0

I have more than 200 separate time series data(each represent one variable) that I gather from different sources/REST API calls.

The frequency of each variable is different. Example temperature data is coming at very high frequency, but status data is very less frequent.

I am looking for suggestions for scalable table design to store these data. If I store all the data in one table with timestamp being the key, I think the table will have so much nulls.

0

Based on your description, my first thought is something like this:

Create Table Data_Type
(
    ID Int Identity
    , Data_Type_Description VarChar(100)
)

Create Table Data_Values
(
    ID Int Identity
    , Data_Value_Time_Stamp TimeStamp
    , Data_Type_ID Int       -- foreign key to Data_Type
    , Value Numeric(17, 4)   -- I'm guessing here
)

Does that make sense?

  • 1
    yes, this is a good approach. It had crossed my mind, only one concern is that each time series value is of different data type. I have to store them as string and do the data type casting when I query it. – Flint Feb 10 at 6:04

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.