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			1118 lines
		
	
	
	
		
			41 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| #! /usr/bin/env python
 | |
| 
 | |
| """
 | |
| Module difflib -- helpers for computing deltas between objects.
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| 
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| Function get_close_matches(word, possibilities, n=3, cutoff=0.6):
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|     Use SequenceMatcher to return list of the best "good enough" matches.
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| 
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| Function ndiff(a, b):
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|     Return a delta: the difference between `a` and `b` (lists of strings).
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| 
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| Function restore(delta, which):
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|     Return one of the two sequences that generated an ndiff delta.
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| 
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| Class SequenceMatcher:
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|     A flexible class for comparing pairs of sequences of any type.
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| 
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| Class Differ:
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|     For producing human-readable deltas from sequences of lines of text.
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| """
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| 
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| __all__ = ['get_close_matches', 'ndiff', 'restore', 'SequenceMatcher',
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|            'Differ']
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| 
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| class SequenceMatcher:
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| 
 | |
|     """
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|     SequenceMatcher is a flexible class for comparing pairs of sequences of
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|     any type, so long as the sequence elements are hashable.  The basic
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|     algorithm predates, and is a little fancier than, an algorithm
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|     published in the late 1980's by Ratcliff and Obershelp under the
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|     hyperbolic name "gestalt pattern matching".  The basic idea is to find
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|     the longest contiguous matching subsequence that contains no "junk"
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|     elements (R-O doesn't address junk).  The same idea is then applied
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|     recursively to the pieces of the sequences to the left and to the right
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|     of the matching subsequence.  This does not yield minimal edit
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|     sequences, but does tend to yield matches that "look right" to people.
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| 
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|     SequenceMatcher tries to compute a "human-friendly diff" between two
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|     sequences.  Unlike e.g. UNIX(tm) diff, the fundamental notion is the
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|     longest *contiguous* & junk-free matching subsequence.  That's what
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|     catches peoples' eyes.  The Windows(tm) windiff has another interesting
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|     notion, pairing up elements that appear uniquely in each sequence.
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|     That, and the method here, appear to yield more intuitive difference
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|     reports than does diff.  This method appears to be the least vulnerable
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|     to synching up on blocks of "junk lines", though (like blank lines in
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|     ordinary text files, or maybe "<P>" lines in HTML files).  That may be
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|     because this is the only method of the 3 that has a *concept* of
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|     "junk" <wink>.
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| 
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|     Example, comparing two strings, and considering blanks to be "junk":
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| 
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|     >>> s = SequenceMatcher(lambda x: x == " ",
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|     ...                     "private Thread currentThread;",
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|     ...                     "private volatile Thread currentThread;")
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|     >>>
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| 
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|     .ratio() returns a float in [0, 1], measuring the "similarity" of the
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|     sequences.  As a rule of thumb, a .ratio() value over 0.6 means the
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|     sequences are close matches:
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| 
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|     >>> print round(s.ratio(), 3)
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|     0.866
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|     >>>
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| 
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|     If you're only interested in where the sequences match,
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|     .get_matching_blocks() is handy:
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| 
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|     >>> for block in s.get_matching_blocks():
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|     ...     print "a[%d] and b[%d] match for %d elements" % block
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|     a[0] and b[0] match for 8 elements
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|     a[8] and b[17] match for 6 elements
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|     a[14] and b[23] match for 15 elements
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|     a[29] and b[38] match for 0 elements
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| 
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|     Note that the last tuple returned by .get_matching_blocks() is always a
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|     dummy, (len(a), len(b), 0), and this is the only case in which the last
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|     tuple element (number of elements matched) is 0.
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| 
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|     If you want to know how to change the first sequence into the second,
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|     use .get_opcodes():
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| 
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|     >>> for opcode in s.get_opcodes():
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|     ...     print "%6s a[%d:%d] b[%d:%d]" % opcode
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|      equal a[0:8] b[0:8]
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|     insert a[8:8] b[8:17]
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|      equal a[8:14] b[17:23]
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|      equal a[14:29] b[23:38]
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| 
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|     See the Differ class for a fancy human-friendly file differencer, which
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|     uses SequenceMatcher both to compare sequences of lines, and to compare
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|     sequences of characters within similar (near-matching) lines.
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| 
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|     See also function get_close_matches() in this module, which shows how
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|     simple code building on SequenceMatcher can be used to do useful work.
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| 
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|     Timing:  Basic R-O is cubic time worst case and quadratic time expected
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|     case.  SequenceMatcher is quadratic time for the worst case and has
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|     expected-case behavior dependent in a complicated way on how many
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|     elements the sequences have in common; best case time is linear.
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| 
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|     Methods:
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| 
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|     __init__(isjunk=None, a='', b='')
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|         Construct a SequenceMatcher.
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| 
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|     set_seqs(a, b)
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|         Set the two sequences to be compared.
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| 
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|     set_seq1(a)
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|         Set the first sequence to be compared.
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| 
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|     set_seq2(b)
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|         Set the second sequence to be compared.
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| 
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|     find_longest_match(alo, ahi, blo, bhi)
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|         Find longest matching block in a[alo:ahi] and b[blo:bhi].
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| 
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|     get_matching_blocks()
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|         Return list of triples describing matching subsequences.
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| 
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|     get_opcodes()
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|         Return list of 5-tuples describing how to turn a into b.
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| 
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|     ratio()
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|         Return a measure of the sequences' similarity (float in [0,1]).
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| 
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|     quick_ratio()
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|         Return an upper bound on .ratio() relatively quickly.
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| 
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|     real_quick_ratio()
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|         Return an upper bound on ratio() very quickly.
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|     """
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| 
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|     def __init__(self, isjunk=None, a='', b=''):
 | |
|         """Construct a SequenceMatcher.
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| 
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|         Optional arg isjunk is None (the default), or a one-argument
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|         function that takes a sequence element and returns true iff the
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|         element is junk.  None is equivalent to passing "lambda x: 0", i.e.
 | |
|         no elements are considered to be junk.  For example, pass
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|             lambda x: x in " \\t"
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|         if you're comparing lines as sequences of characters, and don't
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|         want to synch up on blanks or hard tabs.
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| 
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|         Optional arg a is the first of two sequences to be compared.  By
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|         default, an empty string.  The elements of a must be hashable.  See
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|         also .set_seqs() and .set_seq1().
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| 
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|         Optional arg b is the second of two sequences to be compared.  By
 | |
|         default, an empty string.  The elements of b must be hashable. See
 | |
|         also .set_seqs() and .set_seq2().
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|         """
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| 
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|         # Members:
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|         # a
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|         #      first sequence
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|         # b
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|         #      second sequence; differences are computed as "what do
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|         #      we need to do to 'a' to change it into 'b'?"
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|         # b2j
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|         #      for x in b, b2j[x] is a list of the indices (into b)
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|         #      at which x appears; junk elements do not appear
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|         # fullbcount
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|         #      for x in b, fullbcount[x] == the number of times x
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|         #      appears in b; only materialized if really needed (used
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|         #      only for computing quick_ratio())
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|         # matching_blocks
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|         #      a list of (i, j, k) triples, where a[i:i+k] == b[j:j+k];
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|         #      ascending & non-overlapping in i and in j; terminated by
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|         #      a dummy (len(a), len(b), 0) sentinel
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|         # opcodes
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|         #      a list of (tag, i1, i2, j1, j2) tuples, where tag is
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|         #      one of
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|         #          'replace'   a[i1:i2] should be replaced by b[j1:j2]
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|         #          'delete'    a[i1:i2] should be deleted
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|         #          'insert'    b[j1:j2] should be inserted
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|         #          'equal'     a[i1:i2] == b[j1:j2]
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|         # isjunk
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|         #      a user-supplied function taking a sequence element and
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|         #      returning true iff the element is "junk" -- this has
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|         #      subtle but helpful effects on the algorithm, which I'll
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|         #      get around to writing up someday <0.9 wink>.
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|         #      DON'T USE!  Only __chain_b uses this.  Use isbjunk.
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|         # isbjunk
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|         #      for x in b, isbjunk(x) == isjunk(x) but much faster;
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|         #      it's really the has_key method of a hidden dict.
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|         #      DOES NOT WORK for x in a!
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|         # isbpopular
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|         #      for x in b, isbpopular(x) is true iff b is reasonably long
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|         #      (at least 200 elements) and x accounts for more than 1% of
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|         #      its elements.  DOES NOT WORK for x in a!
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| 
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|         self.isjunk = isjunk
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|         self.a = self.b = None
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|         self.set_seqs(a, b)
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| 
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|     def set_seqs(self, a, b):
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|         """Set the two sequences to be compared.
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| 
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|         >>> s = SequenceMatcher()
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|         >>> s.set_seqs("abcd", "bcde")
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|         >>> s.ratio()
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|         0.75
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|         """
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| 
 | |
|         self.set_seq1(a)
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|         self.set_seq2(b)
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| 
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|     def set_seq1(self, a):
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|         """Set the first sequence to be compared.
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| 
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|         The second sequence to be compared is not changed.
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| 
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|         >>> s = SequenceMatcher(None, "abcd", "bcde")
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|         >>> s.ratio()
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|         0.75
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|         >>> s.set_seq1("bcde")
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|         >>> s.ratio()
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|         1.0
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|         >>>
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| 
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|         SequenceMatcher computes and caches detailed information about the
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|         second sequence, so if you want to compare one sequence S against
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|         many sequences, use .set_seq2(S) once and call .set_seq1(x)
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|         repeatedly for each of the other sequences.
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| 
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|         See also set_seqs() and set_seq2().
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|         """
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| 
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|         if a is self.a:
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|             return
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|         self.a = a
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|         self.matching_blocks = self.opcodes = None
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| 
 | |
|     def set_seq2(self, b):
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|         """Set the second sequence to be compared.
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| 
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|         The first sequence to be compared is not changed.
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| 
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|         >>> s = SequenceMatcher(None, "abcd", "bcde")
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|         >>> s.ratio()
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|         0.75
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|         >>> s.set_seq2("abcd")
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|         >>> s.ratio()
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|         1.0
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|         >>>
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| 
 | |
|         SequenceMatcher computes and caches detailed information about the
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|         second sequence, so if you want to compare one sequence S against
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|         many sequences, use .set_seq2(S) once and call .set_seq1(x)
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|         repeatedly for each of the other sequences.
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| 
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|         See also set_seqs() and set_seq1().
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|         """
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| 
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|         if b is self.b:
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|             return
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|         self.b = b
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|         self.matching_blocks = self.opcodes = None
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|         self.fullbcount = None
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|         self.__chain_b()
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| 
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|     # For each element x in b, set b2j[x] to a list of the indices in
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|     # b where x appears; the indices are in increasing order; note that
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|     # the number of times x appears in b is len(b2j[x]) ...
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|     # when self.isjunk is defined, junk elements don't show up in this
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|     # map at all, which stops the central find_longest_match method
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|     # from starting any matching block at a junk element ...
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|     # also creates the fast isbjunk function ...
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|     # b2j also does not contain entries for "popular" elements, meaning
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|     # elements that account for more than 1% of the total elements, and
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|     # when the sequence is reasonably large (>= 200 elements); this can
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|     # be viewed as an adaptive notion of semi-junk, and yields an enormous
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|     # speedup when, e.g., comparing program files with hundreds of
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|     # instances of "return NULL;" ...
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|     # note that this is only called when b changes; so for cross-product
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|     # kinds of matches, it's best to call set_seq2 once, then set_seq1
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|     # repeatedly
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| 
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|     def __chain_b(self):
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|         # Because isjunk is a user-defined (not C) function, and we test
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|         # for junk a LOT, it's important to minimize the number of calls.
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|         # Before the tricks described here, __chain_b was by far the most
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|         # time-consuming routine in the whole module!  If anyone sees
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|         # Jim Roskind, thank him again for profile.py -- I never would
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|         # have guessed that.
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|         # The first trick is to build b2j ignoring the possibility
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|         # of junk.  I.e., we don't call isjunk at all yet.  Throwing
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|         # out the junk later is much cheaper than building b2j "right"
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|         # from the start.
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|         b = self.b
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|         n = len(b)
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|         self.b2j = b2j = {}
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|         populardict = {}
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|         for i, elt in enumerate(b):
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|             if elt in b2j:
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|                 indices = b2j[elt]
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|                 if n >= 200 and len(indices) * 100 > n:
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|                     populardict[elt] = 1
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|                     del indices[:]
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|                 else:
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|                     indices.append(i)
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|             else:
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|                 b2j[elt] = [i]
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| 
 | |
|         # Purge leftover indices for popular elements.
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|         for elt in populardict:
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|             del b2j[elt]
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| 
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|         # Now b2j.keys() contains elements uniquely, and especially when
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|         # the sequence is a string, that's usually a good deal smaller
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|         # than len(string).  The difference is the number of isjunk calls
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|         # saved.
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|         isjunk = self.isjunk
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|         junkdict = {}
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|         if isjunk:
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|             for d in populardict, b2j:
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|                 for elt in d.keys():
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|                     if isjunk(elt):
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|                         junkdict[elt] = 1
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|                         del d[elt]
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| 
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|         # Now for x in b, isjunk(x) == x in junkdict, but the
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|         # latter is much faster.  Note too that while there may be a
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|         # lot of junk in the sequence, the number of *unique* junk
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|         # elements is probably small.  So the memory burden of keeping
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|         # this dict alive is likely trivial compared to the size of b2j.
 | |
|         self.isbjunk = junkdict.has_key
 | |
|         self.isbpopular = populardict.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:
 | |
| 
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|         Return (i,j,k) such that a[i:i+k] is equal to b[j:j+k], where
 | |
|             alo <= i <= i+k <= ahi
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|             blo <= j <= j+k <= bhi
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|         and for all (i',j',k') meeting those conditions,
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|             k >= k'
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|             i <= i'
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|             and if i == i', j <= j'
 | |
| 
 | |
|         In other words, of all maximal matching blocks, return one that
 | |
|         starts earliest in a, and of all those maximal matching blocks that
 | |
|         start earliest in a, return the one that starts earliest in b.
 | |
| 
 | |
|         >>> s = SequenceMatcher(None, " abcd", "abcd abcd")
 | |
|         >>> s.find_longest_match(0, 5, 0, 9)
 | |
|         (0, 4, 5)
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| 
 | |
|         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.
 | |
| 
 | |
|         Here's the same example as before, but considering blanks to be
 | |
|         junk.  That prevents " abcd" from matching the " abcd" at the tail
 | |
|         end of the second sequence directly.  Instead only the "abcd" can
 | |
|         match, and matches the leftmost "abcd" in the second sequence:
 | |
| 
 | |
|         >>> s = SequenceMatcher(lambda x: x==" ", " abcd", "abcd abcd")
 | |
|         >>> s.find_longest_match(0, 5, 0, 9)
 | |
|         (1, 0, 4)
 | |
| 
 | |
|         If no blocks match, return (alo, blo, 0).
 | |
| 
 | |
|         >>> s = SequenceMatcher(None, "ab", "c")
 | |
|         >>> s.find_longest_match(0, 2, 0, 1)
 | |
|         (0, 0, 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.
 | |
| 
 | |
|         a, b, b2j, isbjunk = self.a, self.b, self.b2j, self.isbjunk
 | |
|         besti, bestj, bestsize = alo, blo, 0
 | |
|         # find longest junk-free match
 | |
|         # during an iteration of the loop, j2len[j] = length of longest
 | |
|         # junk-free match ending with a[i-1] and b[j]
 | |
|         j2len = {}
 | |
|         nothing = []
 | |
|         for i in xrange(alo, ahi):
 | |
|             # 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
 | |
|             j2lenget = j2len.get
 | |
|             newj2len = {}
 | |
|             for j in b2j.get(a[i], nothing):
 | |
|                 # a[i] matches b[j]
 | |
|                 if j < blo:
 | |
|                     continue
 | |
|                 if j >= bhi:
 | |
|                     break
 | |
|                 k = newj2len[j] = j2lenget(j-1, 0) + 1
 | |
|                 if k > bestsize:
 | |
|                     besti, bestj, bestsize = i-k+1, j-k+1, k
 | |
|             j2len = newj2len
 | |
| 
 | |
|         # Extend the best by non-junk elements on each end.  In particular,
 | |
|         # "popular" non-junk elements aren't in b2j, which greatly speeds
 | |
|         # the inner loop above, but also means "the best" match so far
 | |
|         # doesn't contain any junk *or* popular non-junk elements.
 | |
|         while besti > alo and bestj > blo and \
 | |
|               not 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 \
 | |
|               not isbjunk(b[bestj+bestsize]) and \
 | |
|               a[besti+bestsize] == b[bestj+bestsize]:
 | |
|             bestsize += 1
 | |
| 
 | |
|         # 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
 | |
| 
 | |
|         return besti, bestj, bestsize
 | |
| 
 | |
|     def get_matching_blocks(self):
 | |
|         """Return list of triples describing matching subsequences.
 | |
| 
 | |
|         Each triple is of the form (i, j, n), and means that
 | |
|         a[i:i+n] == b[j:j+n].  The triples are monotonically increasing in
 | |
|         i and in j.
 | |
| 
 | |
|         The last triple is a dummy, (len(a), len(b), 0), and is the only
 | |
|         triple with n==0.
 | |
| 
 | |
|         >>> s = SequenceMatcher(None, "abxcd", "abcd")
 | |
|         >>> s.get_matching_blocks()
 | |
|         [(0, 0, 2), (3, 2, 2), (5, 4, 0)]
 | |
|         """
 | |
| 
 | |
|         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) )
 | |
|         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 get_opcodes(self):
 | |
|         """Return list of 5-tuples describing how to turn a into b.
 | |
| 
 | |
|         Each tuple is of the form (tag, i1, i2, j1, j2).  The first tuple
 | |
|         has i1 == j1 == 0, and remaining tuples have i1 == the i2 from the
 | |
|         tuple preceding it, and likewise for j1 == the previous j2.
 | |
| 
 | |
|         The tags are strings, with these meanings:
 | |
| 
 | |
|         'replace':  a[i1:i2] should be replaced by b[j1:j2]
 | |
|         'delete':   a[i1:i2] should be deleted.
 | |
|                     Note that j1==j2 in this case.
 | |
|         'insert':   b[j1:j2] should be inserted at a[i1:i1].
 | |
|                     Note that i1==i2 in this case.
 | |
|         'equal':    a[i1:i2] == b[j1:j2]
 | |
| 
 | |
|         >>> a = "qabxcd"
 | |
|         >>> b = "abycdf"
 | |
|         >>> s = SequenceMatcher(None, a, b)
 | |
|         >>> for tag, i1, i2, j1, j2 in s.get_opcodes():
 | |
|         ...    print ("%7s a[%d:%d] (%s) b[%d:%d] (%s)" %
 | |
|         ...           (tag, i1, i2, a[i1:i2], j1, j2, b[j1:j2]))
 | |
|          delete a[0:1] (q) b[0:0] ()
 | |
|           equal a[1:3] (ab) b[0:2] (ab)
 | |
|         replace a[3:4] (x) b[2:3] (y)
 | |
|           equal a[4:6] (cd) b[3:5] (cd)
 | |
|          insert a[6:6] () b[5:6] (f)
 | |
|         """
 | |
| 
 | |
|         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
 | |
| 
 | |
|     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 2,0*M / T.
 | |
|         Note that this is 1 if the sequences are identical, and 0 if
 | |
|         they have nothing in common.
 | |
| 
 | |
|         .ratio() is expensive to compute if you haven't already computed
 | |
|         .get_matching_blocks() or .get_opcodes(), in which case you may
 | |
|         want to try .quick_ratio() or .real_quick_ratio() first to get an
 | |
|         upper bound.
 | |
| 
 | |
|         >>> s = SequenceMatcher(None, "abcd", "bcde")
 | |
|         >>> s.ratio()
 | |
|         0.75
 | |
|         >>> s.quick_ratio()
 | |
|         0.75
 | |
|         >>> s.real_quick_ratio()
 | |
|         1.0
 | |
|         """
 | |
| 
 | |
|         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.
 | |
| 
 | |
|         This isn't defined beyond that it is an upper bound on .ratio(), and
 | |
|         is faster to compute.
 | |
|         """
 | |
| 
 | |
|         # 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.
 | |
| 
 | |
|         This isn't defined beyond that it is an upper bound on .ratio(), and
 | |
|         is faster to compute than either .ratio() or .quick_ratio().
 | |
|         """
 | |
| 
 | |
|         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_close_matches(word, possibilities, n=3, cutoff=0.6):
 | |
|     """Use SequenceMatcher to return list of the best "good enough" matches.
 | |
| 
 | |
|     word is a sequence for which close matches are desired (typically a
 | |
|     string).
 | |
| 
 | |
|     possibilities is a list of sequences against which to match word
 | |
|     (typically a list of strings).
 | |
| 
 | |
|     Optional arg n (default 3) is the maximum number of close matches to
 | |
|     return.  n must be > 0.
 | |
| 
 | |
|     Optional arg cutoff (default 0.6) is a float in [0, 1].  Possibilities
 | |
|     that don't score at least that similar to word are ignored.
 | |
| 
 | |
|     The best (no more than n) matches among the possibilities are returned
 | |
|     in a list, sorted by similarity score, most similar first.
 | |
| 
 | |
|     >>> get_close_matches("appel", ["ape", "apple", "peach", "puppy"])
 | |
|     ['apple', 'ape']
 | |
|     >>> import keyword as _keyword
 | |
|     >>> get_close_matches("wheel", _keyword.kwlist)
 | |
|     ['while']
 | |
|     >>> get_close_matches("apple", _keyword.kwlist)
 | |
|     []
 | |
|     >>> get_close_matches("accept", _keyword.kwlist)
 | |
|     ['except']
 | |
|     """
 | |
| 
 | |
|     if not n >  0:
 | |
|         raise ValueError("n must be > 0: " + `n`)
 | |
|     if not 0.0 <= cutoff <= 1.0:
 | |
|         raise ValueError("cutoff must be in [0.0, 1.0]: " + `cutoff`)
 | |
|     result = []
 | |
|     s = SequenceMatcher()
 | |
|     s.set_seq2(word)
 | |
|     for x in possibilities:
 | |
|         s.set_seq1(x)
 | |
|         if s.real_quick_ratio() >= cutoff and \
 | |
|            s.quick_ratio() >= cutoff and \
 | |
|            s.ratio() >= cutoff:
 | |
|             result.append((s.ratio(), x))
 | |
|     # Sort by score.
 | |
|     result.sort()
 | |
|     # Retain only the best n.
 | |
|     result = result[-n:]
 | |
|     # Move best-scorer to head of list.
 | |
|     result.reverse()
 | |
|     # Strip scores.
 | |
|     return [x for score, x in result]
 | |
| 
 | |
| 
 | |
| def _count_leading(line, ch):
 | |
|     """
 | |
|     Return number of `ch` characters at the start of `line`.
 | |
| 
 | |
|     Example:
 | |
| 
 | |
|     >>> _count_leading('   abc', ' ')
 | |
|     3
 | |
|     """
 | |
| 
 | |
|     i, n = 0, len(line)
 | |
|     while i < n and line[i] == ch:
 | |
|         i += 1
 | |
|     return i
 | |
| 
 | |
| class Differ:
 | |
|     r"""
 | |
|     Differ is a class for comparing sequences of lines of text, and
 | |
|     producing human-readable differences or deltas.  Differ uses
 | |
|     SequenceMatcher both to compare sequences of lines, and to compare
 | |
|     sequences of characters within similar (near-matching) lines.
 | |
| 
 | |
|     Each line of a Differ delta begins with a two-letter code:
 | |
| 
 | |
|         '- '    line unique to sequence 1
 | |
|         '+ '    line unique to sequence 2
 | |
|         '  '    line common to both sequences
 | |
|         '? '    line not present in either input sequence
 | |
| 
 | |
|     Lines beginning with '? ' attempt to guide the eye to intraline
 | |
|     differences, and were not present in either input sequence.  These lines
 | |
|     can be confusing if the sequences contain tab characters.
 | |
| 
 | |
|     Note that Differ 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.
 | |
| 
 | |
|     Example: Comparing two texts.
 | |
| 
 | |
|     First we set up the texts, sequences of individual single-line strings
 | |
|     ending with newlines (such sequences can also be obtained from the
 | |
|     `readlines()` method of file-like objects):
 | |
| 
 | |
|     >>> text1 = '''  1. Beautiful is better than ugly.
 | |
|     ...   2. Explicit is better than implicit.
 | |
|     ...   3. Simple is better than complex.
 | |
|     ...   4. Complex is better than complicated.
 | |
|     ... '''.splitlines(1)
 | |
|     >>> len(text1)
 | |
|     4
 | |
|     >>> text1[0][-1]
 | |
|     '\n'
 | |
|     >>> text2 = '''  1. Beautiful is better than ugly.
 | |
|     ...   3.   Simple is better than complex.
 | |
|     ...   4. Complicated is better than complex.
 | |
|     ...   5. Flat is better than nested.
 | |
|     ... '''.splitlines(1)
 | |
| 
 | |
|     Next we instantiate a Differ object:
 | |
| 
 | |
|     >>> d = Differ()
 | |
| 
 | |
|     Note that when instantiating a Differ object we may pass functions to
 | |
|     filter out line and character 'junk'.  See Differ.__init__ for details.
 | |
| 
 | |
|     Finally, we compare the two:
 | |
| 
 | |
|     >>> result = list(d.compare(text1, text2))
 | |
| 
 | |
|     'result' is a list of strings, so let's pretty-print it:
 | |
| 
 | |
|     >>> from pprint import pprint as _pprint
 | |
|     >>> _pprint(result)
 | |
|     ['    1. Beautiful is better than ugly.\n',
 | |
|      '-   2. Explicit is better than implicit.\n',
 | |
|      '-   3. Simple is better than complex.\n',
 | |
|      '+   3.   Simple is better than complex.\n',
 | |
|      '?     ++\n',
 | |
|      '-   4. Complex is better than complicated.\n',
 | |
|      '?            ^                     ---- ^\n',
 | |
|      '+   4. Complicated is better than complex.\n',
 | |
|      '?           ++++ ^                      ^\n',
 | |
|      '+   5. Flat is better than nested.\n']
 | |
| 
 | |
|     As a single multi-line string it looks like this:
 | |
| 
 | |
|     >>> print ''.join(result),
 | |
|         1. Beautiful is better than ugly.
 | |
|     -   2. Explicit is better than implicit.
 | |
|     -   3. Simple is better than complex.
 | |
|     +   3.   Simple is better than complex.
 | |
|     ?     ++
 | |
|     -   4. Complex is better than complicated.
 | |
|     ?            ^                     ---- ^
 | |
|     +   4. Complicated is better than complex.
 | |
|     ?           ++++ ^                      ^
 | |
|     +   5. Flat is better than nested.
 | |
| 
 | |
|     Methods:
 | |
| 
 | |
|     __init__(linejunk=None, charjunk=None)
 | |
|         Construct a text differencer, with optional filters.
 | |
| 
 | |
|     compare(a, b)
 | |
|         Compare two sequences of lines; generate the resulting delta.
 | |
|     """
 | |
| 
 | |
|     def __init__(self, linejunk=None, charjunk=None):
 | |
|         """
 | |
|         Construct a text differencer, with optional filters.
 | |
| 
 | |
|         The two optional keyword parameters are for filter functions:
 | |
| 
 | |
|         - `linejunk`: A function that should accept a single string argument,
 | |
|           and return true iff the string is junk. The module-level function
 | |
|           `IS_LINE_JUNK` may be used to filter out lines without visible
 | |
|           characters, except for at most one splat ('#').  It is recommended
 | |
|           to leave linejunk None; as of Python 2.3, the underlying
 | |
|           SequenceMatcher class has grown an adaptive notion of "noise" lines
 | |
|           that's better than any static definition the author has ever been
 | |
|           able to craft.
 | |
| 
 | |
|         - `charjunk`: A function that should accept a string of length 1. The
 | |
|           module-level function `IS_CHARACTER_JUNK` may be used to filter out
 | |
|           whitespace characters (a blank or tab; **note**: bad idea to include
 | |
|           newline in this!).  Use of IS_CHARACTER_JUNK is recommended.
 | |
|         """
 | |
| 
 | |
|         self.linejunk = linejunk
 | |
|         self.charjunk = charjunk
 | |
| 
 | |
|     def compare(self, a, b):
 | |
|         r"""
 | |
|         Compare two sequences of lines; generate the resulting delta.
 | |
| 
 | |
|         Each sequence must contain individual single-line strings ending with
 | |
|         newlines. Such sequences can be obtained from the `readlines()` method
 | |
|         of file-like objects.  The delta generated also consists of newline-
 | |
|         terminated strings, ready to be printed as-is via the writeline()
 | |
|         method of a file-like object.
 | |
| 
 | |
|         Example:
 | |
| 
 | |
|         >>> print ''.join(Differ().compare('one\ntwo\nthree\n'.splitlines(1),
 | |
|         ...                                'ore\ntree\nemu\n'.splitlines(1))),
 | |
|         - one
 | |
|         ?  ^
 | |
|         + ore
 | |
|         ?  ^
 | |
|         - two
 | |
|         - three
 | |
|         ?  -
 | |
|         + tree
 | |
|         + emu
 | |
|         """
 | |
| 
 | |
|         cruncher = SequenceMatcher(self.linejunk, a, b)
 | |
|         for tag, alo, ahi, blo, bhi in cruncher.get_opcodes():
 | |
|             if tag == 'replace':
 | |
|                 g = self._fancy_replace(a, alo, ahi, b, blo, bhi)
 | |
|             elif tag == 'delete':
 | |
|                 g = self._dump('-', a, alo, ahi)
 | |
|             elif tag == 'insert':
 | |
|                 g = self._dump('+', b, blo, bhi)
 | |
|             elif tag == 'equal':
 | |
|                 g = self._dump(' ', a, alo, ahi)
 | |
|             else:
 | |
|                 raise ValueError, 'unknown tag ' + `tag`
 | |
| 
 | |
|             for line in g:
 | |
|                 yield line
 | |
| 
 | |
|     def _dump(self, tag, x, lo, hi):
 | |
|         """Generate comparison results for a same-tagged range."""
 | |
|         for i in xrange(lo, hi):
 | |
|             yield '%s %s' % (tag, x[i])
 | |
| 
 | |
|     def _plain_replace(self, 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:
 | |
|             first  = self._dump('+', b, blo, bhi)
 | |
|             second = self._dump('-', a, alo, ahi)
 | |
|         else:
 | |
|             first  = self._dump('-', a, alo, ahi)
 | |
|             second = self._dump('+', b, blo, bhi)
 | |
| 
 | |
|         for g in first, second:
 | |
|             for line in g:
 | |
|                 yield line
 | |
| 
 | |
|     def _fancy_replace(self, a, alo, ahi, b, blo, bhi):
 | |
|         r"""
 | |
|         When replacing one block of lines with another, search 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.
 | |
| 
 | |
|         Example:
 | |
| 
 | |
|         >>> d = Differ()
 | |
|         >>> d._fancy_replace(['abcDefghiJkl\n'], 0, 1, ['abcdefGhijkl\n'], 0, 1)
 | |
|         >>> print ''.join(d.results),
 | |
|         - abcDefghiJkl
 | |
|         ?    ^  ^  ^
 | |
|         + abcdefGhijkl
 | |
|         ?    ^  ^  ^
 | |
|         """
 | |
| 
 | |
|         # 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(self.charjunk)
 | |
|         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
 | |
|                 for line in self._plain_replace(a, alo, ahi, b, blo, bhi):
 | |
|                     yield line
 | |
|                 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
 | |
| 
 | |
|         # pump out diffs from before the synch point
 | |
|         for line in self._fancy_helper(a, alo, best_i, b, blo, best_j):
 | |
|             yield line
 | |
| 
 | |
|         # do intraline marking on the synch pair
 | |
|         aelt, belt = a[best_i], b[best_j]
 | |
|         if eqi is None:
 | |
|             # pump out a '-', '?', '+', '?' quad 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 += '^' * la
 | |
|                     btags += '^' * lb
 | |
|                 elif tag == 'delete':
 | |
|                     atags += '-' * la
 | |
|                 elif tag == 'insert':
 | |
|                     btags += '+' * lb
 | |
|                 elif tag == 'equal':
 | |
|                     atags += ' ' * la
 | |
|                     btags += ' ' * lb
 | |
|                 else:
 | |
|                     raise ValueError, 'unknown tag ' + `tag`
 | |
|             for line in self._qformat(aelt, belt, atags, btags):
 | |
|                 yield line
 | |
|         else:
 | |
|             # the synch pair is identical
 | |
|             yield '  ' + aelt
 | |
| 
 | |
|         # pump out diffs from after the synch point
 | |
|         for line in self._fancy_helper(a, best_i+1, ahi, b, best_j+1, bhi):
 | |
|             yield line
 | |
| 
 | |
|     def _fancy_helper(self, a, alo, ahi, b, blo, bhi):
 | |
|         g = []
 | |
|         if alo < ahi:
 | |
|             if blo < bhi:
 | |
|                 g = self._fancy_replace(a, alo, ahi, b, blo, bhi)
 | |
|             else:
 | |
|                 g = self._dump('-', a, alo, ahi)
 | |
|         elif blo < bhi:
 | |
|             g = self._dump('+', b, blo, bhi)
 | |
| 
 | |
|         for line in g:
 | |
|             yield line
 | |
| 
 | |
|     def _qformat(self, aline, bline, atags, btags):
 | |
|         r"""
 | |
|         Format "?" output and deal with leading tabs.
 | |
| 
 | |
|         Example:
 | |
| 
 | |
|         >>> d = Differ()
 | |
|         >>> d._qformat('\tabcDefghiJkl\n', '\t\tabcdefGhijkl\n',
 | |
|         ...            '  ^ ^  ^      ', '+  ^ ^  ^      ')
 | |
|         >>> for line in d.results: print repr(line)
 | |
|         ...
 | |
|         '- \tabcDefghiJkl\n'
 | |
|         '? \t ^ ^  ^\n'
 | |
|         '+ \t\tabcdefGhijkl\n'
 | |
|         '? \t  ^ ^  ^\n'
 | |
|         """
 | |
| 
 | |
|         # Can hurt, but will probably help most of the time.
 | |
|         common = min(_count_leading(aline, "\t"),
 | |
|                      _count_leading(bline, "\t"))
 | |
|         common = min(common, _count_leading(atags[:common], " "))
 | |
|         atags = atags[common:].rstrip()
 | |
|         btags = btags[common:].rstrip()
 | |
| 
 | |
|         yield "- " + aline
 | |
|         if atags:
 | |
|             yield "? %s%s\n" % ("\t" * common, atags)
 | |
| 
 | |
|         yield "+ " + bline
 | |
|         if btags:
 | |
|             yield "? %s%s\n" % ("\t" * common, btags)
 | |
| 
 | |
| # With respect to junk, an earlier version 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 contiguous 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 " volatile"
 | |
| # was inserted after "private".  I can live with that <wink>.
 | |
| 
 | |
| import re
 | |
| 
 | |
| def IS_LINE_JUNK(line, pat=re.compile(r"\s*#?\s*$").match):
 | |
|     r"""
 | |
|     Return 1 for ignorable line: iff `line` is blank or contains a single '#'.
 | |
| 
 | |
|     Examples:
 | |
| 
 | |
|     >>> IS_LINE_JUNK('\n')
 | |
|     True
 | |
|     >>> IS_LINE_JUNK('  #   \n')
 | |
|     True
 | |
|     >>> IS_LINE_JUNK('hello\n')
 | |
|     False
 | |
|     """
 | |
| 
 | |
|     return pat(line) is not None
 | |
| 
 | |
| def IS_CHARACTER_JUNK(ch, ws=" \t"):
 | |
|     r"""
 | |
|     Return 1 for ignorable character: iff `ch` is a space or tab.
 | |
| 
 | |
|     Examples:
 | |
| 
 | |
|     >>> IS_CHARACTER_JUNK(' ')
 | |
|     True
 | |
|     >>> IS_CHARACTER_JUNK('\t')
 | |
|     True
 | |
|     >>> IS_CHARACTER_JUNK('\n')
 | |
|     False
 | |
|     >>> IS_CHARACTER_JUNK('x')
 | |
|     False
 | |
|     """
 | |
| 
 | |
|     return ch in ws
 | |
| 
 | |
| del re
 | |
| 
 | |
| def ndiff(a, b, linejunk=None, charjunk=IS_CHARACTER_JUNK):
 | |
|     r"""
 | |
|     Compare `a` and `b` (lists of strings); return a `Differ`-style delta.
 | |
| 
 | |
|     Optional keyword parameters `linejunk` and `charjunk` are for filter
 | |
|     functions (or None):
 | |
| 
 | |
|     - linejunk: A function that should accept a single string argument, and
 | |
|       return true iff the string is junk.  The default is None, and is
 | |
|       recommended; as of Python 2.3, an adaptive notion of "noise" lines is
 | |
|       used that does a good job on its own.
 | |
| 
 | |
|     - charjunk: A function that should accept a string of length 1. The
 | |
|       default is module-level function IS_CHARACTER_JUNK, which filters out
 | |
|       whitespace characters (a blank or tab; note: bad idea to include newline
 | |
|       in this!).
 | |
| 
 | |
|     Tools/scripts/ndiff.py is a command-line front-end to this function.
 | |
| 
 | |
|     Example:
 | |
| 
 | |
|     >>> diff = ndiff('one\ntwo\nthree\n'.splitlines(1),
 | |
|     ...              'ore\ntree\nemu\n'.splitlines(1))
 | |
|     >>> print ''.join(diff),
 | |
|     - one
 | |
|     ?  ^
 | |
|     + ore
 | |
|     ?  ^
 | |
|     - two
 | |
|     - three
 | |
|     ?  -
 | |
|     + tree
 | |
|     + emu
 | |
|     """
 | |
|     return Differ(linejunk, charjunk).compare(a, b)
 | |
| 
 | |
| def restore(delta, which):
 | |
|     r"""
 | |
|     Generate one of the two sequences that generated a delta.
 | |
| 
 | |
|     Given a `delta` produced by `Differ.compare()` or `ndiff()`, extract
 | |
|     lines originating from file 1 or 2 (parameter `which`), stripping off line
 | |
|     prefixes.
 | |
| 
 | |
|     Examples:
 | |
| 
 | |
|     >>> diff = ndiff('one\ntwo\nthree\n'.splitlines(1),
 | |
|     ...              'ore\ntree\nemu\n'.splitlines(1))
 | |
|     >>> diff = list(diff)
 | |
|     >>> print ''.join(restore(diff, 1)),
 | |
|     one
 | |
|     two
 | |
|     three
 | |
|     >>> print ''.join(restore(diff, 2)),
 | |
|     ore
 | |
|     tree
 | |
|     emu
 | |
|     """
 | |
|     try:
 | |
|         tag = {1: "- ", 2: "+ "}[int(which)]
 | |
|     except KeyError:
 | |
|         raise ValueError, ('unknown delta choice (must be 1 or 2): %r'
 | |
|                            % which)
 | |
|     prefixes = ("  ", tag)
 | |
|     for line in delta:
 | |
|         if line[:2] in prefixes:
 | |
|             yield line[2:]
 | |
| 
 | |
| def _test():
 | |
|     import doctest, difflib
 | |
|     return doctest.testmod(difflib)
 | |
| 
 | |
| if __name__ == "__main__":
 | |
|     _test()
 | 
