cpython/Tools/scripts/ndiff.py

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#! /usr/bin/env python
# Released to the public domain $JustDate: 3/16/98 $,
# by Tim Peters (email tim_one@email.msn.com).
# ndiff file1 file2 -- a human-friendly file differencer.
# $Revision$
# SequenceMatcher tries to compute a "human-friendly diff" between
# two sequences (chiefly picturing a file as a sequence of lines,
# and a line as a sequence of characters, here). Unlike UNIX(tm) diff,
# e.g., the fundamental notion is the longest *contiguous* & junk-free
# matching subsequence. That's what catches peoples' eyes. The
# Windows(tm) windiff has another interesting notion, pairing up elements
# that appear uniquely in each sequence. That, and the method here,
# appear to yield more intuitive difference reports than does diff. This
# method appears to be the least vulnerable to synching up on blocks
# of "junk lines", though (like blank lines in ordinary text files,
# or maybe "<P>" lines in HTML files). That may be because this is
# the only method of the 3 that has a *concept* of "junk" <wink>.
#
# Note that ndiff makes no claim to produce a *minimal* diff. To the
# contrary, minimal diffs are often counter-intuitive, because they
# synch up anywhere possible, sometimes accidental matches 100 pages
# apart. Restricting synch points to contiguous matches preserves some
# notion of locality, at the occasional cost of producing a longer diff.
#
# With respect to junk, an earlier verion of ndiff simply refused to
# *start* a match with a junk element. The result was cases like this:
# before: private Thread currentThread;
# after: private volatile Thread currentThread;
# If you consider whitespace to be junk, the longest continguous match
# not starting with junk is "e Thread currentThread". So ndiff reported
# that "e volatil" was inserted between the 't' and the 'e' in "private".
# While an accurate view, to people that's absurd. The current version
# looks for matching blocks that are entirely junk-free, then extends the
# longest one of those as far as possible but only with matching junk.
# So now "currentThread" is matched, then extended to suck up the
# preceding blank; then "private" is matched, and extended to suck up the
# following blank; then "Thread" is matched; and finally ndiff reports
# that "volatile " was inserted before "Thread". The only quibble
# remaining is that perhaps it was really the case that " volative"
# was inserted after "private". I can live with that <wink>.
#
# NOTE on the output: From an ndiff report,
# 1) The first file can be recovered by retaining only lines that begin
# with " " or "- ", and deleting those 2-character prefixes.
# 2) The second file can be recovered similarly, but by retaining only
# " " and "+ " lines.
# 3) Lines beginning with "? " attempt to guide the eye to intraline
# differences, and were not present in either input file.
#
# COROLLARY:
# On Unix, the second file can be recovered by piping the output through
# sed -n '/^[+ ] /s/^..//p'
# Modifications to recover the first file are left as an exercise for
# the reader.
#
# NOTE on junk: the module-level names
# IS_LINE_JUNK
# IS_CHARACTER_JUNK
# can be set to any functions you like. The first one should accept
# a single string argument, and return true iff the string is junk.
# The default is whether the regexp r"\s*#?\s*$" matches (i.e., a
# line without visible characters, except for at most one splat).
# The second should accept a string of length 1 etc. The default is
# whether the character is a blank or tab (note: bad idea to include
# newline in this!).
#
# After setting those, you can call fcompare(f1name, f2name) with the
# names of the files you want to compare. The difference report
# is sent to stdout. Or you can call main(), which expects to find
# (exactly) the two file names in sys.argv.
import string
TRACE = 0
# define what "junk" means
import re
def IS_LINE_JUNK(line, pat=re.compile(r"\s*#?\s*$").match):
return pat(line) is not None
def IS_CHARACTER_JUNK(ch, ws=" \t"):
return ch in ws
del re
class SequenceMatcher:
def __init__(self, isjunk=None, a='', b=''):
# Members:
# a
# first sequence
# b
# second sequence; differences are computed as "what do
# we need to do to 'a' to change it into 'b'?"
# b2j
# for x in b, b2j[x] is a list of the indices (into b)
# at which x appears; junk elements do not appear
# b2jhas
# b2j.has_key
# fullbcount
# for x in b, fullbcount[x] == the number of times x
# appears in b; only materialized if really needed (used
# only for computing quick_ratio())
# matching_blocks
# a list of (i, j, k) triples, where a[i:i+k] == b[j:j+k];
# ascending & non-overlapping in i and in j; terminated by
# a dummy (len(a), len(b), 0) sentinel
# opcodes
# a list of (tag, i1, i2, j1, j2) tuples, where tag is
# one of
# 'replace' a[i1:i2] should be replaced by b[j1:j2]
# 'delete' a[i1:i2] should be deleted
# 'insert' b[j1:j2] should be inserted
# 'equal' a[i1:i2] == b[j1:j2]
# isjunk
# a user-supplied function taking a sequence element and
# returning true iff the element is "junk" -- this has
# subtle but helpful effects on the algorithm, which I'll
# get around to writing up someday <0.9 wink>.
# DON'T USE! Only __chain_b uses this. Use isbjunk.
# isbjunk
# for x in b, isbjunk(x) == isjunk(x) but much faster;
# it's really the has_key method of a hidden dict.
# DOES NOT WORK for x in a!
self.isjunk = isjunk
self.a = self.b = None
self.set_seqs(a, b)
def set_seqs(self, a, b):
self.set_seq1(a)
self.set_seq2(b)
def set_seq1(self, a):
if a is self.a:
return
self.a = a
self.matching_blocks = self.opcodes = None
def set_seq2(self, b):
if b is self.b:
return
self.b = b
self.matching_blocks = self.opcodes = None
self.fullbcount = None
self.__chain_b()
# for each element x in b, set b2j[x] to a list of the indices in
# b where x appears; the indices are in increasing order; note that
# the number of times x appears in b is len(b2j[x]) ...
# when self.isjunk is defined, junk elements don't show up in this
# map at all, which stops the central find_longest_match method
# from starting any matching block at a junk element ...
# also creates the fast isbjunk function ...
# note that this is only called when b changes; so for cross-product
# kinds of matches, it's best to call set_seq2 once, then set_seq1
# repeatedly
def __chain_b(self):
# Because isjunk is a user-defined (not C) function, and we test
# for junk a LOT, it's important to minimize the number of calls.
# Before the tricks described here, __chain_b was by far the most
# time-consuming routine in the whole module! If anyone sees
# Jim Roskind, thank him again for profile.py -- I never would
# have guessed that.
# The first trick is to build b2j ignoring the possibility
# of junk. I.e., we don't call isjunk at all yet. Throwing
# out the junk later is much cheaper than building b2j "right"
# from the start.
b = self.b
self.b2j = b2j = {}
self.b2jhas = b2jhas = b2j.has_key
for i in xrange(0, len(b)):
elt = b[i]
if b2jhas(elt):
b2j[elt].append(i)
else:
b2j[elt] = [i]
# Now b2j.keys() contains elements uniquely, and especially when
# the sequence is a string, that's usually a good deal smaller
# than len(string). The difference is the number of isjunk calls
# saved.
isjunk, junkdict = self.isjunk, {}
if isjunk:
for elt in b2j.keys():
if isjunk(elt):
junkdict[elt] = 1 # value irrelevant; it's a set
del b2j[elt]
# Now for x in b, isjunk(x) == junkdict.has_key(x), but the
# latter is much faster. Note too that while there may be a
# lot of junk in the sequence, the number of *unique* junk
# elements is probably small. So the memory burden of keeping
# this dict alive is likely trivial compared to the size of b2j.
self.isbjunk = junkdict.has_key
def find_longest_match(self, alo, ahi, blo, bhi):
"""Find longest matching block in a[alo:ahi] and b[blo:bhi].
If isjunk is not defined:
Return (i,j,k) such that a[i:i+k] is equal to b[j:j+k], where
alo <= i <= i+k <= ahi
blo <= j <= j+k <= bhi
and for all (i',j',k') meeting those conditions,
k >= k'
i <= i'
and if i == i', j <= j'
In other words, of all maximal matching blocks, returns one
that starts earliest in a, and of all those maximal matching
blocks that start earliest in a, returns the one that starts
earliest in b.
If isjunk is defined, first the longest matching block is
determined as above, but with the additional restriction that
no junk element appears in the block. Then that block is
extended as far as possible by matching (only) junk elements on
both sides. So the resulting block never matches on junk except
as identical junk happens to be adjacent to an "interesting"
match.
If no blocks match, returns (alo, blo, 0).
"""
# CAUTION: stripping common prefix or suffix would be incorrect.
# E.g.,
# ab
# acab
# Longest matching block is "ab", but if common prefix is
# stripped, it's "a" (tied with "b"). UNIX(tm) diff does so
# strip, so ends up claiming that ab is changed to acab by
# inserting "ca" in the middle. That's minimal but unintuitive:
# "it's obvious" that someone inserted "ac" at the front.
# Windiff ends up at the same place as diff, but by pairing up
# the unique 'b's and then matching the first two 'a's.
# find longest junk-free match
a, b, b2j, isbjunk = self.a, self.b, self.b2j, self.isbjunk
besti, bestj, bestsize = alo, blo, 0
for i in xrange(alo, ahi):
# check for longest match starting at a[i]
if i + bestsize >= ahi:
# we're too far right to get a new best
break
# look at all instances of a[i] in b; note that because
# b2j has no junk keys, the loop is skipped if a[i] is junk
for j in b2j.get(a[i], []):
# a[i] matches b[j]
if j < blo:
continue
if j + bestsize >= bhi:
# we're too far right to get a new best, here or
# anywhere to the right
break
if a[i + bestsize] != b[j + bestsize]:
# can't be longer match; this test is not necessary
# for correctness, but is a huge win for efficiency
continue
# set k to length of match
k = 1 # a[i] == b[j] already known
while i + k < ahi and j + k < bhi and \
a[i+k] == b[j+k] and not isbjunk(b[j+k]):
k = k + 1
if k > bestsize:
besti, bestj, bestsize = i, j, k
if i + bestsize >= ahi:
# only time in my life I really wanted a
# labelled break <wink> -- we're done with
# both loops now
break
# Now that we have a wholly interesting match (albeit possibly
# empty!), we may as well suck up the matching junk on each
# side of it too. Can't think of a good reason not to, and it
# saves post-processing the (possibly considerable) expense of
# figuring out what to do with it. In the case of an empty
# interesting match, this is clearly the right thing to do,
# because no other kind of match is possible in the regions.
while besti > alo and bestj > blo and \
isbjunk(b[bestj-1]) and \
a[besti-1] == b[bestj-1]:
besti, bestj, bestsize = besti-1, bestj-1, bestsize+1
while besti+bestsize < ahi and bestj+bestsize < bhi and \
isbjunk(b[bestj+bestsize]) and \
a[besti+bestsize] == b[bestj+bestsize]:
bestsize = bestsize + 1
if TRACE:
print "get_matching_blocks", alo, ahi, blo, bhi
print " returns", besti, bestj, bestsize
return besti, bestj, bestsize
# A different implementation, using a binary doubling technique that
# does far fewer element compares (trades 'em for integer compares),
# and has n*lg n worst-case behavior. Alas, the code is much harder
# to follow (the details are tricky!), and in most cases I've seen,
# it takes at least 50% longer than the "clever dumb" method above;
# probably due to creating layers of small dicts.
# NOTE: this no longer matches the version above wrt junk; remains
# too unpromising to update it; someday, though ...
# def find_longest_match(self, alo, ahi, blo, bhi):
# """Find longest matching block in a[alo:ahi] and b[blo:bhi].
#
# Return (i,j,k) such that a[i:i+k] is equal to b[j:j+k], where
# alo <= i <= i+k <= ahi
# blo <= j <= j+k <= bhi
# and for all (i',j',k') meeting those conditions,
# k >= k'
# i <= i'
# and if i == i', j <= j'
# In other words, of all maximal matching blocks, returns one
# that starts earliest in a, and of all those maximal matching
# blocks that start earliest in a, returns the one that starts
# earliest in b.
#
# If no blocks match, returns (alo, blo, 0).
# """
#
# a, b2j = self.a, self.b2j
# # alljs[size][i] is a set of all j's s.t. a[i:i+len] matches
# # b[j:j+len]
# alljs = {}
# alljs[1] = js = {}
# ahits = {}
# for i in xrange(alo, ahi):
# elt = a[i]
# if ahits.has_key(elt):
# js[i] = ahits[elt]
# continue
# if b2j.has_key(elt):
# in_range = {}
# for j in b2j[elt]:
# if j >= blo:
# if j >= bhi:
# break
# in_range[j] = 1
# if in_range:
# ahits[elt] = js[i] = in_range
# del ahits
# size = 1
# while js:
# oldsize = size
# size = size + size
# oldjs = js
# alljs[size] = js = {}
# for i in oldjs.keys():
# # i has matches of size oldsize
# if not oldjs.has_key(i + oldsize):
# # can't double it
# continue
# second_js = oldjs[i + oldsize]
# answer = {}
# for j in oldjs[i].keys():
# if second_js.has_key(j + oldsize):
# answer[j] = 1
# if answer:
# js[i] = answer
# del alljs[size]
# size = size >> 1 # max power of 2 with a match
# if not size:
# return alo, blo, 0
# besti, bestj, bestsize = alo, blo, 0
# fatis = alljs[size].keys()
# fatis.sort()
# for i in fatis:
# # figure out longest match starting at a[i]
# totalsize = halfsize = size
# # i has matches of len totalsize at the indices in js
# js = alljs[size][i].keys()
# while halfsize > 1:
# halfsize = halfsize >> 1
# # is there a match of len halfsize starting at
# # i + totalsize?
# newjs = []
# if alljs[halfsize].has_key(i + totalsize):
# second_js = alljs[halfsize][i + totalsize]
# for j in js:
# if second_js.has_key(j + totalsize):
# newjs.append(j)
# if newjs:
# totalsize = totalsize + halfsize
# js = newjs
# if totalsize > bestsize:
# besti, bestj, bestsize = i, min(js), totalsize
# return besti, bestj, bestsize
def get_matching_blocks(self):
if self.matching_blocks is not None:
return self.matching_blocks
self.matching_blocks = []
la, lb = len(self.a), len(self.b)
self.__helper(0, la, 0, lb, self.matching_blocks)
self.matching_blocks.append( (la, lb, 0) )
if TRACE:
print '*** matching blocks', self.matching_blocks
return self.matching_blocks
# builds list of matching blocks covering a[alo:ahi] and
# b[blo:bhi], appending them in increasing order to answer
def __helper(self, alo, ahi, blo, bhi, answer):
i, j, k = x = self.find_longest_match(alo, ahi, blo, bhi)
# a[alo:i] vs b[blo:j] unknown
# a[i:i+k] same as b[j:j+k]
# a[i+k:ahi] vs b[j+k:bhi] unknown
if k:
if alo < i and blo < j:
self.__helper(alo, i, blo, j, answer)
answer.append( x )
if i+k < ahi and j+k < bhi:
self.__helper(i+k, ahi, j+k, bhi, answer)
def ratio(self):
"""Return a measure of the sequences' similarity (float in [0,1]).
Where T is the total number of elements in both sequences, and
M is the number of matches, this is 2*M / T.
Note that this is 1 if the sequences are identical, and 0 if
they have nothing in common.
"""
matches = reduce(lambda sum, triple: sum + triple[-1],
self.get_matching_blocks(), 0)
return 2.0 * matches / (len(self.a) + len(self.b))
def quick_ratio(self):
"""Return an upper bound on ratio() relatively quickly."""
# viewing a and b as multisets, set matches to the cardinality
# of their intersection; this counts the number of matches
# without regard to order, so is clearly an upper bound
if self.fullbcount is None:
self.fullbcount = fullbcount = {}
for elt in self.b:
fullbcount[elt] = fullbcount.get(elt, 0) + 1
fullbcount = self.fullbcount
# avail[x] is the number of times x appears in 'b' less the
# number of times we've seen it in 'a' so far ... kinda
avail = {}
availhas, matches = avail.has_key, 0
for elt in self.a:
if availhas(elt):
numb = avail[elt]
else:
numb = fullbcount.get(elt, 0)
avail[elt] = numb - 1
if numb > 0:
matches = matches + 1
return 2.0 * matches / (len(self.a) + len(self.b))
def real_quick_ratio(self):
"""Return an upper bound on ratio() very quickly"""
la, lb = len(self.a), len(self.b)
# can't have more matches than the number of elements in the
# shorter sequence
return 2.0 * min(la, lb) / (la + lb)
def get_opcodes(self):
if self.opcodes is not None:
return self.opcodes
i = j = 0
self.opcodes = answer = []
for ai, bj, size in self.get_matching_blocks():
# invariant: we've pumped out correct diffs to change
# a[:i] into b[:j], and the next matching block is
# a[ai:ai+size] == b[bj:bj+size]. So we need to pump
# out a diff to change a[i:ai] into b[j:bj], pump out
# the matching block, and move (i,j) beyond the match
tag = ''
if i < ai and j < bj:
tag = 'replace'
elif i < ai:
tag = 'delete'
elif j < bj:
tag = 'insert'
if tag:
answer.append( (tag, i, ai, j, bj) )
i, j = ai+size, bj+size
# the list of matching blocks is terminated by a
# sentinel with size 0
if size:
answer.append( ('equal', ai, i, bj, j) )
return answer
# meant for dumping lines
def dump(tag, x, lo, hi):
for i in xrange(lo, hi):
print tag, x[i],
# figure out which mark to stick under characters in lines that
# have changed (blank = same, - = deleted, + = inserted, ^ = replaced)
_combine = { ' ': ' ',
'. ': '-',
' .': '+',
'..': '^' }
def plain_replace(a, alo, ahi, b, blo, bhi):
assert alo < ahi and blo < bhi
# dump the shorter block first -- reduces the burden on short-term
# memory if the blocks are of very different sizes
if bhi - blo < ahi - alo:
dump('+', b, blo, bhi)
dump('-', a, alo, ahi)
else:
dump('-', a, alo, ahi)
dump('+', b, blo, bhi)
# When replacing one block of lines with another, this guy searches
# the blocks for *similar* lines; the best-matching pair (if any) is
# used as a synch point, and intraline difference marking is done on
# the similar pair. Lots of work, but often worth it.
def fancy_replace(a, alo, ahi, b, blo, bhi):
if TRACE:
print '*** fancy_replace', alo, ahi, blo, bhi
dump('>', a, alo, ahi)
dump('<', b, blo, bhi)
# don't synch up unless the lines have a similarity score of at
# least cutoff; best_ratio tracks the best score seen so far
best_ratio, cutoff = 0.74, 0.75
cruncher = SequenceMatcher(IS_CHARACTER_JUNK)
eqi, eqj = None, None # 1st indices of equal lines (if any)
# search for the pair that matches best without being identical
# (identical lines must be junk lines, & we don't want to synch up
# on junk -- unless we have to)
for j in xrange(blo, bhi):
bj = b[j]
cruncher.set_seq2(bj)
for i in xrange(alo, ahi):
ai = a[i]
if ai == bj:
if eqi is None:
eqi, eqj = i, j
continue
cruncher.set_seq1(ai)
# computing similarity is expensive, so use the quick
# upper bounds first -- have seen this speed up messy
# compares by a factor of 3.
# note that ratio() is only expensive to compute the first
# time it's called on a sequence pair; the expensive part
# of the computation is cached by cruncher
if cruncher.real_quick_ratio() > best_ratio and \
cruncher.quick_ratio() > best_ratio and \
cruncher.ratio() > best_ratio:
best_ratio, best_i, best_j = cruncher.ratio(), i, j
if best_ratio < cutoff:
# no non-identical "pretty close" pair
if eqi is None:
# no identical pair either -- treat it as a straight replace
plain_replace(a, alo, ahi, b, blo, bhi)
return
# no close pair, but an identical pair -- synch up on that
best_i, best_j, best_ratio = eqi, eqj, 1.0
else:
# there's a close pair, so forget the identical pair (if any)
eqi = None
# a[best_i] very similar to b[best_j]; eqi is None iff they're not
# identical
if TRACE:
print '*** best_ratio', best_ratio, best_i, best_j
dump('>', a, best_i, best_i+1)
dump('<', b, best_j, best_j+1)
# pump out diffs from before the synch point
fancy_helper(a, alo, best_i, b, blo, best_j)
# do intraline marking on the synch pair
aelt, belt = a[best_i], b[best_j]
if eqi is None:
# pump out a '-', '+', '?' triple for the synched lines;
atags = btags = ""
cruncher.set_seqs(aelt, belt)
for tag, ai1, ai2, bj1, bj2 in cruncher.get_opcodes():
la, lb = ai2 - ai1, bj2 - bj1
if tag == 'replace':
atags = atags + '.' * la
btags = btags + '.' * lb
elif tag == 'delete':
atags = atags + '.' * la
elif tag == 'insert':
btags = btags + '.' * lb
elif tag == 'equal':
atags = atags + ' ' * la
btags = btags + ' ' * lb
else:
raise ValueError, 'unknown tag ' + `tag`
la, lb = len(atags), len(btags)
if la < lb:
atags = atags + ' ' * (lb - la)
elif lb < la:
btags = btags + ' ' * (la - lb)
combined = map(lambda x,y: _combine[x+y], atags, btags)
print '-', aelt, '+', belt, '?', \
string.rstrip(string.join(combined, ''))
else:
# the synch pair is identical
print ' ', aelt,
# pump out diffs from after the synch point
fancy_helper(a, best_i+1, ahi, b, best_j+1, bhi)
def fancy_helper(a, alo, ahi, b, blo, bhi):
if alo < ahi:
if blo < bhi:
fancy_replace(a, alo, ahi, b, blo, bhi)
else:
dump('-', a, alo, ahi)
elif blo < bhi:
dump('+', b, blo, bhi)
# open a file & return the file object; gripe and return 0 if it
# couldn't be opened
def fopen(fname):
try:
return open(fname, 'r')
except IOError, detail:
print "couldn't open " + fname + ": " + `detail`
return 0
# open two files & spray the diff to stdout; return false iff a problem
def fcompare(f1name, f2name):
f1 = fopen(f1name)
f2 = fopen(f2name)
if not f1 or not f2:
return 0
a = f1.readlines(); f1.close()
b = f2.readlines(); f2.close()
cruncher = SequenceMatcher(IS_LINE_JUNK, a, b)
for tag, alo, ahi, blo, bhi in cruncher.get_opcodes():
if tag == 'replace':
fancy_replace(a, alo, ahi, b, blo, bhi)
elif tag == 'delete':
dump('-', a, alo, ahi)
elif tag == 'insert':
dump('+', b, blo, bhi)
elif tag == 'equal':
dump(' ', a, alo, ahi)
else:
raise ValueError, 'unknown tag ' + `tag`
return 1
# get file names from argv & compare; return false iff a problem
def main():
from sys import argv
if len(argv) != 3:
print 'need 2 args'
return 0
[f1name, f2name] = argv[1:3]
print '-:', f1name
print '+:', f2name
return fcompare(f1name, f2name)
if __name__ == '__main__':
if 1:
main()
else:
import profile, pstats
statf = "ndiff.pro"
profile.run("main()", statf)
stats = pstats.Stats(statf)
stats.strip_dirs().sort_stats('time').print_stats()