I have time-series data from the financial market. The number of new records is around one million each day. Because of the huge size of data, I am concerned about the query response speed.

The data comes from the exchange with UUID. It's understandable because the timestamp is not unique, they would need an artificial unique id to identify the duplicates when there is a problem with the network.

I searched for several articles on this site. I figured the following points:

  1. Save UUID as binary instead of a string
  2. Don't use UUID as a primary key because UUID is not sequential and it would lead to inefficient writing.
  3. Integer timestamp is faster than MySQL's Timestamp data type.

So, I made the following query to create table:

    CREATE TABLE exdata (
        id               BIG INT UNSIGNED        NOT NULL    AUTO_INCREMENT , 
        uuid             BINARY(16)              NOT NULL, 
        tstamp           BIG INT                 NOT NULL, 


        PRIMARY KEY (`id`), 
        UNIQUE INDEX idx_uuid (`uuid`), 
        INDEX idx_tstamp (`tstamp`)

The UUID is never used for retrieval query but I need it for the duplicate check. So I made a unique index for it. The retrieval query is all done by timestamp so I need an index on it, too. The surrogate key, id is to guarantee the sequential writing.

I feel ok with the table design but I'm not sure if this is the best way for my situation (I'm a novice with the database.) Especially, I am not quite sure if it's ok to have two artificial columns, the id and the UUID. They are data without any meaning and I will never use them for my research. In my mind, I worry that they would make the DB only bigger and more inefficient. (The index on two columns will make the size bigger only.) I'm not quite sure if I'm in the right track.

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