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I am fairly new to programming and do not understand the reason for the slowdown in my program.

I am working with data sets of about 350,000 - 500,000 rows and would appreciate some direction.

I need to check all entries in a new list against the old in order to update the old entries as well as add the completely new entries to the the end of the list.

If a print statement is added to the reassignment loop and the new line exception the first few thousand iterations are fast but after that the program becomes very slow. (almost 1000 complete loops in the first 3 seconds, after about the 20,000th iteration the speed has reduced to slower than 100 complete loops in 5 seconds and by the 60,000th iteration it is slower than 100 complete loops in 15 seconds.)

RAM is less than 70% usage and CPU has held constant between 48 and 50%

The code looks like this:

import gc
gc.disable() #this was added to possibly improve speed

def updateOldList(oldListOfLists, newListOfLists):
    oldListIndexDict = dict()
    IDNumber = <index of ID number>
    for i in range(len(oldListOfLists)):
        oldListIndexDict[oldList[i][IDNumber]] = i
    for i in range(len(newListOfLists)):
            oldIndex = oldListIndexDict[newListOfLists[i][IDNumber]]
            oldListOfLists[oldIndex][0] = newListOfLists[i][0]
            oldListOfLists[oldIndex][3] = newListOfLists[i][3]
            del(oldListIndexDict[newListOfLists[i][IDNumber]]) #this was added to limit the number of entries in the hash table to attempt to improve speed
            oldListOfLists= oldListOfLists + newListOfLists
return oldListOfLists

The inner lists in each of the lists of lists need to remain ordered so I don't think I can use sets.

The following two questions were very similar enough that I tried/ considered their comments before asking.

python function slowing down for no apparent reason

Python function slows down with presence of large list

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What if you remove gc.disable()? The same? –  zch Apr 22 '13 at 19:31
That is the way I had it originally, there was a minor gain by adding it. –  user2308425 Apr 23 '13 at 12:17
Don't use a bare except: clause, list exactly what you want to catch to avid hiding bugs. My concern at first glance would be that your old = old+new line is copying and destroying larger and larger lists every loop iteration. Use old.extend(new) instead. –  gps Apr 23 '13 at 16:20
This solved the issue. I would mark the question answered if you resubmit this as an answer. Thanks –  user2308425 May 6 '13 at 16:25

2 Answers 2

up vote 2 down vote accepted

Ok, let's work with Python 3.3. I suppose for each list in oldListOfLists should be one in newListOfLists, and you mostly update the values, so, for instance, the 0th of the oldListOfLists is updated by the 0th of the newListOfLists, the 1ft and so on- the same index, you could simplify your code.

def updateOldList(oldListOfLists, newListOfLists):

    for i in range(lenNewListOfLists):
            oldListOfLists[i][0] = newListOfLists[i][0]
            oldListOfLists[i][3] = newListOfLists[i][3]            
        except IndexError:

return oldListOfLists

If the a list from oldListofLists isn't updated by one with the same index in the newListOfLists, it actually won't work well, you can imagine it.

Edit: you might want to catch something like IndexError, in case there's no corresponding old list for the active new list, but not the others, general errors.

Edit2 : += is an alias for extend.


is the same as


Edit3 : do the code still slows down? Do your last lists (in index) get bigger and bigger? What is the overall memory size of both lists of lists?

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When I have a code which run slow, I do the same thing as explained in the best answer of this link

You can see which part of your code is making the program run slow and try to improve it

share|improve this answer
I'm not sure I understand why I would do this. I have already identified the part of the code that is the problem, I just don't know how to fix it. The second loop is progressively slower despite the fact that it is only editing data and then deleting the hash. Do you have any thoughts on why the above code would take progressively longer to execute with each iteration? Does Python identify list entries by counting it's way to the correct position? For example: if x = [0,1,2,3,4,5,6,7] Does Python have to exicute 8 time more to look at x[7] vs x[0]? –  user2308425 Apr 23 '13 at 14:12

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