- 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.