I'm in the middle of prototyping a social network (using ROR 3) and decided to check out Neo4j and while it looks great, I have a question about scaling and performance in terms of design.
I've researched how Etsy puts together and activity feed (see http://www.slideshare.net/danmckinley/etsy-activity-feeds-architecture ), and understand how messaging queues can fan out activities (such as sharing a picture and making this activity available to your 500 or so friends in their news feed). I also understand how news feeds can be cached (memcache) and how lookups can be performed against Redis..
All in all, it seems that to make a high performance activity feed that scales well (and social network in general) the common pattern is to use sharding, horizontal scaling, memcache, rabbitmq, redis, Mongodb, innodb (mysql) etc - all in attempt to compensate for high volumes, disk reads, etc.. But this is quite a bit of overhead in terms of design..
Can Neo4J eliminate the need, at least early on, for such an arrangement? I mean is it so fast that I don't need to set a message queue for fan outs and messaging, don't need to set up "activities" cache for every action a user performs, and can use it to handle both ordering and storing messaging? Can a news feed like Facebook's be created with such a system, or is the high performance activity feed limited to basic status updates?
If those questions are too broad, let me ask it a different way: Could I write facebook or twitter using neo4j and eliminate the need for message queuing to fan out updates (instead I want to get a live stream of updates on the fly), memcache for newsfeeds, and cached activity feed objects? Or will I find myself doing the same thing or even more to handle hundreds of request per second?
I ask the because it would save quite a bit of time to use Neo4J if it can indeed handle high volumes without having to use the tricks Etsy, Twitter, and Facebook employ to maintain high performance.