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from __future__ import absolute_import, print_function
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import binascii
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import getopt
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import math
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import os
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import random
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import sys
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import time
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from mercurial.node import nullrev
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from mercurial import (
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ancestor,
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debugcommands,
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hg,
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ui as uimod,
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util,
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)
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def buildgraph(rng, nodes=100, rootprob=0.05, mergeprob=0.2, prevprob=0.7):
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'''nodes: total number of nodes in the graph
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rootprob: probability that a new node (not 0) will be a root
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mergeprob: probability that, excluding a root a node will be a merge
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prevprob: probability that p1 will be the previous node
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return value is a graph represented as an adjacency list.
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'''
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graph = [None] * nodes
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for i in xrange(nodes):
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if i == 0 or rng.random() < rootprob:
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graph[i] = [nullrev]
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elif i == 1:
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graph[i] = [0]
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elif rng.random() < mergeprob:
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if i == 2 or rng.random() < prevprob:
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# p1 is prev
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p1 = i - 1
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else:
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p1 = rng.randrange(i - 1)
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p2 = rng.choice(range(0, p1) + range(p1 + 1, i))
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graph[i] = [p1, p2]
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elif rng.random() < prevprob:
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graph[i] = [i - 1]
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else:
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graph[i] = [rng.randrange(i - 1)]
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return graph
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def buildancestorsets(graph):
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ancs = [None] * len(graph)
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for i in xrange(len(graph)):
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ancs[i] = set([i])
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if graph[i] == [nullrev]:
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continue
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for p in graph[i]:
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ancs[i].update(ancs[p])
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return ancs
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class naiveincrementalmissingancestors(object):
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def __init__(self, ancs, bases):
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self.ancs = ancs
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self.bases = set(bases)
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def addbases(self, newbases):
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self.bases.update(newbases)
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def removeancestorsfrom(self, revs):
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for base in self.bases:
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if base != nullrev:
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revs.difference_update(self.ancs[base])
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revs.discard(nullrev)
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def missingancestors(self, revs):
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res = set()
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for rev in revs:
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if rev != nullrev:
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res.update(self.ancs[rev])
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for base in self.bases:
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if base != nullrev:
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res.difference_update(self.ancs[base])
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return sorted(res)
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def test_missingancestors(seed, rng):
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# empirically observed to take around 1 second
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graphcount = 100
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testcount = 10
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inccount = 10
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nerrs = [0]
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# the default mu and sigma give us a nice distribution of mostly
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# single-digit counts (including 0) with some higher ones
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def lognormrandom(mu, sigma):
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return int(math.floor(rng.lognormvariate(mu, sigma)))
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def samplerevs(nodes, mu=1.1, sigma=0.8):
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count = min(lognormrandom(mu, sigma), len(nodes))
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return rng.sample(nodes, count)
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def err(seed, graph, bases, seq, output, expected):
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if nerrs[0] == 0:
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print('seed:', hex(seed)[:-1], file=sys.stderr)
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if gerrs[0] == 0:
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print('graph:', graph, file=sys.stderr)
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print('* bases:', bases, file=sys.stderr)
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print('* seq: ', seq, file=sys.stderr)
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print('* output: ', output, file=sys.stderr)
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print('* expected:', expected, file=sys.stderr)
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nerrs[0] += 1
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gerrs[0] += 1
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for g in xrange(graphcount):
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graph = buildgraph(rng)
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ancs = buildancestorsets(graph)
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gerrs = [0]
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for _ in xrange(testcount):
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# start from nullrev to include it as a possibility
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graphnodes = range(nullrev, len(graph))
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bases = samplerevs(graphnodes)
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# fast algorithm
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inc = ancestor.incrementalmissingancestors(graph.__getitem__, bases)
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# reference slow algorithm
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naiveinc = naiveincrementalmissingancestors(ancs, bases)
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seq = []
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revs = []
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for _ in xrange(inccount):
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if rng.random() < 0.2:
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newbases = samplerevs(graphnodes)
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seq.append(('addbases', newbases))
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inc.addbases(newbases)
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naiveinc.addbases(newbases)
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if rng.random() < 0.4:
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# larger set so that there are more revs to remove from
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revs = samplerevs(graphnodes, mu=1.5)
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seq.append(('removeancestorsfrom', revs))
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hrevs = set(revs)
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rrevs = set(revs)
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inc.removeancestorsfrom(hrevs)
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naiveinc.removeancestorsfrom(rrevs)
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if hrevs != rrevs:
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err(seed, graph, bases, seq, sorted(hrevs),
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sorted(rrevs))
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else:
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revs = samplerevs(graphnodes)
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seq.append(('missingancestors', revs))
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h = inc.missingancestors(revs)
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r = naiveinc.missingancestors(revs)
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if h != r:
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err(seed, graph, bases, seq, h, r)
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# graph is a dict of child->parent adjacency lists for this graph:
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# o 13
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# |
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# | o 12
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# | |
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# | | o 11
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# | | |\
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# | | | | o 10
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# | | | | |
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# | o---+ | 9
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# | | | | |
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# o | | | | 8
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# / / / /
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# | | o | 7
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# | | | |
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# o---+ | 6
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# / / /
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# | | o 5
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# | |/
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# | o 4
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# | |
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# o | 3
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# | |
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# | o 2
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# |/
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# o 1
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# |
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# o 0
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graph = {0: [-1], 1: [0], 2: [1], 3: [1], 4: [2], 5: [4], 6: [4],
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7: [4], 8: [-1], 9: [6, 7], 10: [5], 11: [3, 7], 12: [9],
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13: [8]}
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def genlazyancestors(revs, stoprev=0, inclusive=False):
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print(("%% lazy ancestor set for %s, stoprev = %s, inclusive = %s" %
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(revs, stoprev, inclusive)))
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return ancestor.lazyancestors(graph.get, revs, stoprev=stoprev,
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inclusive=inclusive)
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def printlazyancestors(s, l):
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print('membership: %r' % [n for n in l if n in s])
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print('iteration: %r' % list(s))
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def test_lazyancestors():
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# Empty revs
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s = genlazyancestors([])
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printlazyancestors(s, [3, 0, -1])
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# Standard example
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s = genlazyancestors([11, 13])
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printlazyancestors(s, [11, 13, 7, 9, 8, 3, 6, 4, 1, -1, 0])
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# Standard with ancestry in the initial set (1 is ancestor of 3)
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s = genlazyancestors([1, 3])
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printlazyancestors(s, [1, -1, 0])
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# Including revs
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s = genlazyancestors([11, 13], inclusive=True)
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printlazyancestors(s, [11, 13, 7, 9, 8, 3, 6, 4, 1, -1, 0])
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# Test with stoprev
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s = genlazyancestors([11, 13], stoprev=6)
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printlazyancestors(s, [11, 13, 7, 9, 8, 3, 6, 4, 1, -1, 0])
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s = genlazyancestors([11, 13], stoprev=6, inclusive=True)
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printlazyancestors(s, [11, 13, 7, 9, 8, 3, 6, 4, 1, -1, 0])
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# The C gca algorithm requires a real repo. These are textual descriptions of
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# DAGs that have been known to be problematic.
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dagtests = [
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'+2*2*2/*3/2',
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'+3*3/*2*2/*4*4/*4/2*4/2*2',
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]
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def test_gca():
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u = uimod.ui.load()
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for i, dag in enumerate(dagtests):
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repo = hg.repository(u, 'gca%d' % i, create=1)
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cl = repo.changelog
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if not util.safehasattr(cl.index, 'ancestors'):
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# C version not available
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return
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debugcommands.debugbuilddag(u, repo, dag)
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# Compare the results of the Python and C versions. This does not
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# include choosing a winner when more than one gca exists -- we make
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# sure both return exactly the same set of gcas.
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for a in cl:
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for b in cl:
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cgcas = sorted(cl.index.ancestors(a, b))
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pygcas = sorted(ancestor.ancestors(cl.parentrevs, a, b))
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if cgcas != pygcas:
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print("test_gca: for dag %s, gcas for %d, %d:"
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% (dag, a, b))
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print(" C returned: %s" % cgcas)
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print(" Python returned: %s" % pygcas)
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def main():
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seed = None
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opts, args = getopt.getopt(sys.argv[1:], 's:', ['seed='])
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for o, a in opts:
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if o in ('-s', '--seed'):
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seed = long(a, base=0) # accepts base 10 or 16 strings
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if seed is None:
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try:
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seed = long(binascii.hexlify(os.urandom(16)), 16)
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except AttributeError:
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seed = long(time.time() * 1000)
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rng = random.Random(seed)
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test_missingancestors(seed, rng)
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test_lazyancestors()
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test_gca()
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if __name__ == '__main__':
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main()
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