XHEAP <https://pypi.python.org/pypi/xheap>
_
It's like heapq <https://docs.python.org/3.5/library/heapq.html>
_ (blazingly fast) but object-oriented + more features.
Read more here for the background story <http://srkunze.blogspot.com/2016/01/fast-object-oriented-heap-implementation.html>
_.
Why?
Less code.
What are heaps good for anyway?
When you need the smallest item of a large list—fast and with no overhead.
How?
Let's suppose you have a heap, you can use pop
to get its smallest item.
.. code:: python
from xheap import Heap
heap = Heap(['H', 'D', 'B', 'A', 'E', 'C', 'L', 'J', 'I'])
heap.pop() # returns A
heap.pop() # returns B
heap.pop() # returns C
heap.pop() # returns D
Heapsort <https://en.wikipedia.org/wiki/Heapsort>
_ works this way.
Can I insert an item?
Indeed and it's as fast as pop. Use push
for insertion.
.. code:: python
heap = Heap(['A', 'D', 'B', 'H', 'E', 'C', 'L', 'J', 'I'])
heap.push('Z')
Can I remove an item from the middle of a heap?
Yes, that's what RemovalHeap.remove
is supposed to do.
.. code:: python
from xheap import RemovalHeap
heap = RemovalHeap(['A', 'D', 'B', 'H', 'E', 'C', 'L', 'J', 'I'])
heap.remove('L')
Can I specify the order of the heap?
Just imagine two heaps of the very same set of items but you need different sorting for each heap. Or
you need a max-heap instead of a min-heap. That is what OrderHeap
is designed for:
.. code:: python
from xheap import OrderHeap
items = [date(2016, 1, 1), date(2016, 1, 2), date(2016, 1, 3), date(2016, 1, 4)]
day_heap = OrderHeap(items, key=lambda date: date.day)
day_heap.peek() # returns date(2016, 1, 1)
weekday_heap = OrderHeap(items, key=lambda date: date.weekday())
weekday_heap.peek() # returns date(2016, 1, 4)
What about both remove+order?
No problem. Use XHeap
.
If you wonder why there are 4 distinct heap implementations, it's a matter of speed.
Each additional feature slows a heap down. Thus, you could always use XHeap but beware
of the slowdown.
Checking Heap Invariant
A heap is just a list. So, if you tinker with it, you can check whether its invariant still holds:
.. code:: python
heap = Heap([4, 3, 7, 6, 1, 2, 9, 8, 5])
heap[3] = 10 # I know what I am doing here
heap.check_invariant() # but better check... ooops
Conclusion
Good
- uses C implementation if available (i.e. fast)
- object-oriented
- no slowdown if you don't need more than a simple heap
- removal possible
- custom orders possible
- works with Python2 and Python3
Bad