We're collecting market data on about 30,000 financial instruments. We want to keep historical data for every 10 minutes or so. It's all saved in a PostgreSQL table. I am debating between two approaches:
Store price of all symbols every 10 minutes, with nice round timestamp.
- Makes querying easy, since timestamp is known a-priori just by rounding to last 10-minute multiple.
- Larger data set
- Large inserts will affect performance
- Won't convey how often instrument data changes without storing additional information
Store each symbol only when it is updated, if time elapsed since last update is longer than 10 minutes.
- Fewer and smaller (cheaper) inserts
- Smaller data set
- Data will more closely reflects actual frequency of changes (for instruments which change less than once every 10 minutes)
- Queries will be more complex/expensive because timestamp of desired row isn't known.
- We have many more inserts than queries
- We will want to be able to scale to significantly more instruments, possibly slightly higher frequency updates.
I have been doing "Rolling Updates" and I don't see any performance problem with the queries. There is only a single multi-column index on the table, but inserts still seem to be much more expensive than queries, so this seems to be the better-suited method. Is this a reasonable approach? Are there other considerations I am missing?