I want to run various select query 100 million times and I have aprox. 1 million rows in a table. Therefore, I am looking for the fastest method to run all these select queries.
So far I have tried three different methods, and the results were similar.
The following three methods are, of course, not doing anything useful, but are purely for comparing performance.
for i in range (100000000): cur.execute("select id from testTable where name = 'aaa';")
cur.execute("""PREPARE selectPlan AS SELECT id FROM testTable WHERE name = 'aaa' ;""") for i in range (10000000): cur.execute("""EXECUTE selectPlan ;""")
def _data(n): cur = conn.cursor() for i in range (n): yield (i, 'test') sql = """SELECT id FROM testTable WHERE name = 'aaa' ;""" cur.executemany(sql, _data(10000000)) And the table is created like this: cur.execute("""CREATE TABLE testTable ( id int, name varchar(1000) );""") cur.execute("""CREATE INDEX indx_testTable ON testTable(name)""")
I thought that using the prepared statement functionality would really speed up the queries, but as it seems like this will not happen, I thought you could give me a hint on other ways of doing this.