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Raymond Hettingerc46cb2a2004-04-19 19:06:21 +00001# -*- coding: Latin-1 -*-
2
3"""Heap queue algorithm (a.k.a. priority queue).
4
5Heaps are arrays for which a[k] <= a[2*k+1] and a[k] <= a[2*k+2] for
6all k, counting elements from 0. For the sake of comparison,
7non-existing elements are considered to be infinite. The interesting
8property of a heap is that a[0] is always its smallest element.
9
10Usage:
11
12heap = [] # creates an empty heap
13heappush(heap, item) # pushes a new item on the heap
14item = heappop(heap) # pops the smallest item from the heap
15item = heap[0] # smallest item on the heap without popping it
16heapify(x) # transforms list into a heap, in-place, in linear time
17item = heapreplace(heap, item) # pops and returns smallest item, and adds
18 # new item; the heap size is unchanged
19
20Our API differs from textbook heap algorithms as follows:
21
22- We use 0-based indexing. This makes the relationship between the
23 index for a node and the indexes for its children slightly less
24 obvious, but is more suitable since Python uses 0-based indexing.
25
26- Our heappop() method returns the smallest item, not the largest.
27
28These two make it possible to view the heap as a regular Python list
29without surprises: heap[0] is the smallest item, and heap.sort()
30maintains the heap invariant!
31"""
32
Raymond Hettinger33ecffb2004-06-10 05:03:17 +000033# Original code by Kevin O'Connor, augmented by Tim Peters and Raymond Hettinger
Raymond Hettingerc46cb2a2004-04-19 19:06:21 +000034
35__about__ = """Heap queues
36
37[explanation by François Pinard]
38
39Heaps are arrays for which a[k] <= a[2*k+1] and a[k] <= a[2*k+2] for
40all k, counting elements from 0. For the sake of comparison,
41non-existing elements are considered to be infinite. The interesting
42property of a heap is that a[0] is always its smallest element.
43
44The strange invariant above is meant to be an efficient memory
45representation for a tournament. The numbers below are `k', not a[k]:
46
47 0
48
49 1 2
50
51 3 4 5 6
52
53 7 8 9 10 11 12 13 14
54
55 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30
56
57
58In the tree above, each cell `k' is topping `2*k+1' and `2*k+2'. In
59an usual binary tournament we see in sports, each cell is the winner
60over the two cells it tops, and we can trace the winner down the tree
61to see all opponents s/he had. However, in many computer applications
62of such tournaments, we do not need to trace the history of a winner.
63To be more memory efficient, when a winner is promoted, we try to
64replace it by something else at a lower level, and the rule becomes
65that a cell and the two cells it tops contain three different items,
66but the top cell "wins" over the two topped cells.
67
68If this heap invariant is protected at all time, index 0 is clearly
69the overall winner. The simplest algorithmic way to remove it and
70find the "next" winner is to move some loser (let's say cell 30 in the
71diagram above) into the 0 position, and then percolate this new 0 down
72the tree, exchanging values, until the invariant is re-established.
73This is clearly logarithmic on the total number of items in the tree.
74By iterating over all items, you get an O(n ln n) sort.
75
76A nice feature of this sort is that you can efficiently insert new
77items while the sort is going on, provided that the inserted items are
78not "better" than the last 0'th element you extracted. This is
79especially useful in simulation contexts, where the tree holds all
80incoming events, and the "win" condition means the smallest scheduled
81time. When an event schedule other events for execution, they are
82scheduled into the future, so they can easily go into the heap. So, a
83heap is a good structure for implementing schedulers (this is what I
84used for my MIDI sequencer :-).
85
86Various structures for implementing schedulers have been extensively
87studied, and heaps are good for this, as they are reasonably speedy,
88the speed is almost constant, and the worst case is not much different
89than the average case. However, there are other representations which
90are more efficient overall, yet the worst cases might be terrible.
91
92Heaps are also very useful in big disk sorts. You most probably all
93know that a big sort implies producing "runs" (which are pre-sorted
94sequences, which size is usually related to the amount of CPU memory),
95followed by a merging passes for these runs, which merging is often
96very cleverly organised[1]. It is very important that the initial
97sort produces the longest runs possible. Tournaments are a good way
98to that. If, using all the memory available to hold a tournament, you
99replace and percolate items that happen to fit the current run, you'll
100produce runs which are twice the size of the memory for random input,
101and much better for input fuzzily ordered.
102
103Moreover, if you output the 0'th item on disk and get an input which
104may not fit in the current tournament (because the value "wins" over
105the last output value), it cannot fit in the heap, so the size of the
106heap decreases. The freed memory could be cleverly reused immediately
107for progressively building a second heap, which grows at exactly the
108same rate the first heap is melting. When the first heap completely
109vanishes, you switch heaps and start a new run. Clever and quite
110effective!
111
112In a word, heaps are useful memory structures to know. I use them in
113a few applications, and I think it is good to keep a `heap' module
114around. :-)
115
116--------------------
117[1] The disk balancing algorithms which are current, nowadays, are
118more annoying than clever, and this is a consequence of the seeking
119capabilities of the disks. On devices which cannot seek, like big
120tape drives, the story was quite different, and one had to be very
121clever to ensure (far in advance) that each tape movement will be the
122most effective possible (that is, will best participate at
123"progressing" the merge). Some tapes were even able to read
124backwards, and this was also used to avoid the rewinding time.
125Believe me, real good tape sorts were quite spectacular to watch!
126From all times, sorting has always been a Great Art! :-)
127"""
128
Raymond Hettinger33ecffb2004-06-10 05:03:17 +0000129__all__ = ['heappush', 'heappop', 'heapify', 'heapreplace', 'nlargest',
130 'nsmallest']
131
132from itertools import islice, repeat
Raymond Hettingerb25aa362004-06-12 08:33:36 +0000133import bisect
Raymond Hettingerc46cb2a2004-04-19 19:06:21 +0000134
135def heappush(heap, item):
136 """Push item onto heap, maintaining the heap invariant."""
137 heap.append(item)
138 _siftdown(heap, 0, len(heap)-1)
139
140def heappop(heap):
141 """Pop the smallest item off the heap, maintaining the heap invariant."""
142 lastelt = heap.pop() # raises appropriate IndexError if heap is empty
143 if heap:
144 returnitem = heap[0]
145 heap[0] = lastelt
146 _siftup(heap, 0)
147 else:
148 returnitem = lastelt
149 return returnitem
150
151def heapreplace(heap, item):
152 """Pop and return the current smallest value, and add the new item.
153
154 This is more efficient than heappop() followed by heappush(), and can be
155 more appropriate when using a fixed-size heap. Note that the value
156 returned may be larger than item! That constrains reasonable uses of
157 this routine.
158 """
159 returnitem = heap[0] # raises appropriate IndexError if heap is empty
160 heap[0] = item
161 _siftup(heap, 0)
162 return returnitem
163
164def heapify(x):
165 """Transform list into a heap, in-place, in O(len(heap)) time."""
166 n = len(x)
167 # Transform bottom-up. The largest index there's any point to looking at
168 # is the largest with a child index in-range, so must have 2*i + 1 < n,
169 # or i < (n-1)/2. If n is even = 2*j, this is (2*j-1)/2 = j-1/2 so
170 # j-1 is the largest, which is n//2 - 1. If n is odd = 2*j+1, this is
171 # (2*j+1-1)/2 = j so j-1 is the largest, and that's again n//2-1.
172 for i in reversed(xrange(n//2)):
173 _siftup(x, i)
174
Raymond Hettinger33ecffb2004-06-10 05:03:17 +0000175def nlargest(iterable, n):
176 """Find the n largest elements in a dataset.
177
178 Equivalent to: sorted(iterable, reverse=True)[:n]
179 """
180 it = iter(iterable)
181 result = list(islice(it, n))
182 if not result:
183 return result
184 heapify(result)
185 _heapreplace = heapreplace
186 sol = result[0] # sol --> smallest of the nlargest
187 for elem in it:
188 if elem <= sol:
189 continue
190 _heapreplace(result, elem)
191 sol = result[0]
192 result.sort(reverse=True)
193 return result
194
195def nsmallest(iterable, n):
196 """Find the n smallest elements in a dataset.
197
198 Equivalent to: sorted(iterable)[:n]
199 """
Raymond Hettingerb25aa362004-06-12 08:33:36 +0000200 if hasattr(iterable, '__len__') and n * 10 <= len(iterable):
201 # For smaller values of n, the bisect method is faster than a minheap.
202 # It is also memory efficient, consuming only n elements of space.
203 it = iter(iterable)
204 result = sorted(islice(it, 0, n))
205 if not result:
206 return result
207 insort = bisect.insort
208 pop = result.pop
209 los = result[-1] # los --> Largest of the nsmallest
210 for elem in it:
211 if los <= elem:
212 continue
213 insort(result, elem)
214 pop()
215 los = result[-1]
216 return result
217 # An alternative approach manifests the whole iterable in memory but
218 # saves comparisons by heapifying all at once. Also, saves time
219 # over bisect.insort() which has O(n) data movement time for every
220 # insertion. Finding the n smallest of an m length iterable requires
221 # O(m) + O(n log m) comparisons.
Raymond Hettinger33ecffb2004-06-10 05:03:17 +0000222 h = list(iterable)
223 heapify(h)
224 return map(heappop, repeat(h, min(n, len(h))))
225
Raymond Hettingerc46cb2a2004-04-19 19:06:21 +0000226# 'heap' is a heap at all indices >= startpos, except possibly for pos. pos
227# is the index of a leaf with a possibly out-of-order value. Restore the
228# heap invariant.
229def _siftdown(heap, startpos, pos):
230 newitem = heap[pos]
231 # Follow the path to the root, moving parents down until finding a place
232 # newitem fits.
233 while pos > startpos:
234 parentpos = (pos - 1) >> 1
235 parent = heap[parentpos]
236 if parent <= newitem:
237 break
238 heap[pos] = parent
239 pos = parentpos
240 heap[pos] = newitem
241
242# The child indices of heap index pos are already heaps, and we want to make
243# a heap at index pos too. We do this by bubbling the smaller child of
244# pos up (and so on with that child's children, etc) until hitting a leaf,
245# then using _siftdown to move the oddball originally at index pos into place.
246#
247# We *could* break out of the loop as soon as we find a pos where newitem <=
248# both its children, but turns out that's not a good idea, and despite that
249# many books write the algorithm that way. During a heap pop, the last array
250# element is sifted in, and that tends to be large, so that comparing it
251# against values starting from the root usually doesn't pay (= usually doesn't
252# get us out of the loop early). See Knuth, Volume 3, where this is
253# explained and quantified in an exercise.
254#
255# Cutting the # of comparisons is important, since these routines have no
256# way to extract "the priority" from an array element, so that intelligence
257# is likely to be hiding in custom __cmp__ methods, or in array elements
258# storing (priority, record) tuples. Comparisons are thus potentially
259# expensive.
260#
261# On random arrays of length 1000, making this change cut the number of
262# comparisons made by heapify() a little, and those made by exhaustive
263# heappop() a lot, in accord with theory. Here are typical results from 3
264# runs (3 just to demonstrate how small the variance is):
265#
266# Compares needed by heapify Compares needed by 1000 heappops
267# -------------------------- --------------------------------
268# 1837 cut to 1663 14996 cut to 8680
269# 1855 cut to 1659 14966 cut to 8678
270# 1847 cut to 1660 15024 cut to 8703
271#
272# Building the heap by using heappush() 1000 times instead required
273# 2198, 2148, and 2219 compares: heapify() is more efficient, when
274# you can use it.
275#
276# The total compares needed by list.sort() on the same lists were 8627,
277# 8627, and 8632 (this should be compared to the sum of heapify() and
278# heappop() compares): list.sort() is (unsurprisingly!) more efficient
279# for sorting.
280
281def _siftup(heap, pos):
282 endpos = len(heap)
283 startpos = pos
284 newitem = heap[pos]
285 # Bubble up the smaller child until hitting a leaf.
286 childpos = 2*pos + 1 # leftmost child position
287 while childpos < endpos:
288 # Set childpos to index of smaller child.
289 rightpos = childpos + 1
290 if rightpos < endpos and heap[rightpos] <= heap[childpos]:
291 childpos = rightpos
292 # Move the smaller child up.
293 heap[pos] = heap[childpos]
294 pos = childpos
295 childpos = 2*pos + 1
296 # The leaf at pos is empty now. Put newitem there, and bubble it up
297 # to its final resting place (by sifting its parents down).
298 heap[pos] = newitem
299 _siftdown(heap, startpos, pos)
300
301# If available, use C implementation
302try:
303 from _heapq import heappush, heappop, heapify, heapreplace
304except ImportError:
305 pass
306
307if __name__ == "__main__":
308 # Simple sanity test
309 heap = []
310 data = [1, 3, 5, 7, 9, 2, 4, 6, 8, 0]
311 for item in data:
312 heappush(heap, item)
313 sort = []
314 while heap:
315 sort.append(heappop(heap))
316 print sort