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This is the ability to run your application on a cluster of servers with the intent to distribute the load and also provide additional redundancy.

I've seen a presentation for GridGain and I was very impressed with it.

Know of any others?

12 Answers 12

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There are several:

Now I haven't used all of these but I've used or investigated the majority of them.

GridGain and GigaSpaces are more centred around grid computing than caching and (imho) best suited to compute grids than data grids (see this explanation of compute vs data grids). I find GigaSpaces to be a really interesting technology and it has several licensing options, including a free version and a free full version for startups.

Coherence and Terracotta try to treat caches as Maps, which is a fairly natural abstraction. I've used Coherence a lot and it's an excellent high-performance product but not cheap. Terracotta I'm less familiar with. The documentation for Coherence I find a bit lacking at times but it really is a powerful product.

OSCache I've primarily used as a means of reducing memory usage and fragmentation in Java Web applications as it has a fairly neat JSP tag. If you've ever looked at compiled JSPs, you'll see they do a lot of String concatenations. This tag allows you to effectively cache the results of a segment of JSP code and HTML into a single String, which can hugely improve performance in some cases.

EHCache is an easy caching solution that I've also used in Web applications. Never as a distributed cache though but it can do that. I tend to view it as a quick and dirty solution but that's perhaps my bias.

memcached is particularly prevelent in the PHP world (and used by such sites as Facebook). It's a really light and easy solution and has the advantage that it doesn't run in the same process and you'll have arguably better interoperability options with other technology stacks, if this is important to you.

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  • Sorry for the mark down, but your answer is more a comprehensive overview of distributed caching frameworks rather than information on how to enable / setup clustering for Java applications :-)
    – Karl
    Feb 23, 2009 at 19:09
  • Can you query against any of these (Without going to a full blown ORM framework)? Mar 26, 2009 at 0:34
  • Not sure I understand the question. ORM and caching have a little in common but are mostly different goals.
    – cletus
    Mar 26, 2009 at 0:45
  • You've missed out on Infinispan in your list. :-) I have a more detailed comment on Infinispan as a separate answer. Jun 9, 2011 at 13:37
  • GridGain has now switched to a dual licensing model - Commercial license or GPLv3. You cannot use it commercially without paying for it. See here.
    – Chris
    Sep 13, 2011 at 11:47
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You may want to check out Hazelcast also. Hazelcast is an open source transactional, distributed/partitioned implementation of queue, topic, map, set, list, lock and executor service. It is super easy to work with; just add hazelcast.jar into your classpath and start coding. Almost no configuration is required.

If you are interested in executing your Runnable, Callable tasks in a distributed fashion, then please check out Distributed Executor Service documentation at http://code.google.com/docreader/#p=hazelcast

Hazelcast is released under Apache license and enterprise grade support is also available.

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Have you considered Infinispan? It is an open source data grid platform, from JBoss.org. For more details, I recommend you read this (old) blog post announcing the project, along with more interesting blog posts of note, including one on using Infinispan with Hibernate and as a standalone cache. Even more recently, on Red Hat's Enterprise Data Grid. There is a quick "getting started" guide, and a DZone RefCard too, even a YouTube video :)

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I think @cletus's summary is pretty good. I did want to mention that Terracotta provides a lot more than just a distributed cache in the form of a map. It clusters Java heap and synchronization primitives, turning a concurrent Java program into a distributed Java program. You can do caching with it (including using distributed versions of open source cache libs) or a bunch of other stuff.

For work distribution, there are some extra libs written on top of Terracotta, in particular the tim-pipes (for messages) and tim-masterworker (for Master-Worker style distribution) are great abstractions on top of Terracotta. This library is on the Terracotta Forge:

This recently added page may add a bit of additional info in comparison to some other potential data technologies:

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JPPF is also nice.

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If you want to go a little lower-level, there is JGroups, which provides you with the very basics of clustering java processes.

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And also check ProActive

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Another you can add to the list is Appistry CloudIQ. It is a distributed computing environment. It is available as a free download up to 5 machines. It includes load distribution as well as automatic fail over of work in the case of a hardware failure, among other features.

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For grid computing, you could also consider Ice Grid or DataSynapse GridServer. These both provide very effective mechanisms for distributing tasks and provide fail over and redundancy.

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I think your question has been interpreted in different ways, you ask about a library which you can use to "cluster enable" your application.

While some of the libs named above can help provide specific cluster functionality such as distributed caching, the more conventional way of enabling work load management is through the use of a J2EE container.

By setting up a clustered container instance this allows you to utilise HA features and work load management, clustering is almost transparent at the application level. I say almost because when writing applications that are going to be clustered you have to be careful how you manage state, for example if you implemented some sort of cache you would need to replicate the state of the cache across each machine.

A good starting place would be to download glassfish and try and setup a clustered glassfish instance.

Hope that helps.

Karl

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Also check Fura

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A very late answer -- but it depends partly on the way your application is configured. You might want to run an executable remotely instead of using one of the approaches above.

Apologies for the lack of links -- but until my reps up I can't post more than one. Products in italics should be easy to Google.

If you want to run an executable in a parametric search -- say you want to spin up the same executable with range of options for each instance -- then a traditional batch approach works well. This is a very traditional high performance computing approach that's still in wide use -- suitable infrastructures for handling this at enterprise scale are Platform LSF, DataSynapse GridServer, PBS or as it matures Windows HPC Server. You might also want to take a look at open source products like Globus and Condor. Depending on just how big your app is, you might also look at gLite, which is used for very large scale scientific projects like the LHC.

The trad HPC approach benefits from having your app code isolated from the processes comprising your compute infrastructure, but may take a performance hit, while others may show quicker throughput but be prone to memory leaks and other problems for long-uptime systems.

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