Example #1
0
def do_shell(args):
    config = Config(args.model_path)
    helper = ModelHelper.load(args.model_path)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]

    with tf.Graph().as_default():
        logger.info("Building model...", )
        start = time.time()
        model = WindowModel(helper, config, embeddings)
        logger.info("took %.2f seconds", time.time() - start)

        init = tf.global_variables_initializer()
        saver = tf.train.Saver()

        with tf.Session() as session:
            session.run(init)
            saver.restore(session, model.config.model_output)

            print("""Welcome!
You can use this shell to explore the behavior of your model.
Please enter sentences with spaces between tokens, e.g.,
input> Germany 's representative to the European Union 's veterinary committee .
""")
            while True:
                # Create simple REPL
                try:
                    sentence = raw_input("input> ")
                    tokens = sentence.strip().split(" ")
                    for sentence, _, predictions in model.output(session, [(tokens, ["O"] * len(tokens))]):
                        predictions = [LBLS[l] for l in predictions]
                        print_sentence(sys.stdout, sentence, [""] * len(tokens), predictions)
                except EOFError:
                    print("Closing session.")
                    break
Example #2
0
def do_train(args):
    # Set up some parameters.
    config = Config()
    helper, train, dev, train_raw, dev_raw = load_and_preprocess_data(args)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]
    helper.save(config.output_path)

    handler = logging.FileHandler(config.log_output)
    handler.setLevel(logging.DEBUG)
    handler.setFormatter(logging.Formatter('%(asctime)s:%(levelname)s: %(message)s'))
    logging.getLogger().addHandler(handler)

    report = None  # Report(Config.eval_output)

    with tf.Graph().as_default():
        logger.info("Building model...", )
        start = time.time()
        model = WindowModel(helper, config, embeddings)
        logger.info("took %.2f seconds", time.time() - start)

        init = tf.global_variables_initializer()
        saver = tf.train.Saver()

        with tf.Session() as session:
            session.run(init)
            model.fit(session, saver, train, dev)
            if report:
                report.log_output(model.output(session, dev_raw))
                report.save()
            else:
                # Save predictions in a text file.
                output = model.output(session, dev_raw)
                sentences, labels, predictions = zip(*output)
                predictions = [[LBLS[l] for l in preds] for preds in predictions]
                output = zip(sentences, labels, predictions)

                with open(model.config.conll_output, 'w') as f:
                    write_conll(f, output)
                with open(model.config.eval_output, 'w') as f:
                    for sentence, labels, predictions in output:
                        print_sentence(f, sentence, labels, predictions)
Example #3
0
def do_evaluate(args):
    config = Config(args.model_path)
    helper = ModelHelper.load(args.model_path)
    input_data = read_conll(args.data)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]

    with tf.Graph().as_default():
        logger.info("Building model...", )
        start = time.time()
        model = WindowModel(helper, config, embeddings)

        logger.info("took %.2f seconds", time.time() - start)

        init = tf.global_variables_initializer()
        saver = tf.train.Saver()

        with tf.Session() as session:
            session.run(init)
            saver.restore(session, model.config.model_output)
            for sentence, labels, predictions in model.output(session, input_data):
                predictions = [LBLS[l] for l in predictions]
                print_sentence(args.output, sentence, labels, predictions)
Example #4
0
def do_shell(args):
    config = Config(args)
    helper = ModelHelper.load(args.model_path)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]

    with tf.Graph().as_default():
        logger.info("Building model...", )
        start = time.time()
        model = RNNModel(helper, config, embeddings)
        logger.info("took %.2f seconds", time.time() - start)

        init = tf.global_variables_initializer()
        saver = tf.train.Saver()

        with tf.Session() as session:
            session.run(init)
            saver.restore(session, model.config.model_output)

            print("""Welcome!
You can use this shell to explore the behavior of your model.
Please enter sentences with spaces between tokens, e.g.,
input> Germany 's representative to the European Union 's veterinary committee .
""")
            while True:
                # Create simple REPL
                try:
                    sentence = raw_input("input> ")
                    tokens = sentence.strip().split(" ")
                    for sentence, _, predictions in model.output(
                            session, [(tokens, ["O"] * len(tokens))]):
                        predictions = [LBLS[l] for l in predictions]
                        print_sentence(sys.stdout, sentence,
                                       [""] * len(tokens), predictions)
                except EOFError:
                    print("Closing session.")
                    break
Example #5
0
def do_train(args):
    # Set up some parameters.
    config = Config()
    helper, train, dev, train_raw, dev_raw = load_and_preprocess_data(args)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]
    helper.save(config.output_path)

    handler = logging.FileHandler(config.log_output)
    handler.setLevel(logging.DEBUG)
    handler.setFormatter(
        logging.Formatter('%(asctime)s:%(levelname)s: %(message)s'))
    logging.getLogger().addHandler(handler)

    report = None  #Report(Config.eval_output)

    logger.info("Building model...", )
    start = time.time()
    model = WindowModel(helper, config, embeddings)
    logger.info("took %.2f seconds", time.time() - start)

    model.fit(train, dev)
    if report:
        report.log_output(model.output(dev_raw))
        report.save()
    else:
        # Save predictions in a text file.
        output = model.output(dev_raw)
        sentences, labels, predictions = zip(*output)
        predictions = [[LBLS[l] for l in preds] for preds in predictions]
        output = zip(sentences, labels, predictions)

        with open(model.config.conll_output, 'w') as f:
            write_conll(f, output)
        with open(model.config.eval_output, 'w') as f:
            for sentence, labels, predictions in output:
                print_sentence(f, sentence, labels, predictions)
Example #6
0
def do_evaluate(args):
    config = Config(args)
    helper = ModelHelper.load(args.model_path)
    input_data = read_conll(args.data)
    embeddings = load_embeddings(args, helper)
    config.embed_size = embeddings.shape[1]

    with tf.Graph().as_default():
        logger.info("Building model...", )
        start = time.time()
        model = RNNModel(helper, config, embeddings)

        logger.info("took %.2f seconds", time.time() - start)

        init = tf.global_variables_initializer()
        saver = tf.train.Saver()

        with tf.Session() as session:
            session.run(init)
            saver.restore(session, model.config.model_output)
            for sentence, labels, predictions in model.output(
                    session, input_data):
                predictions = [LBLS[l] for l in predictions]
                print_sentence(args.output, sentence, labels, predictions)