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I am currently selecting a large list of rows from a database using pyodbc. The result is then copied to a large list, and then i am trying to iterate over the list. Before I abandon python, and try to create this in C#, I wanted to know if there was something I was doing wrong.

clientItems.execute("Select ids from largetable where year =?", year);
allIDRows = clientItemsCursor.fetchall() #takes maybe 8 seconds.

for clientItemrow in allIDRows:
    aID = str(clientItemRow[0])
    # Do something with str -- Removed because I was trying to determine what was slow
    count = count+1

Some more information:

  • The for loop is currently running at about 5 loops per second, and that seems insanely slow to me.
  • The total rows selected is ~489,000.
  • The machine its running on has lots of RAM and CPU. It seems to only run one or two cores, and ram is 1.72GB of 4gb.

Can anyone tell me whats wrong? Do scripts just run this slow?

Thanks

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1  
Is clientItemRow[0] really big? 489,000 is a low of rows, but 5rows/s is laughably slow. Also, someone can correct me if I'm wrong, but I'm pretty sure you're code, as written, will only run on one core, but should still be miles faster than 5 iterations per second. Also, you can use the builtin cProfile to see where you're hitting a bottle-neck. –  prelic Feb 22 '12 at 20:09
    
As for the CPU usage - if you are doing fancy things with the results you retrieve, you can get more cpu cores into the mix by using Python's multiprocessing module - but lets get this interation sorted out first. –  jsbueno Feb 22 '12 at 20:09
    
what does type(allIDRows) return? –  tMC Feb 22 '12 at 20:10
3  
@prelic: I suspect there is something terribly wrong with watherver object is returned by the odbc driver "fetchall" - the only way it could be that slow is if iterating over it is O(N) or worse. –  jsbueno Feb 22 '12 at 20:11

5 Answers 5

up vote 14 down vote accepted

This should not be slow with Python native lists - but maybe ODBC's driver is returning a "lazy" object that tries to be smart but just gets slow. Try just doing

allIDRows = list(clientItemsCursor.fetchall())

in your code and post further benchmarks.

(Python lists can get slow if you start inserting things in its middle, but just iterating over a large list should be fast)

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WOW. I went ahead and made this change, and the number per second went over 1000. This is amazing. Will be accepting this as the answer. –  nycynik Feb 22 '12 at 20:09
4  
It would be a nice thing to find the web page for the pyodbc project and enter this as a bug. If fetchall is not returning a list, it should be soemthing more efficient than a list, not a show stopper –  jsbueno Feb 22 '12 at 20:16
    
Great answer, got me thinking is a list the fastest way of storing collected data like this? Would a set, tuple, dict(with dummy value), etc be any faster than a list like this? –  Lostsoul Feb 22 '12 at 20:41

It's probably slow because you load all result in memory first and performing the iteration over a list. Try iterating the cursor instead.

And no, scripts shouldn't be that slow.

clientItemsCursor.execute("Select ids from largetable where year =?", year);
for clientItemrow in clientItemsCursor:
    aID = str(clientItemrow[0])
    count = count + 1
share|improve this answer
1  
That is in the opposite direction of what I suggested - only testing will tell, and I hope the O.P. keeps us updated. Iteration over a list should not be slow anyway, but possibly for clientItemRow in cursor.fetchall(): ... as you suggest is better. –  jsbueno Feb 22 '12 at 20:08
1  
I have tried this menthol, and it was not faster at all. This does match the pyODBC documentation. It is still very slow to iterate of them. –  nycynik Feb 22 '12 at 20:13

More investigation is needed here... consider the following script:

bigList = range(500000)
doSomething = ""
arrayList = [[x] for x in bigList]  # takes a few seconds
for x in arrayList:
    doSomething += str(x[0])
    count+=1

This is pretty much the same as your script, minus the database stuff, and takes a few seconds to run on my not-terribly-fast machine.

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When you connect to your database directly (I mean you get an SQL prompt), how many secods runs this query?

When query ends, you get a message like this:

NNNNN rows in set (0.01 sec)

So, if that time is so big, and your query is slow as "native", may be you have to create an index on that table.

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This is slow because you are

  1. Getting all the results
  2. Allocating memory and assigning the values to that memory to create the list allIDRows
  3. Iterating over that list and counting.

If execute gives you back a cursor then use the cursor to it's advantage and start counting as you get stuff back and save time on the mem allocation.

clientItemsCursor.execute("Select ids from largetable where year =?", year);
for clientItemrow in clientItemsCursor:
   count +=1

Other hints:

  • create an index on year
  • use 'select count(*) from ... to get the count for the year' this will probably be optimised on the db.
  • Remove the aID line if not needed this is converting the first item of the row to a string even though its not used.
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