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I need to use a priority queue in my Python code. Looking around for something efficient, I came upon heapq. It looks good, but seems to be specified only for integers. I suppose it works with any objects that have comparison operators, but it doesn't specify what comparison operators it needs.

Besides, heapq seems to be implemented in Python, so it's not fast.

Are you aware of any fast implementations for priority queues in Python ? Optimally, I'd like the queue to be generic (i.e. work well for any object with a specified comparison operator).

Thanks in advance


Re comparison in heapq, I can either use a (priority, object) as Charlie Martin suggests, or just implement __cmp__ for my object.

I'm still looking for something faster than heapq.

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The fact that heapq is implemented in Python does not necessarily means that it is not fast. Why not just use it? Only try alternatives if it does not satisfy your performance needs. –  Jingguo Yao Dec 12 '13 at 8:16

8 Answers 8

up vote 21 down vote accepted

Um, Queue.PriorityQueue ? Recall that Python isn't strongly typed, so you can save anything you like: just make a tuple of (priority,thing) and you're set.

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Doesn't have a peek function :-( –  Casebash Sep 28 '09 at 8:19
How is this better than heapq? It uses heapq... –  Cerin Sep 9 '10 at 12:15
@Eli Bendersky: did you do a performance comparison between this and heapq? I would assume heapq to be faster because it doesn't do any locking. –  larsmans Jun 24 '11 at 19:17
@larsmans I did some simple tests in Python2.6 that suggest that heapq is roughly twice as fast as PriorityQueue –  simonb Aug 10 '11 at 23:32
Queue.PriorityQueue is synchronized. For situations where synchronization is unneeded, it incurred unneeded overhead. –  Jingguo Yao Dec 12 '13 at 8:12

How do you know it's too slow? Have you profiled it yet? Also since 2.4, there's a C implementation of heapq in the standard library which is used.

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Are you sure that since 2.5 heapq is implemented in C ? How do you know that ? In my Python 2.5 installation (ActiveState 2.5.2), heapq only has a Python module in 'lib', no .pyd files –  Eli Bendersky Jan 2 '09 at 20:04
Good point. I missed it on my first look through heapq.py, but you're completely right, it does load the C implementation. –  Kiv Jan 2 '09 at 20:05
Line 305 of heapq.py: # If available, use C implementation try: from _heapq import heappush, heappop, heapify, heapreplace, nlargest, nsmallest –  Kiv Jan 2 '09 at 20:06
Right! Thanks a lot ! –  Eli Bendersky Jan 2 '09 at 20:08
To answer your other question, if you do: import _heapq help(_heapq) under the file heading it says "built-in", which I think means you won't find it as a separate file. –  Kiv Jan 2 '09 at 20:09

I ended up implementing a wrapper for heapq, adding a dict for maintaining the queue's elements unique. The result should be quite efficient for all operators:

class PriorityQueueSet(object):
    """ Combined priority queue and set data structure. Acts like
        a priority queue, except that its items are guaranteed to
        be unique.

        Provides O(1) membership test, O(log N) insertion and 
        O(log N) removal of the smallest item.

        Important: the items of this data structure must be both
        comparable and hashable (i.e. must implement __cmp__ and
        __hash__). This is true of Python's built-in objects, but
        you should implement those methods if you want to use
        the data structure for custom objects.
    def __init__(self, items=[]):
        """ Create a new PriorityQueueSet.

                An initial item list - it can be unsorted and 
                non-unique. The data structure will be created in
        self.set = dict((item, True) for item in items)
        self.heap = self.set.keys()

    def has_item(self, item):
        """ Check if *item* exists in the queue
        return item in self.set

    def pop_smallest(self):
        """ Remove and return the smallest item from the queue
        smallest = heapq.heappop(self.heap)
        del self.set[smallest]
        return smallest

    def add(self, item):
        """ Add *item* to the queue. The item will be added only
            if it doesn't already exist in the queue.
        if not (item in self.set):
            self.set[item] = True
            heapq.heappush(self.heap, item)
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Looks good, but you should use "item in set" rather than "set.has_key(item)". It's faster (less method call overhead), and the second one has been removed in Python 3.0. –  Kiv Jan 2 '09 at 20:28
items=[] is a bad idea since the list is mutable. In addition, you can do self.set=set(items) in __init__(). –  Elazar Dec 5 '13 at 19:35

Did you look at the "Show Source" link on the heapq page? There's an example a little less than halfway down of using a heap with a list of (int, char) tuples as a priority queue.

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heapq is still slow... –  Eli Bendersky Jan 2 '09 at 19:22
I stand corrected (by Benjamin Peterson). heapq uses a C implementation, which is fast. –  Eli Bendersky Jan 2 '09 at 21:27

I've not used it, but you could try PyHeap. It's written in C so hopefully it is fast enough for you.

Are you positive heapq/PriorityQueue won't be fast enough? It might be worth going with one of them to start, and then profiling to see if it really is your performance bottlneck.

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You can use heapq for non-integer elements (tuples)

from heapq import *

heap = []
data = [(10,"ten"), (3,"three"), (5,"five"), (7,"seven"), (9, "nine"), (2,"two")]
for item in data:
    heappush(heap, item)
sorted = []
while heap:
print sorted
print data == sorted
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This is efficient and works for strings or any type input as well -:)

pq = []                         # list of entries arranged in a heap
entry_finder = {}               # mapping of tasks to entries
REMOVED = '<removed-task>'      # placeholder for a removed task
counter = itertools.count()     # unique sequence count

def add_task(task, priority=0):
    'Add a new task or update the priority of an existing task'
    if task in entry_finder:
    count = next(counter)
    entry = [priority, count, task]
    entry_finder[task] = entry
    heappush(pq, entry)

def remove_task(task):
    'Mark an existing task as REMOVED.  Raise KeyError if not found.'
    entry = entry_finder.pop(task)
    entry[-1] = REMOVED

def pop_task():
    'Remove and return the lowest priority task. Raise KeyError if empty.'
    while pq:
        priority, count, task = heappop(pq)
        if task is not REMOVED:
            del entry_finder[task]
            return task
    raise KeyError('pop from an empty priority queue')

Reference: http://docs.python.org/library/heapq.html

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Keeping in line with answer posted on April 1st, use object() as a sentinel / removed. –  qarma Mar 11 '14 at 8:04

I've got a priority queue / fibonacci heap at https://pypi.python.org/pypi/fibonacci-heap-mod

It's not fast (large constant c on delete-min, which is O(c*logn)). But find-min, insert, decrease-key and merge are all O(1) - IOW, it's lazy.

If it's too slow on CPython, you might try Pypy, Nuitka or even CPython+Numba :)

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