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.

With this table:

CREATE TABLE test_insert (
    col1 INT,
    col2 VARCHAR(10),
    col3 DATE
)

the following code takes 40 seconds to run:

import pyodbc

from datetime import date


conn = pyodbc.connect('DRIVER={SQL Server Native Client 10.0};'
    'SERVER=localhost;DATABASE=test;UID=xxx;PWD=yyy')

rows = []
row = [1, 'abc', date.today()]
for i in range(10000):
    rows.append(row)

cursor = conn.cursor()
cursor.executemany('INSERT INTO test_insert VALUES (?, ?, ?)', rows)

conn.commit()

The equivalent code with psycopg2 only takes 3 seconds. I don't think mssql is that much slower than postgresql. Any idea on how to improve the bulk insert speed when using pyodbc?

EDIT: Add some notes following ghoerz's discovery

In pyodbc, the flow of executemany is:

  • prepare statement
  • loop for each set of parameters
    • bind the set of parameters
    • execute

In ceODBC, the flow of executemany is:

  • prepare statement
  • bind all parameters
  • execute
share|improve this question
    
Try using an explicit transaction. –  Lasse V. Karlsen Apr 17 '11 at 13:55
    
Reading stackoverflow.com/questions/1063770/…, it doesn't seem like pyodbc has support for explicit transaction. –  sayap Apr 17 '11 at 14:26
    
That's not the way I read it. You turn off auto-commit, and have to explicitly call rollback or commit. However, I have no idea if it makes a difference or not, but it would be something I would try myself. –  Lasse V. Karlsen Apr 17 '11 at 15:31
    
What you described is exactly what my code does. Autocommit is off by default. –  sayap Apr 17 '11 at 15:32
    
I don't see any reason for this to be slow. What version of SQL Server, and is the installation a standard installation, i.e. no funny configs etc? Like running databases from USB etc? You can also try and attach SQL Profiler to the db and see if you can spot where the inefficiency comes from, but your equivalent code in c# executes in less than 3 seconds on my pc. –  Ryk Apr 18 '11 at 3:10
show 1 more comment

2 Answers 2

up vote 3 down vote accepted

I was having a similar issue with pyODBC inserting into a SQL Server 2008 DB using executemany(). When I ran a profiler trace on the SQL side, pyODBC was creating a connection, preparing the parametrized insert statement, and executing it for one row. Then it would unprepare the statement, and close the connection. It then repeated this process for each row.

I wasn't able to find any solution in pyODBC that didn't do this. I ended up switching to ceODBC for connecting to SQL Server, and it used the parametrized statements correctly.

share|improve this answer
    
Thanks for confirmation and tips. I have filed this as code.google.com/p/pyodbc/issues/detail?id=250 –  sayap Mar 29 '12 at 23:33
add comment

Tried both ceODBC and mxODBC and both were also painfully slow. Ended up going with an adodb connection with help from http://www.ecp.cc/pyado.html. Total run time improved by a factor of 6!

comConn = win32com.client.Dispatch(r'ADODB.Connection')
DSN = 'PROVIDER=Microsoft.Jet.OLEDB.4.0;DATA SOURCE=%s%s' %(dbDIR,dbOut)
comConn.Open(DSN)

rs = win32com.client.Dispatch(r'ADODB.Recordset')
rs.Open('[' + tblName +']', comConn, 1, 3)

for f in values:
    rs.AddNew(fldLST, f)

rs.Update()
share|improve this answer
add comment

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.