I have a user table, transaction table and user_transaction table. the number of users is around 75,000 number of unique transactions possible in the application is about (rows in transaction table is between 1 and 3 million). user_transaction is the join of the above two table storing which transaction users did at what dateand time.. SO this table is going to be huge for 1 year of data (we are going to purge the active data from the table and archive it after 1 year). We are expecting the count to be around 50- 60 million rows. This will be final data size at the end of the year.
I would say average size is about 30 million records. Also a nightly import job updates all these tables and thats the only part when inserts are done in these tables, we only access data (use select queries) from our app.
What would be the best way to design the join table to make retrieval from the huge transaction table faster?We have added many fields in the table to denaormalize it and reduce joins, and have almost all data available only in the transaction and user_transaction table.
If we want to partition the table how do we go about partitioning? The application is used to query the more recent data most frequently.
We are thinking in terms of partitioning month wise the transaction table so we would have 1 table for each month..
Other option we were thinking of is have 7 tables each for 1 day of the week, but this is increasing the complexity of queries greatly, considering we are using hibernate.
How do we design the huge table of around 60 milion
More Details as requested:
I will have to make a diagram from the schema,here is some more info in the mean time: the relationships are not complex, its about 4 tables: users, transactions, users_transaction, resource table. user_transaction is the join table containing all other three tables id and that's the one which is going to be huge, since it will have separate entries on each of these id and also separate entries based on timestamp.
The number of users of the application right now is very less like <20. (but may grow in the future).
The main consumers of the tables are:
1) weekly self audit reports sent out as emails containing user activity details for past week from these tables. these are going to be sent (eventually) to like 75,000 users and generating report and sending out the email for 1 user currently takes around 1 minute (testing in pilot phase). we need to seriously improve performance on this to like less than 5 seconds per email. This is a back-end job which runs at night (should consume at most 3-4 hours)
2) Dashboards containing charts which show summarized view of the transaction from these tables. These queries run and summarize data based on various fields in a date range. Hence we are planning to summarize the user_transactions table storing counts for each day (not including time) if all other fields are same (users id, resource id, resource_eventid, location).
And partition these summary tables based on month. (one for each month)
Thing to note: the solution should be good for all databases (MySQL, DB2 etc..)and not just oracle.
Regards, Priyank Devurkar