mirror of
https://github.com/SickGear/SickGear.git
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e56303798c
Initial SickGear for Python 3.
318 lines
9.8 KiB
Python
318 lines
9.8 KiB
Python
#!/usr/bin/env python2
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# -*- coding: utf-8 -*-
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#
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# GuessIt - A library for guessing information from filenames
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# Copyright (c) 2011 Nicolas Wack <wackou@gmail.com>
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#
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# GuessIt is free software; you can redistribute it and/or modify it under
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# the terms of the Lesser GNU General Public License as published by
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# the Free Software Foundation; either version 3 of the License, or
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# (at your option) any later version.
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#
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# GuessIt is distributed in the hope that it will be useful,
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# but WITHOUT ANY WARRANTY; without even the implied warranty of
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# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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# Lesser GNU General Public License for more details.
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#
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# You should have received a copy of the Lesser GNU General Public License
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# along with this program. If not, see <http://www.gnu.org/licenses/>.
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#
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from __future__ import unicode_literals
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from guessit import UnicodeMixin, s, u, base_text_type
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from guessit.language import Language
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from guessit.country import Country
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import json
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import datetime
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import logging
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log = logging.getLogger(__name__)
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class Guess(UnicodeMixin, dict):
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"""A Guess is a dictionary which has an associated confidence for each of
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its values.
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As it is a subclass of dict, you can use it everywhere you expect a
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simple dict."""
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def __init__(self, *args, **kwargs):
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try:
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confidence = kwargs.pop('confidence')
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except KeyError:
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confidence = 0
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dict.__init__(self, *args, **kwargs)
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self._confidence = {}
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for prop in self:
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self._confidence[prop] = confidence
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def to_dict(self):
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data = dict(self)
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for prop, value in data.items():
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if isinstance(value, datetime.date):
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data[prop] = value.isoformat()
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elif isinstance(value, (Language, Country, base_text_type)):
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data[prop] = u(value)
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elif isinstance(value, list):
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data[prop] = [u(x) for x in value]
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return data
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def nice_string(self):
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data = self.to_dict()
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parts = json.dumps(data, indent=4).split('\n')
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for i, p in enumerate(parts):
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if p[:5] != ' "':
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continue
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prop = p.split('"')[1]
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parts[i] = (' [%.2f] "' % self.confidence(prop)) + p[5:]
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return '\n'.join(parts)
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def __unicode__(self):
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return u(self.to_dict())
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def confidence(self, prop):
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return self._confidence.get(prop, -1)
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def set(self, prop, value, confidence=None):
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self[prop] = value
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if confidence is not None:
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self._confidence[prop] = confidence
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def set_confidence(self, prop, value):
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self._confidence[prop] = value
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def update(self, other, confidence=None):
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dict.update(self, other)
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if isinstance(other, Guess):
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for prop in other:
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self._confidence[prop] = other.confidence(prop)
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if confidence is not None:
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for prop in other:
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self._confidence[prop] = confidence
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def update_highest_confidence(self, other):
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"""Update this guess with the values from the given one. In case
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there is property present in both, only the one with the highest one
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is kept."""
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if not isinstance(other, Guess):
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raise ValueError('Can only call this function on Guess instances')
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for prop in other:
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if prop in self and self.confidence(prop) >= other.confidence(prop):
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continue
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self[prop] = other[prop]
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self._confidence[prop] = other.confidence(prop)
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def choose_int(g1, g2):
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"""Function used by merge_similar_guesses to choose between 2 possible
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properties when they are integers."""
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v1, c1 = g1 # value, confidence
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v2, c2 = g2
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if (v1 == v2):
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return (v1, 1 - (1 - c1) * (1 - c2))
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else:
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if c1 > c2:
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return (v1, c1 - c2)
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else:
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return (v2, c2 - c1)
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def choose_string(g1, g2):
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"""Function used by merge_similar_guesses to choose between 2 possible
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properties when they are strings.
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If the 2 strings are similar, or one is contained in the other, the latter is returned
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with an increased confidence.
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If the 2 strings are dissimilar, the one with the higher confidence is returned, with
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a weaker confidence.
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Note that here, 'similar' means that 2 strings are either equal, or that they
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differ very little, such as one string being the other one with the 'the' word
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prepended to it.
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>>> s(choose_string(('Hello', 0.75), ('World', 0.5)))
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('Hello', 0.25)
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>>> s(choose_string(('Hello', 0.5), ('hello', 0.5)))
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('Hello', 0.75)
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>>> s(choose_string(('Hello', 0.4), ('Hello World', 0.4)))
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('Hello', 0.64)
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>>> s(choose_string(('simpsons', 0.5), ('The Simpsons', 0.5)))
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('The Simpsons', 0.75)
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"""
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v1, c1 = g1 # value, confidence
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v2, c2 = g2
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if not v1:
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return g2
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elif not v2:
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return g1
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v1, v2 = v1.strip(), v2.strip()
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v1l, v2l = v1.lower(), v2.lower()
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combined_prob = 1 - (1 - c1) * (1 - c2)
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if v1l == v2l:
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return (v1, combined_prob)
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# check for common patterns
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elif v1l == 'the ' + v2l:
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return (v1, combined_prob)
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elif v2l == 'the ' + v1l:
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return (v2, combined_prob)
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# if one string is contained in the other, return the shortest one
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elif v2l in v1l:
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return (v2, combined_prob)
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elif v1l in v2l:
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return (v1, combined_prob)
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# in case of conflict, return the one with highest confidence
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else:
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if c1 > c2:
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return (v1, c1 - c2)
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else:
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return (v2, c2 - c1)
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def _merge_similar_guesses_nocheck(guesses, prop, choose):
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"""Take a list of guesses and merge those which have the same properties,
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increasing or decreasing the confidence depending on whether their values
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are similar.
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This function assumes there are at least 2 valid guesses."""
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similar = [guess for guess in guesses if prop in guess]
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g1, g2 = similar[0], similar[1]
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other_props = set(g1) & set(g2) - set([prop])
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if other_props:
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log.debug('guess 1: %s' % g1)
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log.debug('guess 2: %s' % g2)
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for prop in other_props:
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if g1[prop] != g2[prop]:
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log.warning('both guesses to be merged have more than one '
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'different property in common, bailing out...')
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return
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# merge all props of s2 into s1, updating the confidence for the
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# considered property
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v1, v2 = g1[prop], g2[prop]
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c1, c2 = g1.confidence(prop), g2.confidence(prop)
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new_value, new_confidence = choose((v1, c1), (v2, c2))
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if new_confidence >= c1:
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msg = "Updating matching property '%s' with confidence %.2f"
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else:
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msg = "Updating non-matching property '%s' with confidence %.2f"
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log.debug(msg % (prop, new_confidence))
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g2[prop] = new_value
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g2.set_confidence(prop, new_confidence)
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g1.update(g2)
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guesses.remove(g2)
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def merge_similar_guesses(guesses, prop, choose):
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"""Take a list of guesses and merge those which have the same properties,
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increasing or decreasing the confidence depending on whether their values
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are similar."""
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similar = [guess for guess in guesses if prop in guess]
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if len(similar) < 2:
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# nothing to merge
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return
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if len(similar) == 2:
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_merge_similar_guesses_nocheck(guesses, prop, choose)
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if len(similar) > 2:
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log.debug('complex merge, trying our best...')
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before = len(guesses)
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_merge_similar_guesses_nocheck(guesses, prop, choose)
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after = len(guesses)
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if after < before:
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# recurse only when the previous call actually did something,
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# otherwise we end up in an infinite loop
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merge_similar_guesses(guesses, prop, choose)
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def merge_all(guesses, append=None):
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"""Merge all the guesses in a single result, remove very unlikely values,
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and return it.
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You can specify a list of properties that should be appended into a list
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instead of being merged.
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>>> s(merge_all([ Guess({'season': 2}, confidence=0.6),
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... Guess({'episodeNumber': 13}, confidence=0.8) ]))
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{'season': 2, 'episodeNumber': 13}
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>>> s(merge_all([ Guess({'episodeNumber': 27}, confidence=0.02),
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... Guess({'season': 1}, confidence=0.2) ]))
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{'season': 1}
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>>> s(merge_all([ Guess({'other': 'PROPER'}, confidence=0.8),
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... Guess({'releaseGroup': '2HD'}, confidence=0.8) ],
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... append=['other']))
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{'releaseGroup': '2HD', 'other': ['PROPER']}
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"""
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if not guesses:
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return Guess()
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result = guesses[0]
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if append is None:
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append = []
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for g in guesses[1:]:
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# first append our appendable properties
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for prop in append:
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if prop in g:
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result.set(prop, result.get(prop, []) + [g[prop]],
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# TODO: what to do with confidence here? maybe an
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# arithmetic mean...
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confidence=g.confidence(prop))
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del g[prop]
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# then merge the remaining ones
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dups = set(result) & set(g)
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if dups:
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log.warning('duplicate properties %s in merged result...' % [ (result[p], g[p]) for p in dups] )
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result.update_highest_confidence(g)
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# delete very unlikely values
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for p in list(result.keys()):
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if result.confidence(p) < 0.05:
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del result[p]
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# make sure our appendable properties contain unique values
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for prop in append:
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try:
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value = result[prop]
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if isinstance(value, list):
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result[prop] = list(set(value))
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else:
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result[prop] = [ value ]
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except KeyError:
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pass
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return result
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