Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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.

first Method:

for i in range (100000000):
    cur.execute("select id from testTable where name = 'aaa';")

second method:

cur.execute("""PREPARE selectPlan  AS
    SELECT id FROM testTable WHERE name = 'aaa' ;""")

for i in range (10000000):
    cur.execute("""EXECUTE selectPlan ;""")

third method:

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.

share|improve this question
2  
"So far I have tried three different method, and the results was similar" Correct. You're doing approximately the same database transaction 100,000,000 times. What's the point? Do you want more speed? Perhaps you should stop using a database and just process a flat file. –  S.Lott Apr 8 '11 at 12:34
2  
Why do you want to run the same query that often? –  halfdan Apr 8 '11 at 12:35
    
I think that without more details on your actual database it is hard to say which is the most efficient.. –  gnur Apr 8 '11 at 12:35
    
Get afaster server. Point. With those amounts nivolved basically RAM + disc IO will be the only relevant factors. Get a SAN and see the query fly. Or a bunch of SSD ;) to see it run really fast. –  TomTom Apr 8 '11 at 12:49
1  
Can you go into a bit more detail about what you are trying to accomplish with this repeated query? There may be a better way to approach it. –  Hugh Bothwell Apr 8 '11 at 13:35

3 Answers 3

This sort of benchmark is unlikely to produce any useful data, but the second method should be fastest, as once the statement is prepared it is stored in memory by the database server. Further calls to repeat the query do not require the text of the query to be transmitted, so saving a small about of time.

This is likely to be moot as the query is very small (likely the same quantity of packets over the wire as repeating sending the query text), and the query cache will serve the same data for every request.

share|improve this answer

What's the purpose of retrieving such amount of data at once? I don't know your situation, but I'd definitely page the results using limit and offset. Take a look at: 7.6. LIMIT and OFFSET

share|improve this answer
    
The example is executing the exact same query repeatedly, not fetching a huge number of rows from one query. How are LIMIT and OFFSET going to help? –  Wooble Apr 8 '11 at 12:51
    
He didn't mention what he's doing with the result - basically if you select data - why all at once. Just for pure fun? When you want to test DB engine why bother using Python... –  soltysh Apr 8 '11 at 12:56

If you just want to benchmark SQL all on it's own and not mix Python into the equation try pgbench.

http://developer.postgresql.org/pgdocs/postgres/pgbench.html

Also what is your goal here?

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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