# coding: utf8 from __future__ import unicode_literals, division, print_function import plac import json from collections import defaultdict import cytoolz from pathlib import Path import dill import tqdm from thinc.neural.optimizers import linear_decay from timeit import default_timer as timer from ..tokens.doc import Doc from ..scorer import Scorer from ..gold import GoldParse, merge_sents from ..gold import GoldCorpus from ..util import prints from .. import util from .. import displacy @plac.annotations( lang=("model language", "positional", None, str), output_dir=("output directory to store model in", "positional", None, str), train_data=("location of JSON-formatted training data", "positional", None, str), dev_data=("location of JSON-formatted development data (optional)", "positional", None, str), n_iter=("number of iterations", "option", "n", int), n_sents=("number of sentences", "option", "ns", int), use_gpu=("Use GPU", "flag", "G", bool), no_tagger=("Don't train tagger", "flag", "T", bool), no_parser=("Don't train parser", "flag", "P", bool), no_entities=("Don't train NER", "flag", "N", bool) ) def train(_, lang, output_dir, train_data, dev_data, n_iter=20, n_sents=0, use_gpu=False, no_tagger=False, no_parser=False, no_entities=False): """Train a model. Expects data in spaCy's JSON format.""" n_sents = n_sents or None output_path = util.ensure_path(output_dir) train_path = util.ensure_path(train_data) dev_path = util.ensure_path(dev_data) if not output_path.exists(): prints(output_path, title="Output directory not found", exits=1) if not train_path.exists(): prints(train_path, title="Training data not found", exits=1) if dev_path and not dev_path.exists(): prints(dev_path, title="Development data not found", exits=1) lang_class = util.get_lang_class(lang) pipeline = ['token_vectors', 'tags', 'dependencies', 'entities'] if no_tagger and 'tags' in pipeline: pipeline.remove('tags') if no_parser and 'dependencies' in pipeline: pipeline.remove('dependencies') if no_entities and 'entities' in pipeline: pipeline.remove('entities') nlp = lang_class(pipeline=pipeline) corpus = GoldCorpus(train_path, dev_path, limit=n_sents) dropout = util.env_opt('dropout', 0.0) dropout_decay = util.env_opt('dropout_decay', 0.0) orig_dropout = dropout optimizer = nlp.begin_training(lambda: corpus.train_tuples, use_gpu=use_gpu) n_train_docs = corpus.count_train() batch_size = float(util.env_opt('min_batch_size', 4)) max_batch_size = util.env_opt('max_batch_size', 64) batch_accel = util.env_opt('batch_accel', 1.001) print("Itn.\tDep. Loss\tUAS\tNER P.\tNER R.\tNER F.\tTag %\tToken %") for i in range(n_iter): with tqdm.tqdm(total=n_train_docs) as pbar: train_docs = corpus.train_docs(nlp, shuffle=i, projectivize=True) idx = 0 while idx < n_train_docs: batch = list(cytoolz.take(int(batch_size), train_docs)) if not batch: break docs, golds = zip(*batch) nlp.update(docs, golds, drop=dropout, sgd=optimizer) pbar.update(len(docs)) idx += len(docs) batch_size *= batch_accel batch_size = min(batch_size, max_batch_size) dropout = linear_decay(orig_dropout, dropout_decay, i*n_train_docs+idx) with nlp.use_params(optimizer.averages): start = timer() scorer = nlp.evaluate(corpus.dev_docs(nlp)) end = timer() n_words = scorer.tokens.tp + scorer.tokens.fn assert n_words != 0 wps = n_words / (end-start) print_progress(i, {}, scorer.scores, wps=wps) with (output_path / 'model.bin').open('wb') as file_: with nlp.use_params(optimizer.averages): dill.dump(nlp, file_, -1) def _render_parses(i, to_render): to_render[0].user_data['title'] = "Batch %d" % i with Path('/tmp/entities.html').open('w') as file_: html = displacy.render(to_render[:5], style='ent', page=True) file_.write(html) with Path('/tmp/parses.html').open('w') as file_: html = displacy.render(to_render[:5], style='dep', page=True) file_.write(html) def print_progress(itn, losses, dev_scores, wps=0.0): scores = {} for col in ['dep_loss', 'tag_loss', 'uas', 'tags_acc', 'token_acc', 'ents_p', 'ents_r', 'ents_f', 'wps']: scores[col] = 0.0 scores.update(losses) scores.update(dev_scores) scores[wps] = wps tpl = '\t'.join(( '{:d}', '{dep_loss:.3f}', '{tag_loss:.3f}', '{uas:.3f}', '{ents_p:.3f}', '{ents_r:.3f}', '{ents_f:.3f}', '{tags_acc:.3f}', '{token_acc:.3f}', '{wps:.1f}')) print(tpl.format(itn, **scores)) def print_results(scorer): results = { 'TOK': '%.2f' % scorer.token_acc, 'POS': '%.2f' % scorer.tags_acc, 'UAS': '%.2f' % scorer.uas, 'LAS': '%.2f' % scorer.las, 'NER P': '%.2f' % scorer.ents_p, 'NER R': '%.2f' % scorer.ents_r, 'NER F': '%.2f' % scorer.ents_f} util.print_table(results, title="Results")