dbt-selly/dbt-env/lib/python3.8/site-packages/networkx/utils/mapped_queue.py

268 lines
8.9 KiB
Python

"""Priority queue class with updatable priorities.
"""
import heapq
__all__ = ["MappedQueue"]
class _HeapElement:
"""This proxy class separates the heap element from its priority.
The idea is that using a 2-tuple (priority, element) works
for sorting, but not for dict lookup because priorities are
often floating point values so round-off can mess up equality.
So, we need inequalities to look at the priority (for sorting)
and equality (and hash) to look at the element to enable
updates to the priority.
Unfortunately, this class can be tricky to work with if you forget that
`__lt__` compares the priority while `__eq__` compares the element.
In `greedy_modularity_communities()` the following code is
used to check that two _HeapElements differ in either element or priority:
if d_oldmax != row_max or d_oldmax.priority != row_max.priority:
If the priorities are the same, this implementation uses the element
as a tiebreaker. This provides compatibility with older systems that
use tuples to combine priority and elements.
"""
__slots__ = ["priority", "element", "_hash"]
def __init__(self, priority, element):
self.priority = priority
self.element = element
self._hash = hash(element)
def __lt__(self, other):
try:
other_priority = other.priority
except AttributeError:
return self.priority < other
# assume comparing to another _HeapElement
if self.priority == other_priority:
return self.element < other.element
return self.priority < other_priority
def __gt__(self, other):
try:
other_priority = other.priority
except AttributeError:
return self.priority > other
# assume comparing to another _HeapElement
if self.priority == other_priority:
return self.element < other.element
return self.priority > other_priority
def __eq__(self, other):
try:
return self.element == other.element
except AttributeError:
return self.element == other
def __hash__(self):
return self._hash
def __getitem__(self, indx):
return self.priority if indx == 0 else self.element[indx - 1]
def __iter__(self):
yield self.priority
try:
yield from self.element
except TypeError:
yield self.element
def __repr__(self):
return f"_HeapElement({self.priority}, {self.element})"
class MappedQueue:
"""The MappedQueue class implements a min-heap with removal and update-priority.
The min heap uses heapq as well as custom written _siftup and _siftdown
methods to allow the heap positions to be tracked by an additional dict
keyed by element to position. The smallest element can be popped in O(1) time,
new elements can be pushed in O(log n) time, and any element can be removed
or updated in O(log n) time. The queue cannot contain duplicate elements
and an attempt to push an element already in the queue will have no effect.
MappedQueue complements the heapq package from the python standard
library. While MappedQueue is designed for maximum compatibility with
heapq, it adds element removal, lookup, and priority update.
Examples
--------
A `MappedQueue` can be created empty or optionally given an array of
initial elements. Calling `push()` will add an element and calling `pop()`
will remove and return the smallest element.
>>> q = MappedQueue([916, 50, 4609, 493, 237])
>>> q.push(1310)
True
>>> [q.pop() for i in range(len(q.heap))]
[50, 237, 493, 916, 1310, 4609]
Elements can also be updated or removed from anywhere in the queue.
>>> q = MappedQueue([916, 50, 4609, 493, 237])
>>> q.remove(493)
>>> q.update(237, 1117)
>>> [q.pop() for i in range(len(q.heap))]
[50, 916, 1117, 4609]
References
----------
.. [1] Cormen, T. H., Leiserson, C. E., Rivest, R. L., & Stein, C. (2001).
Introduction to algorithms second edition.
.. [2] Knuth, D. E. (1997). The art of computer programming (Vol. 3).
Pearson Education.
"""
def __init__(self, data=[]):
"""Priority queue class with updatable priorities."""
if isinstance(data, dict):
self.heap = [_HeapElement(v, k) for k, v in data.items()]
else:
self.heap = list(data)
self.position = dict()
self._heapify()
def _heapify(self):
"""Restore heap invariant and recalculate map."""
heapq.heapify(self.heap)
self.position = {elt: pos for pos, elt in enumerate(self.heap)}
if len(self.heap) != len(self.position):
raise AssertionError("Heap contains duplicate elements")
def __len__(self):
return len(self.heap)
def push(self, elt, priority=None):
"""Add an element to the queue."""
if priority is not None:
elt = _HeapElement(priority, elt)
# If element is already in queue, do nothing
if elt in self.position:
return False
# Add element to heap and dict
pos = len(self.heap)
self.heap.append(elt)
self.position[elt] = pos
# Restore invariant by sifting down
self._siftdown(0, pos)
return True
def pop(self):
"""Remove and return the smallest element in the queue."""
# Remove smallest element
elt = self.heap[0]
del self.position[elt]
# If elt is last item, remove and return
if len(self.heap) == 1:
self.heap.pop()
return elt
# Replace root with last element
last = self.heap.pop()
self.heap[0] = last
self.position[last] = 0
# Restore invariant by sifting up
self._siftup(0)
# Return smallest element
return elt
def update(self, elt, new, priority=None):
"""Replace an element in the queue with a new one."""
if priority is not None:
new = _HeapElement(priority, new)
# Replace
pos = self.position[elt]
self.heap[pos] = new
del self.position[elt]
self.position[new] = pos
# Restore invariant by sifting up
self._siftup(pos)
def remove(self, elt):
"""Remove an element from the queue."""
# Find and remove element
try:
pos = self.position[elt]
del self.position[elt]
except KeyError:
# Not in queue
raise
# If elt is last item, remove and return
if pos == len(self.heap) - 1:
self.heap.pop()
return
# Replace elt with last element
last = self.heap.pop()
self.heap[pos] = last
self.position[last] = pos
# Restore invariant by sifting up
self._siftup(pos)
def _siftup(self, pos):
"""Move smaller child up until hitting a leaf.
Built to mimic code for heapq._siftup
only updating position dict too.
"""
heap, position = self.heap, self.position
end_pos = len(heap)
startpos = pos
newitem = heap[pos]
# Shift up the smaller child until hitting a leaf
child_pos = (pos << 1) + 1 # start with leftmost child position
while child_pos < end_pos:
# Set child_pos to index of smaller child.
child = heap[child_pos]
right_pos = child_pos + 1
if right_pos < end_pos:
right = heap[right_pos]
if not child < right:
child = right
child_pos = right_pos
# Move the smaller child up.
heap[pos] = child
position[child] = pos
pos = child_pos
child_pos = (pos << 1) + 1
# pos is a leaf position. Put newitem there, and bubble it up
# to its final resting place (by sifting its parents down).
while pos > 0:
parent_pos = (pos - 1) >> 1
parent = heap[parent_pos]
if not newitem < parent:
break
heap[pos] = parent
position[parent] = pos
pos = parent_pos
heap[pos] = newitem
position[newitem] = pos
def _siftdown(self, start_pos, pos):
"""Restore invariant. keep swapping with parent until smaller.
Built to mimic code for heapq._siftdown
only updating position dict too.
"""
heap, position = self.heap, self.position
newitem = heap[pos]
# Follow the path to the root, moving parents down until finding a place
# newitem fits.
while pos > start_pos:
parent_pos = (pos - 1) >> 1
parent = heap[parent_pos]
if not newitem < parent:
break
heap[pos] = parent
position[parent] = pos
pos = parent_pos
heap[pos] = newitem
position[newitem] = pos