Esempio n. 1
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    def test_similar_row_from_datum_and_rate(self):
        filter_warning()
        recommender = Recommender.run(Config())
        loader = StubLoader()
        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id,
             result) in recommender.similar_row_from_datum_and_rate(dataset):
            self.assertEqual(0, len(result))

        # rate must be in (0, 1].
        def func():
            for _ in recommender.similar_row_from_datum_and_rate(dataset,
                                                                 rate=0.0):
                pass

        self.assertRaises(ValueError, lambda: func())

        def func():
            for _ in recommender.similar_row_from_datum_and_rate(dataset,
                                                                 rate=1.01):
                pass

        self.assertRaises(ValueError, lambda: func())

        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)
        for (idx, row_id,
             result) in recommender.similar_row_from_datum_and_rate(dataset):
            self.assertEqual(None, row_id)  # there is no id in column_table
            self.assertEqual(
                0, len(result))  # there is no similar row in column_table

        recommender.stop()
Esempio n. 2
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    def test_similar_row_from_id_and_score(self):
        filter_warning()
        recommender = Recommender.run(Config())
        loader = StubLoader()

        # dataset must have id when execute `similar_row_from_id_and_score`
        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)

        def func():
            for _ in recommender.similar_row_from_id_and_score(dataset):
                pass

        self.assertRaises(RuntimeError, lambda: func())

        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id,
             result) in recommender.similar_row_from_id_and_score(dataset):
            self.assertEqual(str(idx + 1),
                             row_id)  # there is no id in column_table
            self.assertEqual(
                0, len(result))  # there is no similar row in column_table

        recommender.stop()
Esempio n. 3
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  def test_similar_row_from_datum_and_rate(self):
    filter_warning()
    recommender = Recommender.run(Config())
    loader = StubLoader()
    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.similar_row_from_datum_and_rate(dataset):
      self.assertEqual(0, len(result))

    # rate must be in (0, 1].
    def func():
      for _ in recommender.similar_row_from_datum_and_rate(dataset, rate=0.0): pass
    self.assertRaises(ValueError, lambda: func())

    def func():
      for _ in recommender.similar_row_from_datum_and_rate(dataset, rate=1.01): pass
    self.assertRaises(ValueError, lambda: func())

    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.similar_row_from_datum_and_rate(dataset):
      self.assertEqual(None, row_id)    # there is no id in column_table
      self.assertEqual(0, len(result))  # there is no similar row in column_table

    recommender.stop()
Esempio n. 4
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  def test_update_row(self):
    recommender = Recommender.run(Config())
    loader = StubLoader()
   
    # dataset must have id when execute `update_row`
    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    def func():
      for _ in recommender.update_row(dataset): pass
    self.assertRaises(RuntimeError, lambda: func())

    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.update_row(dataset):
      self.assertEqual(result, True)
    recommender.stop()
Esempio n. 5
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  def test_similar_row_from_datum(self):
    filter_warning()
    recommender = Recommender.run(Config())
    loader = StubLoader()
    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.similar_row_from_datum(dataset):
      self.assertEqual(0, len(result))

    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.similar_row_from_datum(dataset):
      self.assertEqual(None, row_id)    # there is no id in column_table
      self.assertEqual(0, len(result))  # there is no similar row in column_table

    recommender.stop()
Esempio n. 6
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    def test_similar_row_from_datum(self):
        filter_warning()
        recommender = Recommender.run(Config())
        loader = StubLoader()
        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id,
             result) in recommender.similar_row_from_datum(dataset):
            self.assertEqual(0, len(result))

        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)
        for (idx, row_id,
             result) in recommender.similar_row_from_datum(dataset):
            self.assertEqual(None, row_id)  # there is no id in column_table
            self.assertEqual(
                0, len(result))  # there is no similar row in column_table

        recommender.stop()
Esempio n. 7
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  def test_similar_row_from_id_and_score(self):
    filter_warning()
    recommender = Recommender.run(Config())
    loader = StubLoader()

    # dataset must have id when execute `similar_row_from_id_and_score`
    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    def func():
      for _ in recommender.similar_row_from_id_and_score(dataset): pass
    self.assertRaises(RuntimeError, lambda: func())

    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, result) in recommender.similar_row_from_id_and_score(dataset):
      self.assertEqual(str(idx+1), row_id)    # there is no id in column_table
      self.assertEqual(0, len(result))  # there is no similar row in column_table

    recommender.stop()
Esempio n. 8
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  def test_clear_row(self):
    recommender = Recommender.run(Config())
    loader = StubLoader()

    # dataset must have id when execute `clear_row`.
    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    def func():
      for _ in recommender.clear_row(dataset): pass
    self.assertRaises(RuntimeError, lambda: func())

    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)

    # expect to get False when table is empty.
    for (idx, row_id, result) in recommender.clear_row(dataset):
      self.assertEqual(result, True)

    recommender.stop()
Esempio n. 9
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    def test_update_row(self):
        recommender = Recommender.run(Config())
        loader = StubLoader()

        # dataset must have id when execute `update_row`
        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)

        def func():
            for _ in recommender.update_row(dataset):
                pass

        self.assertRaises(RuntimeError, lambda: func())

        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id, result) in recommender.update_row(dataset):
            self.assertEqual(result, True)
        recommender.stop()
Esempio n. 10
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  def test_complete_row_from_id(self):
    filter_warning()
    recommender = Recommender.run(Config())
    loader = StubLoader()
    
    # dataset must have id when execute `complete_row_from_id`
    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    def func():
      for _ in recommender.complete_row_from_id(dataset): pass
    self.assertRaises(RuntimeError, lambda: func())

    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, d) in recommender.complete_row_from_id(dataset):
      self.assertEqual(0, len(d.string_values))
      self.assertEqual(0, len(d.num_values))
      self.assertEqual(0, len(d.binary_values))
      
    recommender.stop()
Esempio n. 11
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    def test_complete_row_from_datum(self):
        filter_warning()
        recommender = Recommender.run(Config())
        loader = StubLoader()

        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id, d) in recommender.complete_row_from_datum(dataset):
            self.assertEqual(0, len(d.string_values))
            self.assertEqual(0, len(d.num_values))
            self.assertEqual(0, len(d.binary_values))

        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)
        for (idx, row_id, d) in recommender.complete_row_from_datum(dataset):
            self.assertEqual(None, row_id)  # there is no id in column_table.
            self.assertEqual(0, len(d.string_values))
            self.assertEqual(0, len(d.num_values))
            self.assertEqual(0, len(d.binary_values))

        recommender.stop()
Esempio n. 12
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  def test_complete_row_from_datum(self):
    filter_warning()
    recommender = Recommender.run(Config())
    loader = StubLoader()

    schema = Schema({'v': Schema.ID})
    dataset = Dataset(loader, schema)
    for (idx, row_id, d) in recommender.complete_row_from_datum(dataset):
      self.assertEqual(0, len(d.string_values))
      self.assertEqual(0, len(d.num_values))
      self.assertEqual(0, len(d.binary_values))

    schema = Schema({'v': Schema.NUMBER})
    dataset = Dataset(loader, schema)
    for (idx, row_id, d) in recommender.complete_row_from_datum(dataset):
      self.assertEqual(None, row_id)    # there is no id in column_table.
      self.assertEqual(0, len(d.string_values))
      self.assertEqual(0, len(d.num_values))
      self.assertEqual(0, len(d.binary_values))

    recommender.stop()
Esempio n. 13
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    def test_clear_row(self):
        recommender = Recommender.run(Config())
        loader = StubLoader()

        # dataset must have id when execute `clear_row`.
        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)

        def func():
            for _ in recommender.clear_row(dataset):
                pass

        self.assertRaises(RuntimeError, lambda: func())

        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)

        # expect to get False when table is empty.
        for (idx, row_id, result) in recommender.clear_row(dataset):
            self.assertEqual(result, True)

        recommender.stop()
Esempio n. 14
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    def test_complete_row_from_id(self):
        filter_warning()
        recommender = Recommender.run(Config())
        loader = StubLoader()

        # dataset must have id when execute `complete_row_from_id`
        schema = Schema({'v': Schema.NUMBER})
        dataset = Dataset(loader, schema)

        def func():
            for _ in recommender.complete_row_from_id(dataset):
                pass

        self.assertRaises(RuntimeError, lambda: func())

        schema = Schema({'v': Schema.ID})
        dataset = Dataset(loader, schema)
        for (idx, row_id, d) in recommender.complete_row_from_id(dataset):
            self.assertEqual(0, len(d.string_values))
            self.assertEqual(0, len(d.num_values))
            self.assertEqual(0, len(d.binary_values))

        recommender.stop()
Esempio n. 15
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 def test_embedded(self):
     recommender = Recommender.run(Config(), embedded=True)
Esempio n. 16
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# Load a CSV file.
loader = CSVLoader('npb.csv')

# Define a Schema that defines types for each columns of the CSV file.
schema = Schema({
  'name': Schema.ID,
  'team': Schema.STRING,
}, Schema.NUMBER)

# Create a Dataset.
dataset = Dataset(loader, schema)

# Create an Recommender Service.
cfg = Config(method='lsh')
recommender = Recommender.run(cfg)

# Update the Recommender model.
for (idx, row_id, success) in recommender.update_row(dataset):
  pass

# Calculate the similarity in recommender model from row-id and display top-2 similar items.
print('{0}\n recommend similar players from row-id \n{1}'.format('-'*60, '-'*60))
for (idx, row_id, result) in recommender.similar_row_from_id(dataset, size=3):
  if idx % 10 == 0:
    print('player {0} is similar to : {1} (score:{2:.3f}), {3} (score:{4:.3f})'.format(
          result[0].id, result[1].id, result[1].score, result[2].id, result[2].score))

# Define a Schema without `name`.
schema = Schema({
  'name': Schema.IGNORE,
Esempio n. 17
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 def test_embedded(self):
   recommender = Recommender.run(Config(), embedded=True)
Esempio n. 18
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# Load a CSV file.
loader = CSVLoader('npb.csv')

# Define a Schema that defines types for each columns of the CSV file.
schema = Schema({
    'name': Schema.ID,
    'team': Schema.STRING,
}, Schema.NUMBER)

# Create a Dataset.
dataset = Dataset(loader, schema)

# Create an Recommender Service.
cfg = Config(method='lsh')
recommender = Recommender.run(cfg)

# Update the Recommender model.
for (idx, row_id, success) in recommender.update_row(dataset):
    pass

# Calculate the similarity in recommender model from row-id and display top-2 similar items.
print('{0}\n recommend similar players from row-id \n{1}'.format(
    '-' * 60, '-' * 60))
for (idx, row_id, result) in recommender.similar_row_from_id(dataset, size=3):
    if idx % 10 == 0:
        print(
            'player {0} is similar to : {1} (score:{2:.3f}), {3} (score:{4:.3f})'
            .format(result[0].id, result[1].id, result[1].score, result[2].id,
                    result[2].score))