I'm defining the data model for a monitoring/logging application with MongoDB storage. As I'm new to MongoDB I would appreciate some advice from you.
The application's writes:
I have 10'000 loggers, for each logger I have:
- static data that does not change over time (a few kilobytes per logger)
- data I must log that comes in continuously every few seconds from each logger
the volume of the data is:
- 1 MB or 9000 messages a day per logger
- the data must be deleted automatically by the system 30 days after creation
- 60% of the data gets fetched by other systems before 30 days and will be deleted on fetch
the application's reads:
- if the data gets read, than all messages at once which causes them to be deleted from the system
- the data gets read soonest 1 hour and latest 30 days after creation. average is 14 days.
- I calculated that the mean time for data storage is 14 days which gives 40'000 messages or 13MB per logger
- the total amount of data stored in the db on average is 130GB
- What data model would you use?
- How many shards would you use?
I considered the following data models:
- embedded: a document per logger with an array of messages; bad because of disk relocation when document grows
- a capped collection per logger; bad because of big disk usage and imprecise time till the data gets overwritten
- a collection of loggers for static data plus a collection per logger for messages using TTL feature; are 10'000 collections ok?
- a collection of loggers for static data plus a single collection for all messages using TTL and compound index including vehicle and messageId; isn't that collection really big?
- a collection of loggers for static data including a pre allocated array with id references plus a collection for all messages with indexed id; too complicated?
You are free to propose other data models