Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I need to choose a database for storing statistical data (in fact this is a series of timestamp-value data). I understand that virtually any database can handle this, but there are a couple of requirements:

  • it should be fast;
  • it should be able to handle A LOT of data (10s of gigabytes) and splice it fast;
  • it should have a stable, maintained and handy interface to Erlang;
  • it should be available from Python;
  • it should be able to make something like the thing named "capped collections" in mongodb: collection with the capped size, with old data being rewritten if the size reach the limit.

I thought about mongo, but emongo seems to be a little dead - the last commit was made 7 months ago.

share|improve this question
Did you look into CouchDB ? – Yasir Arsanukaev Jan 31 '11 at 14:43
Yes, but I'll be glad to hear about another alternatives. – lambdadmitry Jan 31 '11 at 15:40

4 Answers 4

Riak may be a good choice (here's a Riak comparison to MongoDB). It's written in Erlang, is distributed, fault tolerant and scales linearly. It has clients for Erlang, Javascript, Java, PHP, Python, Ruby. A REST interface, a protobuf interface and so many other goodies (Map Reduce, links, replication, pre/post commit hooks, ...). It's open source and is created maintained by Basho. Basho has commercial offering of Riak as well with some extra features (like multi-site replication, SNMP monitoring, etc) but there's awsome value in the OS version.

Depending on your needs it may make sense to combine a couple of technologies. For example you could front your system with an in memory store like Redis for speed and use Riak to persist the data. Redis + Riak is a pretty sweet stack.

share|improve this answer
Basho has some smart people working for the them. Rusty Klophaus of Nitrogen fame and and the Webmachine guys. Oh yea and rebar came out of Basho too (dizzyd!). – Jeremy Raymond Mar 11 '11 at 5:11

I think postgresql and pgsql driver it will be best solution for you.

share|improve this answer
can you explain your advice please? – lambdadmitry Jan 31 '11 at 16:09
I use mnesia and couchdb in my project and this db not very suited for large data sets. Then postgresql have driver to python. I use pgsql/erlang in my work in heavily message server and postgresql has not yet been complaints – 0xAX Jan 31 '11 at 16:32
i dont think it's good idea to use relational databases to handle statistical data, it's just completely different approach – keymone Feb 2 '11 at 10:33
The thing with databases(traditional) is that they can store data in ordered form on disk. They where optimized for it. When ordered we often have a very good cache hit ratio. – Flinkman Feb 9 '11 at 23:28

Files on disk, rotated, will serve your demands fine. The point is you don't want to search data quickly.

share|improve this answer

redis is quite a close contender.

The only current limitation is the size of the dataset, which has to be either store in full in memory or use the VM method, in which only the key space has to fit in memory (however a bit of spare room for actual data would be nice) but has a very slow startup time.

Antirez, the developer, is rewriting the backend into something called diskstore which should solve your issue. It's not baked yet, but I have a lot of confidence in this project.

About the capped collections, redis does not have a direct way for handling that. But the LTRIM function can help you out.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.