*There is no such thing as a "most efficient priority queue implementation" in ***any language**.

A priority queue is all about trade-offs. See http://en.wikipedia.org/wiki/Priority_queue

You should choose one of these two, based on how you plan to use it:

`O(log(N))`

insertion time and `O(1)`

findMin+deleteMin time, or
`O(1)`

insertion time and `O(log(N))`

findMin+deleteMin time

In the latter case, you can choose to implement a priority queue with a Fibonacci heap: http://en.wikipedia.org/wiki/Heap_(data_structure)#Comparison_of_theoretic_bounds_for_variants (as you can see, `heapq`

which is basically a binary tree, must necessarily have `O(log(N))`

for both insertion and findMin+deleteMin)

If you are dealing with data with special properties (such as bounded data), then you can achieve `O(1)`

insertion and `O(1)`

findMin+deleteMin time. You can only do this with certain kinds of data because otherwise you could abuse your priority queue to violate the `O(N log(N))`

bound on sorting.

To implement any queue in any language, all you need is to define the `insert(value)`

and `extractMin() -> value`

operations. This generally just involves a minimal wrapping of the underlying heap; see http://en.wikipedia.org/wiki/Fibonacci_heap to implement your own, or use an off-the-shelf library of a similar heap like a Pairing Heap (a Google search revealed http://svn.python.org/projects/sandbox/trunk/collections/pairing_heap.py )

If you only care about which of the two you referenced are more efficient (the `heapq`

-based code from http://docs.python.org/library/heapq.html#priority-queue-implementation-notes which you included above, versus `Queue.PriorityQueue`

), then:

There doesn't seem to be any easily-findable discussion on the web as to what `Queue.PriorityQueue`

is actually doing; you would have to source dive into the code, which is linked to from the help documentation: http://hg.python.org/cpython/file/2.7/Lib/Queue.py

```
224 def _put(self, item, heappush=heapq.heappush):
225 heappush(self.queue, item)
226
227 def _get(self, heappop=heapq.heappop):
228 return heappop(self.queue)
```

As we can see, `Queue.PriorityQueue`

is also using `heapq`

as an underlying mechanism. Therefore they are equally bad (asymptotically speaking). `Queue.PriorityQueue`

may allow for parallel queries, so I would wager that it might have a very slightly constant-factor more of overhead. But because you know the underlying implementation (and asymptotic behavior) must be the same, the simplest way would simply be to run them on the same large dataset.

(Do note that `Queue.PriorityQueue`

does not seem to have a way to remove entries, while `heapq`

does. However this is a double-edged sword: Good priority queue implementations might possibly allow you to delete elements in O(1) or O(log(N)) time, but if you use the `remove_task`

function you mention, and let those zombie tasks accumulate in your queue because you aren't extracting them off the min, then you will see asymptotic slowdown which you wouldn't otherwise see. Of course, you couldn't do this with `Queue.PriorityQueue`

in the first place, so no comparison can be made here.)