def test_should_not_build_custom_parser_when_provided(self):
        # Given
        dataset_stream = io.StringIO("""
---
type: intent
name: MakeTea
utterances:
- make me a [beverage_temperature:Temperature](hot) cup of tea
- make me [number_of_cups:snips/number](five) tea cups

---
type: intent
name: MakeCoffee
utterances:
- make me [number_of_cups:snips/number](one) cup of coffee please
- brew [number_of_cups] cups of coffee""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json
        resources = load_resources("en")
        custom_entity_parser = CustomEntityParser.build(
            dataset, CustomEntityParserUsage.WITH_AND_WITHOUT_STEMS, resources)

        # When
        with patch("snips_nlu.entity_parser.custom_entity_parser"
                   ".CustomEntityParser.build") as mocked_build_parser:
            engine = SnipsNLUEngine(
                custom_entity_parser=custom_entity_parser)
            engine.fit(dataset)

        # Then
        mocked_build_parser.assert_not_called()
    def test_should_not_load_resources_when_provided(
            self, mocked_load_resources):
        # Given
        dataset_stream = io.StringIO("""
---
type: intent
name: MakeTea
utterances:
- make me a [beverage_temperature:Temperature](hot) cup of tea
- make me [number_of_cups:snips/number](five) tea cups

---
type: intent
name: MakeCoffee
utterances:
- make me [number_of_cups:snips/number](one) cup of coffee please
- brew [number_of_cups] cups of coffee""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json
        resources = load_resources("en")

        # When
        engine = SnipsNLUEngine(resources=resources)
        engine.fit(dataset)

        # Then
        mocked_load_resources.assert_not_called()
    def test_should_not_build_builtin_parser_when_provided(self):
        # Given
        dataset_stream = io.StringIO("""
---
type: intent
name: MakeTea
utterances:
- make me a [beverage_temperature:Temperature](hot) cup of tea
- make me [number_of_cups:snips/number](five) tea cups

---
type: intent
name: MakeCoffee
utterances:
- make me [number_of_cups:snips/number](one) cup of coffee please
- brew [number_of_cups] cups of coffee""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json
        dataset = validate_and_format_dataset(dataset)
        builtin_entity_parser = BuiltinEntityParser.build(language="en")

        # When
        with patch("snips_nlu.entity_parser.builtin_entity_parser"
                   ".BuiltinEntityParser.build") as mocked_build_parser:
            engine = SnipsNLUEngine(
                builtin_entity_parser=builtin_entity_parser)
            engine.fit(dataset)

        # Then
        mocked_build_parser.assert_not_called()
Beispiel #4
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    def test_training_should_be_reproducible(self):
        # Given
        random_state = 42
        dataset_stream = io.StringIO("""
---
type: intent
name: MakeTea
utterances:
- make me a hot cup of tea
- make me five tea cups

---
type: intent
name: MakeCoffee
utterances:
- make me one cup of coffee please
- brew two cups of coffee""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json

        # When
        engine1 = SnipsNLUEngine(random_state=random_state)
        engine1.fit(dataset)

        engine2 = SnipsNLUEngine(random_state=random_state)
        engine2.fit(dataset)

        # Then
        with temp_dir() as tmp_dir:
            dir_engine1 = tmp_dir / "engine1"
            dir_engine2 = tmp_dir / "engine2"
            engine1.persist(dir_engine1)
            engine2.persist(dir_engine2)
            hash1 = dirhash(str(dir_engine1), 'sha256')
            hash2 = dirhash(str(dir_engine2), 'sha256')
            self.assertEqual(hash1, hash2)
    def test_should_fit_and_parse_empty_intent(self):
        # Given
        dataset = {
            "intents": {
                "dummy_intent": {
                    "utterances": [
                        {
                            "data": [
                                {
                                    "text": " "
                                }
                            ]
                        }
                    ]
                }
            },
            "language": "en",
            "entities": dict()
        }

        engine = SnipsNLUEngine(resources=self.get_resources("en"))

        # When / Then
        engine.fit(dataset)
        engine.parse("ya", intents=["dummy_intent"])
    def test_should_retrain_only_non_trained_subunits(self):
        # Given
        dataset_stream = io.StringIO("""
---
type: intent
name: greeting1
utterances:
- hello [greeted:name](john)""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json

        @IntentParser.register("test_intent_parser", True)
        class TestIntentParser(MockIntentParser):
            def __init__(self, config=None, **shared):
                super(TestIntentParser, self).__init__(config, **shared)
                self.sub_unit_1 = dict(fitted=False, calls=0)
                self.sub_unit_2 = dict(fitted=False, calls=0)

            def fit(self, dataset, force_retrain):
                if force_retrain:
                    self.sub_unit_1["fitted"] = True
                    self.sub_unit_1["calls"] += 1
                    self.sub_unit_2["fitted"] = True
                    self.sub_unit_2["calls"] += 1
                else:
                    if not self.sub_unit_1["fitted"]:
                        self.sub_unit_1["fitted"] = True
                        self.sub_unit_1["calls"] += 1
                    if not self.sub_unit_2["fitted"]:
                        self.sub_unit_2["fitted"] = True
                        self.sub_unit_2["calls"] += 1

                return self

            @property
            def fitted(self):
                return self.sub_unit_1["fitted"] and \
                       self.sub_unit_2["fitted"]

        nlu_engine_config = NLUEngineConfig(["test_intent_parser"])
        nlu_engine = SnipsNLUEngine(nlu_engine_config)

        intent_parser = TestIntentParser()
        intent_parser.sub_unit_1.update(dict(fitted=True, calls=0))
        nlu_engine.intent_parsers.append(intent_parser)

        # When
        nlu_engine.fit(dataset, force_retrain=False)

        # Then
        self.assertDictEqual(dict(fitted=True, calls=0),
                             intent_parser.sub_unit_1)
        self.assertDictEqual(dict(fitted=True, calls=1),
                             intent_parser.sub_unit_2)
    def test_nlu_engine_should_train_and_parse_in_all_languages(self):
        # Given
        dataset_stream = io.StringIO("""
---
type: intent
name: MakeTea
utterances:
- make me a [beverage_temperature:Temperature](hot) cup of tea
- make me [number_of_cups:snips/number](five) tea cups
- i want [number_of_cups] cups of [beverage_temperature](boiling hot) tea pls
- can you prepare [number_of_cups] cup of [beverage_temperature](cold) tea ?

---
type: intent
name: MakeCoffee
utterances:
- make me [number_of_cups:snips/number](one) cup of coffee please
- brew [number_of_cups] cups of coffee
- can you prepare [number_of_cups] cup of coffee""")
        dataset = Dataset.from_yaml_files("en", [dataset_stream]).json
        text = "please brew me a cup of coffee"
        for language in get_all_languages():
            dataset[LANGUAGE] = language
            engine = SnipsNLUEngine()

            # When / Then
            msg = "Could not fit engine in '%s'" % language
            with self.fail_if_exception(msg):
                engine = engine.fit(dataset)

            msg = "Could not parse in '%s'" % language
            with self.fail_if_exception(msg):
                res = engine.parse(text)
            self.assertEqual("MakeCoffee", res[RES_INTENT][RES_INTENT_NAME])
Beispiel #8
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    def test_nlu_engine_should_train_and_parse_in_all_languages(self):
        # Given
        text = "brew me an espresso"
        for language in get_all_languages():
            dataset = deepcopy(BEVERAGE_DATASET)
            dataset[LANGUAGE] = language
            engine = SnipsNLUEngine()

            # When / Then
            msg = "Could not fit engine in '%s'" % language
            with self.fail_if_exception(msg):
                engine = engine.fit(dataset)

            msg = "Could not parse in '%s'" % language
            with self.fail_if_exception(msg):
                engine.parse(text)
Beispiel #9
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    def test_nlu_engine_should_train_and_parse_in_all_languages(self):
        # Given
        text = "brew me an espresso"
        for language in get_all_languages():
            dataset = deepcopy(BEVERAGE_DATASET)
            dataset[LANGUAGE] = language
            engine = SnipsNLUEngine()

            # When / Then
            msg = "Could not fit engine in '%s'" % language
            with self.fail_if_exception(msg):
                engine = engine.fit(dataset)

            msg = "Could not parse in '%s'" % language
            with self.fail_if_exception(msg):
                engine.parse(text)
Beispiel #10
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    def test_should_handle_keyword_entities(self, mocked_regex_parse,
                                            mocked_crf_parse):
        # Given
        dataset = {
            "snips_nlu_version": "1.1.1",
            "intents": {
                "dummy_intent_1": {
                    "utterances": [{
                        "data": [{
                            "text": "dummy_1",
                            "entity": "dummy_entity_1",
                            "slot_name": "dummy_slot_name"
                        }, {
                            "text": " dummy_2",
                            "entity": "dummy_entity_2",
                            "slot_name": "other_dummy_slot_name"
                        }]
                    }]
                }
            },
            "entities": {
                "dummy_entity_1": {
                    "use_synonyms":
                    True,
                    "automatically_extensible":
                    False,
                    "data": [{
                        "value": "dummy1",
                        "synonyms": ["dummy1", "dummy1_bis"]
                    }, {
                        "value": "dummy2",
                        "synonyms": ["dummy2", "dummy2_bis"]
                    }]
                },
                "dummy_entity_2": {
                    "use_synonyms": False,
                    "automatically_extensible": True,
                    "data": [{
                        "value": "dummy2",
                        "synonyms": ["dummy2"]
                    }]
                }
            },
            "language": "en"
        }

        text = "dummy_3 dummy_4"
        mocked_crf_intent = intent_classification_result("dummy_intent_1", 1.0)
        mocked_crf_slots = [
            unresolved_slot(match_range=(0, 7),
                            value="dummy_3",
                            entity="dummy_entity_1",
                            slot_name="dummy_slot_name"),
            unresolved_slot(match_range=(8, 15),
                            value="dummy_4",
                            entity="dummy_entity_2",
                            slot_name="other_dummy_slot_name")
        ]

        mocked_regex_parse.return_value = empty_result(text)
        mocked_crf_parse.return_value = parsing_result(text, mocked_crf_intent,
                                                       mocked_crf_slots)

        engine = SnipsNLUEngine()

        # When
        engine = engine.fit(dataset)
        result = engine.parse(text)

        # Then
        expected_slot = custom_slot(
            unresolved_slot(match_range=(8, 15),
                            value="dummy_4",
                            entity="dummy_entity_2",
                            slot_name="other_dummy_slot_name"))
        expected_result = parsing_result(text,
                                         intent=mocked_crf_intent,
                                         slots=[expected_slot])
        self.assertEqual(expected_result, result)
Beispiel #11
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    def test_should_retrain_only_non_trained_subunits(self):
        # Given
        class TestIntentParserConfig(ProcessingUnitConfig):
            unit_name = "test_intent_parser"

            def to_dict(self):
                return {"unit_name": self.unit_name}

            @classmethod
            def from_dict(cls, obj_dict):
                return TestIntentParserConfig()

        class TestIntentParser(IntentParser):
            unit_name = "test_intent_parser"
            config_type = TestIntentParserConfig

            def __init__(self, config):
                super(TestIntentParser, self).__init__(config)
                self.sub_unit_1 = dict(fitted=False, calls=0)
                self.sub_unit_2 = dict(fitted=False, calls=0)

            def fit(self, dataset, force_retrain):
                if force_retrain:
                    self.sub_unit_1["fitted"] = True
                    self.sub_unit_1["calls"] += 1
                    self.sub_unit_2["fitted"] = True
                    self.sub_unit_2["calls"] += 1
                else:
                    if not self.sub_unit_1["fitted"]:
                        self.sub_unit_1["fitted"] = True
                        self.sub_unit_1["calls"] += 1
                    if not self.sub_unit_2["fitted"]:
                        self.sub_unit_2["fitted"] = True
                        self.sub_unit_2["calls"] += 1

                return self

            @property
            def fitted(self):
                return self.sub_unit_1["fitted"] and \
                       self.sub_unit_2["fitted"]

            def parse(self, text, intents):
                return empty_result(text)

            def to_dict(self):
                return {
                    "unit_name": self.unit_name,
                }

            @classmethod
            def from_dict(cls, unit_dict):
                conf = cls.config_type()
                return TestIntentParser(conf)

        register_processing_unit(TestIntentParser)

        intent_parser_config = TestIntentParserConfig()
        nlu_engine_config = NLUEngineConfig([intent_parser_config])
        nlu_engine = SnipsNLUEngine(nlu_engine_config)

        intent_parser = TestIntentParser(intent_parser_config)
        intent_parser.sub_unit_1.update(dict(fitted=True, calls=0))
        nlu_engine.intent_parsers.append(intent_parser)

        # When
        nlu_engine.fit(SAMPLE_DATASET, force_retrain=False)

        # Then
        self.assertDictEqual(dict(fitted=True, calls=0),
                             intent_parser.sub_unit_1)
        self.assertDictEqual(dict(fitted=True, calls=1),
                             intent_parser.sub_unit_2)
Beispiel #12
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    def test_should_retrain_only_non_trained_subunits(self):
        # Given
        class TestIntentParserConfig(ProcessingUnitConfig):
            unit_name = "test_intent_parser"

            def to_dict(self):
                return {"unit_name": self.unit_name}

            @classmethod
            def from_dict(cls, obj_dict):
                return TestIntentParserConfig()

            def get_required_resources(self):
                return None

        class TestIntentParser(IntentParser):
            unit_name = "test_intent_parser"
            config_type = TestIntentParserConfig

            def __init__(self, config):
                super(TestIntentParser, self).__init__(config)
                self.sub_unit_1 = dict(fitted=False, calls=0)
                self.sub_unit_2 = dict(fitted=False, calls=0)

            def fit(self, dataset, force_retrain):
                if force_retrain:
                    self.sub_unit_1["fitted"] = True
                    self.sub_unit_1["calls"] += 1
                    self.sub_unit_2["fitted"] = True
                    self.sub_unit_2["calls"] += 1
                else:
                    if not self.sub_unit_1["fitted"]:
                        self.sub_unit_1["fitted"] = True
                        self.sub_unit_1["calls"] += 1
                    if not self.sub_unit_2["fitted"]:
                        self.sub_unit_2["fitted"] = True
                        self.sub_unit_2["calls"] += 1

                return self

            @property
            def fitted(self):
                return self.sub_unit_1["fitted"] and \
                       self.sub_unit_2["fitted"]

            def parse(self, text, intents):
                return empty_result(text)

            def persist(self, path):
                path = Path(path)
                path.mkdir()
                with (path / "metadata.json").open(mode="w") as f:
                    f.write(json_string({"unit_name": self.unit_name}))

            @classmethod
            def from_path(cls, path):
                cfg = cls.config_type()
                return cls(cfg)

        register_processing_unit(TestIntentParser)

        intent_parser_config = TestIntentParserConfig()
        nlu_engine_config = NLUEngineConfig([intent_parser_config])
        nlu_engine = SnipsNLUEngine(nlu_engine_config)

        intent_parser = TestIntentParser(intent_parser_config)
        intent_parser.sub_unit_1.update(dict(fitted=True, calls=0))
        nlu_engine.intent_parsers.append(intent_parser)

        # When
        nlu_engine.fit(SAMPLE_DATASET, force_retrain=False)

        # Then
        self.assertDictEqual(dict(fitted=True, calls=0),
                             intent_parser.sub_unit_1)
        self.assertDictEqual(dict(fitted=True, calls=1),
                             intent_parser.sub_unit_2)
Beispiel #13
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    def test_should_handle_keyword_entities(self, mocked_regex_parse,
                                            mocked_crf_parse):
        # Given
        dataset = {
            "snips_nlu_version": "1.1.1",
            "intents": {
                "dummy_intent_1": {
                    "utterances": [
                        {
                            "data": [
                                {
                                    "text": "dummy_1",
                                    "entity": "dummy_entity_1",
                                    "slot_name": "dummy_slot_name"
                                },
                                {
                                    "text": " dummy_2",
                                    "entity": "dummy_entity_2",
                                    "slot_name": "other_dummy_slot_name"
                                }
                            ]
                        }
                    ]
                }
            },
            "entities": {
                "dummy_entity_1": {
                    "use_synonyms": True,
                    "automatically_extensible": False,
                    "data": [
                        {
                            "value": "dummy1",
                            "synonyms": [
                                "dummy1",
                                "dummy1_bis"
                            ]
                        },
                        {
                            "value": "dummy2",
                            "synonyms": [
                                "dummy2",
                                "dummy2_bis"
                            ]
                        }
                    ]
                },
                "dummy_entity_2": {
                    "use_synonyms": False,
                    "automatically_extensible": True,
                    "data": [
                        {
                            "value": "dummy2",
                            "synonyms": [
                                "dummy2"
                            ]
                        }
                    ]
                }
            },
            "language": "en"
        }

        text = "dummy_3 dummy_4"
        mocked_crf_intent = intent_classification_result("dummy_intent_1", 1.0)
        mocked_crf_slots = [unresolved_slot(match_range=(0, 7),
                                            value="dummy_3",
                                            entity="dummy_entity_1",
                                            slot_name="dummy_slot_name"),
                            unresolved_slot(match_range=(8, 15),
                                            value="dummy_4",
                                            entity="dummy_entity_2",
                                            slot_name="other_dummy_slot_name")]

        mocked_regex_parse.return_value = empty_result(text)
        mocked_crf_parse.return_value = parsing_result(
            text, mocked_crf_intent, mocked_crf_slots)

        engine = SnipsNLUEngine()

        # When
        engine = engine.fit(dataset)
        result = engine.parse(text)

        # Then
        expected_slot = custom_slot(unresolved_slot(
            match_range=(8, 15), value="dummy_4", entity="dummy_entity_2",
            slot_name="other_dummy_slot_name"))
        expected_result = parsing_result(text, intent=mocked_crf_intent,
                                         slots=[expected_slot])
        self.assertEqual(expected_result, result)
Beispiel #14
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    def test_should_retrain_only_non_trained_subunits(self):
        # Given
        class TestIntentParserConfig(ProcessingUnitConfig):
            unit_name = "test_intent_parser"

            def to_dict(self):
                return {"unit_name": self.unit_name}

            @classmethod
            def from_dict(cls, obj_dict):
                return TestIntentParserConfig()

        class TestIntentParser(IntentParser):
            unit_name = "test_intent_parser"
            config_type = TestIntentParserConfig

            def __init__(self, config):
                super(TestIntentParser, self).__init__(config)
                self.sub_unit_1 = dict(fitted=False, calls=0)
                self.sub_unit_2 = dict(fitted=False, calls=0)

            def fit(self, dataset, force_retrain):
                if force_retrain:
                    self.sub_unit_1["fitted"] = True
                    self.sub_unit_1["calls"] += 1
                    self.sub_unit_2["fitted"] = True
                    self.sub_unit_2["calls"] += 1
                else:
                    if not self.sub_unit_1["fitted"]:
                        self.sub_unit_1["fitted"] = True
                        self.sub_unit_1["calls"] += 1
                    if not self.sub_unit_2["fitted"]:
                        self.sub_unit_2["fitted"] = True
                        self.sub_unit_2["calls"] += 1

                return self

            @property
            def fitted(self):
                return self.sub_unit_1["fitted"] and \
                       self.sub_unit_2["fitted"]

            def parse(self, text, intents):
                return empty_result(text)

            def to_dict(self):
                return {
                    "unit_name": self.unit_name,
                }

            @classmethod
            def from_dict(cls, unit_dict):
                conf = cls.config_type()
                return TestIntentParser(conf)

        register_processing_unit(TestIntentParser)

        intent_parser_config = TestIntentParserConfig()
        nlu_engine_config = NLUEngineConfig([intent_parser_config])
        nlu_engine = SnipsNLUEngine(nlu_engine_config)

        intent_parser = TestIntentParser(intent_parser_config)
        intent_parser.sub_unit_1.update(dict(fitted=True, calls=0))
        nlu_engine.intent_parsers.append(intent_parser)

        # When
        nlu_engine.fit(SAMPLE_DATASET, force_retrain=False)

        # Then
        self.assertDictEqual(dict(fitted=True, calls=0),
                             intent_parser.sub_unit_1)
        self.assertDictEqual(dict(fitted=True, calls=1),
                             intent_parser.sub_unit_2)