299 lines
9.9 KiB
Python
299 lines
9.9 KiB
Python
"""Priority queue class with updatable priorities.
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"""
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import heapq
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__all__ = ["MappedQueue"]
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class _HeapElement:
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"""This proxy class separates the heap element from its priority.
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The idea is that using a 2-tuple (priority, element) works
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for sorting, but not for dict lookup because priorities are
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often floating point values so round-off can mess up equality.
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So, we need inequalities to look at the priority (for sorting)
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and equality (and hash) to look at the element to enable
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updates to the priority.
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Unfortunately, this class can be tricky to work with if you forget that
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`__lt__` compares the priority while `__eq__` compares the element.
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In `greedy_modularity_communities()` the following code is
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used to check that two _HeapElements differ in either element or priority:
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if d_oldmax != row_max or d_oldmax.priority != row_max.priority:
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If the priorities are the same, this implementation uses the element
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as a tiebreaker. This provides compatibility with older systems that
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use tuples to combine priority and elements.
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"""
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__slots__ = ["priority", "element", "_hash"]
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def __init__(self, priority, element):
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self.priority = priority
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self.element = element
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self._hash = hash(element)
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def __lt__(self, other):
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try:
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other_priority = other.priority
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except AttributeError:
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return self.priority < other
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# assume comparing to another _HeapElement
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if self.priority == other_priority:
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try:
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return self.element < other.element
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except TypeError as err:
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raise TypeError(
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"Consider using a tuple, with a priority value that can be compared."
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)
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return self.priority < other_priority
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def __gt__(self, other):
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try:
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other_priority = other.priority
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except AttributeError:
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return self.priority > other
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# assume comparing to another _HeapElement
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if self.priority == other_priority:
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try:
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return self.element > other.element
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except TypeError as err:
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raise TypeError(
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"Consider using a tuple, with a priority value that can be compared."
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)
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return self.priority > other_priority
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def __eq__(self, other):
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try:
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return self.element == other.element
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except AttributeError:
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return self.element == other
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def __hash__(self):
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return self._hash
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def __getitem__(self, indx):
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return self.priority if indx == 0 else self.element[indx - 1]
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def __iter__(self):
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yield self.priority
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try:
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yield from self.element
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except TypeError:
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yield self.element
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def __repr__(self):
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return f"_HeapElement({self.priority}, {self.element})"
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class MappedQueue:
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"""The MappedQueue class implements a min-heap with removal and update-priority.
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The min heap uses heapq as well as custom written _siftup and _siftdown
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methods to allow the heap positions to be tracked by an additional dict
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keyed by element to position. The smallest element can be popped in O(1) time,
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new elements can be pushed in O(log n) time, and any element can be removed
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or updated in O(log n) time. The queue cannot contain duplicate elements
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and an attempt to push an element already in the queue will have no effect.
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MappedQueue complements the heapq package from the python standard
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library. While MappedQueue is designed for maximum compatibility with
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heapq, it adds element removal, lookup, and priority update.
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Parameters
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----------
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data : dict or iterable
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Examples
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--------
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A `MappedQueue` can be created empty, or optionally, given a dictionary
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of initial elements and priorities. The methods `push`, `pop`,
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`remove`, and `update` operate on the queue.
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>>> colors_nm = {'red':665, 'blue': 470, 'green': 550}
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>>> q = MappedQueue(colors_nm)
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>>> q.remove('red')
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>>> q.update('green', 'violet', 400)
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>>> q.push('indigo', 425)
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True
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>>> [q.pop().element for i in range(len(q.heap))]
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['violet', 'indigo', 'blue']
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A `MappedQueue` can also be initialized with a list or other iterable. The priority is assumed
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to be the sort order of the items in the list.
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>>> q = MappedQueue([916, 50, 4609, 493, 237])
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>>> q.remove(493)
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>>> q.update(237, 1117)
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>>> [q.pop() for i in range(len(q.heap))]
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[50, 916, 1117, 4609]
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An exception is raised if the elements are not comparable.
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>>> q = MappedQueue([100, 'a'])
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Traceback (most recent call last):
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...
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TypeError: '<' not supported between instances of 'int' and 'str'
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To avoid the exception, use a dictionary to assign priorities to the elements.
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>>> q = MappedQueue({100: 0, 'a': 1 })
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References
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----------
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.. [1] Cormen, T. H., Leiserson, C. E., Rivest, R. L., & Stein, C. (2001).
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Introduction to algorithms second edition.
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.. [2] Knuth, D. E. (1997). The art of computer programming (Vol. 3).
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Pearson Education.
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"""
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def __init__(self, data=None):
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"""Priority queue class with updatable priorities."""
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if data is None:
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self.heap = []
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elif isinstance(data, dict):
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self.heap = [_HeapElement(v, k) for k, v in data.items()]
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else:
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self.heap = list(data)
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self.position = {}
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self._heapify()
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def _heapify(self):
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"""Restore heap invariant and recalculate map."""
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heapq.heapify(self.heap)
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self.position = {elt: pos for pos, elt in enumerate(self.heap)}
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if len(self.heap) != len(self.position):
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raise AssertionError("Heap contains duplicate elements")
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def __len__(self):
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return len(self.heap)
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def push(self, elt, priority=None):
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"""Add an element to the queue."""
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if priority is not None:
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elt = _HeapElement(priority, elt)
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# If element is already in queue, do nothing
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if elt in self.position:
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return False
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# Add element to heap and dict
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pos = len(self.heap)
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self.heap.append(elt)
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self.position[elt] = pos
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# Restore invariant by sifting down
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self._siftdown(0, pos)
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return True
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def pop(self):
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"""Remove and return the smallest element in the queue."""
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# Remove smallest element
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elt = self.heap[0]
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del self.position[elt]
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# If elt is last item, remove and return
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if len(self.heap) == 1:
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self.heap.pop()
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return elt
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# Replace root with last element
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last = self.heap.pop()
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self.heap[0] = last
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self.position[last] = 0
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# Restore invariant by sifting up
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self._siftup(0)
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# Return smallest element
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return elt
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def update(self, elt, new, priority=None):
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"""Replace an element in the queue with a new one."""
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if priority is not None:
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new = _HeapElement(priority, new)
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# Replace
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pos = self.position[elt]
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self.heap[pos] = new
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del self.position[elt]
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self.position[new] = pos
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# Restore invariant by sifting up
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self._siftup(pos)
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def remove(self, elt):
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"""Remove an element from the queue."""
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# Find and remove element
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try:
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pos = self.position[elt]
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del self.position[elt]
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except KeyError:
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# Not in queue
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raise
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# If elt is last item, remove and return
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if pos == len(self.heap) - 1:
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self.heap.pop()
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return
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# Replace elt with last element
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last = self.heap.pop()
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self.heap[pos] = last
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self.position[last] = pos
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# Restore invariant by sifting up
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self._siftup(pos)
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def _siftup(self, pos):
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"""Move smaller child up until hitting a leaf.
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Built to mimic code for heapq._siftup
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only updating position dict too.
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"""
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heap, position = self.heap, self.position
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end_pos = len(heap)
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startpos = pos
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newitem = heap[pos]
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# Shift up the smaller child until hitting a leaf
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child_pos = (pos << 1) + 1 # start with leftmost child position
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while child_pos < end_pos:
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# Set child_pos to index of smaller child.
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child = heap[child_pos]
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right_pos = child_pos + 1
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if right_pos < end_pos:
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right = heap[right_pos]
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if not child < right:
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child = right
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child_pos = right_pos
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# Move the smaller child up.
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heap[pos] = child
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position[child] = pos
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pos = child_pos
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child_pos = (pos << 1) + 1
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# pos is a leaf position. Put newitem there, and bubble it up
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# to its final resting place (by sifting its parents down).
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while pos > 0:
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parent_pos = (pos - 1) >> 1
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parent = heap[parent_pos]
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if not newitem < parent:
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break
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heap[pos] = parent
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position[parent] = pos
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pos = parent_pos
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heap[pos] = newitem
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position[newitem] = pos
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def _siftdown(self, start_pos, pos):
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"""Restore invariant. keep swapping with parent until smaller.
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Built to mimic code for heapq._siftdown
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only updating position dict too.
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"""
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heap, position = self.heap, self.position
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newitem = heap[pos]
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# Follow the path to the root, moving parents down until finding a place
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# newitem fits.
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while pos > start_pos:
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parent_pos = (pos - 1) >> 1
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parent = heap[parent_pos]
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if not newitem < parent:
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break
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heap[pos] = parent
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position[parent] = pos
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pos = parent_pos
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heap[pos] = newitem
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position[newitem] = pos
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