# Copyright (C) 2007-2011 Canonical Ltd # # This program is free software; you can redistribute it and/or modify # it under the terms of the GNU General Public License as published by # the Free Software Foundation; either version 2 of the License, or # (at your option) any later version. # # This program is distributed in the hope that it will be useful, # but WITHOUT ANY WARRANTY; without even the implied warranty of # MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the # GNU General Public License for more details. # # You should have received a copy of the GNU General Public License # along with this program; if not, write to the Free Software # Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA from __future__ import absolute_import import time from bzrlib import ( debug, errors, osutils, revision, trace, ) STEP_UNIQUE_SEARCHER_EVERY = 5 # DIAGRAM of terminology # A # /\ # B C # | |\ # D E F # |\/| | # |/\|/ # G H # # In this diagram, relative to G and H: # A, B, C, D, E are common ancestors. # C, D and E are border ancestors, because each has a non-common descendant. # D and E are least common ancestors because none of their descendants are # common ancestors. # C is not a least common ancestor because its descendant, E, is a common # ancestor. # # The find_unique_lca algorithm will pick A in two steps: # 1. find_lca('G', 'H') => ['D', 'E'] # 2. Since len(['D', 'E']) > 1, find_lca('D', 'E') => ['A'] class DictParentsProvider(object): """A parents provider for Graph objects.""" def __init__(self, ancestry): self.ancestry = ancestry def __repr__(self): return 'DictParentsProvider(%r)' % self.ancestry # Note: DictParentsProvider does not implement get_cached_parent_map # Arguably, the data is clearly cached in memory. However, this class # is mostly used for testing, and it keeps the tests clean to not # change it. def get_parent_map(self, keys): """See StackedParentsProvider.get_parent_map""" ancestry = self.ancestry return dict([(k, ancestry[k]) for k in keys if k in ancestry]) class StackedParentsProvider(object): """A parents provider which stacks (or unions) multiple providers. The providers are queries in the order of the provided parent_providers. """ def __init__(self, parent_providers): self._parent_providers = parent_providers def __repr__(self): return "%s(%r)" % (self.__class__.__name__, self._parent_providers) def get_parent_map(self, keys): """Get a mapping of keys => parents A dictionary is returned with an entry for each key present in this source. If this source doesn't have information about a key, it should not include an entry. [NULL_REVISION] is used as the parent of the first user-committed revision. Its parent list is empty. :param keys: An iterable returning keys to check (eg revision_ids) :return: A dictionary mapping each key to its parents """ found = {} remaining = set(keys) # This adds getattr() overhead to each get_parent_map call. However, # this is StackedParentsProvider, which means we're dealing with I/O # (either local indexes, or remote RPCs), so CPU overhead should be # minimal. for parents_provider in self._parent_providers: get_cached = getattr(parents_provider, 'get_cached_parent_map', None) if get_cached is None: continue new_found = get_cached(remaining) found.update(new_found) remaining.difference_update(new_found) if not remaining: break if not remaining: return found for parents_provider in self._parent_providers: new_found = parents_provider.get_parent_map(remaining) found.update(new_found) remaining.difference_update(new_found) if not remaining: break return found class CachingParentsProvider(object): """A parents provider which will cache the revision => parents as a dict. This is useful for providers which have an expensive look up. Either a ParentsProvider or a get_parent_map-like callback may be supplied. If it provides extra un-asked-for parents, they will be cached, but filtered out of get_parent_map. The cache is enabled by default, but may be disabled and re-enabled. """ def __init__(self, parent_provider=None, get_parent_map=None): """Constructor. :param parent_provider: The ParentProvider to use. It or get_parent_map must be supplied. :param get_parent_map: The get_parent_map callback to use. It or parent_provider must be supplied. """ self._real_provider = parent_provider if get_parent_map is None: self._get_parent_map = self._real_provider.get_parent_map else: self._get_parent_map = get_parent_map self._cache = None self.enable_cache(True) def __repr__(self): return "%s(%r)" % (self.__class__.__name__, self._real_provider) def enable_cache(self, cache_misses=True): """Enable cache.""" if self._cache is not None: raise AssertionError('Cache enabled when already enabled.') self._cache = {} self._cache_misses = cache_misses self.missing_keys = set() def disable_cache(self): """Disable and clear the cache.""" self._cache = None self._cache_misses = None self.missing_keys = set() def get_cached_map(self): """Return any cached get_parent_map values.""" if self._cache is None: return None return dict(self._cache) def get_cached_parent_map(self, keys): """Return items from the cache. This returns the same info as get_parent_map, but explicitly does not invoke the supplied ParentsProvider to search for uncached values. """ cache = self._cache if cache is None: return {} return dict([(key, cache[key]) for key in keys if key in cache]) def get_parent_map(self, keys): """See StackedParentsProvider.get_parent_map.""" cache = self._cache if cache is None: cache = self._get_parent_map(keys) else: needed_revisions = set(key for key in keys if key not in cache) # Do not ask for negatively cached keys needed_revisions.difference_update(self.missing_keys) if needed_revisions: parent_map = self._get_parent_map(needed_revisions) cache.update(parent_map) if self._cache_misses: for key in needed_revisions: if key not in parent_map: self.note_missing_key(key) result = {} for key in keys: value = cache.get(key) if value is not None: result[key] = value return result def note_missing_key(self, key): """Note that key is a missing key.""" if self._cache_misses: self.missing_keys.add(key) class CallableToParentsProviderAdapter(object): """A parents provider that adapts any callable to the parents provider API. i.e. it accepts calls to self.get_parent_map and relays them to the callable it was constructed with. """ def __init__(self, a_callable): self.callable = a_callable def __repr__(self): return "%s(%r)" % (self.__class__.__name__, self.callable) def get_parent_map(self, keys): return self.callable(keys) class Graph(object): """Provide incremental access to revision graphs. This is the generic implementation; it is intended to be subclassed to specialize it for other repository types. """ def __init__(self, parents_provider): """Construct a Graph that uses several graphs as its input This should not normally be invoked directly, because there may be specialized implementations for particular repository types. See Repository.get_graph(). :param parents_provider: An object providing a get_parent_map call conforming to the behavior of StackedParentsProvider.get_parent_map. """ if getattr(parents_provider, 'get_parents', None) is not None: self.get_parents = parents_provider.get_parents if getattr(parents_provider, 'get_parent_map', None) is not None: self.get_parent_map = parents_provider.get_parent_map self._parents_provider = parents_provider def __repr__(self): return 'Graph(%r)' % self._parents_provider def find_lca(self, *revisions): """Determine the lowest common ancestors of the provided revisions A lowest common ancestor is a common ancestor none of whose descendants are common ancestors. In graphs, unlike trees, there may be multiple lowest common ancestors. This algorithm has two phases. Phase 1 identifies border ancestors, and phase 2 filters border ancestors to determine lowest common ancestors. In phase 1, border ancestors are identified, using a breadth-first search starting at the bottom of the graph. Searches are stopped whenever a node or one of its descendants is determined to be common In phase 2, the border ancestors are filtered to find the least common ancestors. This is done by searching the ancestries of each border ancestor. Phase 2 is perfomed on the principle that a border ancestor that is not an ancestor of any other border ancestor is a least common ancestor. Searches are stopped when they find a node that is determined to be a common ancestor of all border ancestors, because this shows that it cannot be a descendant of any border ancestor. The scaling of this operation should be proportional to: 1. The number of uncommon ancestors 2. The number of border ancestors 3. The length of the shortest path between a border ancestor and an ancestor of all border ancestors. """ border_common, common, sides = self._find_border_ancestors(revisions) # We may have common ancestors that can be reached from each other. # - ask for the heads of them to filter it down to only ones that # cannot be reached from each other - phase 2. return self.heads(border_common) def find_difference(self, left_revision, right_revision): """Determine the graph difference between two revisions""" border, common, searchers = self._find_border_ancestors( [left_revision, right_revision]) self._search_for_extra_common(common, searchers) left = searchers[0].seen right = searchers[1].seen return (left.difference(right), right.difference(left)) def find_descendants(self, old_key, new_key): """Find descendants of old_key that are ancestors of new_key.""" child_map = self.get_child_map(self._find_descendant_ancestors( old_key, new_key)) graph = Graph(DictParentsProvider(child_map)) searcher = graph._make_breadth_first_searcher([old_key]) list(searcher) return searcher.seen def _find_descendant_ancestors(self, old_key, new_key): """Find ancestors of new_key that may be descendants of old_key.""" stop = self._make_breadth_first_searcher([old_key]) descendants = self._make_breadth_first_searcher([new_key]) for revisions in descendants: old_stop = stop.seen.intersection(revisions) descendants.stop_searching_any(old_stop) seen_stop = descendants.find_seen_ancestors(stop.step()) descendants.stop_searching_any(seen_stop) return descendants.seen.difference(stop.seen) def get_child_map(self, keys): """Get a mapping from parents to children of the specified keys. This is simply the inversion of get_parent_map. Only supplied keys will be discovered as children. :return: a dict of key:child_list for keys. """ parent_map = self._parents_provider.get_parent_map(keys) parent_child = {} for child, parents in sorted(parent_map.items()): for parent in parents: parent_child.setdefault(parent, []).append(child) return parent_child def find_distance_to_null(self, target_revision_id, known_revision_ids): """Find the left-hand distance to the NULL_REVISION. (This can also be considered the revno of a branch at target_revision_id.) :param target_revision_id: A revision_id which we would like to know the revno for. :param known_revision_ids: [(revision_id, revno)] A list of known revno, revision_id tuples. We'll use this to seed the search. """ # Map from revision_ids to a known value for their revno known_revnos = dict(known_revision_ids) cur_tip = target_revision_id num_steps = 0 NULL_REVISION = revision.NULL_REVISION known_revnos[NULL_REVISION] = 0 searching_known_tips = list(known_revnos.keys()) unknown_searched = {} while cur_tip not in known_revnos: unknown_searched[cur_tip] = num_steps num_steps += 1 to_search = set([cur_tip]) to_search.update(searching_known_tips) parent_map = self.get_parent_map(to_search) parents = parent_map.get(cur_tip, None) if not parents: # An empty list or None is a ghost raise errors.GhostRevisionsHaveNoRevno(target_revision_id, cur_tip) cur_tip = parents[0] next_known_tips = [] for revision_id in searching_known_tips: parents = parent_map.get(revision_id, None) if not parents: continue next = parents[0] next_revno = known_revnos[revision_id] - 1 if next in unknown_searched: # We have enough information to return a value right now return next_revno + unknown_searched[next] if next in known_revnos: continue known_revnos[next] = next_revno next_known_tips.append(next) searching_known_tips = next_known_tips # We reached a known revision, so just add in how many steps it took to # get there. return known_revnos[cur_tip] + num_steps def find_lefthand_distances(self, keys): """Find the distance to null for all the keys in keys. :param keys: keys to lookup. :return: A dict key->distance for all of keys. """ # Optimisable by concurrent searching, but a random spread should get # some sort of hit rate. result = {} known_revnos = [] ghosts = [] for key in keys: try: known_revnos.append( (key, self.find_distance_to_null(key, known_revnos))) except errors.GhostRevisionsHaveNoRevno: ghosts.append(key) for key in ghosts: known_revnos.append((key, -1)) return dict(known_revnos) def find_unique_ancestors(self, unique_revision, common_revisions): """Find the unique ancestors for a revision versus others. This returns the ancestry of unique_revision, excluding all revisions in the ancestry of common_revisions. If unique_revision is in the ancestry, then the empty set will be returned. :param unique_revision: The revision_id whose ancestry we are interested in. (XXX: Would this API be better if we allowed multiple revisions on to be searched here?) :param common_revisions: Revision_ids of ancestries to exclude. :return: A set of revisions in the ancestry of unique_revision """ if unique_revision in common_revisions: return set() # Algorithm description # 1) Walk backwards from the unique node and all common nodes. # 2) When a node is seen by both sides, stop searching it in the unique # walker, include it in the common walker. # 3) Stop searching when there are no nodes left for the unique walker. # At this point, you have a maximal set of unique nodes. Some of # them may actually be common, and you haven't reached them yet. # 4) Start new searchers for the unique nodes, seeded with the # information you have so far. # 5) Continue searching, stopping the common searches when the search # tip is an ancestor of all unique nodes. # 6) Aggregate together unique searchers when they are searching the # same tips. When all unique searchers are searching the same node, # stop move it to a single 'all_unique_searcher'. # 7) The 'all_unique_searcher' represents the very 'tip' of searching. # Most of the time this produces very little important information. # So don't step it as quickly as the other searchers. # 8) Search is done when all common searchers have completed. unique_searcher, common_searcher = self._find_initial_unique_nodes( [unique_revision], common_revisions) unique_nodes = unique_searcher.seen.difference(common_searcher.seen) if not unique_nodes: return unique_nodes (all_unique_searcher, unique_tip_searchers) = self._make_unique_searchers(unique_nodes, unique_searcher, common_searcher) self._refine_unique_nodes(unique_searcher, all_unique_searcher, unique_tip_searchers, common_searcher) true_unique_nodes = unique_nodes.difference(common_searcher.seen) if 'graph' in debug.debug_flags: trace.mutter('Found %d truly unique nodes out of %d', len(true_unique_nodes), len(unique_nodes)) return true_unique_nodes def _find_initial_unique_nodes(self, unique_revisions, common_revisions): """Steps 1-3 of find_unique_ancestors. Find the maximal set of unique nodes. Some of these might actually still be common, but we are sure that there are no other unique nodes. :return: (unique_searcher, common_searcher) """ unique_searcher = self._make_breadth_first_searcher(unique_revisions) # we know that unique_revisions aren't in common_revisions, so skip # past them. unique_searcher.next() common_searcher = self._make_breadth_first_searcher(common_revisions) # As long as we are still finding unique nodes, keep searching while unique_searcher._next_query: next_unique_nodes = set(unique_searcher.step()) next_common_nodes = set(common_searcher.step()) # Check if either searcher encounters new nodes seen by the other # side. unique_are_common_nodes = next_unique_nodes.intersection( common_searcher.seen) unique_are_common_nodes.update( next_common_nodes.intersection(unique_searcher.seen)) if unique_are_common_nodes: ancestors = unique_searcher.find_seen_ancestors( unique_are_common_nodes) # TODO: This is a bit overboard, we only really care about # the ancestors of the tips because the rest we # already know. This is *correct* but causes us to # search too much ancestry. ancestors.update(common_searcher.find_seen_ancestors(ancestors)) unique_searcher.stop_searching_any(ancestors) common_searcher.start_searching(ancestors) return unique_searcher, common_searcher def _make_unique_searchers(self, unique_nodes, unique_searcher, common_searcher): """Create a searcher for all the unique search tips (step 4). As a side effect, the common_searcher will stop searching any nodes that are ancestors of the unique searcher tips. :return: (all_unique_searcher, unique_tip_searchers) """ unique_tips = self._remove_simple_descendants(unique_nodes, self.get_parent_map(unique_nodes)) if len(unique_tips) == 1: unique_tip_searchers = [] ancestor_all_unique = unique_searcher.find_seen_ancestors(unique_tips) else: unique_tip_searchers = [] for tip in unique_tips: revs_to_search = unique_searcher.find_seen_ancestors([tip]) revs_to_search.update( common_searcher.find_seen_ancestors(revs_to_search)) searcher = self._make_breadth_first_searcher(revs_to_search) # We don't care about the starting nodes. searcher._label = tip searcher.step() unique_tip_searchers.append(searcher) ancestor_all_unique = None for searcher in unique_tip_searchers: if ancestor_all_unique is None: ancestor_all_unique = set(searcher.seen) else: ancestor_all_unique = ancestor_all_unique.intersection( searcher.seen) # Collapse all the common nodes into a single searcher all_unique_searcher = self._make_breadth_first_searcher( ancestor_all_unique) if ancestor_all_unique: # We've seen these nodes in all the searchers, so we'll just go to # the next all_unique_searcher.step() # Stop any search tips that are already known as ancestors of the # unique nodes stopped_common = common_searcher.stop_searching_any( common_searcher.find_seen_ancestors(ancestor_all_unique)) total_stopped = 0 for searcher in unique_tip_searchers: total_stopped += len(searcher.stop_searching_any( searcher.find_seen_ancestors(ancestor_all_unique))) if 'graph' in debug.debug_flags: trace.mutter('For %d unique nodes, created %d + 1 unique searchers' ' (%d stopped search tips, %d common ancestors' ' (%d stopped common)', len(unique_nodes), len(unique_tip_searchers), total_stopped, len(ancestor_all_unique), len(stopped_common)) return all_unique_searcher, unique_tip_searchers def _step_unique_and_common_searchers(self, common_searcher, unique_tip_searchers, unique_searcher): """Step all the searchers""" newly_seen_common = set(common_searcher.step()) newly_seen_unique = set() for searcher in unique_tip_searchers: next = set(searcher.step()) next.update(unique_searcher.find_seen_ancestors(next)) next.update(common_searcher.find_seen_ancestors(next)) for alt_searcher in unique_tip_searchers: if alt_searcher is searcher: continue next.update(alt_searcher.find_seen_ancestors(next)) searcher.start_searching(next) newly_seen_unique.update(next) return newly_seen_common, newly_seen_unique def _find_nodes_common_to_all_unique(self, unique_tip_searchers, all_unique_searcher, newly_seen_unique, step_all_unique): """Find nodes that are common to all unique_tip_searchers. If it is time, step the all_unique_searcher, and add its nodes to the result. """ common_to_all_unique_nodes = newly_seen_unique.copy() for searcher in unique_tip_searchers: common_to_all_unique_nodes.intersection_update(searcher.seen) common_to_all_unique_nodes.intersection_update( all_unique_searcher.seen) # Step all-unique less frequently than the other searchers. # In the common case, we don't need to spider out far here, so # avoid doing extra work. if step_all_unique: tstart = time.clock() nodes = all_unique_searcher.step() common_to_all_unique_nodes.update(nodes) if 'graph' in debug.debug_flags: tdelta = time.clock() - tstart trace.mutter('all_unique_searcher step() took %.3fs' 'for %d nodes (%d total), iteration: %s', tdelta, len(nodes), len(all_unique_searcher.seen), all_unique_searcher._iterations) return common_to_all_unique_nodes def _collapse_unique_searchers(self, unique_tip_searchers, common_to_all_unique_nodes): """Combine searchers that are searching the same tips. When two searchers are searching the same tips, we can stop one of the searchers. We also know that the maximal set of common ancestors is the intersection of the two original searchers. :return: A list of searchers that are searching unique nodes. """ # Filter out searchers that don't actually search different # nodes. We already have the ancestry intersection for them unique_search_tips = {} for searcher in unique_tip_searchers: stopped = searcher.stop_searching_any(common_to_all_unique_nodes) will_search_set = frozenset(searcher._next_query) if not will_search_set: if 'graph' in debug.debug_flags: trace.mutter('Unique searcher %s was stopped.' ' (%s iterations) %d nodes stopped', searcher._label, searcher._iterations, len(stopped)) elif will_search_set not in unique_search_tips: # This searcher is searching a unique set of nodes, let it unique_search_tips[will_search_set] = [searcher] else: unique_search_tips[will_search_set].append(searcher) # TODO: it might be possible to collapse searchers faster when they # only have *some* search tips in common. next_unique_searchers = [] for searchers in unique_search_tips.itervalues(): if len(searchers) == 1: # Searching unique tips, go for it next_unique_searchers.append(searchers[0]) else: # These searchers have started searching the same tips, we # don't need them to cover the same ground. The # intersection of their ancestry won't change, so create a # new searcher, combining their histories. next_searcher = searchers[0] for searcher in searchers[1:]: next_searcher.seen.intersection_update(searcher.seen) if 'graph' in debug.debug_flags: trace.mutter('Combining %d searchers into a single' ' searcher searching %d nodes with' ' %d ancestry', len(searchers), len(next_searcher._next_query), len(next_searcher.seen)) next_unique_searchers.append(next_searcher) return next_unique_searchers def _refine_unique_nodes(self, unique_searcher, all_unique_searcher, unique_tip_searchers, common_searcher): """Steps 5-8 of find_unique_ancestors. This function returns when common_searcher has stopped searching for more nodes. """ # We step the ancestor_all_unique searcher only every # STEP_UNIQUE_SEARCHER_EVERY steps. step_all_unique_counter = 0 # While we still have common nodes to search while common_searcher._next_query: (newly_seen_common, newly_seen_unique) = self._step_unique_and_common_searchers( common_searcher, unique_tip_searchers, unique_searcher) # These nodes are common ancestors of all unique nodes common_to_all_unique_nodes = self._find_nodes_common_to_all_unique( unique_tip_searchers, all_unique_searcher, newly_seen_unique, step_all_unique_counter==0) step_all_unique_counter = ((step_all_unique_counter + 1) % STEP_UNIQUE_SEARCHER_EVERY) if newly_seen_common: # If a 'common' node is an ancestor of all unique searchers, we # can stop searching it. common_searcher.stop_searching_any( all_unique_searcher.seen.intersection(newly_seen_common)) if common_to_all_unique_nodes: common_to_all_unique_nodes.update( common_searcher.find_seen_ancestors( common_to_all_unique_nodes)) # The all_unique searcher can start searching the common nodes # but everyone else can stop. # This is the sort of thing where we would like to not have it # start_searching all of the nodes, but only mark all of them # as seen, and have it search only the actual tips. Otherwise # it is another get_parent_map() traversal for it to figure out # what we already should know. all_unique_searcher.start_searching(common_to_all_unique_nodes) common_searcher.stop_searching_any(common_to_all_unique_nodes) next_unique_searchers = self._collapse_unique_searchers( unique_tip_searchers, common_to_all_unique_nodes) if len(unique_tip_searchers) != len(next_unique_searchers): if 'graph' in debug.debug_flags: trace.mutter('Collapsed %d unique searchers => %d' ' at %s iterations', len(unique_tip_searchers), len(next_unique_searchers), all_unique_searcher._iterations) unique_tip_searchers = next_unique_searchers def get_parent_map(self, revisions): """Get a map of key:parent_list for revisions. This implementation delegates to get_parents, for old parent_providers that do not supply get_parent_map. """ result = {} for rev, parents in self.get_parents(revisions): if parents is not None: result[rev] = parents return result def _make_breadth_first_searcher(self, revisions): return _BreadthFirstSearcher(revisions, self) def _find_border_ancestors(self, revisions): """Find common ancestors with at least one uncommon descendant. Border ancestors are identified using a breadth-first search starting at the bottom of the graph. Searches are stopped whenever a node or one of its descendants is determined to be common. This will scale with the number of uncommon ancestors. As well as the border ancestors, a set of seen common ancestors and a list of sets of seen ancestors for each input revision is returned. This allows calculation of graph difference from the results of this operation. """ if None in revisions: raise errors.InvalidRevisionId(None, self) common_ancestors = set() searchers = [self._make_breadth_first_searcher([r]) for r in revisions] active_searchers = searchers[:] border_ancestors = set() while True: newly_seen = set() for searcher in searchers: new_ancestors = searcher.step() if new_ancestors: newly_seen.update(new_ancestors) new_common = set() for revision in newly_seen: if revision in common_ancestors: # Not a border ancestor because it was seen as common # already new_common.add(revision) continue for searcher in searchers: if revision not in searcher.seen: break else: # This is a border because it is a first common that we see # after walking for a while. border_ancestors.add(revision) new_common.add(revision) if new_common: for searcher in searchers: new_common.update(searcher.find_seen_ancestors(new_common)) for searcher in searchers: searcher.start_searching(new_common) common_ancestors.update(new_common) # Figure out what the searchers will be searching next, and if # there is only 1 set being searched, then we are done searching, # since all searchers would have to be searching the same data, # thus it *must* be in common. unique_search_sets = set() for searcher in searchers: will_search_set = frozenset(searcher._next_query) if will_search_set not in unique_search_sets: # This searcher is searching a unique set of nodes, let it unique_search_sets.add(will_search_set) if len(unique_search_sets) == 1: nodes = unique_search_sets.pop() uncommon_nodes = nodes.difference(common_ancestors) if uncommon_nodes: raise AssertionError("Somehow we ended up converging" " without actually marking them as" " in common." "\nStart_nodes: %s" "\nuncommon_nodes: %s" % (revisions, uncommon_nodes)) break return border_ancestors, common_ancestors, searchers def heads(self, keys): """Return the heads from amongst keys. This is done by searching the ancestries of each key. Any key that is reachable from another key is not returned; all the others are. This operation scales with the relative depth between any two keys. If any two keys are completely disconnected all ancestry of both sides will be retrieved. :param keys: An iterable of keys. :return: A set of the heads. Note that as a set there is no ordering information. Callers will need to filter their input to create order if they need it. """ candidate_heads = set(keys) if revision.NULL_REVISION in candidate_heads: # NULL_REVISION is only a head if it is the only entry candidate_heads.remove(revision.NULL_REVISION) if not candidate_heads: return set([revision.NULL_REVISION]) if len(candidate_heads) < 2: return candidate_heads searchers = dict((c, self._make_breadth_first_searcher([c])) for c in candidate_heads) active_searchers = dict(searchers) # skip over the actual candidate for each searcher for searcher in active_searchers.itervalues(): searcher.next() # The common walker finds nodes that are common to two or more of the # input keys, so that we don't access all history when a currently # uncommon search point actually meets up with something behind a # common search point. Common search points do not keep searches # active; they just allow us to make searches inactive without # accessing all history. common_walker = self._make_breadth_first_searcher([]) while len(active_searchers) > 0: ancestors = set() # advance searches try: common_walker.next() except StopIteration: # No common points being searched at this time. pass for candidate in active_searchers.keys(): try: searcher = active_searchers[candidate] except KeyError: # rare case: we deleted candidate in a previous iteration # through this for loop, because it was determined to be # a descendant of another candidate. continue try: ancestors.update(searcher.next()) except StopIteration: del active_searchers[candidate] continue # process found nodes new_common = set() for ancestor in ancestors: if ancestor in candidate_heads: candidate_heads.remove(ancestor) del searchers[ancestor] if ancestor in active_searchers: del active_searchers[ancestor] # it may meet up with a known common node if ancestor in common_walker.seen: # some searcher has encountered our known common nodes: # just stop it ancestor_set = set([ancestor]) for searcher in searchers.itervalues(): searcher.stop_searching_any(ancestor_set) else: # or it may have been just reached by all the searchers: for searcher in searchers.itervalues(): if ancestor not in searcher.seen: break else: # The final active searcher has just reached this node, # making it be known as a descendant of all candidates, # so we can stop searching it, and any seen ancestors new_common.add(ancestor) for searcher in searchers.itervalues(): seen_ancestors =\ searcher.find_seen_ancestors([ancestor]) searcher.stop_searching_any(seen_ancestors) common_walker.start_searching(new_common) return candidate_heads def find_merge_order(self, tip_revision_id, lca_revision_ids): """Find the order that each revision was merged into tip. This basically just walks backwards with a stack, and walks left-first until it finds a node to stop. """ if len(lca_revision_ids) == 1: return list(lca_revision_ids) looking_for = set(lca_revision_ids) # TODO: Is there a way we could do this "faster" by batching up the # get_parent_map requests? # TODO: Should we also be culling the ancestry search right away? We # could add looking_for to the "stop" list, and walk their # ancestry in batched mode. The flip side is it might mean we walk a # lot of "stop" nodes, rather than only the minimum. # Then again, without it we may trace back into ancestry we could have # stopped early. stack = [tip_revision_id] found = [] stop = set() while stack and looking_for: next = stack.pop() stop.add(next) if next in looking_for: found.append(next) looking_for.remove(next) if len(looking_for) == 1: found.append(looking_for.pop()) break continue parent_ids = self.get_parent_map([next]).get(next, None) if not parent_ids: # Ghost, nothing to search here continue for parent_id in reversed(parent_ids): # TODO: (performance) We see the parent at this point, but we # wait to mark it until later to make sure we get left # parents before right parents. However, instead of # waiting until we have traversed enough parents, we # could instead note that we've found it, and once all # parents are in the stack, just reverse iterate the # stack for them. if parent_id not in stop: # this will need to be searched stack.append(parent_id) stop.add(parent_id) return found def find_lefthand_merger(self, merged_key, tip_key): """Find the first lefthand ancestor of tip_key that merged merged_key. We do this by first finding the descendants of merged_key, then walking through the lefthand ancestry of tip_key until we find a key that doesn't descend from merged_key. Its child is the key that merged merged_key. :return: The first lefthand ancestor of tip_key to merge merged_key. merged_key if it is a lefthand ancestor of tip_key. None if no ancestor of tip_key merged merged_key. """ descendants = self.find_descendants(merged_key, tip_key) candidate_iterator = self.iter_lefthand_ancestry(tip_key) last_candidate = None for candidate in candidate_iterator: if candidate not in descendants: return last_candidate last_candidate = candidate def find_unique_lca(self, left_revision, right_revision, count_steps=False): """Find a unique LCA. Find lowest common ancestors. If there is no unique common ancestor, find the lowest common ancestors of those ancestors. Iteration stops when a unique lowest common ancestor is found. The graph origin is necessarily a unique lowest common ancestor. Note that None is not an acceptable substitute for NULL_REVISION. in the input for this method. :param count_steps: If True, the return value will be a tuple of (unique_lca, steps) where steps is the number of times that find_lca was run. If False, only unique_lca is returned. """ revisions = [left_revision, right_revision] steps = 0 while True: steps += 1 lca = self.find_lca(*revisions) if len(lca) == 1: result = lca.pop() if count_steps: return result, steps else: return result if len(lca) == 0: raise errors.NoCommonAncestor(left_revision, right_revision) revisions = lca def iter_ancestry(self, revision_ids): """Iterate the ancestry of this revision. :param revision_ids: Nodes to start the search :return: Yield tuples mapping a revision_id to its parents for the ancestry of revision_id. Ghosts will be returned with None as their parents, and nodes with no parents will have NULL_REVISION as their only parent. (As defined by get_parent_map.) There will also be a node for (NULL_REVISION, ()) """ pending = set(revision_ids) processed = set() while pending: processed.update(pending) next_map = self.get_parent_map(pending) next_pending = set() for item in next_map.iteritems(): yield item next_pending.update(p for p in item[1] if p not in processed) ghosts = pending.difference(next_map) for ghost in ghosts: yield (ghost, None) pending = next_pending def iter_lefthand_ancestry(self, start_key, stop_keys=None): if stop_keys is None: stop_keys = () next_key = start_key def get_parents(key): try: return self._parents_provider.get_parent_map([key])[key] except KeyError: raise errors.RevisionNotPresent(next_key, self) while True: if next_key in stop_keys: return parents = get_parents(next_key) yield next_key if len(parents) == 0: return else: next_key = parents[0] def iter_topo_order(self, revisions): """Iterate through the input revisions in topological order. This sorting only ensures that parents come before their children. An ancestor may sort after a descendant if the relationship is not visible in the supplied list of revisions. """ from bzrlib import tsort sorter = tsort.TopoSorter(self.get_parent_map(revisions)) return sorter.iter_topo_order() def is_ancestor(self, candidate_ancestor, candidate_descendant): """Determine whether a revision is an ancestor of another. We answer this using heads() as heads() has the logic to perform the smallest number of parent lookups to determine the ancestral relationship between N revisions. """ return set([candidate_descendant]) == self.heads( [candidate_ancestor, candidate_descendant]) def is_between(self, revid, lower_bound_revid, upper_bound_revid): """Determine whether a revision is between two others. returns true if and only if: lower_bound_revid <= revid <= upper_bound_revid """ return ((upper_bound_revid is None or self.is_ancestor(revid, upper_bound_revid)) and (lower_bound_revid is None or self.is_ancestor(lower_bound_revid, revid))) def _search_for_extra_common(self, common, searchers): """Make sure that unique nodes are genuinely unique. After _find_border_ancestors, all nodes marked "common" are indeed common. Some of the nodes considered unique are not, due to history shortcuts stopping the searches early. We know that we have searched enough when all common search tips are descended from all unique (uncommon) nodes because we know that a node cannot be an ancestor of its own ancestor. :param common: A set of common nodes :param searchers: The searchers returned from _find_border_ancestors :return: None """ # Basic algorithm... # A) The passed in searchers should all be on the same tips, thus # they should be considered the "common" searchers. # B) We find the difference between the searchers, these are the # "unique" nodes for each side. # C) We do a quick culling so that we only start searching from the # more interesting unique nodes. (A unique ancestor is more # interesting than any of its children.) # D) We start searching for ancestors common to all unique nodes. # E) We have the common searchers stop searching any ancestors of # nodes found by (D) # F) When there are no more common search tips, we stop # TODO: We need a way to remove unique_searchers when they overlap with # other unique searchers. if len(searchers) != 2: raise NotImplementedError( "Algorithm not yet implemented for > 2 searchers") common_searchers = searchers left_searcher = searchers[0] right_searcher = searchers[1] unique = left_searcher.seen.symmetric_difference(right_searcher.seen) if not unique: # No unique nodes, nothing to do return total_unique = len(unique) unique = self._remove_simple_descendants(unique, self.get_parent_map(unique)) simple_unique = len(unique) unique_searchers = [] for revision_id in unique: if revision_id in left_searcher.seen: parent_searcher = left_searcher else: parent_searcher = right_searcher revs_to_search = parent_searcher.find_seen_ancestors([revision_id]) if not revs_to_search: # XXX: This shouldn't be possible revs_to_search = [revision_id] searcher = self._make_breadth_first_searcher(revs_to_search) # We don't care about the starting nodes. searcher.step() unique_searchers.append(searcher) # possible todo: aggregate the common searchers into a single common # searcher, just make sure that we include the nodes into the .seen # properties of the original searchers ancestor_all_unique = None for searcher in unique_searchers: if ancestor_all_unique is None: ancestor_all_unique = set(searcher.seen) else: ancestor_all_unique = ancestor_all_unique.intersection( searcher.seen) trace.mutter('Started %s unique searchers for %s unique revisions', simple_unique, total_unique) while True: # If we have no more nodes we have nothing to do newly_seen_common = set() for searcher in common_searchers: newly_seen_common.update(searcher.step()) newly_seen_unique = set() for searcher in unique_searchers: newly_seen_unique.update(searcher.step()) new_common_unique = set() for revision in newly_seen_unique: for searcher in unique_searchers: if revision not in searcher.seen: break else: # This is a border because it is a first common that we see # after walking for a while. new_common_unique.add(revision) if newly_seen_common: # These are nodes descended from one of the 'common' searchers. # Make sure all searchers are on the same page for searcher in common_searchers: newly_seen_common.update( searcher.find_seen_ancestors(newly_seen_common)) # We start searching the whole ancestry. It is a bit wasteful, # though. We really just want to mark all of these nodes as # 'seen' and then start just the tips. However, it requires a # get_parent_map() call to figure out the tips anyway, and all # redundant requests should be fairly fast. for searcher in common_searchers: searcher.start_searching(newly_seen_common) # If a 'common' node is an ancestor of all unique searchers, we # can stop searching it. stop_searching_common = ancestor_all_unique.intersection( newly_seen_common) if stop_searching_common: for searcher in common_searchers: searcher.stop_searching_any(stop_searching_common) if new_common_unique: # We found some ancestors that are common for searcher in unique_searchers: new_common_unique.update( searcher.find_seen_ancestors(new_common_unique)) # Since these are common, we can grab another set of ancestors # that we have seen for searcher in common_searchers: new_common_unique.update( searcher.find_seen_ancestors(new_common_unique)) # We can tell all of the unique searchers to start at these # nodes, and tell all of the common searchers to *stop* # searching these nodes for searcher in unique_searchers: searcher.start_searching(new_common_unique) for searcher in common_searchers: searcher.stop_searching_any(new_common_unique) ancestor_all_unique.update(new_common_unique) # Filter out searchers that don't actually search different # nodes. We already have the ancestry intersection for them next_unique_searchers = [] unique_search_sets = set() for searcher in unique_searchers: will_search_set = frozenset(searcher._next_query) if will_search_set not in unique_search_sets: # This searcher is searching a unique set of nodes, let it unique_search_sets.add(will_search_set) next_unique_searchers.append(searcher) unique_searchers = next_unique_searchers for searcher in common_searchers: if searcher._next_query: break else: # All common searcher have stopped searching return def _remove_simple_descendants(self, revisions, parent_map): """remove revisions which are children of other ones in the set This doesn't do any graph searching, it just checks the immediate parent_map to find if there are any children which can be removed. :param revisions: A set of revision_ids :return: A set of revision_ids with the children removed """ simple_ancestors = revisions.copy() # TODO: jam 20071214 we *could* restrict it to searching only the # parent_map of revisions already present in 'revisions', but # considering the general use case, I think this is actually # better. # This is the same as the following loop. I don't know that it is any # faster. ## simple_ancestors.difference_update(r for r, p_ids in parent_map.iteritems() ## if p_ids is not None and revisions.intersection(p_ids)) ## return simple_ancestors # Yet Another Way, invert the parent map (which can be cached) ## descendants = {} ## for revision_id, parent_ids in parent_map.iteritems(): ## for p_id in parent_ids: ## descendants.setdefault(p_id, []).append(revision_id) ## for revision in revisions.intersection(descendants): ## simple_ancestors.difference_update(descendants[revision]) ## return simple_ancestors for revision, parent_ids in parent_map.iteritems(): if parent_ids is None: continue for parent_id in parent_ids: if parent_id in revisions: # This node has a parent present in the set, so we can # remove it simple_ancestors.discard(revision) break return simple_ancestors class HeadsCache(object): """A cache of results for graph heads calls.""" def __init__(self, graph): self.graph = graph self._heads = {} def heads(self, keys): """Return the heads of keys. This matches the API of Graph.heads(), specifically the return value is a set which can be mutated, and ordering of the input is not preserved in the output. :see also: Graph.heads. :param keys: The keys to calculate heads for. :return: A set containing the heads, which may be mutated without affecting future lookups. """ keys = frozenset(keys) try: return set(self._heads[keys]) except KeyError: heads = self.graph.heads(keys) self._heads[keys] = heads return set(heads) class FrozenHeadsCache(object): """Cache heads() calls, assuming the caller won't modify them.""" def __init__(self, graph): self.graph = graph self._heads = {} def heads(self, keys): """Return the heads of keys. Similar to Graph.heads(). The main difference is that the return value is a frozen set which cannot be mutated. :see also: Graph.heads. :param keys: The keys to calculate heads for. :return: A frozenset containing the heads. """ keys = frozenset(keys) try: return self._heads[keys] except KeyError: heads = frozenset(self.graph.heads(keys)) self._heads[keys] = heads return heads def cache(self, keys, heads): """Store a known value.""" self._heads[frozenset(keys)] = frozenset(heads) class _BreadthFirstSearcher(object): """Parallel search breadth-first the ancestry of revisions. This class implements the iterator protocol, but additionally 1. provides a set of seen ancestors, and 2. allows some ancestries to be unsearched, via stop_searching_any """ def __init__(self, revisions, parents_provider): self._iterations = 0 self._next_query = set(revisions) self.seen = set() self._started_keys = set(self._next_query) self._stopped_keys = set() self._parents_provider = parents_provider self._returning = 'next_with_ghosts' self._current_present = set() self._current_ghosts = set() self._current_parents = {} def __repr__(self): if self._iterations: prefix = "searching" else: prefix = "starting" search = '%s=%r' % (prefix, list(self._next_query)) return ('_BreadthFirstSearcher(iterations=%d, %s,' ' seen=%r)' % (self._iterations, search, list(self.seen))) def get_state(self): """Get the current state of this searcher. :return: Tuple with started keys, excludes and included keys """ if self._returning == 'next': # We have to know the current nodes children to be able to list the # exclude keys for them. However, while we could have a second # look-ahead result buffer and shuffle things around, this method # is typically only called once per search - when memoising the # results of the search. found, ghosts, next, parents = self._do_query(self._next_query) # pretend we didn't query: perhaps we should tweak _do_query to be # entirely stateless? self.seen.difference_update(next) next_query = next.union(ghosts) else: next_query = self._next_query excludes = self._stopped_keys.union(next_query) included_keys = self.seen.difference(excludes) return self._started_keys, excludes, included_keys def _get_result(self): """Get a SearchResult for the current state of this searcher. :return: A SearchResult for this search so far. The SearchResult is static - the search can be advanced and the search result will not be invalidated or altered. """ from bzrlib.vf_search import SearchResult (started_keys, excludes, included_keys) = self.get_state() return SearchResult(started_keys, excludes, len(included_keys), included_keys) def step(self): try: return self.next() except StopIteration: return () def next(self): """Return the next ancestors of this revision. Ancestors are returned in the order they are seen in a breadth-first traversal. No ancestor will be returned more than once. Ancestors are returned before their parentage is queried, so ghosts and missing revisions (including the start revisions) are included in the result. This can save a round trip in LCA style calculation by allowing convergence to be detected without reading the data for the revision the convergence occurs on. :return: A set of revision_ids. """ if self._returning != 'next': # switch to returning the query, not the results. self._returning = 'next' self._iterations += 1 else: self._advance() if len(self._next_query) == 0: raise StopIteration() # We have seen what we're querying at this point as we are returning # the query, not the results. self.seen.update(self._next_query) return self._next_query def next_with_ghosts(self): """Return the next found ancestors, with ghosts split out. Ancestors are returned in the order they are seen in a breadth-first traversal. No ancestor will be returned more than once. Ancestors are returned only after asking for their parents, which allows us to detect which revisions are ghosts and which are not. :return: A tuple with (present ancestors, ghost ancestors) sets. """ if self._returning != 'next_with_ghosts': # switch to returning the results, not the current query. self._returning = 'next_with_ghosts' self._advance() if len(self._next_query) == 0: raise StopIteration() self._advance() return self._current_present, self._current_ghosts def _advance(self): """Advance the search. Updates self.seen, self._next_query, self._current_present, self._current_ghosts, self._current_parents and self._iterations. """ self._iterations += 1 found, ghosts, next, parents = self._do_query(self._next_query) self._current_present = found self._current_ghosts = ghosts self._next_query = next self._current_parents = parents # ghosts are implicit stop points, otherwise the search cannot be # repeated when ghosts are filled. self._stopped_keys.update(ghosts) def _do_query(self, revisions): """Query for revisions. Adds revisions to the seen set. :param revisions: Revisions to query. :return: A tuple: (set(found_revisions), set(ghost_revisions), set(parents_of_found_revisions), dict(found_revisions:parents)). """ found_revisions = set() parents_of_found = set() # revisions may contain nodes that point to other nodes in revisions: # we want to filter them out. seen = self.seen seen.update(revisions) parent_map = self._parents_provider.get_parent_map(revisions) found_revisions.update(parent_map) for rev_id, parents in parent_map.iteritems(): if parents is None: continue new_found_parents = [p for p in parents if p not in seen] if new_found_parents: # Calling set.update() with an empty generator is actually # rather expensive. parents_of_found.update(new_found_parents) ghost_revisions = revisions - found_revisions return found_revisions, ghost_revisions, parents_of_found, parent_map def __iter__(self): return self def find_seen_ancestors(self, revisions): """Find ancestors of these revisions that have already been seen. This function generally makes the assumption that querying for the parents of a node that has already been queried is reasonably cheap. (eg, not a round trip to a remote host). """ # TODO: Often we might ask one searcher for its seen ancestors, and # then ask another searcher the same question. This can result in # searching the same revisions repeatedly if the two searchers # have a lot of overlap. all_seen = self.seen pending = set(revisions).intersection(all_seen) seen_ancestors = set(pending) if self._returning == 'next': # self.seen contains what nodes have been returned, not what nodes # have been queried. We don't want to probe for nodes that haven't # been searched yet. not_searched_yet = self._next_query else: not_searched_yet = () pending.difference_update(not_searched_yet) get_parent_map = self._parents_provider.get_parent_map while pending: parent_map = get_parent_map(pending) all_parents = [] # We don't care if it is a ghost, since it can't be seen if it is # a ghost for parent_ids in parent_map.itervalues(): all_parents.extend(parent_ids) next_pending = all_seen.intersection(all_parents).difference(seen_ancestors) seen_ancestors.update(next_pending) next_pending.difference_update(not_searched_yet) pending = next_pending return seen_ancestors def stop_searching_any(self, revisions): """ Remove any of the specified revisions from the search list. None of the specified revisions are required to be present in the search list. It is okay to call stop_searching_any() for revisions which were seen in previous iterations. It is the callers responsibility to call find_seen_ancestors() to make sure that current search tips that are ancestors of those revisions are also stopped. All explicitly stopped revisions will be excluded from the search result's get_keys(), though. """ # TODO: does this help performance? # if not revisions: # return set() revisions = frozenset(revisions) if self._returning == 'next': stopped = self._next_query.intersection(revisions) self._next_query = self._next_query.difference(revisions) else: stopped_present = self._current_present.intersection(revisions) stopped = stopped_present.union( self._current_ghosts.intersection(revisions)) self._current_present.difference_update(stopped) self._current_ghosts.difference_update(stopped) # stopping 'x' should stop returning parents of 'x', but # not if 'y' always references those same parents stop_rev_references = {} for rev in stopped_present: for parent_id in self._current_parents[rev]: if parent_id not in stop_rev_references: stop_rev_references[parent_id] = 0 stop_rev_references[parent_id] += 1 # if only the stopped revisions reference it, the ref count will be # 0 after this loop for parents in self._current_parents.itervalues(): for parent_id in parents: try: stop_rev_references[parent_id] -= 1 except KeyError: pass stop_parents = set() for rev_id, refs in stop_rev_references.iteritems(): if refs == 0: stop_parents.add(rev_id) self._next_query.difference_update(stop_parents) self._stopped_keys.update(stopped) self._stopped_keys.update(revisions) return stopped def start_searching(self, revisions): """Add revisions to the search. The parents of revisions will be returned from the next call to next() or next_with_ghosts(). If next_with_ghosts was the most recently used next* call then the return value is the result of looking up the ghost/not ghost status of revisions. (A tuple (present, ghosted)). """ revisions = frozenset(revisions) self._started_keys.update(revisions) new_revisions = revisions.difference(self.seen) if self._returning == 'next': self._next_query.update(new_revisions) self.seen.update(new_revisions) else: # perform a query on revisions revs, ghosts, query, parents = self._do_query(revisions) self._stopped_keys.update(ghosts) self._current_present.update(revs) self._current_ghosts.update(ghosts) self._next_query.update(query) self._current_parents.update(parents) return revs, ghosts def invert_parent_map(parent_map): """Given a map from child => parents, create a map of parent=>children""" child_map = {} for child, parents in parent_map.iteritems(): for p in parents: # Any given parent is likely to have only a small handful # of children, many will have only one. So we avoid mem overhead of # a list, in exchange for extra copying of tuples if p not in child_map: child_map[p] = (child,) else: child_map[p] = child_map[p] + (child,) return child_map def collapse_linear_regions(parent_map): """Collapse regions of the graph that are 'linear'. For example:: A:[B], B:[C] can be collapsed by removing B and getting:: A:[C] :param parent_map: A dictionary mapping children to their parents :return: Another dictionary with 'linear' chains collapsed """ # Note: this isn't a strictly minimal collapse. For example: # A # / \ # B C # \ / # D # | # E # Will not have 'D' removed, even though 'E' could fit. Also: # A # | A # B => | # | C # C # A and C are both kept because they are edges of the graph. We *could* get # rid of A if we wanted. # A # / \ # B C # | | # D E # \ / # F # Will not have any nodes removed, even though you do have an # 'uninteresting' linear D->B and E->C children = {} for child, parents in parent_map.iteritems(): children.setdefault(child, []) for p in parents: children.setdefault(p, []).append(child) orig_children = dict(children) removed = set() result = dict(parent_map) for node in parent_map: parents = result[node] if len(parents) == 1: parent_children = children[parents[0]] if len(parent_children) != 1: # This is not the only child continue node_children = children[node] if len(node_children) != 1: continue child_parents = result.get(node_children[0], None) if len(child_parents) != 1: # This is not its only parent continue # The child of this node only points at it, and the parent only has # this as a child. remove this node, and join the others together result[node_children[0]] = parents children[parents[0]] = node_children del result[node] del children[node] removed.add(node) return result class GraphThunkIdsToKeys(object): """Forwards calls about 'ids' to be about keys internally.""" def __init__(self, graph): self._graph = graph def topo_sort(self): return [r for (r,) in self._graph.topo_sort()] def heads(self, ids): """See Graph.heads()""" as_keys = [(i,) for i in ids] head_keys = self._graph.heads(as_keys) return set([h[0] for h in head_keys]) def merge_sort(self, tip_revision): nodes = self._graph.merge_sort((tip_revision,)) for node in nodes: node.key = node.key[0] return nodes def add_node(self, revision, parents): self._graph.add_node((revision,), [(p,) for p in parents]) _counters = [0,0,0,0,0,0,0] try: from bzrlib._known_graph_pyx import KnownGraph except ImportError, e: osutils.failed_to_load_extension(e) from bzrlib._known_graph_py import KnownGraph