Initial commit of OpenSPARC T2 architecture model.
[OpenSPARC-T2-SAM] / sam-t2 / devtools / v9 / lib / python2.4 / test / test_generators.py
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1tutorial_tests = """
2Let's try a simple generator:
3
4 >>> def f():
5 ... yield 1
6 ... yield 2
7
8 >>> for i in f():
9 ... print i
10 1
11 2
12 >>> g = f()
13 >>> g.next()
14 1
15 >>> g.next()
16 2
17
18"Falling off the end" stops the generator:
19
20 >>> g.next()
21 Traceback (most recent call last):
22 File "<stdin>", line 1, in ?
23 File "<stdin>", line 2, in g
24 StopIteration
25
26"return" also stops the generator:
27
28 >>> def f():
29 ... yield 1
30 ... return
31 ... yield 2 # never reached
32 ...
33 >>> g = f()
34 >>> g.next()
35 1
36 >>> g.next()
37 Traceback (most recent call last):
38 File "<stdin>", line 1, in ?
39 File "<stdin>", line 3, in f
40 StopIteration
41 >>> g.next() # once stopped, can't be resumed
42 Traceback (most recent call last):
43 File "<stdin>", line 1, in ?
44 StopIteration
45
46"raise StopIteration" stops the generator too:
47
48 >>> def f():
49 ... yield 1
50 ... raise StopIteration
51 ... yield 2 # never reached
52 ...
53 >>> g = f()
54 >>> g.next()
55 1
56 >>> g.next()
57 Traceback (most recent call last):
58 File "<stdin>", line 1, in ?
59 StopIteration
60 >>> g.next()
61 Traceback (most recent call last):
62 File "<stdin>", line 1, in ?
63 StopIteration
64
65However, they are not exactly equivalent:
66
67 >>> def g1():
68 ... try:
69 ... return
70 ... except:
71 ... yield 1
72 ...
73 >>> list(g1())
74 []
75
76 >>> def g2():
77 ... try:
78 ... raise StopIteration
79 ... except:
80 ... yield 42
81 >>> print list(g2())
82 [42]
83
84This may be surprising at first:
85
86 >>> def g3():
87 ... try:
88 ... return
89 ... finally:
90 ... yield 1
91 ...
92 >>> list(g3())
93 [1]
94
95Let's create an alternate range() function implemented as a generator:
96
97 >>> def yrange(n):
98 ... for i in range(n):
99 ... yield i
100 ...
101 >>> list(yrange(5))
102 [0, 1, 2, 3, 4]
103
104Generators always return to the most recent caller:
105
106 >>> def creator():
107 ... r = yrange(5)
108 ... print "creator", r.next()
109 ... return r
110 ...
111 >>> def caller():
112 ... r = creator()
113 ... for i in r:
114 ... print "caller", i
115 ...
116 >>> caller()
117 creator 0
118 caller 1
119 caller 2
120 caller 3
121 caller 4
122
123Generators can call other generators:
124
125 >>> def zrange(n):
126 ... for i in yrange(n):
127 ... yield i
128 ...
129 >>> list(zrange(5))
130 [0, 1, 2, 3, 4]
131
132"""
133
134# The examples from PEP 255.
135
136pep_tests = """
137
138Specification: Yield
139
140 Restriction: A generator cannot be resumed while it is actively
141 running:
142
143 >>> def g():
144 ... i = me.next()
145 ... yield i
146 >>> me = g()
147 >>> me.next()
148 Traceback (most recent call last):
149 ...
150 File "<string>", line 2, in g
151 ValueError: generator already executing
152
153Specification: Return
154
155 Note that return isn't always equivalent to raising StopIteration: the
156 difference lies in how enclosing try/except constructs are treated.
157 For example,
158
159 >>> def f1():
160 ... try:
161 ... return
162 ... except:
163 ... yield 1
164 >>> print list(f1())
165 []
166
167 because, as in any function, return simply exits, but
168
169 >>> def f2():
170 ... try:
171 ... raise StopIteration
172 ... except:
173 ... yield 42
174 >>> print list(f2())
175 [42]
176
177 because StopIteration is captured by a bare "except", as is any
178 exception.
179
180Specification: Generators and Exception Propagation
181
182 >>> def f():
183 ... return 1//0
184 >>> def g():
185 ... yield f() # the zero division exception propagates
186 ... yield 42 # and we'll never get here
187 >>> k = g()
188 >>> k.next()
189 Traceback (most recent call last):
190 File "<stdin>", line 1, in ?
191 File "<stdin>", line 2, in g
192 File "<stdin>", line 2, in f
193 ZeroDivisionError: integer division or modulo by zero
194 >>> k.next() # and the generator cannot be resumed
195 Traceback (most recent call last):
196 File "<stdin>", line 1, in ?
197 StopIteration
198 >>>
199
200Specification: Try/Except/Finally
201
202 >>> def f():
203 ... try:
204 ... yield 1
205 ... try:
206 ... yield 2
207 ... 1//0
208 ... yield 3 # never get here
209 ... except ZeroDivisionError:
210 ... yield 4
211 ... yield 5
212 ... raise
213 ... except:
214 ... yield 6
215 ... yield 7 # the "raise" above stops this
216 ... except:
217 ... yield 8
218 ... yield 9
219 ... try:
220 ... x = 12
221 ... finally:
222 ... yield 10
223 ... yield 11
224 >>> print list(f())
225 [1, 2, 4, 5, 8, 9, 10, 11]
226 >>>
227
228Guido's binary tree example.
229
230 >>> # A binary tree class.
231 >>> class Tree:
232 ...
233 ... def __init__(self, label, left=None, right=None):
234 ... self.label = label
235 ... self.left = left
236 ... self.right = right
237 ...
238 ... def __repr__(self, level=0, indent=" "):
239 ... s = level*indent + repr(self.label)
240 ... if self.left:
241 ... s = s + "\\n" + self.left.__repr__(level+1, indent)
242 ... if self.right:
243 ... s = s + "\\n" + self.right.__repr__(level+1, indent)
244 ... return s
245 ...
246 ... def __iter__(self):
247 ... return inorder(self)
248
249 >>> # Create a Tree from a list.
250 >>> def tree(list):
251 ... n = len(list)
252 ... if n == 0:
253 ... return []
254 ... i = n // 2
255 ... return Tree(list[i], tree(list[:i]), tree(list[i+1:]))
256
257 >>> # Show it off: create a tree.
258 >>> t = tree("ABCDEFGHIJKLMNOPQRSTUVWXYZ")
259
260 >>> # A recursive generator that generates Tree labels in in-order.
261 >>> def inorder(t):
262 ... if t:
263 ... for x in inorder(t.left):
264 ... yield x
265 ... yield t.label
266 ... for x in inorder(t.right):
267 ... yield x
268
269 >>> # Show it off: create a tree.
270 >>> t = tree("ABCDEFGHIJKLMNOPQRSTUVWXYZ")
271 >>> # Print the nodes of the tree in in-order.
272 >>> for x in t:
273 ... print x,
274 A B C D E F G H I J K L M N O P Q R S T U V W X Y Z
275
276 >>> # A non-recursive generator.
277 >>> def inorder(node):
278 ... stack = []
279 ... while node:
280 ... while node.left:
281 ... stack.append(node)
282 ... node = node.left
283 ... yield node.label
284 ... while not node.right:
285 ... try:
286 ... node = stack.pop()
287 ... except IndexError:
288 ... return
289 ... yield node.label
290 ... node = node.right
291
292 >>> # Exercise the non-recursive generator.
293 >>> for x in t:
294 ... print x,
295 A B C D E F G H I J K L M N O P Q R S T U V W X Y Z
296
297"""
298
299# Examples from Iterator-List and Python-Dev and c.l.py.
300
301email_tests = """
302
303The difference between yielding None and returning it.
304
305>>> def g():
306... for i in range(3):
307... yield None
308... yield None
309... return
310>>> list(g())
311[None, None, None, None]
312
313Ensure that explicitly raising StopIteration acts like any other exception
314in try/except, not like a return.
315
316>>> def g():
317... yield 1
318... try:
319... raise StopIteration
320... except:
321... yield 2
322... yield 3
323>>> list(g())
324[1, 2, 3]
325
326Next one was posted to c.l.py.
327
328>>> def gcomb(x, k):
329... "Generate all combinations of k elements from list x."
330...
331... if k > len(x):
332... return
333... if k == 0:
334... yield []
335... else:
336... first, rest = x[0], x[1:]
337... # A combination does or doesn't contain first.
338... # If it does, the remainder is a k-1 comb of rest.
339... for c in gcomb(rest, k-1):
340... c.insert(0, first)
341... yield c
342... # If it doesn't contain first, it's a k comb of rest.
343... for c in gcomb(rest, k):
344... yield c
345
346>>> seq = range(1, 5)
347>>> for k in range(len(seq) + 2):
348... print "%d-combs of %s:" % (k, seq)
349... for c in gcomb(seq, k):
350... print " ", c
3510-combs of [1, 2, 3, 4]:
352 []
3531-combs of [1, 2, 3, 4]:
354 [1]
355 [2]
356 [3]
357 [4]
3582-combs of [1, 2, 3, 4]:
359 [1, 2]
360 [1, 3]
361 [1, 4]
362 [2, 3]
363 [2, 4]
364 [3, 4]
3653-combs of [1, 2, 3, 4]:
366 [1, 2, 3]
367 [1, 2, 4]
368 [1, 3, 4]
369 [2, 3, 4]
3704-combs of [1, 2, 3, 4]:
371 [1, 2, 3, 4]
3725-combs of [1, 2, 3, 4]:
373
374From the Iterators list, about the types of these things.
375
376>>> def g():
377... yield 1
378...
379>>> type(g)
380<type 'function'>
381>>> i = g()
382>>> type(i)
383<type 'generator'>
384>>> [s for s in dir(i) if not s.startswith('_')]
385['gi_frame', 'gi_running', 'next']
386>>> print i.next.__doc__
387x.next() -> the next value, or raise StopIteration
388>>> iter(i) is i
389True
390>>> import types
391>>> isinstance(i, types.GeneratorType)
392True
393
394And more, added later.
395
396>>> i.gi_running
3970
398>>> type(i.gi_frame)
399<type 'frame'>
400>>> i.gi_running = 42
401Traceback (most recent call last):
402 ...
403TypeError: readonly attribute
404>>> def g():
405... yield me.gi_running
406>>> me = g()
407>>> me.gi_running
4080
409>>> me.next()
4101
411>>> me.gi_running
4120
413
414A clever union-find implementation from c.l.py, due to David Eppstein.
415Sent: Friday, June 29, 2001 12:16 PM
416To: python-list@python.org
417Subject: Re: PEP 255: Simple Generators
418
419>>> class disjointSet:
420... def __init__(self, name):
421... self.name = name
422... self.parent = None
423... self.generator = self.generate()
424...
425... def generate(self):
426... while not self.parent:
427... yield self
428... for x in self.parent.generator:
429... yield x
430...
431... def find(self):
432... return self.generator.next()
433...
434... def union(self, parent):
435... if self.parent:
436... raise ValueError("Sorry, I'm not a root!")
437... self.parent = parent
438...
439... def __str__(self):
440... return self.name
441
442>>> names = "ABCDEFGHIJKLM"
443>>> sets = [disjointSet(name) for name in names]
444>>> roots = sets[:]
445
446>>> import random
447>>> gen = random.WichmannHill(42)
448>>> while 1:
449... for s in sets:
450... print "%s->%s" % (s, s.find()),
451... print
452... if len(roots) > 1:
453... s1 = gen.choice(roots)
454... roots.remove(s1)
455... s2 = gen.choice(roots)
456... s1.union(s2)
457... print "merged", s1, "into", s2
458... else:
459... break
460A->A B->B C->C D->D E->E F->F G->G H->H I->I J->J K->K L->L M->M
461merged D into G
462A->A B->B C->C D->G E->E F->F G->G H->H I->I J->J K->K L->L M->M
463merged C into F
464A->A B->B C->F D->G E->E F->F G->G H->H I->I J->J K->K L->L M->M
465merged L into A
466A->A B->B C->F D->G E->E F->F G->G H->H I->I J->J K->K L->A M->M
467merged H into E
468A->A B->B C->F D->G E->E F->F G->G H->E I->I J->J K->K L->A M->M
469merged B into E
470A->A B->E C->F D->G E->E F->F G->G H->E I->I J->J K->K L->A M->M
471merged J into G
472A->A B->E C->F D->G E->E F->F G->G H->E I->I J->G K->K L->A M->M
473merged E into G
474A->A B->G C->F D->G E->G F->F G->G H->G I->I J->G K->K L->A M->M
475merged M into G
476A->A B->G C->F D->G E->G F->F G->G H->G I->I J->G K->K L->A M->G
477merged I into K
478A->A B->G C->F D->G E->G F->F G->G H->G I->K J->G K->K L->A M->G
479merged K into A
480A->A B->G C->F D->G E->G F->F G->G H->G I->A J->G K->A L->A M->G
481merged F into A
482A->A B->G C->A D->G E->G F->A G->G H->G I->A J->G K->A L->A M->G
483merged A into G
484A->G B->G C->G D->G E->G F->G G->G H->G I->G J->G K->G L->G M->G
485"""
486# Emacs turd '
487
488# Fun tests (for sufficiently warped notions of "fun").
489
490fun_tests = """
491
492Build up to a recursive Sieve of Eratosthenes generator.
493
494>>> def firstn(g, n):
495... return [g.next() for i in range(n)]
496
497>>> def intsfrom(i):
498... while 1:
499... yield i
500... i += 1
501
502>>> firstn(intsfrom(5), 7)
503[5, 6, 7, 8, 9, 10, 11]
504
505>>> def exclude_multiples(n, ints):
506... for i in ints:
507... if i % n:
508... yield i
509
510>>> firstn(exclude_multiples(3, intsfrom(1)), 6)
511[1, 2, 4, 5, 7, 8]
512
513>>> def sieve(ints):
514... prime = ints.next()
515... yield prime
516... not_divisible_by_prime = exclude_multiples(prime, ints)
517... for p in sieve(not_divisible_by_prime):
518... yield p
519
520>>> primes = sieve(intsfrom(2))
521>>> firstn(primes, 20)
522[2, 3, 5, 7, 11, 13, 17, 19, 23, 29, 31, 37, 41, 43, 47, 53, 59, 61, 67, 71]
523
524
525Another famous problem: generate all integers of the form
526 2**i * 3**j * 5**k
527in increasing order, where i,j,k >= 0. Trickier than it may look at first!
528Try writing it without generators, and correctly, and without generating
5293 internal results for each result output.
530
531>>> def times(n, g):
532... for i in g:
533... yield n * i
534>>> firstn(times(10, intsfrom(1)), 10)
535[10, 20, 30, 40, 50, 60, 70, 80, 90, 100]
536
537>>> def merge(g, h):
538... ng = g.next()
539... nh = h.next()
540... while 1:
541... if ng < nh:
542... yield ng
543... ng = g.next()
544... elif ng > nh:
545... yield nh
546... nh = h.next()
547... else:
548... yield ng
549... ng = g.next()
550... nh = h.next()
551
552The following works, but is doing a whale of a lot of redundant work --
553it's not clear how to get the internal uses of m235 to share a single
554generator. Note that me_times2 (etc) each need to see every element in the
555result sequence. So this is an example where lazy lists are more natural
556(you can look at the head of a lazy list any number of times).
557
558>>> def m235():
559... yield 1
560... me_times2 = times(2, m235())
561... me_times3 = times(3, m235())
562... me_times5 = times(5, m235())
563... for i in merge(merge(me_times2,
564... me_times3),
565... me_times5):
566... yield i
567
568Don't print "too many" of these -- the implementation above is extremely
569inefficient: each call of m235() leads to 3 recursive calls, and in
570turn each of those 3 more, and so on, and so on, until we've descended
571enough levels to satisfy the print stmts. Very odd: when I printed 5
572lines of results below, this managed to screw up Win98's malloc in "the
573usual" way, i.e. the heap grew over 4Mb so Win98 started fragmenting
574address space, and it *looked* like a very slow leak.
575
576>>> result = m235()
577>>> for i in range(3):
578... print firstn(result, 15)
579[1, 2, 3, 4, 5, 6, 8, 9, 10, 12, 15, 16, 18, 20, 24]
580[25, 27, 30, 32, 36, 40, 45, 48, 50, 54, 60, 64, 72, 75, 80]
581[81, 90, 96, 100, 108, 120, 125, 128, 135, 144, 150, 160, 162, 180, 192]
582
583Heh. Here's one way to get a shared list, complete with an excruciating
584namespace renaming trick. The *pretty* part is that the times() and merge()
585functions can be reused as-is, because they only assume their stream
586arguments are iterable -- a LazyList is the same as a generator to times().
587
588>>> class LazyList:
589... def __init__(self, g):
590... self.sofar = []
591... self.fetch = g.next
592...
593... def __getitem__(self, i):
594... sofar, fetch = self.sofar, self.fetch
595... while i >= len(sofar):
596... sofar.append(fetch())
597... return sofar[i]
598
599>>> def m235():
600... yield 1
601... # Gack: m235 below actually refers to a LazyList.
602... me_times2 = times(2, m235)
603... me_times3 = times(3, m235)
604... me_times5 = times(5, m235)
605... for i in merge(merge(me_times2,
606... me_times3),
607... me_times5):
608... yield i
609
610Print as many of these as you like -- *this* implementation is memory-
611efficient.
612
613>>> m235 = LazyList(m235())
614>>> for i in range(5):
615... print [m235[j] for j in range(15*i, 15*(i+1))]
616[1, 2, 3, 4, 5, 6, 8, 9, 10, 12, 15, 16, 18, 20, 24]
617[25, 27, 30, 32, 36, 40, 45, 48, 50, 54, 60, 64, 72, 75, 80]
618[81, 90, 96, 100, 108, 120, 125, 128, 135, 144, 150, 160, 162, 180, 192]
619[200, 216, 225, 240, 243, 250, 256, 270, 288, 300, 320, 324, 360, 375, 384]
620[400, 405, 432, 450, 480, 486, 500, 512, 540, 576, 600, 625, 640, 648, 675]
621
622
623Ye olde Fibonacci generator, LazyList style.
624
625>>> def fibgen(a, b):
626...
627... def sum(g, h):
628... while 1:
629... yield g.next() + h.next()
630...
631... def tail(g):
632... g.next() # throw first away
633... for x in g:
634... yield x
635...
636... yield a
637... yield b
638... for s in sum(iter(fib),
639... tail(iter(fib))):
640... yield s
641
642>>> fib = LazyList(fibgen(1, 2))
643>>> firstn(iter(fib), 17)
644[1, 2, 3, 5, 8, 13, 21, 34, 55, 89, 144, 233, 377, 610, 987, 1597, 2584]
645"""
646
647# syntax_tests mostly provokes SyntaxErrors. Also fiddling with #if 0
648# hackery.
649
650syntax_tests = """
651
652>>> def f():
653... return 22
654... yield 1
655Traceback (most recent call last):
656 ..
657SyntaxError: 'return' with argument inside generator (<doctest test.test_generators.__test__.syntax[0]>, line 2)
658
659>>> def f():
660... yield 1
661... return 22
662Traceback (most recent call last):
663 ..
664SyntaxError: 'return' with argument inside generator (<doctest test.test_generators.__test__.syntax[1]>, line 3)
665
666"return None" is not the same as "return" in a generator:
667
668>>> def f():
669... yield 1
670... return None
671Traceback (most recent call last):
672 ..
673SyntaxError: 'return' with argument inside generator (<doctest test.test_generators.__test__.syntax[2]>, line 3)
674
675This one is fine:
676
677>>> def f():
678... yield 1
679... return
680
681>>> def f():
682... try:
683... yield 1
684... finally:
685... pass
686Traceback (most recent call last):
687 ..
688SyntaxError: 'yield' not allowed in a 'try' block with a 'finally' clause (<doctest test.test_generators.__test__.syntax[4]>, line 3)
689
690>>> def f():
691... try:
692... try:
693... 1//0
694... except ZeroDivisionError:
695... yield 666 # bad because *outer* try has finally
696... except:
697... pass
698... finally:
699... pass
700Traceback (most recent call last):
701 ...
702SyntaxError: 'yield' not allowed in a 'try' block with a 'finally' clause (<doctest test.test_generators.__test__.syntax[5]>, line 6)
703
704But this is fine:
705
706>>> def f():
707... try:
708... try:
709... yield 12
710... 1//0
711... except ZeroDivisionError:
712... yield 666
713... except:
714... try:
715... x = 12
716... finally:
717... yield 12
718... except:
719... return
720>>> list(f())
721[12, 666]
722
723>>> def f():
724... yield
725Traceback (most recent call last):
726SyntaxError: invalid syntax
727
728>>> def f():
729... if 0:
730... yield
731Traceback (most recent call last):
732SyntaxError: invalid syntax
733
734>>> def f():
735... if 0:
736... yield 1
737>>> type(f())
738<type 'generator'>
739
740>>> def f():
741... if "":
742... yield None
743>>> type(f())
744<type 'generator'>
745
746>>> def f():
747... return
748... try:
749... if x==4:
750... pass
751... elif 0:
752... try:
753... 1//0
754... except SyntaxError:
755... pass
756... else:
757... if 0:
758... while 12:
759... x += 1
760... yield 2 # don't blink
761... f(a, b, c, d, e)
762... else:
763... pass
764... except:
765... x = 1
766... return
767>>> type(f())
768<type 'generator'>
769
770>>> def f():
771... if 0:
772... def g():
773... yield 1
774...
775>>> type(f())
776<type 'NoneType'>
777
778>>> def f():
779... if 0:
780... class C:
781... def __init__(self):
782... yield 1
783... def f(self):
784... yield 2
785>>> type(f())
786<type 'NoneType'>
787
788>>> def f():
789... if 0:
790... return
791... if 0:
792... yield 2
793>>> type(f())
794<type 'generator'>
795
796
797>>> def f():
798... if 0:
799... lambda x: x # shouldn't trigger here
800... return # or here
801... def f(i):
802... return 2*i # or here
803... if 0:
804... return 3 # but *this* sucks (line 8)
805... if 0:
806... yield 2 # because it's a generator
807Traceback (most recent call last):
808SyntaxError: 'return' with argument inside generator (<doctest test.test_generators.__test__.syntax[22]>, line 8)
809
810This one caused a crash (see SF bug 567538):
811
812>>> def f():
813... for i in range(3):
814... try:
815... continue
816... finally:
817... yield i
818...
819>>> g = f()
820>>> print g.next()
8210
822>>> print g.next()
8231
824>>> print g.next()
8252
826>>> print g.next()
827Traceback (most recent call last):
828StopIteration
829"""
830
831# conjoin is a simple backtracking generator, named in honor of Icon's
832# "conjunction" control structure. Pass a list of no-argument functions
833# that return iterable objects. Easiest to explain by example: assume the
834# function list [x, y, z] is passed. Then conjoin acts like:
835#
836# def g():
837# values = [None] * 3
838# for values[0] in x():
839# for values[1] in y():
840# for values[2] in z():
841# yield values
842#
843# So some 3-lists of values *may* be generated, each time we successfully
844# get into the innermost loop. If an iterator fails (is exhausted) before
845# then, it "backtracks" to get the next value from the nearest enclosing
846# iterator (the one "to the left"), and starts all over again at the next
847# slot (pumps a fresh iterator). Of course this is most useful when the
848# iterators have side-effects, so that which values *can* be generated at
849# each slot depend on the values iterated at previous slots.
850
851def conjoin(gs):
852
853 values = [None] * len(gs)
854
855 def gen(i, values=values):
856 if i >= len(gs):
857 yield values
858 else:
859 for values[i] in gs[i]():
860 for x in gen(i+1):
861 yield x
862
863 for x in gen(0):
864 yield x
865
866# That works fine, but recursing a level and checking i against len(gs) for
867# each item produced is inefficient. By doing manual loop unrolling across
868# generator boundaries, it's possible to eliminate most of that overhead.
869# This isn't worth the bother *in general* for generators, but conjoin() is
870# a core building block for some CPU-intensive generator applications.
871
872def conjoin(gs):
873
874 n = len(gs)
875 values = [None] * n
876
877 # Do one loop nest at time recursively, until the # of loop nests
878 # remaining is divisible by 3.
879
880 def gen(i, values=values):
881 if i >= n:
882 yield values
883
884 elif (n-i) % 3:
885 ip1 = i+1
886 for values[i] in gs[i]():
887 for x in gen(ip1):
888 yield x
889
890 else:
891 for x in _gen3(i):
892 yield x
893
894 # Do three loop nests at a time, recursing only if at least three more
895 # remain. Don't call directly: this is an internal optimization for
896 # gen's use.
897
898 def _gen3(i, values=values):
899 assert i < n and (n-i) % 3 == 0
900 ip1, ip2, ip3 = i+1, i+2, i+3
901 g, g1, g2 = gs[i : ip3]
902
903 if ip3 >= n:
904 # These are the last three, so we can yield values directly.
905 for values[i] in g():
906 for values[ip1] in g1():
907 for values[ip2] in g2():
908 yield values
909
910 else:
911 # At least 6 loop nests remain; peel off 3 and recurse for the
912 # rest.
913 for values[i] in g():
914 for values[ip1] in g1():
915 for values[ip2] in g2():
916 for x in _gen3(ip3):
917 yield x
918
919 for x in gen(0):
920 yield x
921
922# And one more approach: For backtracking apps like the Knight's Tour
923# solver below, the number of backtracking levels can be enormous (one
924# level per square, for the Knight's Tour, so that e.g. a 100x100 board
925# needs 10,000 levels). In such cases Python is likely to run out of
926# stack space due to recursion. So here's a recursion-free version of
927# conjoin too.
928# NOTE WELL: This allows large problems to be solved with only trivial
929# demands on stack space. Without explicitly resumable generators, this is
930# much harder to achieve. OTOH, this is much slower (up to a factor of 2)
931# than the fancy unrolled recursive conjoin.
932
933def flat_conjoin(gs): # rename to conjoin to run tests with this instead
934 n = len(gs)
935 values = [None] * n
936 iters = [None] * n
937 _StopIteration = StopIteration # make local because caught a *lot*
938 i = 0
939 while 1:
940 # Descend.
941 try:
942 while i < n:
943 it = iters[i] = gs[i]().next
944 values[i] = it()
945 i += 1
946 except _StopIteration:
947 pass
948 else:
949 assert i == n
950 yield values
951
952 # Backtrack until an older iterator can be resumed.
953 i -= 1
954 while i >= 0:
955 try:
956 values[i] = iters[i]()
957 # Success! Start fresh at next level.
958 i += 1
959 break
960 except _StopIteration:
961 # Continue backtracking.
962 i -= 1
963 else:
964 assert i < 0
965 break
966
967# A conjoin-based N-Queens solver.
968
969class Queens:
970 def __init__(self, n):
971 self.n = n
972 rangen = range(n)
973
974 # Assign a unique int to each column and diagonal.
975 # columns: n of those, range(n).
976 # NW-SE diagonals: 2n-1 of these, i-j unique and invariant along
977 # each, smallest i-j is 0-(n-1) = 1-n, so add n-1 to shift to 0-
978 # based.
979 # NE-SW diagonals: 2n-1 of these, i+j unique and invariant along
980 # each, smallest i+j is 0, largest is 2n-2.
981
982 # For each square, compute a bit vector of the columns and
983 # diagonals it covers, and for each row compute a function that
984 # generates the possiblities for the columns in that row.
985 self.rowgenerators = []
986 for i in rangen:
987 rowuses = [(1L << j) | # column ordinal
988 (1L << (n + i-j + n-1)) | # NW-SE ordinal
989 (1L << (n + 2*n-1 + i+j)) # NE-SW ordinal
990 for j in rangen]
991
992 def rowgen(rowuses=rowuses):
993 for j in rangen:
994 uses = rowuses[j]
995 if uses & self.used == 0:
996 self.used |= uses
997 yield j
998 self.used &= ~uses
999
1000 self.rowgenerators.append(rowgen)
1001
1002 # Generate solutions.
1003 def solve(self):
1004 self.used = 0
1005 for row2col in conjoin(self.rowgenerators):
1006 yield row2col
1007
1008 def printsolution(self, row2col):
1009 n = self.n
1010 assert n == len(row2col)
1011 sep = "+" + "-+" * n
1012 print sep
1013 for i in range(n):
1014 squares = [" " for j in range(n)]
1015 squares[row2col[i]] = "Q"
1016 print "|" + "|".join(squares) + "|"
1017 print sep
1018
1019# A conjoin-based Knight's Tour solver. This is pretty sophisticated
1020# (e.g., when used with flat_conjoin above, and passing hard=1 to the
1021# constructor, a 200x200 Knight's Tour was found quickly -- note that we're
1022# creating 10s of thousands of generators then!), and is lengthy.
1023
1024class Knights:
1025 def __init__(self, m, n, hard=0):
1026 self.m, self.n = m, n
1027
1028 # solve() will set up succs[i] to be a list of square #i's
1029 # successors.
1030 succs = self.succs = []
1031
1032 # Remove i0 from each of its successor's successor lists, i.e.
1033 # successors can't go back to i0 again. Return 0 if we can
1034 # detect this makes a solution impossible, else return 1.
1035
1036 def remove_from_successors(i0, len=len):
1037 # If we remove all exits from a free square, we're dead:
1038 # even if we move to it next, we can't leave it again.
1039 # If we create a square with one exit, we must visit it next;
1040 # else somebody else will have to visit it, and since there's
1041 # only one adjacent, there won't be a way to leave it again.
1042 # Finelly, if we create more than one free square with a
1043 # single exit, we can only move to one of them next, leaving
1044 # the other one a dead end.
1045 ne0 = ne1 = 0
1046 for i in succs[i0]:
1047 s = succs[i]
1048 s.remove(i0)
1049 e = len(s)
1050 if e == 0:
1051 ne0 += 1
1052 elif e == 1:
1053 ne1 += 1
1054 return ne0 == 0 and ne1 < 2
1055
1056 # Put i0 back in each of its successor's successor lists.
1057
1058 def add_to_successors(i0):
1059 for i in succs[i0]:
1060 succs[i].append(i0)
1061
1062 # Generate the first move.
1063 def first():
1064 if m < 1 or n < 1:
1065 return
1066
1067 # Since we're looking for a cycle, it doesn't matter where we
1068 # start. Starting in a corner makes the 2nd move easy.
1069 corner = self.coords2index(0, 0)
1070 remove_from_successors(corner)
1071 self.lastij = corner
1072 yield corner
1073 add_to_successors(corner)
1074
1075 # Generate the second moves.
1076 def second():
1077 corner = self.coords2index(0, 0)
1078 assert self.lastij == corner # i.e., we started in the corner
1079 if m < 3 or n < 3:
1080 return
1081 assert len(succs[corner]) == 2
1082 assert self.coords2index(1, 2) in succs[corner]
1083 assert self.coords2index(2, 1) in succs[corner]
1084 # Only two choices. Whichever we pick, the other must be the
1085 # square picked on move m*n, as it's the only way to get back
1086 # to (0, 0). Save its index in self.final so that moves before
1087 # the last know it must be kept free.
1088 for i, j in (1, 2), (2, 1):
1089 this = self.coords2index(i, j)
1090 final = self.coords2index(3-i, 3-j)
1091 self.final = final
1092
1093 remove_from_successors(this)
1094 succs[final].append(corner)
1095 self.lastij = this
1096 yield this
1097 succs[final].remove(corner)
1098 add_to_successors(this)
1099
1100 # Generate moves 3 thru m*n-1.
1101 def advance(len=len):
1102 # If some successor has only one exit, must take it.
1103 # Else favor successors with fewer exits.
1104 candidates = []
1105 for i in succs[self.lastij]:
1106 e = len(succs[i])
1107 assert e > 0, "else remove_from_successors() pruning flawed"
1108 if e == 1:
1109 candidates = [(e, i)]
1110 break
1111 candidates.append((e, i))
1112 else:
1113 candidates.sort()
1114
1115 for e, i in candidates:
1116 if i != self.final:
1117 if remove_from_successors(i):
1118 self.lastij = i
1119 yield i
1120 add_to_successors(i)
1121
1122 # Generate moves 3 thru m*n-1. Alternative version using a
1123 # stronger (but more expensive) heuristic to order successors.
1124 # Since the # of backtracking levels is m*n, a poor move early on
1125 # can take eons to undo. Smallest square board for which this
1126 # matters a lot is 52x52.
1127 def advance_hard(vmid=(m-1)/2.0, hmid=(n-1)/2.0, len=len):
1128 # If some successor has only one exit, must take it.
1129 # Else favor successors with fewer exits.
1130 # Break ties via max distance from board centerpoint (favor
1131 # corners and edges whenever possible).
1132 candidates = []
1133 for i in succs[self.lastij]:
1134 e = len(succs[i])
1135 assert e > 0, "else remove_from_successors() pruning flawed"
1136 if e == 1:
1137 candidates = [(e, 0, i)]
1138 break
1139 i1, j1 = self.index2coords(i)
1140 d = (i1 - vmid)**2 + (j1 - hmid)**2
1141 candidates.append((e, -d, i))
1142 else:
1143 candidates.sort()
1144
1145 for e, d, i in candidates:
1146 if i != self.final:
1147 if remove_from_successors(i):
1148 self.lastij = i
1149 yield i
1150 add_to_successors(i)
1151
1152 # Generate the last move.
1153 def last():
1154 assert self.final in succs[self.lastij]
1155 yield self.final
1156
1157 if m*n < 4:
1158 self.squaregenerators = [first]
1159 else:
1160 self.squaregenerators = [first, second] + \
1161 [hard and advance_hard or advance] * (m*n - 3) + \
1162 [last]
1163
1164 def coords2index(self, i, j):
1165 assert 0 <= i < self.m
1166 assert 0 <= j < self.n
1167 return i * self.n + j
1168
1169 def index2coords(self, index):
1170 assert 0 <= index < self.m * self.n
1171 return divmod(index, self.n)
1172
1173 def _init_board(self):
1174 succs = self.succs
1175 del succs[:]
1176 m, n = self.m, self.n
1177 c2i = self.coords2index
1178
1179 offsets = [( 1, 2), ( 2, 1), ( 2, -1), ( 1, -2),
1180 (-1, -2), (-2, -1), (-2, 1), (-1, 2)]
1181 rangen = range(n)
1182 for i in range(m):
1183 for j in rangen:
1184 s = [c2i(i+io, j+jo) for io, jo in offsets
1185 if 0 <= i+io < m and
1186 0 <= j+jo < n]
1187 succs.append(s)
1188
1189 # Generate solutions.
1190 def solve(self):
1191 self._init_board()
1192 for x in conjoin(self.squaregenerators):
1193 yield x
1194
1195 def printsolution(self, x):
1196 m, n = self.m, self.n
1197 assert len(x) == m*n
1198 w = len(str(m*n))
1199 format = "%" + str(w) + "d"
1200
1201 squares = [[None] * n for i in range(m)]
1202 k = 1
1203 for i in x:
1204 i1, j1 = self.index2coords(i)
1205 squares[i1][j1] = format % k
1206 k += 1
1207
1208 sep = "+" + ("-" * w + "+") * n
1209 print sep
1210 for i in range(m):
1211 row = squares[i]
1212 print "|" + "|".join(row) + "|"
1213 print sep
1214
1215conjoin_tests = """
1216
1217Generate the 3-bit binary numbers in order. This illustrates dumbest-
1218possible use of conjoin, just to generate the full cross-product.
1219
1220>>> for c in conjoin([lambda: iter((0, 1))] * 3):
1221... print c
1222[0, 0, 0]
1223[0, 0, 1]
1224[0, 1, 0]
1225[0, 1, 1]
1226[1, 0, 0]
1227[1, 0, 1]
1228[1, 1, 0]
1229[1, 1, 1]
1230
1231For efficiency in typical backtracking apps, conjoin() yields the same list
1232object each time. So if you want to save away a full account of its
1233generated sequence, you need to copy its results.
1234
1235>>> def gencopy(iterator):
1236... for x in iterator:
1237... yield x[:]
1238
1239>>> for n in range(10):
1240... all = list(gencopy(conjoin([lambda: iter((0, 1))] * n)))
1241... print n, len(all), all[0] == [0] * n, all[-1] == [1] * n
12420 1 True True
12431 2 True True
12442 4 True True
12453 8 True True
12464 16 True True
12475 32 True True
12486 64 True True
12497 128 True True
12508 256 True True
12519 512 True True
1252
1253And run an 8-queens solver.
1254
1255>>> q = Queens(8)
1256>>> LIMIT = 2
1257>>> count = 0
1258>>> for row2col in q.solve():
1259... count += 1
1260... if count <= LIMIT:
1261... print "Solution", count
1262... q.printsolution(row2col)
1263Solution 1
1264+-+-+-+-+-+-+-+-+
1265|Q| | | | | | | |
1266+-+-+-+-+-+-+-+-+
1267| | | | |Q| | | |
1268+-+-+-+-+-+-+-+-+
1269| | | | | | | |Q|
1270+-+-+-+-+-+-+-+-+
1271| | | | | |Q| | |
1272+-+-+-+-+-+-+-+-+
1273| | |Q| | | | | |
1274+-+-+-+-+-+-+-+-+
1275| | | | | | |Q| |
1276+-+-+-+-+-+-+-+-+
1277| |Q| | | | | | |
1278+-+-+-+-+-+-+-+-+
1279| | | |Q| | | | |
1280+-+-+-+-+-+-+-+-+
1281Solution 2
1282+-+-+-+-+-+-+-+-+
1283|Q| | | | | | | |
1284+-+-+-+-+-+-+-+-+
1285| | | | | |Q| | |
1286+-+-+-+-+-+-+-+-+
1287| | | | | | | |Q|
1288+-+-+-+-+-+-+-+-+
1289| | |Q| | | | | |
1290+-+-+-+-+-+-+-+-+
1291| | | | | | |Q| |
1292+-+-+-+-+-+-+-+-+
1293| | | |Q| | | | |
1294+-+-+-+-+-+-+-+-+
1295| |Q| | | | | | |
1296+-+-+-+-+-+-+-+-+
1297| | | | |Q| | | |
1298+-+-+-+-+-+-+-+-+
1299
1300>>> print count, "solutions in all."
130192 solutions in all.
1302
1303And run a Knight's Tour on a 10x10 board. Note that there are about
130420,000 solutions even on a 6x6 board, so don't dare run this to exhaustion.
1305
1306>>> k = Knights(10, 10)
1307>>> LIMIT = 2
1308>>> count = 0
1309>>> for x in k.solve():
1310... count += 1
1311... if count <= LIMIT:
1312... print "Solution", count
1313... k.printsolution(x)
1314... else:
1315... break
1316Solution 1
1317+---+---+---+---+---+---+---+---+---+---+
1318| 1| 58| 27| 34| 3| 40| 29| 10| 5| 8|
1319+---+---+---+---+---+---+---+---+---+---+
1320| 26| 35| 2| 57| 28| 33| 4| 7| 30| 11|
1321+---+---+---+---+---+---+---+---+---+---+
1322| 59|100| 73| 36| 41| 56| 39| 32| 9| 6|
1323+---+---+---+---+---+---+---+---+---+---+
1324| 74| 25| 60| 55| 72| 37| 42| 49| 12| 31|
1325+---+---+---+---+---+---+---+---+---+---+
1326| 61| 86| 99| 76| 63| 52| 47| 38| 43| 50|
1327+---+---+---+---+---+---+---+---+---+---+
1328| 24| 75| 62| 85| 54| 71| 64| 51| 48| 13|
1329+---+---+---+---+---+---+---+---+---+---+
1330| 87| 98| 91| 80| 77| 84| 53| 46| 65| 44|
1331+---+---+---+---+---+---+---+---+---+---+
1332| 90| 23| 88| 95| 70| 79| 68| 83| 14| 17|
1333+---+---+---+---+---+---+---+---+---+---+
1334| 97| 92| 21| 78| 81| 94| 19| 16| 45| 66|
1335+---+---+---+---+---+---+---+---+---+---+
1336| 22| 89| 96| 93| 20| 69| 82| 67| 18| 15|
1337+---+---+---+---+---+---+---+---+---+---+
1338Solution 2
1339+---+---+---+---+---+---+---+---+---+---+
1340| 1| 58| 27| 34| 3| 40| 29| 10| 5| 8|
1341+---+---+---+---+---+---+---+---+---+---+
1342| 26| 35| 2| 57| 28| 33| 4| 7| 30| 11|
1343+---+---+---+---+---+---+---+---+---+---+
1344| 59|100| 73| 36| 41| 56| 39| 32| 9| 6|
1345+---+---+---+---+---+---+---+---+---+---+
1346| 74| 25| 60| 55| 72| 37| 42| 49| 12| 31|
1347+---+---+---+---+---+---+---+---+---+---+
1348| 61| 86| 99| 76| 63| 52| 47| 38| 43| 50|
1349+---+---+---+---+---+---+---+---+---+---+
1350| 24| 75| 62| 85| 54| 71| 64| 51| 48| 13|
1351+---+---+---+---+---+---+---+---+---+---+
1352| 87| 98| 89| 80| 77| 84| 53| 46| 65| 44|
1353+---+---+---+---+---+---+---+---+---+---+
1354| 90| 23| 92| 95| 70| 79| 68| 83| 14| 17|
1355+---+---+---+---+---+---+---+---+---+---+
1356| 97| 88| 21| 78| 81| 94| 19| 16| 45| 66|
1357+---+---+---+---+---+---+---+---+---+---+
1358| 22| 91| 96| 93| 20| 69| 82| 67| 18| 15|
1359+---+---+---+---+---+---+---+---+---+---+
1360"""
1361
1362weakref_tests = """\
1363Generators are weakly referencable:
1364
1365>>> import weakref
1366>>> def gen():
1367... yield 'foo!'
1368...
1369>>> wr = weakref.ref(gen)
1370>>> wr() is gen
1371True
1372>>> p = weakref.proxy(gen)
1373
1374Generator-iterators are weakly referencable as well:
1375
1376>>> gi = gen()
1377>>> wr = weakref.ref(gi)
1378>>> wr() is gi
1379True
1380>>> p = weakref.proxy(gi)
1381>>> list(p)
1382['foo!']
1383
1384"""
1385
1386__test__ = {"tut": tutorial_tests,
1387 "pep": pep_tests,
1388 "email": email_tests,
1389 "fun": fun_tests,
1390 "syntax": syntax_tests,
1391 "conjoin": conjoin_tests,
1392 "weakref": weakref_tests,
1393 }
1394
1395# Magic test name that regrtest.py invokes *after* importing this module.
1396# This worms around a bootstrap problem.
1397# Note that doctest and regrtest both look in sys.argv for a "-v" argument,
1398# so this works as expected in both ways of running regrtest.
1399def test_main(verbose=None):
1400 from test import test_support, test_generators
1401 test_support.run_doctest(test_generators, verbose)
1402
1403# This part isn't needed for regrtest, but for running the test directly.
1404if __name__ == "__main__":
1405 test_main(1)