• System currently consists of 2 devices.
  • Each device has 10 nodes that measure data. That data is written to DB each 5 seconds.
  • I have estimated the maximum 50:1 (read:write) ratio for that setup for now. This is very likely to change when new devices/nodes are introduced.
  • I'm currently embedding everthing in one document (example here: http://pastebin.com/4dATY5NF)
  • My 3 main use-cases are:
    • adding measurement to the DB
    • getting the last measurement from all nodes (for 5 nodes this would return 5 measuremnets)
    • getting a list of measurements from a given day (long list of measurements matching input date/time criteria).


My main concern is about the documents that grow a lot over time (inserting to embedded array of measurements) and the general document structure that makes the measurements hard to query for a given date/time range.

E.g. Even if there was only one node reporting data each 5 seconds, then the total number of measurements in embedded array (only for one day) is: 24*60*60/5=17280. Having 5 nodes reporting for a month gives: 5 embedded arrays with 518400 elements (in one document!). The longer the device works, the more entries it has in embedded array of measurements for each node attached.


  • How does estimated read/write ratio influence decision of embedding vs linking?
  • Is it justified in this case to sacrifice all the good things of embedding and split the data into 2 collections?

    What I have been thinking of is e.g. one collection for device/node configuration (embedding information here since there isn't much of it), and the second only for measurements (with references to the device and node it came from). I think that this will cost a few calls to the DB more, but will be better in terms of performance and memory usage.

  • Right now MongoDB does not support proper querying of embedded documents, you can't query for data from embedded documents - you can only query the whole document at a time (there are voices to add such a feature, look here: jira.mongodb.org/browse/SERVER-142). Also there is maximum size of a document around 16MB (not sure if it's not 32MB in newer versions, though) - BUT you can use GridFS to deal with it. This clearly asks to keep the growing data in a collection ;) I'd use three collections: objects, nodes and measurements and control the "quasi-joins" on a code layer. – mrówa Oct 19 '12 at 0:31

In order :

  • It doesn't. Embedding an infinitely growing structure in a single document does not scale and should be avoided. It is preferable by far to store each measurement as a single document. The read/write ratio is not very relevant once you go for that although write performance will be more stable (MongoDB has to move growing documents regularly which can cause write latency spikes).
  • There are actually not a lot of "good things" about embedding. It complicates querying, there's no way to get a small part of the embedded structure and so forth. As such it is not only justified but highly encouraged to move to two seperate collections. In future proof schemas you embed if, and only if, you always need the entire embedded structure if you query the top level document and if that embedded structure is size bound regardless of how many users or data your system has to deal with.
  • Thank you - this looks like a good clarification to my problems. I'm almost finishing the DB redesign now. – schedar Nov 28 '12 at 7:45
  • @schedar, would you like to share your results? – wiesson Jul 31 '14 at 7:30

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