Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

Hey guys, i have the following problem: 1 process executes a very large query and writes the results to a file, inbetween the process should update an status to the database.

first thaught: NO PROBLEM, pseudo code:

db = mysqldb.connect()
cursor = db.cursor()
large = cursor.execute(SELECT * FROM VERYLARGETABLE)
for result in large.fetchall():
if timetoUpdateStatus: cursor.execute(UPDATE STATUS)

problem: when getting 9 million results the "large = cursor.execute(SELECT * FROM VERYLARGETABLE)" never finishes... i figured out a border at 2 million entrys at 4 columns where the mysql server finished the query after 30 seconds but the python process keeps running for hours... that maybe a bug in the Python MySQLDB library..

SO SECOND TRY: db.query function with db.use_results() and fetch_row():

db = mysqldb.connect()
cursor = db.cursor()
large = large.use_result()
while true:
    for row in large.fetch_row(100000):
    if timetoUpdateStatus: cursor.execute(UPDATE STATUS) <-- ERROR (2014, "Commands out of sync; you can't run this command now")

so THIRD TRY was using 2 MySQL connections... which doesnt work, when i open a second connection the first one disappears....

any suggestions??

share|improve this question

3 Answers 3

up vote 3 down vote accepted

Try splitting up the "select * from db" query into smaller chunks

while True:
    cursor.execute('select * from verylargetable LIMIT %s,%s', (index, index+10000))
    records = cursor.fetchall()
    if len(records)==0:
share|improve this answer
yes, this made my day – TekTimmy May 17 '11 at 20:00

Try using a MySQL SSCursor. It will keep the result set in the server (MySQL data structure), rather than transfer the result set to the client (Python data structure) which is what the default cursor does. Using an SSCursor will avoid the long initial delay caused by the default cursor trying to build a Python data structure -- and allocate memory for -- the huge result set. Thus, the SSCursor should also require less memory.

import MySQLdb
import MySQLdb.cursors
import config

cons = [MySQLdb.connect(
    host=config.HOST, user=config.USER,
    passwd=config.PASS, db=config.MYDB,
    cursorclass=MySQLdb.cursors.SSCursor) for i in range(2)]
select_cur, update_cur = [con.cursor() for con in cons]
select_cur.execute(SELECT * FROM VERYLARGETABLE)
for i, row in enumerate(select_cur):
    if i % 100000 == 0 or timetoUpdateStatus:
        update_cur.execute(UPDATE STATUS)
share|improve this answer
This is very nice, but you would need another connection for update queries, as use of SSCursor requires the whole resultset to be fetched before more queries can be executed. – kullero Sep 23 '14 at 10:35
@kullero: Thanks very much for the correction. – unutbu Sep 23 '14 at 11:13

Use the LIMIT statement in your big select:

limit = 0
step = 10000
db = mysqldb.connect()
cursor = db.cursor()
while true:
    cursor.execute(query, (step, limit))
    for row in cursor.fetch_all():
    if timetoUpdateStatus:
    limit += step

Code is not tested, but you should get the idea.

share|improve this answer
thank you, didnt know that! – TekTimmy May 17 '11 at 20:00

Your Answer


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.