mirror of
https://github.com/explosion/spaCy.git
synced 2024-12-27 10:26:35 +03:00
341 lines
11 KiB
Python
341 lines
11 KiB
Python
#!/usr/bin/env python
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from __future__ import unicode_literals
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from __future__ import print_function
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import sys
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import falcon
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import json
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from os import path
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from collections import defaultdict
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import pprint
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import numpy
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import spacy.en
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from spacy.attrs import ORTH, SPACY, TAG, POS, ENT_IOB, ENT_TYPE
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from spacy.parts_of_speech import NAMES as UNIV_POS_NAMES
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try:
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unicode
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except NameError:
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unicode = str
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NLU = spacy.en.English()
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def merge_entities(doc):
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ents = [(e[0].idx, e[len(e)-1].idx + len(e[len(e)-1]), e.label_, e.text)
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for e in doc.ents if len(e) >= 2]
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for start, end, label, lemma in ents:
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merged = doc.merge(start, end, label, text, label)
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assert merged != None
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def merge_nps(doc):
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nps = [(np[0].idx, np[-1].idx + len(np[-1]), np.root.tag_, np.text)
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for np in doc.noun_chunks if len(np) >= 2]
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for start, end, ent_type, lemma in nps:
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doc.merge(start, end, u'NP', lemma, ent_type)
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def merge_punct(tokens):
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# Merge punctuation onto its head
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collect = False
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start = None
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merges = []
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for word in tokens:
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if word.whitespace_:
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if collect:
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span = tokens[start:word.i+1]
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if len(span) >= 2:
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merges.append((
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span[0].idx,
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span[-1].idx + len(span[-1]),
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span.root.tag_,
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span.root.lemma_,
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span.root.ent_type_))
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collect = False
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start = None
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elif not collect:
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collect = True
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start = word.i
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if collect:
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span = tokens[start:len(tokens)]
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merges.append((span[0].idx, span[-1].idx + len(span[-1]),
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span.root.tag_, span.root.lemma_, span.root.ent_type_))
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for merge in merges:
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tokens.merge(*merge)
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def get_actions(parse_state, n_actions):
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actions = []
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queue = list(sorted(parse_state.queue))
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stack = list(sorted(parse_state.stack))
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stack = []
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actions.append({'label': 'shift', 'key': 'S', 'binding': 38,
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'is_valid': NLU.parser.moves.is_valid(parse_state, 'S')})
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actions.append({'label': 'left', 'key': 'L', 'binding': 37,
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'is_valid': NLU.parser.moves.is_valid(parse_state, 'L-det')})
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actions.append({'label': 'predict', 'key': '_', 'binding': 32,
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'is_valid': bool(parse_state.queue or parse_state.stack)})
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actions.append({'label': 'right', 'key': 'R', 'binding': 39,
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'is_valid': NLU.parser.moves.is_valid(parse_state, 'R-dobj')})
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actions.append({'label': 'undo', 'key': '-', 'binding': 8,
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'is_valid': n_actions != 0})
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actions.append({'label': 'reduce', 'key': 'D', 'binding': 40,
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'is_valid': NLU.parser.moves.is_valid(parse_state, 'D')})
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return actions
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class Model(object):
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def to_json(self):
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return {name: _as_json(value) for name, value in self.__dict__.items()
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if not name.startswith('_')}
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def _as_json(value):
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if hasattr(value, 'to_json'):
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return value.to_json()
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elif isinstance(value, list):
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return [_as_json(v) for v in value]
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elif isinstance(value, set):
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return {key: True for key in value}
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else:
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return value
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def _parse_history(history):
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if history and history.endswith(','):
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history = history[:-1]
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history = history.strip().split(',') if history else tuple()
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new_hist = []
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history_length = len(history)
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for action in history:
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if action == '-':
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if new_hist:
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new_hist.pop()
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else:
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new_hist.append(action)
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return new_hist, history_length
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def apply_edits(tokens, word_edits, tag_edits):
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new_words = []
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attrs = (POS, ENT_TYPE, ENT_IOB)
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new_analysis = numpy.zeros(shape=(len(tokens), len(attrs)), dtype=numpy.int32)
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for word in tokens:
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key = str(word.i)
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new_words.append(word_edits.get(key, word.orth_))
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tag = tag_edits.get(key, word.pos_)
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if tag in UNIV_POS_NAMES:
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new_analysis[word.i, 0] = UNIV_POS_NAMES[tag]
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# Set ent_type=0 and IOB="O"
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new_analysis[word.i, 1] = 0
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new_analysis[word.i, 2] = 2
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else:
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new_analysis[word.i, 0] = word.pos
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new_analysis[word.i, 1] = NLU.vocab.strings[tag]
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new_analysis[word.i, 2] = 3
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doc = NLU.tokenizer.tokens_from_list(new_words)
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doc.from_array(attrs, new_analysis)
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NLU.parser(doc)
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return doc
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class Parse(Model):
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def __init__(self, doc, states, actions, **kwargs):
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word_edits = kwargs.get('words', {})
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tag_edits = kwargs.get('tags', {})
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if word_edits or tag_edits:
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doc = apply_edits(doc, word_edits, tag_edits)
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notes = kwargs.get('notes', {})
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self.actions = actions
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self.words = [Word(w, w.i in word_edits, w.i in tag_edits) for w in doc]
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self.states = states
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self.notes = notes
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for word in doc:
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print(word.orth_, word.head.orth_)
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@classmethod
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def from_text(cls, text, **kwargs):
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tokens = NLU(text)
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#merge_entities(tokens)
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merge_nps(tokens)
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#merge_punct(tokens)
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return cls(tokens, [State.from_doc(tokens)], [], **kwargs)
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@classmethod
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def from_history(cls, text, history, **kwargs):
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if not isinstance(text, unicode):
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text = text.decode('utf8')
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text = text.replace('-SLASH-', '/')
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history, history_length = _parse_history(history)
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tokens = NLU.tokenizer(text)
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NLU.tagger(tokens)
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NLU.matcher(tokens)
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with NLU.parser.step_through(tokens) as state:
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for action in history:
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state.transition(action)
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NLU.entity(tokens)
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actions = get_actions(state.stcls, len(history))
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return Parse(tokens, [State(state.heads, state.deps, state.stack, state.queue)],
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actions, **kwargs)
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@classmethod
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def with_history(cls, text):
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tokens = NLU.tokenizer(text)
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NLU.tagger(tokens)
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NLU.matcher(tokens)
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with NLU.parser.step_through(tokens) as state:
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states = []
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while not state.is_final:
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action = state.predict()
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state.transition(action)
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states.append(State(state.heads, state.deps, state.stack, state.queue))
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actions = [
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{'label': 'prev', 'key': 'P', 'binding': 37, 'is_valid': True},
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{'label': 'next', 'key': 'N', 'binding': 39, 'is_valid': True}
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]
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return Parse(state.doc, states, actions)
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class Word(Model):
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def __init__(self, token, is_w_edit=False, is_t_edit=False):
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self.word = token.orth_
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self.tag = token.pos_
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self.tag = token.pos_ if not token.ent_type_ else token.ent_type_
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self.is_entity = token.ent_iob in (1, 3)
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self.is_w_edit = is_w_edit
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self.is_t_edit = is_t_edit
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self.prob = token.prob
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class State(Model):
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def __init__(self, heads, deps, stack, queue):
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Model.__init__(self)
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queue = [w for w in queue if w >= 0]
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self.focus = min(queue) if queue else -1
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self.is_final = bool(not stack and not queue)
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self.stack = set(stack)
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self.arrows = self._get_arrows(heads, deps)
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@classmethod
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def from_doc(cls, doc):
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return cls([w.head.i for w in doc], [w.dep_ for w in doc], [], [])
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def _get_arrows(self, heads, deps):
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arcs = defaultdict(dict)
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for i, (head, dep) in enumerate(zip(heads, deps)):
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if i < head:
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arcs[head - i][i] = Arrow(i, head, dep)
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elif i > head:
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arcs[i - head][head] = Arrow(i, head, dep)
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output = []
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for level in range(1, len(heads)):
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level_arcs = []
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for i in range(len(heads) - level):
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level_arcs.append(arcs[level].get(i))
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output.append(level_arcs)
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while output and all(arc is None for arc in output[-1]):
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output.pop()
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return output
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class Arrow(Model):
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def __init__(self, word, head, label):
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self.dir = 'left' if head > word else 'right'
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self.label = label
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class Endpoint(object):
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def set_header(self, resp):
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resp.content_type = 'text/string'
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resp.append_header('Access-Control-Allow-Origin', "*")
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resp.status = falcon.HTTP_200
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def set_body(self, resp, parse):
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resp.body = json.dumps(parse.to_json(), indent=4)
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def on_get(self, req, resp, text):
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if not isinstance(text, unicode):
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text = text.decode('utf8')
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self.set_body(resp, self.get_parse(text))
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self.set_header(resp)
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def on_post(self, req, resp):
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try:
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body_bytes = req.stream.read()
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json_data = json.loads(body_bytes.decode('utf8'))
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text = json_data['text']
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if not isinstance(text, unicode):
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text = text.decode('utf8')
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self.set_body(resp, self.get_parse(text))
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self.set_header(resp)
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except:
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pass
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class ParseEP(Endpoint):
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def get_parse(self, text, **kwargs):
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return Parse.from_text(text, **kwargs)
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class StepsEP(Endpoint):
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def get_parse(self, text):
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print('Step=', repr(text))
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return Parse.with_history(text)
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class ManualEP(Endpoint):
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def get_parse(self, text, **kwargs):
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print('Manual=', repr(text))
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if '/' in text:
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text, actions = text.rsplit('/', 1)
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else:
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actions = ''
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return Parse.from_history(text, actions, **kwargs)
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def on_get(self, req, resp, text, actions=''):
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if not isinstance(text, unicode):
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text = text.decode('utf8')
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self.set_body(resp, self.get_parse(text + '/' + actions))
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self.set_header(resp)
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def on_post(self, req, resp):
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self.set_header(resp)
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body_bytes = req.stream.read()
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json_data = json.loads(body_bytes.decode('utf8'))
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print(json_data)
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params = json_data.get('params', {})
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self.set_body(resp, self.get_parse(json_data['text'], **params))
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app = falcon.API()
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remote_man = ManualEP()
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remote_parse = ParseEP()
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remote_steps = StepsEP()
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app.add_route('/api/displacy/parse/', remote_parse)
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app.add_route('/api/displacy/parse/{text}/', remote_parse)
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app.add_route('/api/displacy/steps/', remote_steps)
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app.add_route('/api/displacy/steps/{text}/', remote_steps)
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app.add_route('/api/displacy/manual/', remote_man)
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app.add_route('/api/displacy/manual/{text}/', remote_man)
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app.add_route('/api/displacy/manual/{text}/{actions}', remote_man)
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if __name__ == '__main__':
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text, actions = open(sys.argv[1]).read().strip().split('\n')
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parse = Parse.from_text(text)
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pprint.pprint(parse.to_json())
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