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 have about half a million items that need to be placed in a list, I can't have duplications, and if an item is already there I need to get it's index. So far I have

if Item in List:
    ItemNumber=List.index(Item)
else:
    List.append(Item)
    ItemNumber=List.index(Item)

The problem is that as the list grows it gets progressively slower until at some point it just isn't worth doing. I am limited to python 2.5 because it is an embedded system.

share|improve this question
add comment

4 Answers

up vote 6 down vote accepted

You can use a set (in CPython since version 2.4) to efficiently look up duplicate values. If you really need an indexed system as well, you can use both a set and list.

Doing your lookups using a set will remove the overhead of if Item in List, but not that of List.index(Item)

Please note ItemNumber=List.index(Item) will be very inefficient to do after List.append(Item). You know the length of the list, so your index can be retrieved with ItemNumber = len(List)-1.

To completely remove the overhead of List.index (because that method will search through the list - very inefficient on larger sets), you can use a dict mapping Items back to their index.

I might rewrite it as follows:

# earlier in the program, NOT inside the loop
Dup = {}

# inside your loop to add items:
if Item in Dup:
    ItemNumber = Dup[Item]
else:
    List.append(Item)
    Dup[Item] = ItemNumber = len(List)-1
share|improve this answer
add comment

If you really need to keep the data in an array, I'd use a separate dictionary to keep track of duplicates. This requires twice as much memory, but won't slow down significantly.

existing = dict()
if Item in existing:
    ItemNumber = existing[Item]
else:
    ItemNumber = existing[Item] = len(List)
    List.append(Item)

However, if you don't need to save the order of items you should just use a set instead. This will take almost as little space as a list, yet will be as fast as a dictionary.

Items = set()
# ...
Items.add(Item) # will do nothing if Item is already added

Both of these require that your object is hashable. In Python, most types are hashable unless they are a container whose contents can be modified. For example: lists are not hashable because you can modify their contents, but tuples are hashable because you cannot.

If you were trying to store values that aren't hashable, there isn't a fast general solution.

share|improve this answer
add comment

You can improve the check a lot:

check = set(List)

for Item in NewList:
    if Item in check: ItemNumber = List.index(Item)
    else:
        ItemNumber = len(List)
        List.append(Item)

Or, even better, if order is not important you can do this:

oldlist = set(List)
addlist = set(AddList)
newlist = list(oldlist | addlist)

And if you need to loop over the items that were duplicated:

for item in (oldlist & addlist):
    pass # do stuff
share|improve this answer
add comment

What is the range of your half a million items? You might be able to use memory very inefficiently if you can make a few statements about the range of these items. I believe an approach along this line would be the fastest possible, but might not be practical for an embedded application unless you can make some very strict guarantees.

Does this answer help point you towards the time/memory trade off I am alluding to? I can help clarify more if you'd like.

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.