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			209 lines
		
	
	
		
			7.5 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			209 lines
		
	
	
		
			7.5 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
import plac
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import collections
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import random
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import pathlib
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import cytoolz
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import numpy
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from keras.models import Sequential, model_from_json
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from keras.layers import LSTM, Dense, Embedding, Dropout, Bidirectional
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from keras.layers import TimeDistributed
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from keras.optimizers import Adam
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import cPickle as pickle
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import spacy
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class SentimentAnalyser(object):
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    @classmethod
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    def load(cls, path, nlp, max_length=100):
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        with (path / 'config.json').open() as file_:
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            model = model_from_json(file_.read())
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        with (path / 'model').open('rb') as file_:
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            lstm_weights = pickle.load(file_)
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        embeddings = get_embeddings(nlp.vocab)
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        model.set_weights([embeddings] + lstm_weights)
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        return cls(model, max_length=max_length)
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    def __init__(self, model, max_length=100):
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        self._model = model
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        self.max_length = max_length
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    def __call__(self, doc):
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        X = get_features([doc], self.max_length)
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        y = self._model.predict(X)
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        self.set_sentiment(doc, y)
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    def pipe(self, docs, batch_size=1000, n_threads=2):
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        for minibatch in cytoolz.partition_all(batch_size, docs):
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            minibatch = list(minibatch)
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            sentences = []
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            for doc in minibatch:
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                sentences.extend(doc.sents)
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            Xs = get_features(sentences, self.max_length)
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            ys = self._model.predict(Xs)
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            for sent, label in zip(sentences, ys):
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                sent.doc.sentiment += label - 0.5
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            for doc in minibatch:
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                yield doc
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    def set_sentiment(self, doc, y):
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        doc.sentiment = float(y[0])
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        # Sentiment has a native slot for a single float.
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        # For arbitrary data storage, there's:
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        # doc.user_data['my_data'] = y
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def get_labelled_sentences(docs, doc_labels):
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    labels = []
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    sentences = []
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    for doc, y in zip(docs, doc_labels):
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        for sent in doc.sents:
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            sentences.append(sent)
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            labels.append(y)
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    return sentences, numpy.asarray(labels, dtype='int32')
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def get_features(docs, max_length):
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    docs = list(docs)
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    Xs = numpy.zeros((len(docs), max_length), dtype='int32')
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    for i, doc in enumerate(docs):
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        j = 0
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        for token in doc:
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            if token.has_vector and not token.is_punct and not token.is_space:
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                Xs[i, j] = token.rank + 1
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                j += 1
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                if j >= max_length:
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                    break
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    return Xs
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def train(train_texts, train_labels, dev_texts, dev_labels,
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        lstm_shape, lstm_settings, lstm_optimizer, batch_size=100, nb_epoch=5,
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        by_sentence=True):
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    print("Loading spaCy")
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    nlp = spacy.load('en', entity=False)
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    embeddings = get_embeddings(nlp.vocab)
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    model = compile_lstm(embeddings, lstm_shape, lstm_settings)
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    print("Parsing texts...")
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    train_docs = list(nlp.pipe(train_texts, batch_size=5000, n_threads=3))
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    dev_docs = list(nlp.pipe(dev_texts, batch_size=5000, n_threads=3))
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    if by_sentence:
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        train_docs, train_labels = get_labelled_sentences(train_docs, train_labels)
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        dev_docs, dev_labels = get_labelled_sentences(dev_docs, dev_labels)
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    train_X = get_features(train_docs, lstm_shape['max_length'])
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    dev_X = get_features(dev_docs, lstm_shape['max_length'])
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    model.fit(train_X, train_labels, validation_data=(dev_X, dev_labels),
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              nb_epoch=nb_epoch, batch_size=batch_size)
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    return model
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def compile_lstm(embeddings, shape, settings):
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    model = Sequential()
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    model.add(
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        Embedding(
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            embeddings.shape[0],
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            embeddings.shape[1],
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            input_length=shape['max_length'],
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            trainable=False,
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            weights=[embeddings],
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            mask_zero=True
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        )
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    )
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    model.add(TimeDistributed(Dense(shape['nr_hidden'], bias=False)))
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    model.add(Bidirectional(LSTM(shape['nr_hidden'], dropout_U=settings['dropout'],
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                                 dropout_W=settings['dropout'])))
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    model.add(Dense(shape['nr_class'], activation='sigmoid'))
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    model.compile(optimizer=Adam(lr=settings['lr']), loss='binary_crossentropy',
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		  metrics=['accuracy'])
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    return model
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def get_embeddings(vocab):
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    max_rank = max(lex.rank+1 for lex in vocab if lex.has_vector)
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    vectors = numpy.ndarray((max_rank+1, vocab.vectors_length), dtype='float32')
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    for lex in vocab:
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        if lex.has_vector:
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            vectors[lex.rank + 1] = lex.vector
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    return vectors
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def evaluate(model_dir, texts, labels, max_length=100):
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    def create_pipeline(nlp):
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        '''
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        This could be a lambda, but named functions are easier to read in Python.
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        '''
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        return [nlp.tagger, nlp.parser, SentimentAnalyser.load(model_dir, nlp,
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                                                               max_length=max_length)]
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    nlp = spacy.load('en')
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    nlp.pipeline = create_pipeline(nlp)
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    correct = 0
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    i = 0 
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    for doc in nlp.pipe(texts, batch_size=1000, n_threads=4):
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        correct += bool(doc.sentiment >= 0.5) == bool(labels[i])
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        i += 1
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    return float(correct) / i
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def read_data(data_dir, limit=0):
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    examples = []
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    for subdir, label in (('pos', 1), ('neg', 0)):
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        for filename in (data_dir / subdir).iterdir():
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            with filename.open() as file_:
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                text = file_.read()
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            examples.append((text, label))
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    random.shuffle(examples)
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    if limit >= 1:
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        examples = examples[:limit]
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    return zip(*examples) # Unzips into two lists
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@plac.annotations(
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    train_dir=("Location of training file or directory"),
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    dev_dir=("Location of development file or directory"),
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    model_dir=("Location of output model directory",),
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    is_runtime=("Demonstrate run-time usage", "flag", "r", bool),
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    nr_hidden=("Number of hidden units", "option", "H", int),
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    max_length=("Maximum sentence length", "option", "L", int),
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    dropout=("Dropout", "option", "d", float),
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    learn_rate=("Learn rate", "option", "e", float),
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    nb_epoch=("Number of training epochs", "option", "i", int),
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    batch_size=("Size of minibatches for training LSTM", "option", "b", int),
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    nr_examples=("Limit to N examples", "option", "n", int)
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)
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def main(model_dir, train_dir, dev_dir,
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         is_runtime=False,
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         nr_hidden=64, max_length=100, # Shape
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         dropout=0.5, learn_rate=0.001, # General NN config
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         nb_epoch=5, batch_size=100, nr_examples=-1):  # Training params
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    model_dir = pathlib.Path(model_dir)
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    train_dir = pathlib.Path(train_dir)
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    dev_dir = pathlib.Path(dev_dir)
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    if is_runtime:
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        dev_texts, dev_labels = read_data(dev_dir)
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        acc = evaluate(model_dir, dev_texts, dev_labels, max_length=max_length)
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        print(acc)
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    else:
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        print("Read data")
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        train_texts, train_labels = read_data(train_dir, limit=nr_examples)
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        dev_texts, dev_labels = read_data(dev_dir, limit=nr_examples)
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        train_labels = numpy.asarray(train_labels, dtype='int32')
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        dev_labels = numpy.asarray(dev_labels, dtype='int32')
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        lstm = train(train_texts, train_labels, dev_texts, dev_labels,
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                     {'nr_hidden': nr_hidden, 'max_length': max_length, 'nr_class': 1},
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                     {'dropout': dropout, 'lr': learn_rate},
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                     {},
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                     nb_epoch=nb_epoch, batch_size=batch_size)
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        weights = lstm.get_weights()
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        with (model_dir / 'model').open('wb') as file_:
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            pickle.dump(weights[1:], file_)
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        with (model_dir / 'config.json').open('wb') as file_:
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            file_.write(lstm.to_json())
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if __name__ == '__main__':
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    plac.call(main)
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