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We're in the process of deploying a highly dynamic website. About 20,000 items are processed and updated every minute at peak capacity. Each item can range from a size of 1kb to 500kb. These items needs to be retrieved, processed and updated in cache every minute.

We are expecting a traffic of upto 1000 users in the first two-three months. As each user lands on the website, they can be requesting some popular content, but others may request unpopular content. All content is a higher level processed form of what sits in the persistent store. Hence it is absolutely necessary to have all the processed items sitting in a low-latency store for superb user-experience, be it popular or unpopular.

We've tried Memcache, Redis and Couchbase separately.

Memcache is super fast but we ran into issues where certain slabs ran out of memory and active items started getting evicted.

Redis, relatively slower than Memcache, is great if you want persistence in the items.

However soon we realized we wanted sharding and replication.

Couchbase offered that out of the box.. The Moxi-client that interfaces with the Couchbase server has its own problems of not being able to handle heavy concurrent processes. It will start missing sets and gets every now and then. Moved over to the Python SDK that interfaces with it. It performed poorly in the event when one of the nodes in the cluster went down, it wasn't able to discover the new topology at all. Ended up losing some data in cache and inactivity on the site for several precious hours.

At a point where we realize that there is no perfect product out there that will suite our needs. You have to be aware of all the technologies and your own needs. You have to foresee how your data will evolve and be prepared accordingly. The best solution is probably a hybrid of technologies. However putting this out in the hope that maybe there is something other there. We're approaching the end of 2012. How hard can it be for an out of the box solution backed up with powerful hardware to deliver what we need.

Any thoughts and links to insightful articles would be greatly appreciated. Thanks!

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Why would you need replication on a cache system? Did you just not have enough memory allocated across your memcache cluster? –  Mike Brant Oct 26 '12 at 0:45
    
We need replication because time to time our servers have gone down due to hardware failures on the hosting providers end. In such an event, we need to have a contingency in place. Yes initially we didn't have enough memory in there, but also because we had too many items of the same size and not enough slabs allocated to hold them. –  Shah W Oct 26 '12 at 1:57
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Ok just seems strange to want that level of persistence in a cache. Seems that you are really looking for horizontally scalable persistent storage if you don't have any tolerance for rebuilding a high speed cache. Perhaps mongodb, dynamodb, or similar might meet your needs, but certainly wouldn't be as fast as in memory caching. Of course you could also look at using in memory caching along with some system to prime the cache so as to reducec latency for cases when you need to rebuild the cache do to outtage on a partition, application deployments, etc. –  Mike Brant Oct 26 '12 at 5:55
    
i too am building a highly dynamic website around couchbase. it seems like the main problem you have is with dropped writes. what about if you were to do two or more identical parallel requests to different servers when setting information? i'm not sure if you have this kind of setup, but it would provide the required redundancy. –  mulllhausen Oct 27 '12 at 9:50
    
I would suggest you look at a few more things: Riak, Hazelcast, and maybe VoltDB. –  Joshua Martell Oct 28 '12 at 16:16

1 Answer 1

Here are a few notes about some of the technologies you have mentioned above.

Memcahed:

Memcached is only a caching system and will not provide you with any data persistence. If you choose to use memcached then you will need to choose some other type of persistent store to keep all of you data. Memcached is also a very simple caching system and does not provide you with replication, but their are different project (like repcache) that have added features like this to memcached. I would only use memcached if I wanted to use a relational database as my persistence layer.

Redis:

Redis is a data structure server and should only be used for that purpose. The downside to redis is that you can only run it on a single server and if you want to have multiple servers of redis then you need to do application sharding. Most of the deployments of redis I have seen are along side another database technology.

Couchbase:

Couchbase 2.0 will will turn the product into a document database. The product has memcahced technology inside it so you get memcached out of the box which means sub-millisecond latencies. On top of this you get replication, cross data center replication and querying support. Also, note that most Couchbase SDK's don't use moxi and that the Python SDK is still in beta.

One thing that might be useful for you to do is to check out the YCSB benchmarking project along with some of the results that have already been published. This project will allow you to get a good idea of how these and other databases perform under load. Then once you find some you like you can look through their feature list and figure out with product has the features that best fits the application your developing.

Also, if any of my information about the databases above is incorrect please let me know. These projects are evolving quickly and sometimes it's har to keep up.

EDIT: I should also mention that Couchbase is the only databases out of the ones listed that provide replication, sharding, and low latency. I imagine redis will allow you to have a replica server and therefore replication, but any sharding you do will have to be done at the application layer.

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