mirror of https://github.com/explosion/spaCy.git
Update the train script, fixing GPU memory leak
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836fe1d880
commit
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@ -17,7 +17,7 @@ from .. import displacy
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def train(language, output_dir, train_data, dev_data, n_iter, n_sents,
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use_gpu, tagger, parser, ner, parser_L1):
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use_gpu, no_tagger, no_parser, no_entities, parser_L1):
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output_path = util.ensure_path(output_dir)
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train_path = util.ensure_path(train_data)
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dev_path = util.ensure_path(dev_data)
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@ -44,9 +44,11 @@ def train(language, output_dir, train_data, dev_data, n_iter, n_sents,
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'lang': language,
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'features': lang.Defaults.tagger_features}
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gold_train = list(read_gold_json(train_path, limit=n_sents))
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gold_dev = list(read_gold_json(dev_path, limit=n_sents)) if dev_path else None
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gold_dev = list(read_gold_json(dev_path, limit=n_sents))
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train_model(lang, gold_train, gold_dev, output_path, n_iter, use_gpu=use_gpu)
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train_model(lang, gold_train, gold_dev, output_path, n_iter,
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no_tagger=no_tagger, no_parser=no_parser, no_entities=no_entities,
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use_gpu=use_gpu)
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if gold_dev:
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scorer = evaluate(lang, gold_dev, output_path)
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print_results(scorer)
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@ -65,34 +67,43 @@ def train_config(config):
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def train_model(Language, train_data, dev_data, output_path, n_iter, **cfg):
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print("Itn.\tDep. Loss\tUAS\tNER F.\tTag %\tToken %")
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nlp = Language(pipeline=['token_vectors', 'tags', 'dependencies'])
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pipeline = ['token_vectors', 'tags', 'dependencies', 'entities']
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if cfg.get('no_tagger') and 'tags' in pipeline:
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pipeline.remove('tags')
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if cfg.get('no_parser') and 'dependencies' in pipeline:
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pipeline.remove('dependencies')
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if cfg.get('no_entities') and 'entities' in pipeline:
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pipeline.remove('entities')
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print(pipeline)
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nlp = Language(pipeline=pipeline)
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dropout = util.env_opt('dropout', 0.0)
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# TODO: Get spaCy using Thinc's trainer and optimizer
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with nlp.begin_training(train_data, **cfg) as (trainer, optimizer):
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for itn, epoch in enumerate(trainer.epochs(n_iter, gold_preproc=True)):
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for itn, epoch in enumerate(trainer.epochs(n_iter, gold_preproc=False)):
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losses = defaultdict(float)
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to_render = []
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for i, (docs, golds) in enumerate(epoch):
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state = nlp.update(docs, golds, drop=dropout, sgd=optimizer)
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losses['dep_loss'] += state.get('parser_loss', 0.0)
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losses['tag_loss'] += state.get('tag_loss', 0.0)
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to_render.insert(0, nlp(docs[-1].text))
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to_render[0].user_data['title'] = "Batch %d" % i
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with Path('/tmp/entities.html').open('w') as file_:
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html = displacy.render(to_render[:5], style='ent', page=True)
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file_.write(html)
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with Path('/tmp/parses.html').open('w') as file_:
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html = displacy.render(to_render[:5], style='dep', page=True)
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file_.write(html)
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nlp.update(docs, golds, drop=dropout, sgd=optimizer)
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for doc in docs:
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doc.tensor = None
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doc._py_tokens = []
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if dev_data:
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with nlp.use_params(optimizer.averages):
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dev_scores = trainer.evaluate(dev_data).scores
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dev_scores = trainer.evaluate(dev_data, gold_preproc=False).scores
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else:
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dev_scores = defaultdict(float)
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print_progress(itn, losses, dev_scores)
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with (output_path / 'model.bin').open('wb') as file_:
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dill.dump(nlp, file_, -1)
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#nlp.to_disk(output_path, tokenizer=False)
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def _render_parses(i, to_render):
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to_render[0].user_data['title'] = "Batch %d" % i
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with Path('/tmp/entities.html').open('w') as file_:
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html = displacy.render(to_render[:5], style='ent', page=True)
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file_.write(html)
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with Path('/tmp/parses.html').open('w') as file_:
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html = displacy.render(to_render[:5], style='dep', page=True)
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file_.write(html)
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def evaluate(Language, gold_tuples, path):
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