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#!/usr/bin/python
# -*- coding: UTF-8 -*-
"""Directed graph production.
This module contains the code to produce an ordered directed graph of a
bzr branch, such as we display in the tree view at the top of the bzrk
window.
"""
__copyright__ = "Copyright © 2005 Canonical Ltd."
__author__ = "Scott James Remnant <scott@ubuntu.com>"
from bzrlib.errors import NoSuchRevision
class DummyRevision(object):
"""Dummy bzr revision.
Sometimes, especially in older bzr branches, a revision is referenced
as the parent of another but not actually present in the branch's store.
When this happens we use an instance of this class instead of the real
Revision object (which we can't get).
"""
def __init__(self, revid):
self.revision_id = revid
self.parent_ids = []
self.committer = None
self.message = self.revision_id
def graph(branch, start):
"""Produce a directed graph of a bzr branch.
Traverses the branch revision tree starting at start and produces an
ordered list of revisions such that a revision always comes after
any revision it is the parent of. It also tries to make a reasonably
not-too-stupid decision whether a parent revision is on the same
logical branch, as that information is not available with bzr.
For each revision it then yields a tuple of (revision, node, lines).
If the revision is only referenced in the branch and not present in the
store, revision will be a DummyRevision object, otherwise it is the bzr
Revision object with the meta-data for the revision.
Node is a tuple of (column, colour) with column being a zero-indexed
column number of the graph that this revision represents and colour
being a zero-indexed colour (which doesn't specify any actual colour
in particular) to draw the node in.
Lines is a list of tuples which represent lines you should draw away
from the revision, if you also need to draw lines into the revision
you should use the lines list from the previous iteration. Each
typle in the list is in the form (start, end, colour) with start and
end being zero-indexed column numbers and colour as in node.
It's up to you how to actually draw the nodes and lines (straight,
curved, kinked, etc.) and to pick the actual colours for each index.
"""
revisions = { start: branch.get_revision(start) }
distances = { start: 0 }
colours = { start: 0 }
last_colour = 0
# Sort the revisions; the fastest way to do this is to visit each node
# as few times as possible (by keeping the todo list in a set) and record
# the largest distance to it before queuing up the children if we
# increased the distance. This produces the sort order we desire
todo = set([ start ])
while todo:
revid = todo.pop()
revision = revisions[revid]
distance = distances[revid] + 1
colour = colours[revid]
reused = False
for parent_id in revision.parent_ids:
# Check whether there's any point re-processing this
if parent_id in distances and distances[parent_id] >= distance:
continue
# Get the parent from the cache, or put it in the cache
try:
parent = revisions[parent_id]
except KeyError:
try:
parent = revisions[parent_id] \
= branch.get_revision(parent_id)
except NoSuchRevision:
parent = revisions[parent_id] = DummyRevision(parent_id)
# Make a guess as to whether this node represents the same
# branch, or a new one. Penalise same branches in the distance
# stakes to give new ones a chance to appear first as one set.
if len(revision.parent_ids) == 1:
colours[parent_id] = colour
distances[parent_id] = distance
elif revision.committer == parent.committer and not reused:
colours[parent_id] = colour
distances[parent_id] = distance
reused = True
else:
colours[parent_id] = last_colour = last_colour + 1
distances[parent_id] = distance + 10
todo.add(parent_id)
# Now iterate the revisions again, but this time in list order rather
# than traversing the tree, and build up the graph lines. We do this
# by keeping a list of "hanging parents", which can only be removed
# once we encounter the revision being hung.
hanging = [ start ]
for revid in sorted(distances, key=distances.get):
lines = []
node = None
new_hanging = []
for h_idx, hang in enumerate(hanging):
if hang == revid:
# We've matched a hanging revision, so need to output a node
# at this point
node = (h_idx, colours[revid])
# Now we need to hang its parents, we put them at the point
# the old column was so anything to the right of this has
# to move outwards to make room. We also try and collapse
# hangs to keep the graph small.
for parent_id in revisions[revid].parent_ids:
try:
n_idx = new_hanging.index(parent_id)
except ValueError:
n_idx = len(new_hanging)
new_hanging.append(parent_id)
lines.append((h_idx, n_idx, colours[parent_id]))
else:
# Revision keeps on hanging, adjust for any change in the
# graph shape and try to collapse hangs to keep the graph
# small.
try:
n_idx = new_hanging.index(hang)
except ValueError:
n_idx = len(new_hanging)
new_hanging.append(hang)
lines.append((h_idx, n_idx, colours[hang]))
hanging = new_hanging
yield (revisions[revid], node, lines)
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