I'm looking for a "best practise" way to handle incoming time series data.
One data point consists for example of time, height, width etc. for every "tick". Is it a good idea to save n data points in-memory with a collection class and later "flush" the points to a database after reaching the limits of the collection?
Or should the data points be directly written to the database in the first place, so that my object can run queries against it?
I know that this is little information about my requirements, so the question is how fast is the data access to a database compared to a hybrid in-memory and database solution.
Say there are at most 500 data points per second to handle and the data has to be calculated somehow on every point incoming. With a pure database solution, one has to run a store query on every incoming point. I guess this is not effective, but I don't know if such a database is able to "listen" and do this fast.
A nice feature for the database would be to send the points to subcribers. Is this possible with SQL server?