each message gets processed, one at a time, and if there are 20 messages with the same messageID, well then, the same DB records get the same exact (unnecessary) updates over and over again. Bad for performance, sure, but it doesn't create "bad data", dirty writes, our produce race conditions, etc.

I now want to add more Camel consumer threads to the equation, so that there might be, say, 10 consumer threads all reading off of myQueue.

Obviously, now we have a potential for WRITE contention in the DB. Say there are 2 messages on myQueue, and both have messageID=12345. One Camel consumer thread reads the 1st message, and another thread reads the 2nd message at the same time, or thereabouts. Each thread routes its message to its own copy/version of processorBean. Both processorBean instances execute around the same time, use the messageID to READ the same records out of the DB, performs the same operations to them in-memory, and then calls dao.updateAll(...) to WRITE the changes to the same records, at the same time. If both threads are updating the same DB records at the same time, there will be contention.

Another important note is that changing the DB (controlled by another team) to implement things like sharding, optimistic locking, etc., is not an option in this case (too long of a backstory).

My question: what can be done at the Java layer to mitigate WRITE contention in this situation? The WRITE contention must be dealt with from inside the application. Thoughts?

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Most databases can cope with multiple writes easily. What database are you using? –  Peter Lawrey Feb 13 at 16:35
Thanks @Peter Lawrey (+1) - we're on Sybase 15....I know, I know...(again, I have no control over this). Also, for the sake of this question, let's pretend that the DB can't cope with multiple writes. What's a pure Java solution here? –  AdjustingForInflation Feb 13 at 17:03
Even so, it should be able to handle concurrent writes. if it cannot, you can queue all your writes to one threads with a single threaded Executor, or use a global write lock in Java. –  Peter Lawrey Feb 13 at 17:04
Implementing serialized writing might remove any benefit you have from multiple consumers as most of the delay will be in the database. –  Peter Lawrey Feb 13 at 17:07
Sybase 15 supports the select for update syntax. Using that you can serialize your updates without making any code changes except for the transaction that now has to span the select and update. But as was stated above, this will really make parallel consumption from your message queue a mood point. Except for higher availability, maybe. –  Ralf Feb 13 at 17:37
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1 Answer

You can use a global lock like this

synchronized(ProcessorBean.class) {
    // Persist all updates to the widget list.
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