Esempio n. 1
0
def test_multilabel_classification_predict_on_predictor_instance():
    np.random.seed(0)

    df_twitter_train, df_twitter_test = utils.get_twitter_sentiment_multilabel_classification_dataset(
    )
    # Note that this does not take 'text' into account, intentionally
    # (as that takes a while longer to train)
    ml_predictor = utils.train_basic_multilabel_classifier(df_twitter_train)

    predictions = ml_predictor.predict(df_twitter_test)
    test_score = accuracy_score(predictions, df_twitter_test.airline_sentiment)
    # Make sure our score is good, but not unreasonably good
    print('test_score')
    print(test_score)
    assert 0.72 < test_score < 0.77
Esempio n. 2
0
    def test_getting_single_predictions_nlp_date_multilabel_classification():

        np.random.seed(0)

        df_twitter_train, df_twitter_test = utils.get_twitter_sentiment_multilabel_classification_dataset(
        )

        column_descriptions = {
            'airline_sentiment': 'output',
            'airline': 'categorical',
            'text': 'nlp',
            'tweet_location': 'categorical',
            'user_timezone': 'categorical',
            'tweet_created': 'date'
        }

        ml_predictor = Predictor(type_of_estimator='classifier',
                                 column_descriptions=column_descriptions)
        ml_predictor.train(df_twitter_train)

        file_name = ml_predictor.save(str(random.random()))

        saved_ml_pipeline = load_ml_model(file_name)

        os.remove(file_name)
        try:
            keras_file_name = file_name[:-5] + '_keras_deep_learning_model.h5'
            os.remove(keras_file_name)
        except:
            pass

        df_twitter_test_dictionaries = df_twitter_test.to_dict('records')

        # 1. make sure the accuracy is the same

        predictions = []
        for row in df_twitter_test_dictionaries:
            predictions.append(saved_ml_pipeline.predict(row))

        print('predictions')
        print(predictions)

        first_score = accuracy_score(df_twitter_test.airline_sentiment,
                                     predictions)
        print('first_score')
        print(first_score)
        # Make sure our score is good, but not unreasonably good
        lower_bound = 0.73
        assert lower_bound < first_score < 0.79

        # 2. make sure the speed is reasonable (do it a few extra times)
        data_length = len(df_twitter_test_dictionaries)
        start_time = datetime.datetime.now()
        for idx in range(1000):
            row_num = idx % data_length
            saved_ml_pipeline.predict(df_twitter_test_dictionaries[row_num])
        end_time = datetime.datetime.now()
        duration = end_time - start_time

        print('duration.total_seconds()')
        print(duration.total_seconds())

        # It's very difficult to set a benchmark for speed that will work across all machines.
        # On my 2013 bottom of the line 15" MacBook Pro, this runs in about 0.8 seconds for 1000 predictions
        # That's about 1 millisecond per prediction
        # Assuming we might be running on a test box that's pretty weak, multiply by 3
        # Also make sure we're not running unreasonably quickly
        assert 0.2 < duration.total_seconds() < 15

        # 3. make sure we're not modifying the dictionaries (the score is the same after running a few experiments as it is the first time)

        predictions = []
        for row in df_twitter_test_dictionaries:
            predictions.append(saved_ml_pipeline.predict(row))

        print('predictions')
        print(predictions)
        print('df_twitter_test_dictionaries')
        print(df_twitter_test_dictionaries)
        second_score = accuracy_score(df_twitter_test.airline_sentiment,
                                      predictions)
        print('second_score')
        print(second_score)
        # Make sure our score is good, but not unreasonably good
        assert lower_bound < second_score < 0.79