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We're in the process of building an internal, Java-based RESTful web services application that exposes domain-specific data in XML format. We want to supplement the architecture and improve performance by leveraging a cache store. We expect to host the cache on separate but collocated servers, and since the web services are Java/Grails, a Java or HTTP API to the cache would be ideal.

As requests come in, unique URI's and their responses would be cached using a simple key/value convention, for example...

KEY                                            VALUE
http://prod1/financials/reports/JAN/2007   --> XML response of 50Mb
http://prod1/legal/sow/9004                --> XML response of 250Kb

Response values for a single request can be quite large, perhaps up to 200Mb, but could be as small as 1Kb. And the number of requests per day is small; not more than 1000, but averaging 250; we don't have a large number of consumers; again, it's an internal app.

We started looking at MongoDB as a potential cache store, but given that MongoDB has a max document size of 8 or 16Mb, we did not feel it was the best fit.

Based on the limited details I provided, any suggestions on other types of stores that could be suitable in this situation?

share|improve this question
50MB response? Is pagination an option? This scenario has a code smell to it IMO. – lobster1234 Nov 17 '11 at 18:11
Not really, this is a system-to-system interaction, not user-to-system. – user646584 Nov 17 '11 at 18:50
up vote 1 down vote accepted

The way I understand your question, you basically want to cache the files, i.e. you don't need to understand the files' contents, right?

In that case, you can use MongoDB's GridFS to cache the xml as a file. This way, you can smoothly stream the file in and out of the database. You could use the URI as a 'file name' and, well, that should do the job.

There are no (reasonable) file size limits and it is supported by most, if not all, of the drivers.

share|improve this answer
Yes, that's right, the response is arbitrary. Did not know about GridFS...what about cache stores that leverage memory more than disk? Should we look at Memcached? – user646584 Nov 17 '11 at 19:40
MongoDB is memory-centric, and tries to keep as much in memory as it can. In general, I think caching files of several hundred megabytes is a rather unusual requirement, and I'm convinced that MongoDB could do the job. There may be other options, potentially including memcached, but I'm not familiar with any. – mnemosyn Nov 17 '11 at 20:10
I'm just curious if GridFS uses RAM as much as it would for non-GridFS usage....and just to be clear on the file caching, it's not that we're caching physical files, a 100MB+ response could come from an aggregation of multiple data sources, and joining that much data takes time, so caching the result certainly does make sense for subsequent requests by avoiding the aggregation step. – user646584 Nov 17 '11 at 20:23
GridFS is implemented on top of MongoDB collections, it's pretty straightforward. I understand that you are caching the output of a computation; physical files, btw, could also be used for caching (but I don't see a reason to do so) – mnemosyn Nov 17 '11 at 20:55

Twitter's engineering team just blogged about their SpiderDuck project that does something like what you're describing. They use Cassandra and Scribe+HDFS for their backends.

share|improve this answer
Looks like overkill, but looks interesting nonetheless – user646584 Nov 18 '11 at 0:23

The simplest solution here is just caching these pieces of data in a file system. You can use tmpfs to ensure everything is in the main memory or any normal file system if you want the size of your cache be larger than the memory you have. Don't worry, even in the latter case the OS kernel will efficiently cache everything that is used frequently in the main memory. Still you have to delete the old files via cron if you're using Linux.

It seems to be like an old school solution, but it could be simpler to implement and less error prone than many others.

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