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'm new to python and am facing what seems to be a memory leakage error. I've written a simple script that is trying to fetch multiple columns from a postgres database and then proceeds to perform simple subtraction on these columns and store the result in a temporary variable which is being written to a file. I need to do this on multiple pairs of columns from the db and I'm using a list of lists to store the different column names.

I'm loop over the individual elements of this list until the list is exhausted. While I'm getting valid results(by valid I mean that the output file contains the expected values) for the first few column pairs, the program abruptly gets "Killed" somewhere in between execution. Code below:

varList = [ ['table1', 'col1', 'col2'],
        ['table1', 'col3', 'col4'],
        ['table2', 'col1', 'col2'],
        # ..
        # and many more such lines
        # ..
        ['table2', 'col3', 'col4']]


    conn = psycopg2.connect(database='somename', user='someuser', password='somepasswd')

    c = conn.cursor()

    for listVar in varList:
        c.execute("SELECT %s FROM %s" %(listVar[1], listVar[0]))

        rowsList1 = c.fetchall();

        c.execute("SELECT %s FROM %s" %(listVar[2], listVar[0]))

        rowsList2 = c.fetchall();

        outfile = file('%s__%s' %(listVar[1], listVar[2]), 'w')

        for i in range(0, len(rowsList1)):
            if rowsList1[i][0] == None or rowsList2[i][0] == None:
                timeDiff = -1

                timestamp1 = time.mktime(rowsList1[i][0].timetuple())
                timestamp2 = time.mktime(rowsList2[i][0].timetuple())
                timeDiff = timestamp2 - timestamp1

            outfile.write(str(timeDiff) + '\n')


    del rowsList1, rowsList2

#numpy.savetxt('output.dat', column_stack(rows))

except psycopg2.DatabaseError, e:
    print 'Error %s' % e

    if conn:

My initial guess was that there was some form of memory leak and in an attempt to fix this, I added a del statement on the two large arrays hoping that the memory gets properly collected. This time, I got slightly better outputs(by slightly better I mean that more output files were created for the db column pairs). However, after the 10th or 11th pair of columns, my program was "Killed" again. Can someone tell me what could be wrong here. Is there a better way of getting this done? Any help is appreciated.

PS: I know that this is a fairly inefficient implementation as I'm looping many times, but I needed something quick and dirty for proof of concept.

share|improve this question
How much data do you expect to process here? –  Greg Hewgill Oct 10 '12 at 23:50
cursor.fetchall() is probably the killer as it is going to try to duplicate your entire DB in core. fetchone() is probably what you want since you are processing it a row at a time anyway. –  msw Oct 11 '12 at 0:42
Is there any reason you can't just get the database to calculate your time differences in SQL? Then you could just iterate over the cursor and write out the values to the output file. –  James Henstridge Oct 11 '12 at 1:23
@GregHewgill: The database tables have around 250000-260000 rows. I'm trying to fetch all of these at once. –  AnlKumr Oct 11 '12 at 2:17
@msw: I'll be changing the code to use numpy or something similar to work with the entire list at once. So I would need something like fetchall() in the long run. Is there a less expensive alternative to this? –  AnlKumr Oct 11 '12 at 2:20

1 Answer 1

up vote 1 down vote accepted

I think the problem here is you are selecting everything and then filtering it in the application code when you should be selecting what you want with the sql query. If you select what you want in the sql query like this:

for listvar in varlist: select listvar[1], listvar[2] from listvar[0] where listvar[1] is not null and listvar[2] is not null

# then...

timeDiff = {}
for row in rows:
    timestamp1 = time.mktime(row[0].timetuple())
    timestamp2 = time.mktime(row[0].timetuple())
    timeDiff[identifier] = timestamp2 - timestamp1 #still need to assoc timediff with row... maybe you need to query a unique identifyer also?

#and possibly a separate... (this may not be necessary depending on your application code.  do you really need -1's for irrelevant data or can you just return the important data?)

select listvar[1], listvar[2] from listvar[0] where listvar[1] is null or listvar[2] is null

for row in rows:
    timeDiff[identifier] = -1 # or None
share|improve this answer
Thanks for your answer. I don't see how selecting both columns 1 and 2 in one go improves the situation as opposed to selecting them separately. Can you please throw some light on this? Thanks. –  AnlKumr Oct 12 '12 at 21:54
Good question. This allows the database engine to do the work of filtering the data. Using a cursor means that you will not get columns 1 and 2 all in one go, instead you will get only the subset of columns that have been pre-filtered by the database engine that meets your criteria. Database engines are generally much more efficient at sorting and filtering data than client side code. –  dhj Oct 14 '12 at 0:18
Also, you the two c.fetchall() lines are essentially doubling the amount of memory required to handle processing the data. @msw pointed out the problem with fetchall() in his comment. Using fetchall() essentially negates the benefit of using cursors. –  dhj Oct 14 '12 at 3:18

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.