mirror of
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254 lines
9.4 KiB
Cython
254 lines
9.4 KiB
Cython
# cython: infer_types
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# cython: profile=False
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import warnings
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from typing import Dict, List, Optional, Tuple, Union
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import numpy
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from cython.operator cimport dereference as deref
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from libcpp.memory cimport shared_ptr
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from . import symbols
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from .errors import Warnings
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cdef class Morphology:
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"""Store the possible morphological analyses for a language, and index them
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by hash.
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To save space on each token, tokens only know the hash of their
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morphological analysis, so queries of morphological attributes are delegated
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to this class.
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"""
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FEATURE_SEP = "|"
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FIELD_SEP = "="
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VALUE_SEP = ","
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# not an empty string so we can distinguish unset morph from empty morph
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EMPTY_MORPH = symbols.NAMES[symbols._]
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def __init__(self, StringStore strings):
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self.strings = strings
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def __reduce__(self):
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tags = set([self.get(self.strings[s]) for s in self.strings])
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tags -= set([""])
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return (unpickle_morphology, (self.strings, sorted(tags)), None, None)
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cdef shared_ptr[MorphAnalysisC] _lookup_tag(self, hash_t tag_hash):
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match = self.tags.find(tag_hash)
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if match != self.tags.const_end():
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return deref(match).second
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else:
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return shared_ptr[MorphAnalysisC]()
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def _normalize_attr(self, attr_key : Union[int, str], attr_value : Union[int, str]) -> Optional[Tuple[str, Union[str, List[str]]]]:
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if isinstance(attr_key, (int, str)) and isinstance(attr_value, (int, str)):
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attr_key = self.strings.as_string(attr_key)
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attr_value = self.strings.as_string(attr_value)
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# Preserve multiple values as a list
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if self.VALUE_SEP in attr_value:
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values = attr_value.split(self.VALUE_SEP)
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values.sort()
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attr_value = values
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else:
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warnings.warn(Warnings.W100.format(feature={attr_key: attr_value}))
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return None
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return attr_key, attr_value
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def _str_to_normalized_feat_dict(self, feats: str) -> Dict[str, str]:
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if not feats or feats == self.EMPTY_MORPH:
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return {}
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out = []
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for feat in feats.split(self.FEATURE_SEP):
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field, values = feat.split(self.FIELD_SEP, 1)
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normalized_attr = self._normalize_attr(field, values)
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if normalized_attr is None:
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continue
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out.append((normalized_attr[0], normalized_attr[1]))
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out.sort(key=lambda x: x[0])
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return dict(out)
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def _dict_to_normalized_feat_dict(self, feats: Dict[Union[int, str], Union[int, str]]) -> Dict[str, str]:
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out = []
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for field, values in feats.items():
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normalized_attr = self._normalize_attr(field, values)
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if normalized_attr is None:
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continue
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out.append((normalized_attr[0], normalized_attr[1]))
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out.sort(key=lambda x: x[0])
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return dict(out)
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def _normalized_feat_dict_to_str(self, feats: Dict[str, str]) -> str:
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norm_feats_string = self.FEATURE_SEP.join([
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self.FIELD_SEP.join([field, self.VALUE_SEP.join(values) if isinstance(values, list) else values])
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for field, values in feats.items()
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])
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return norm_feats_string or self.EMPTY_MORPH
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cdef hash_t _add(self, features):
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"""Insert a morphological analysis in the morphology table, if not
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already present. The morphological analysis may be provided in the UD
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FEATS format as a string or in the tag map dict format.
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Returns the hash of the new analysis.
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"""
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cdef hash_t tag_hash = 0
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cdef shared_ptr[MorphAnalysisC] tag
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if isinstance(features, str):
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if features == "":
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features = self.EMPTY_MORPH
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tag_hash = self.strings[features]
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tag = self._lookup_tag(tag_hash)
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if tag:
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return deref(tag).key
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features = self._str_to_normalized_feat_dict(features)
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elif isinstance(features, dict):
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features = self._dict_to_normalized_feat_dict(features)
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else:
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warnings.warn(Warnings.W100.format(feature=features))
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features = {}
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# the hash key for the tag is either the hash of the normalized UFEATS
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# string or the hash of an empty placeholder
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norm_feats_string = self._normalized_feat_dict_to_str(features)
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tag_hash = self.strings.add(norm_feats_string)
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tag = self._lookup_tag(tag_hash)
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if tag:
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return deref(tag).key
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self._intern_morph_tag(tag_hash, features)
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return tag_hash
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cdef void _intern_morph_tag(self, hash_t tag_key, feats):
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# intified ("Field", "Field=Value") pairs where fields with multiple values have
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# been split into individual tuples, e.g.:
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# [("Field1", "Field1=Value1"), ("Field1", "Field1=Value2"),
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# ("Field2", "Field2=Value3")]
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field_feature_pairs = []
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# Feat dict is normalized at this point.
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for field, values in feats.items():
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field_key = self.strings.add(field)
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if isinstance(values, list):
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for value in values:
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value_key = self.strings.add(field + self.FIELD_SEP + value)
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field_feature_pairs.append((field_key, value_key))
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else:
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# We could box scalar values into a list and use a common
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# code path to generate features but that incurs a small
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# but measurable allocation/iteration overhead (as this
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# branch is taken often enough).
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value_key = self.strings.add(field + self.FIELD_SEP + values)
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field_feature_pairs.append((field_key, value_key))
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num_features = len(field_feature_pairs)
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cdef shared_ptr[MorphAnalysisC] tag = shared_ptr[MorphAnalysisC](new MorphAnalysisC())
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deref(tag).key = tag_key
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deref(tag).features.resize(num_features)
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for i in range(num_features):
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deref(tag).features[i].field = field_feature_pairs[i][0]
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deref(tag).features[i].value = field_feature_pairs[i][1]
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self.tags[tag_key] = tag
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cdef str get_morph_str(self, hash_t morph_key):
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cdef shared_ptr[MorphAnalysisC] tag = self._lookup_tag(morph_key)
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if not tag:
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return ""
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else:
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return self.strings[deref(tag).key]
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cdef shared_ptr[MorphAnalysisC] get_morph_c(self, hash_t morph_key):
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return self._lookup_tag(morph_key)
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cdef str _normalize_features(self, features):
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"""Create a normalized FEATS string from a features string or dict.
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features (Union[dict, str]): Features as dict or UFEATS string.
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RETURNS (str): Features as normalized UFEATS string.
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"""
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if isinstance(features, str):
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features = self._str_to_normalized_feat_dict(features)
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elif isinstance(features, dict):
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features = self._dict_to_normalized_feat_dict(features)
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else:
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warnings.warn(Warnings.W100.format(feature=features))
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features = {}
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return self._normalized_feat_dict_to_str(features)
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def add(self, features):
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return self._add(features)
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def get(self, morph_key):
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return self.get_morph_str(morph_key)
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def normalize_features(self, features):
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return self._normalize_features(features)
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@staticmethod
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def feats_to_dict(feats, *, sort_values=True):
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if not feats or feats == Morphology.EMPTY_MORPH:
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return {}
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out = {}
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for feat in feats.split(Morphology.FEATURE_SEP):
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field, values = feat.split(Morphology.FIELD_SEP, 1)
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if sort_values:
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values = values.split(Morphology.VALUE_SEP)
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values.sort()
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values = Morphology.VALUE_SEP.join(values)
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out[field] = values
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return out
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@staticmethod
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def dict_to_feats(feats_dict):
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if len(feats_dict) == 0:
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return ""
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return Morphology.FEATURE_SEP.join(sorted([Morphology.FIELD_SEP.join([field, Morphology.VALUE_SEP.join(sorted(values.split(Morphology.VALUE_SEP)))]) for field, values in feats_dict.items()]))
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cdef int check_feature(const shared_ptr[MorphAnalysisC] morph, attr_t feature) nogil:
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cdef int i
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for i in range(deref(morph).features.size()):
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if deref(morph).features[i].value == feature:
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return True
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return False
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cdef list list_features(const shared_ptr[MorphAnalysisC] morph):
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cdef int i
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features = []
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for i in range(deref(morph).features.size()):
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features.append(deref(morph).features[i].value)
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return features
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cdef np.ndarray get_by_field(const shared_ptr[MorphAnalysisC] morph, attr_t field):
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cdef np.ndarray results = numpy.zeros((deref(morph).features.size(),), dtype="uint64")
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n = get_n_by_field(<uint64_t*>results.data, morph, field)
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return results[:n]
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cdef int get_n_by_field(attr_t* results, const shared_ptr[MorphAnalysisC] morph, attr_t field) nogil:
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cdef int n_results = 0
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cdef int i
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for i in range(deref(morph).features.size()):
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if deref(morph).features[i].field == field:
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results[n_results] = deref(morph).features[i].value
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n_results += 1
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return n_results
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def unpickle_morphology(strings, tags):
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cdef Morphology morphology = Morphology(strings)
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for tag in tags:
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morphology.add(tag)
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return morphology
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