mirror of
https://github.com/explosion/spaCy.git
synced 2024-12-29 19:36:31 +03:00
e3285f6f30
This reverts commit 78f19baafa
.
329 lines
11 KiB
Cython
329 lines
11 KiB
Cython
# cython: infer_types=True
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"""
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MALT-style dependency parser
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"""
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from __future__ import unicode_literals
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cimport cython
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cimport cython.parallel
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from cpython.ref cimport PyObject, Py_INCREF, Py_XDECREF
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from cpython.exc cimport PyErr_CheckSignals
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from libc.stdint cimport uint32_t, uint64_t
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from libc.string cimport memset, memcpy
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from libc.stdlib cimport malloc, calloc, free
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import os.path
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from os import path
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import shutil
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import json
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import sys
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from .nonproj import PseudoProjectivity
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from cymem.cymem cimport Pool, Address
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from murmurhash.mrmr cimport hash64
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from thinc.typedefs cimport weight_t, class_t, feat_t, atom_t, hash_t
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from thinc.linear.avgtron cimport AveragedPerceptron
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from thinc.linalg cimport VecVec
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from thinc.structs cimport SparseArrayC
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from preshed.maps cimport MapStruct
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from preshed.maps cimport map_get
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from thinc.structs cimport FeatureC
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from util import Config
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from ..structs cimport TokenC
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from ..tokens.doc cimport Doc
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from ..strings cimport StringStore
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from .transition_system import OracleError
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from .transition_system cimport TransitionSystem, Transition
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from ..gold cimport GoldParse
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from . import _parse_features
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from ._parse_features cimport CONTEXT_SIZE
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from ._parse_features cimport fill_context
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from .stateclass cimport StateClass
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from ._state cimport StateC
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DEBUG = False
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def set_debug(val):
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global DEBUG
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DEBUG = val
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def get_templates(name):
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pf = _parse_features
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if name == 'ner':
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return pf.ner
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elif name == 'debug':
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return pf.unigrams
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elif name.startswith('embed'):
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return (pf.words, pf.tags, pf.labels)
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else:
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return (pf.unigrams + pf.s0_n0 + pf.s1_n0 + pf.s1_s0 + pf.s0_n1 + pf.n0_n1 + \
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pf.tree_shape + pf.trigrams)
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def ParserFactory(transition_system):
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return lambda strings, dir_: Parser(strings, dir_, transition_system)
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cdef class ParserModel(AveragedPerceptron):
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cdef void set_featuresC(self, ExampleC* eg, const StateC* state) nogil:
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fill_context(eg.atoms, state)
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eg.nr_feat = self.extracter.set_features(eg.features, eg.atoms)
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cdef class Parser:
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@classmethod
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def load(cls, path, Vocab vocab, moves_class):
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with (path / 'config.json').open() as file_:
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cfg = json.load(file_)
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moves = moves_class(vocab.strings, cfg['labels'])
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templates = get_templates(cfg['features'])
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model = ParserModel(templates)
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if (path / 'model').exists():
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model.load(str(path / 'model'))
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return cls(vocab, moves, model, **cfg)
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@classmethod
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def blank(cls, Vocab vocab, moves_class, **cfg):
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moves = moves_class(vocab.strings, cfg.get('labels', {}))
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templates = cfg.get('features', tuple())
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model = ParserModel(templates)
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return cls(vocab, moves, model, **cfg)
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def __init__(self, Vocab vocab, transition_system, ParserModel model, **cfg):
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self.moves = transition_system
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self.model = model
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self.cfg = cfg
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def __reduce__(self):
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return (Parser, (self.vocab, self.moves, self.model), None, None)
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def __call__(self, Doc tokens):
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cdef int nr_class = self.moves.n_moves
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cdef int nr_feat = self.model.nr_feat
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with nogil:
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status = self.parseC(tokens.c, tokens.length, nr_feat, nr_class)
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# Check for KeyboardInterrupt etc. Untested
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PyErr_CheckSignals()
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if status != 0:
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raise ParserStateError(tokens)
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self.moves.finalize_doc(tokens)
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def pipe(self, stream, int batch_size=1000, int n_threads=2):
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cdef Pool mem = Pool()
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cdef TokenC** doc_ptr = <TokenC**>mem.alloc(batch_size, sizeof(TokenC*))
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cdef int* lengths = <int*>mem.alloc(batch_size, sizeof(int))
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cdef Doc doc
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cdef int i
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cdef int nr_class = self.moves.n_moves
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cdef int nr_feat = self.model.nr_feat
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cdef int status
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queue = []
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for doc in stream:
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doc_ptr[len(queue)] = doc.c
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lengths[len(queue)] = doc.length
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queue.append(doc)
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if len(queue) == batch_size:
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with nogil:
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for i in cython.parallel.prange(batch_size, num_threads=n_threads):
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status = self.parseC(doc_ptr[i], lengths[i], nr_feat, nr_class)
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if status != 0:
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with gil:
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raise ParserStateError(queue[i])
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PyErr_CheckSignals()
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for doc in queue:
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self.moves.finalize_doc(doc)
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yield doc
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queue = []
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batch_size = len(queue)
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with nogil:
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for i in cython.parallel.prange(batch_size, num_threads=n_threads):
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status = self.parseC(doc_ptr[i], lengths[i], nr_feat, nr_class)
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if status != 0:
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with gil:
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raise ParserStateError(queue[i])
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PyErr_CheckSignals()
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for doc in queue:
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self.moves.finalize_doc(doc)
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yield doc
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cdef int parseC(self, TokenC* tokens, int length, int nr_feat, int nr_class) nogil:
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cdef ExampleC eg
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eg.nr_feat = nr_feat
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eg.nr_atom = CONTEXT_SIZE
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eg.nr_class = nr_class
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eg.features = <FeatureC*>calloc(sizeof(FeatureC), nr_feat)
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eg.atoms = <atom_t*>calloc(sizeof(atom_t), CONTEXT_SIZE)
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eg.scores = <weight_t*>calloc(sizeof(weight_t), nr_class)
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eg.is_valid = <int*>calloc(sizeof(int), nr_class)
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state = new StateC(tokens, length)
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self.moves.initialize_state(state)
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cdef int i
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while not state.is_final():
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self.model.set_featuresC(&eg, state)
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self.moves.set_valid(eg.is_valid, state)
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self.model.set_scoresC(eg.scores, eg.features, eg.nr_feat)
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guess = VecVec.arg_max_if_true(eg.scores, eg.is_valid, eg.nr_class)
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action = self.moves.c[guess]
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if not eg.is_valid[guess]:
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return 1
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action.do(state, action.label)
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memset(eg.scores, 0, sizeof(eg.scores[0]) * eg.nr_class)
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for i in range(eg.nr_class):
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eg.is_valid[i] = 1
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self.moves.finalize_state(state)
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for i in range(length):
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tokens[i] = state._sent[i]
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del state
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free(eg.features)
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free(eg.atoms)
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free(eg.scores)
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free(eg.is_valid)
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return 0
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def train(self, Doc tokens, GoldParse gold):
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self.moves.preprocess_gold(gold)
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cdef StateClass stcls = StateClass.init(tokens.c, tokens.length)
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self.moves.initialize_state(stcls.c)
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cdef Pool mem = Pool()
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cdef Example eg = Example(
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nr_class=self.moves.n_moves,
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nr_atom=CONTEXT_SIZE,
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nr_feat=self.model.nr_feat)
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cdef weight_t loss = 0
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cdef Transition action
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while not stcls.is_final():
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self.model.set_featuresC(&eg.c, stcls.c)
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self.moves.set_costs(eg.c.is_valid, eg.c.costs, stcls, gold)
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self.model.set_scoresC(eg.c.scores, eg.c.features, eg.c.nr_feat)
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self.model.updateC(&eg.c)
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guess = VecVec.arg_max_if_true(eg.c.scores, eg.c.is_valid, eg.c.nr_class)
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action = self.moves.c[eg.guess]
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action.do(stcls.c, action.label)
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loss += eg.costs[eg.guess]
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eg.fill_scores(0, eg.nr_class)
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eg.fill_costs(0, eg.nr_class)
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eg.fill_is_valid(0, eg.nr_class)
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return loss
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def step_through(self, Doc doc):
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return StepwiseState(self, doc)
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def from_transition_sequence(self, Doc doc, sequence):
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with self.step_through(doc) as stepwise:
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for transition in sequence:
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stepwise.transition(transition)
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def add_label(self, label):
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for action in self.moves.action_types:
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self.moves.add_action(action, label)
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cdef class StepwiseState:
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cdef readonly StateClass stcls
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cdef readonly Example eg
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cdef readonly Doc doc
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cdef readonly Parser parser
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def __init__(self, Parser parser, Doc doc):
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self.parser = parser
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self.doc = doc
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self.stcls = StateClass.init(doc.c, doc.length)
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self.parser.moves.initialize_state(self.stcls.c)
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self.eg = Example(
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nr_class=self.parser.moves.n_moves,
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nr_atom=CONTEXT_SIZE,
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nr_feat=self.parser.model.nr_feat)
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def __enter__(self):
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return self
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def __exit__(self, type, value, traceback):
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self.finish()
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@property
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def is_final(self):
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return self.stcls.is_final()
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@property
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def stack(self):
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return self.stcls.stack
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@property
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def queue(self):
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return self.stcls.queue
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@property
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def heads(self):
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return [self.stcls.H(i) for i in range(self.stcls.c.length)]
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@property
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def deps(self):
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return [self.doc.vocab.strings[self.stcls.c._sent[i].dep]
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for i in range(self.stcls.c.length)]
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def predict(self):
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self.eg.reset()
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self.parser.model.set_featuresC(&self.eg.c, self.stcls.c)
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self.parser.moves.set_valid(self.eg.c.is_valid, self.stcls.c)
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self.parser.model.set_scoresC(self.eg.c.scores,
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self.eg.c.features, self.eg.c.nr_feat)
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cdef Transition action = self.parser.moves.c[self.eg.guess]
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return self.parser.moves.move_name(action.move, action.label)
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def transition(self, action_name):
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moves = {'S': 0, 'D': 1, 'L': 2, 'R': 3}
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if action_name == '_':
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action_name = self.predict()
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action = self.parser.moves.lookup_transition(action_name)
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elif action_name == 'L' or action_name == 'R':
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self.predict()
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move = moves[action_name]
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clas = _arg_max_clas(self.eg.c.scores, move, self.parser.moves.c,
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self.eg.c.nr_class)
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action = self.parser.moves.c[clas]
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else:
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action = self.parser.moves.lookup_transition(action_name)
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action.do(self.stcls.c, action.label)
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def finish(self):
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if self.stcls.is_final():
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self.parser.moves.finalize_state(self.stcls.c)
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self.doc.set_parse(self.stcls.c._sent)
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self.parser.moves.finalize_doc(self.doc)
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class ParserStateError(ValueError):
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def __repr__(self):
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raise ValueError(
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"Error analysing doc -- no valid actions available. This should "
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"never happen, so please report the error on the issue tracker. "
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"Here's the thread to do so --- reopen it if it's closed:\n"
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"https://github.com/spacy-io/spaCy/issues/429\n"
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"Please include the text that the parser failed on, which is:\n"
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"%s" % repr(self.args[0].text))
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cdef int _arg_max_clas(const weight_t* scores, int move, const Transition* actions,
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int nr_class) except -1:
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cdef weight_t score = 0
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cdef int mode = -1
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cdef int i
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for i in range(nr_class):
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if actions[i].move == move and (mode == -1 or scores[i] >= score):
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mode = i
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score = scores[i]
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return mode
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