# cython: profile=True from __future__ import unicode_literals from __future__ import division from os import path import tempfile import os import shutil import json import cython import numpy.random from libc.string cimport memcpy from thinc.features cimport Feature, count_feats from thinc.api cimport Example from thinc.learner cimport arg_max, arg_max_if_true, arg_max_if_zero cdef class Model: def __init__(self, n_classes, templates, model_loc=None): if model_loc is not None and path.isdir(model_loc): model_loc = path.join(model_loc, 'model') self._templates = templates n_atoms = max([max(templ) for templ in templates]) + 1 self.n_classes = n_classes self._extractor = Extractor(templates) self.n_feats = self._extractor.n_templ self._model = LinearModel(n_classes, self._extractor) self._eg = Example(n_classes, n_atoms, self._extractor.n_templ, self._extractor.n_templ) self.model_loc = model_loc if self.model_loc and path.exists(self.model_loc): self._model.load(self.model_loc, freq_thresh=0) def __reduce__(self): _, model_loc = tempfile.mkstemp() # TODO: This is a potentially buggy implementation. We're not really # given a good guarantee that all internal state is saved correctly here, # since there are learning parameters for e.g. the model averaging in # averaged perceptron, the gradient calculations in AdaGrad, etc # that aren't necessarily saved. So, if we're part way through training # the model, and then we pickle it, we won't recover the state correctly. self._model.dump(model_loc) return (Model, (self.n_classes, self._templates, model_loc), None, None) def predict(self, Example eg): self._model(eg) def train(self, Example eg): self._model.train(eg) cdef const weight_t* score(self, atom_t* context) except NULL: memcpy(self._eg.c.atoms, context, self._eg.c.nr_atom * sizeof(context[0])) self._model(self._eg) return self._eg.c.scores cdef int set_scores(self, weight_t* scores, atom_t* context) nogil: cdef int nr_feat = self._extractor.set_feats(self._eg.c.features, context) self._model.set_scores(scores, self._eg.c.features, nr_feat) def end_training(self, model_loc=None): if model_loc is None: model_loc = self.model_loc self._model.end_training() self._model.dump(model_loc, freq_thresh=0)