mirror of
https://github.com/SickGear/SickGear.git
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07d72e05f1
Change remove search results filtering from tv info source. Change suppress startup warnings for Fuzzywuzzy and Cheetah libs. Change show name aliases get a score -1 to give the main names priority. Change replace findCertainShow with find_show_by_id for mapped multi-indexer. Change add Trakt info source search interface. Change directly send image after it's been cached. Fix loading CachedImages images with TVDB API v2 changes.
310 lines
12 KiB
Python
310 lines
12 KiB
Python
#!/usr/bin/env python
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# encoding: utf-8
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"""
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process.py
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Copyright (c) 2011 Adam Cohen
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Permission is hereby granted, free of charge, to any person obtaining
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a copy of this software and associated documentation files (the
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"Software"), to deal in the Software without restriction, including
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without limitation the rights to use, copy, modify, merge, publish,
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distribute, sublicense, and/or sell copies of the Software, and to
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permit persons to whom the Software is furnished to do so, subject to
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the following conditions:
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The above copyright notice and this permission notice shall be
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included in all copies or substantial portions of the Software.
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THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND,
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EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF
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MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND
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NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE
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LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION
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OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION
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WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.
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"""
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from . import fuzz
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from . import utils
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import heapq
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import logging
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from functools import partial
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default_scorer = fuzz.WRatio
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default_processor = utils.full_process
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def extractWithoutOrder(query, choices, processor=default_processor, scorer=default_scorer, score_cutoff=0):
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"""Select the best match in a list or dictionary of choices.
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Find best matches in a list or dictionary of choices, return a
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generator of tuples containing the match and its score. If a dictionary
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is used, also returns the key for each match.
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Arguments:
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query: An object representing the thing we want to find.
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choices: An iterable or dictionary-like object containing choices
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to be matched against the query. Dictionary arguments of
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{key: value} pairs will attempt to match the query against
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each value.
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processor: Optional function of the form f(a) -> b, where a is the query or
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individual choice and b is the choice to be used in matching.
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This can be used to match against, say, the first element of
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a list:
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lambda x: x[0]
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Defaults to fuzzywuzzy.utils.full_process().
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scorer: Optional function for scoring matches between the query and
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an individual processed choice. This should be a function
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of the form f(query, choice) -> int.
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By default, fuzz.WRatio() is used and expects both query and
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choice to be strings.
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score_cutoff: Optional argument for score threshold. No matches with
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a score less than this number will be returned. Defaults to 0.
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Returns:
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Generator of tuples containing the match and its score.
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If a list is used for choices, then the result will be 2-tuples.
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If a dictionary is used, then the result will be 3-tuples containing
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the key for each match.
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For example, searching for 'bird' in the dictionary
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{'bard': 'train', 'dog': 'man'}
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may return
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('train', 22, 'bard'), ('man', 0, 'dog')
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"""
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# Catch generators without lengths
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def no_process(x):
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return x
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try:
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if choices is None or len(choices) == 0:
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raise StopIteration
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except TypeError:
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pass
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# If the processor was removed by setting it to None
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# perfom a noop as it still needs to be a function
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if processor is None:
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processor = no_process
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# Run the processor on the input query.
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processed_query = processor(query)
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if len(processed_query) == 0:
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logging.warning(u"Applied processor reduces input query to empty string, "
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"all comparisons will have score 0. "
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"[Query: \'{0}\']".format(query))
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# Don't run full_process twice
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if scorer in [fuzz.WRatio, fuzz.QRatio,
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fuzz.token_set_ratio, fuzz.token_sort_ratio,
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fuzz.partial_token_set_ratio, fuzz.partial_token_sort_ratio,
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fuzz.UWRatio, fuzz.UQRatio] \
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and processor == utils.full_process:
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processor = no_process
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# Only process the query once instead of for every choice
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if scorer in [fuzz.UWRatio, fuzz.UQRatio]:
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pre_processor = partial(utils.full_process, force_ascii=False)
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scorer = partial(scorer, full_process=False)
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elif scorer in [fuzz.WRatio, fuzz.QRatio,
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fuzz.token_set_ratio, fuzz.token_sort_ratio,
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fuzz.partial_token_set_ratio, fuzz.partial_token_sort_ratio]:
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pre_processor = partial(utils.full_process, force_ascii=True)
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scorer = partial(scorer, full_process=False)
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else:
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pre_processor = no_process
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processed_query = pre_processor(processed_query)
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try:
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# See if choices is a dictionary-like object.
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for key, choice in choices.items():
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processed = pre_processor(processor(choice))
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score = scorer(processed_query, processed)
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if score >= score_cutoff:
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yield (choice, score, key)
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except AttributeError:
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# It's a list; just iterate over it.
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for choice in choices:
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processed = pre_processor(processor(choice))
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score = scorer(processed_query, processed)
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if score >= score_cutoff:
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yield (choice, score)
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def extract(query, choices, processor=default_processor, scorer=default_scorer, limit=5):
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"""Select the best match in a list or dictionary of choices.
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Find best matches in a list or dictionary of choices, return a
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list of tuples containing the match and its score. If a dictionary
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is used, also returns the key for each match.
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Arguments:
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query: An object representing the thing we want to find.
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choices: An iterable or dictionary-like object containing choices
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to be matched against the query. Dictionary arguments of
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{key: value} pairs will attempt to match the query against
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each value.
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processor: Optional function of the form f(a) -> b, where a is the query or
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individual choice and b is the choice to be used in matching.
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This can be used to match against, say, the first element of
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a list:
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lambda x: x[0]
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Defaults to fuzzywuzzy.utils.full_process().
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scorer: Optional function for scoring matches between the query and
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an individual processed choice. This should be a function
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of the form f(query, choice) -> int.
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By default, fuzz.WRatio() is used and expects both query and
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choice to be strings.
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limit: Optional maximum for the number of elements returned. Defaults
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to 5.
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Returns:
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List of tuples containing the match and its score.
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If a list is used for choices, then the result will be 2-tuples.
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If a dictionary is used, then the result will be 3-tuples containing
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the key for each match.
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For example, searching for 'bird' in the dictionary
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{'bard': 'train', 'dog': 'man'}
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may return
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[('train', 22, 'bard'), ('man', 0, 'dog')]
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"""
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sl = extractWithoutOrder(query, choices, processor, scorer)
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return heapq.nlargest(limit, sl, key=lambda i: i[1]) if limit is not None else \
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sorted(sl, key=lambda i: i[1], reverse=True)
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def extractBests(query, choices, processor=default_processor, scorer=default_scorer, score_cutoff=0, limit=5):
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"""Get a list of the best matches to a collection of choices.
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Convenience function for getting the choices with best scores.
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Args:
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query: A string to match against
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choices: A list or dictionary of choices, suitable for use with
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extract().
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processor: Optional function for transforming choices before matching.
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See extract().
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scorer: Scoring function for extract().
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score_cutoff: Optional argument for score threshold. No matches with
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a score less than this number will be returned. Defaults to 0.
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limit: Optional maximum for the number of elements returned. Defaults
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to 5.
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Returns: A a list of (match, score) tuples.
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"""
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best_list = extractWithoutOrder(query, choices, processor, scorer, score_cutoff)
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return heapq.nlargest(limit, best_list, key=lambda i: i[1]) if limit is not None else \
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sorted(best_list, key=lambda i: i[1], reverse=True)
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def extractOne(query, choices, processor=default_processor, scorer=default_scorer, score_cutoff=0):
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"""Find the single best match above a score in a list of choices.
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This is a convenience method which returns the single best choice.
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See extract() for the full arguments list.
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Args:
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query: A string to match against
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choices: A list or dictionary of choices, suitable for use with
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extract().
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processor: Optional function for transforming choices before matching.
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See extract().
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scorer: Scoring function for extract().
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score_cutoff: Optional argument for score threshold. If the best
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match is found, but it is not greater than this number, then
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return None anyway ("not a good enough match"). Defaults to 0.
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Returns:
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A tuple containing a single match and its score, if a match
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was found that was above score_cutoff. Otherwise, returns None.
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"""
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best_list = extractWithoutOrder(query, choices, processor, scorer, score_cutoff)
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try:
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return max(best_list, key=lambda i: i[1])
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except ValueError:
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return None
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def dedupe(contains_dupes, threshold=70, scorer=fuzz.token_set_ratio):
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"""This convenience function takes a list of strings containing duplicates and uses fuzzy matching to identify
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and remove duplicates. Specifically, it uses the process.extract to identify duplicates that
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score greater than a user defined threshold. Then, it looks for the longest item in the duplicate list
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since we assume this item contains the most entity information and returns that. It breaks string
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length ties on an alphabetical sort.
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Note: as the threshold DECREASES the number of duplicates that are found INCREASES. This means that the
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returned deduplicated list will likely be shorter. Raise the threshold for fuzzy_dedupe to be less
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sensitive.
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Args:
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contains_dupes: A list of strings that we would like to dedupe.
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threshold: the numerical value (0,100) point at which we expect to find duplicates.
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Defaults to 70 out of 100
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scorer: Optional function for scoring matches between the query and
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an individual processed choice. This should be a function
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of the form f(query, choice) -> int.
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By default, fuzz.token_set_ratio() is used and expects both query and
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choice to be strings.
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Returns:
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A deduplicated list. For example:
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In: contains_dupes = ['Frodo Baggin', 'Frodo Baggins', 'F. Baggins', 'Samwise G.', 'Gandalf', 'Bilbo Baggins']
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In: fuzzy_dedupe(contains_dupes)
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Out: ['Frodo Baggins', 'Samwise G.', 'Bilbo Baggins', 'Gandalf']
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"""
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extractor = []
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# iterate over items in *contains_dupes*
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for item in contains_dupes:
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# return all duplicate matches found
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matches = extract(item, contains_dupes, limit=None, scorer=scorer)
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# filter matches based on the threshold
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filtered = [x for x in matches if x[1] > threshold]
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# if there is only 1 item in *filtered*, no duplicates were found so append to *extracted*
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if len(filtered) == 1:
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extractor.append(filtered[0][0])
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else:
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# alpha sort
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filtered = sorted(filtered, key=lambda x: x[0])
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# length sort
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filter_sort = sorted(filtered, key=lambda x: len(x[0]), reverse=True)
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# take first item as our 'canonical example'
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extractor.append(filter_sort[0][0])
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# uniquify *extractor* list
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keys = {}
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for e in extractor:
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keys[e] = 1
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extractor = keys.keys()
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# check that extractor differs from contain_dupes (e.g. duplicates were found)
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# if not, then return the original list
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if len(extractor) == len(contains_dupes):
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return contains_dupes
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else:
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return extractor
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