I have an Oracle 10g database of genomic data with several >100 million row tables that look similar to the following:
ID AssayID Sample Mutation Call Frequency 101 12578 Sample01 T367G P 0.87 102 31384 Sample01 A2345C A 0.28 103 3453 Sample01 T247C P 0.67 104 12578 Sample02 G235del M 0.11 105 7868 Sample02 None P 0.98
IDis a unique PK,
Sampleare foreign keys.
- Assume that for each
Samplevalue, there are ~50k rows.
AssayIDoccurs exactly once per
Mutationis relatively random and
Callcan be one of three values.
- Queries on this table can use any one or a combination of the
Call, or a value in a linked table via
A typical query:
select t.* from this_table t join assay_table a on t.assayid = a.assayid join sample_table s on t.sample = s.sample where s.name = 'xxx' and a.gene in ('abc', 'xyz') and t.call = 'P'
- Queries against these tables always join multiple smaller tables.
WHEREstatement will usually filter data on multiple columns, but never from only the base data table.
How do I design the table to get the best query performance when selecting all columns?
Do I use indexes only, partitions only, or a combination of the two? Disk space and insert/update performance is not an issue.