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My current approach:

  • I have one domain class - Application
  • Each application in my system is stored in "applications" bucket under APPLICATION_KEY key
  • Apart from application metadata stored in this bucket, each application has its own bucket called "time_metrics/APPLICATION_KEY" where I store time series in a way:

    KEY - timestamp / VALUE - some attributes

My concern is efficiency of queries made over specific time window for given application. Currently to get time series from some specific time window and eventually make some reductions I have to make map/reduce over whole "time_metric/APPLICATION_KEY" bucket, which what I have found is not the recommended use case for Riak Map/Reduce.

My question: what would be the best db structure for this kind of a system and how efficiently query it.

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What kind of data are you storing in time series? it is statistical data? – Daniel Oct 15 '13 at 19:09
yes - for each timestamp store number of active sessions of given application – mkorszun Oct 15 '13 at 20:39

2 Answers 2

up vote 4 down vote accepted

Adding onto @macintux's answer.

Basho has had a few customers that have used riak for time series metrics. Boundary has a nice tech talk about how they use Riak with their network monitoring software. They rollup data into different chunks of time (1m, 5m, 15m) for analysis. They also have a series of blog posts about lessons learned while implementing this system.

Kivra also has a good slide deck about how they use timeseries data with riak.

You could roll up your data into some sort of arbitrary time length, then read the range you need by issuing regular K/V gets, and then reconstruct the larger picture / reduce in your application.

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If you have spare computing power and you know in advance what keys you need, you certainly can use Riak's MapReduce, but often retrieving the keys and running your processing on the client will be as fast (and won't strain your cluster).

Some general ideas:

  • Roll up your data into larger blocks
    • If you're concerned about losing data if your client crashes while buffering it, you can always store the data as it arrives
    • Similar idea: store the data as it arrives, then retrieve it and roll it up at certain intervals
      • You can automatically expire data once you're confident it is being reliably stored in larger blocks, using either the Bitcask or Memory backends
      • Memory backend is quite useful (RAM permitting) for any data that only needs to be stored for a limited period of time
  • Related: don't be afraid to store multiple copies of your data to make reading/reporting easier later
    • Multiple chunks of time (5- and 15-minute blocks, for example)
    • Multiple report formats

Having said all that, if you're doing straight key/value requests (it's ideal to always be able to compute the keys you need, rather than doing indexing or searching), Riak can support very heavy traffic loads, so I wouldn't recommend spending too much time creating alternative storage mechanisms unless you know you're going to face latency problems.

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