Source code for azure.ai.textanalytics.aio._text_analytics_client_async

# ------------------------------------
# Copyright (c) Microsoft Corporation.
# Licensed under the MIT License.
# ------------------------------------
# pylint: disable=too-many-lines

from typing import Union, Any, List, Dict, TYPE_CHECKING
from functools import partial
from azure.core.async_paging import AsyncItemPaged
from azure.core.tracing.decorator_async import distributed_trace_async
from azure.core.exceptions import HttpResponseError
from azure.core.credentials import AzureKeyCredential
from ._base_client_async import AsyncTextAnalyticsClientBase
from .._request_handlers import (
    _validate_input,
    _determine_action_type,
)
from .._validate import validate_multiapi_args, check_for_unsupported_actions_types
from .._version import DEFAULT_API_VERSION
from .._response_handlers import (
    process_http_response_error,
    entities_result,
    linked_entities_result,
    key_phrases_result,
    sentiment_result,
    language_result,
    pii_entities_result,
)
from ._response_handlers_async import healthcare_paged_result, analyze_paged_result
from .._models import (
    DetectLanguageInput,
    TextDocumentInput,
    DetectLanguageResult,
    RecognizeEntitiesResult,
    RecognizeLinkedEntitiesResult,
    ExtractKeyPhrasesResult,
    AnalyzeSentimentResult,
    DocumentError,
    RecognizePiiEntitiesResult,
    RecognizeEntitiesAction,
    RecognizePiiEntitiesAction,
    ExtractKeyPhrasesAction,
    _AnalyzeActionsType,
    RecognizeLinkedEntitiesAction,
    AnalyzeSentimentAction,
    AnalyzeHealthcareEntitiesResult,
    ExtractSummaryAction,
    ExtractSummaryResult,
    RecognizeCustomEntitiesAction,
    RecognizeCustomEntitiesResult,
    SingleCategoryClassifyAction,
    SingleCategoryClassifyResult,
    MultiCategoryClassifyAction,
    MultiCategoryClassifyResult,
    AnalyzeHealthcareEntitiesAction
)
from .._check import is_language_api, string_index_type_compatibility
from .._lro import TextAnalyticsOperationResourcePolling
from ._lro_async import (
    AsyncAnalyzeHealthcareEntitiesLROPollingMethod,
    AsyncAnalyzeActionsLROPollingMethod,
    AsyncAnalyzeHealthcareEntitiesLROPoller,
    AsyncAnalyzeActionsLROPoller,
)


if TYPE_CHECKING:
    from azure.core.credentials_async import AsyncTokenCredential


[docs]class TextAnalyticsClient(AsyncTextAnalyticsClientBase): """The Language service API is a suite of natural language processing (NLP) skills built with the best-in-class Microsoft machine learning algorithms. The API can be used to analyze unstructured text for tasks such as sentiment analysis, key phrase extraction, entities recognition, and language detection, and more. Further documentation can be found in https://docs.microsoft.com/azure/cognitive-services/language-service/overview :param str endpoint: Supported Cognitive Services or Language resource endpoints (protocol and hostname, for example: 'https://<resource-name>.cognitiveservices.azure.com'). :param credential: Credentials needed for the client to connect to Azure. This can be the an instance of AzureKeyCredential if using a Cognitive Services/Language API key or a token credential from :mod:`azure.identity`. :type credential: ~azure.core.credentials.AzureKeyCredential or ~azure.core.credentials_async.AsyncTokenCredential :keyword str default_country_hint: Sets the default country_hint to use for all operations. Defaults to "US". If you don't want to use a country hint, pass the string "none". :keyword str default_language: Sets the default language to use for all operations. Defaults to "en". :keyword api_version: The API version of the service to use for requests. It defaults to the latest service version. Setting to an older version may result in reduced feature compatibility. :paramtype api_version: str or ~azure.ai.textanalytics.TextAnalyticsApiVersion .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_authentication_async.py :start-after: [START create_ta_client_with_key_async] :end-before: [END create_ta_client_with_key_async] :language: python :dedent: 4 :caption: Creating the TextAnalyticsClient with endpoint and API key. .. literalinclude:: ../samples/async_samples/sample_authentication_async.py :start-after: [START create_ta_client_with_aad_async] :end-before: [END create_ta_client_with_aad_async] :language: python :dedent: 4 :caption: Creating the TextAnalyticsClient with endpoint and token credential from Azure Active Directory. """ def __init__( self, endpoint: str, credential: Union[AzureKeyCredential, "AsyncTokenCredential"], **kwargs: Any ) -> None: super().__init__( endpoint=endpoint, credential=credential, **kwargs ) self._api_version = kwargs.get("api_version", DEFAULT_API_VERSION) self._default_language = kwargs.pop("default_language", "en") self._default_country_hint = kwargs.pop("default_country_hint", "US") self._string_code_unit = ( None if kwargs.get("api_version") == "v3.0" else "UnicodeCodePoint" )
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.0", args_mapping={"v3.1": ["disable_service_logs"]} ) async def detect_language( self, documents: Union[List[str], List[DetectLanguageInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[DetectLanguageResult, DocumentError]]: """Detect language for a batch of documents. Returns the detected language and a numeric score between zero and one. Scores close to one indicate 100% certainty that the identified language is true. See https://aka.ms/talangs for the list of enabled languages. See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and country_hint on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.DetectLanguageInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.DetectLanguageInput`, like `{"id": "1", "country_hint": "us", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.DetectLanguageInput] or list[dict[str, str]] :keyword str country_hint: Country of origin hint for the entire batch. Accepts two letter country codes specified by ISO 3166-1 alpha-2. Per-document country hints will take precedence over whole batch hints. Defaults to "US". If you don't want to use a country hint, pass the string "none". :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword bool disable_service_logs: If set to true, you opt-out of having your text input logged on the service side for troubleshooting. By default, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Setting this parameter to true, disables input logging and may limit our ability to remediate issues that occur. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.DetectLanguageResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.DetectLanguageResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *disable_service_logs* keyword argument. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_detect_language_async.py :start-after: [START detect_language_async] :end-before: [END detect_language_async] :language: python :dedent: 4 :caption: Detecting language in a batch of documents. """ country_hint_arg = kwargs.pop("country_hint", None) country_hint = ( country_hint_arg if country_hint_arg is not None else self._default_country_hint ) docs = _validate_input(documents, "country_hint", country_hint) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) disable_service_logs = kwargs.pop("disable_service_logs", None) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextLanguageDetectionInput( analysis_input={"documents": docs}, parameters=models.LanguageDetectionTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version ) ), show_stats=show_stats, cls=kwargs.pop("cls", language_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.languages( documents=docs, model_version=model_version, show_stats=show_stats, logging_opt_out=disable_service_logs, cls=kwargs.pop("cls", language_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.0", args_mapping={"v3.1": ["string_index_type", "disable_service_logs"]} ) async def recognize_entities( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[RecognizeEntitiesResult, DocumentError]]: """Recognize entities for a batch of documents. Identifies and categorizes entities in your text as people, places, organizations, date/time, quantities, percentages, currencies, and more. For the list of supported entity types, check: https://aka.ms/taner See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword str string_index_type: Specifies the method used to interpret string offsets. `UnicodeCodePoint`, the Python encoding, is the default. To override the Python default, you can also pass in `Utf16CodeUnit` or `TextElement_v8`. For additional information see https://aka.ms/text-analytics-offsets :keyword bool disable_service_logs: If set to true, you opt-out of having your text input logged on the service side for troubleshooting. By default, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Setting this parameter to true, disables input logging and may limit our ability to remediate issues that occur. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.RecognizeEntitiesResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.RecognizeEntitiesResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *disable_service_logs* and *string_index_type* keyword arguments. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_recognize_entities_async.py :start-after: [START recognize_entities_async] :end-before: [END recognize_entities_async] :language: python :dedent: 4 :caption: Recognize entities in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language docs = _validate_input(documents, "language", language) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) disable_service_logs = kwargs.pop("disable_service_logs", None) string_index_type = kwargs.pop("string_index_type", self._string_code_unit) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextEntityRecognitionInput( analysis_input={"documents": docs}, parameters=models.EntitiesTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version, string_index_type=string_index_type_compatibility(string_index_type), ) ), show_stats=show_stats, cls=kwargs.pop("cls", entities_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.entities_recognition_general( documents=docs, model_version=model_version, show_stats=show_stats, string_index_type=string_index_type, logging_opt_out=disable_service_logs, cls=kwargs.pop("cls", entities_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.1" ) async def recognize_pii_entities( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[RecognizePiiEntitiesResult, DocumentError]]: """Recognize entities containing personal information for a batch of documents. Returns a list of personal information entities ("SSN", "Bank Account", etc) in the document. For the list of supported entity types, check https://aka.ms/tanerpii See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword domain_filter: Filters the response entities to ones only included in the specified domain. I.e., if set to 'phi', will only return entities in the Protected Healthcare Information domain. See https://aka.ms/tanerpii for more information. :paramtype domain_filter: str or ~azure.ai.textanalytics.PiiEntityDomain :keyword categories_filter: Instead of filtering over all PII entity categories, you can pass in a list of the specific PII entity categories you want to filter out. For example, if you only want to filter out U.S. social security numbers in a document, you can pass in `[PiiEntityCategory.US_SOCIAL_SECURITY_NUMBER]` for this kwarg. :paramtype categories_filter: list[str or ~azure.ai.textanalytics.PiiEntityCategory] :keyword str string_index_type: Specifies the method used to interpret string offsets. `UnicodeCodePoint`, the Python encoding, is the default. To override the Python default, you can also pass in `Utf16CodeUnit` or `TextElement_v8`. For additional information see https://aka.ms/text-analytics-offsets :keyword bool disable_service_logs: Defaults to true, meaning that the Language service will not log your input text on the service side for troubleshooting. If set to False, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.RecognizePiiEntitiesResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.RecognizePiiEntitiesResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *recognize_pii_entities* client method. .. admonition:: Example: .. literalinclude:: ../samples/sample_recognize_pii_entities.py :start-after: [START recognize_pii_entities] :end-before: [END recognize_pii_entities] :language: python :dedent: 4 :caption: Recognize personally identifiable information entities in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language docs = _validate_input(documents, "language", language) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) domain_filter = kwargs.pop("domain_filter", None) categories_filter = kwargs.pop("categories_filter", None) string_index_type = kwargs.pop("string_index_type", self._string_code_unit) disable_service_logs = kwargs.pop("disable_service_logs", None) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextPiiEntitiesRecognitionInput( analysis_input={"documents": docs}, parameters=models.PiiTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version, domain=domain_filter, pii_categories=categories_filter, string_index_type=string_index_type_compatibility(string_index_type), ) ), show_stats=show_stats, cls=kwargs.pop("cls", pii_entities_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.entities_recognition_pii( documents=docs, model_version=model_version, show_stats=show_stats, domain=domain_filter, pii_categories=categories_filter, logging_opt_out=disable_service_logs, string_index_type=string_index_type, cls=kwargs.pop("cls", pii_entities_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.0", args_mapping={"v3.1": ["string_index_type", "disable_service_logs"]} ) async def recognize_linked_entities( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[RecognizeLinkedEntitiesResult, DocumentError]]: """Recognize linked entities from a well-known knowledge base for a batch of documents. Identifies and disambiguates the identity of each entity found in text (for example, determining whether an occurrence of the word Mars refers to the planet, or to the Roman god of war). Recognized entities are associated with URLs to a well-known knowledge base, like Wikipedia. See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword str string_index_type: Specifies the method used to interpret string offsets. `UnicodeCodePoint`, the Python encoding, is the default. To override the Python default, you can also pass in `Utf16CodeUnit` or `TextElement_v8`. For additional information see https://aka.ms/text-analytics-offsets :keyword bool disable_service_logs: If set to true, you opt-out of having your text input logged on the service side for troubleshooting. By default, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Setting this parameter to true, disables input logging and may limit our ability to remediate issues that occur. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.RecognizeLinkedEntitiesResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.RecognizeLinkedEntitiesResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *disable_service_logs* and *string_index_type* keyword arguments. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_recognize_linked_entities_async.py :start-after: [START recognize_linked_entities_async] :end-before: [END recognize_linked_entities_async] :language: python :dedent: 4 :caption: Recognize linked entities in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language docs = _validate_input(documents, "language", language) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) disable_service_logs = kwargs.pop("disable_service_logs", None) string_index_type = kwargs.pop("string_index_type", self._string_code_unit) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextEntityLinkingInput( analysis_input={"documents": docs}, parameters=models.EntityLinkingTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version, string_index_type=string_index_type_compatibility(string_index_type), ) ), show_stats=show_stats, cls=kwargs.pop("cls", linked_entities_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.entities_linking( documents=docs, logging_opt_out=disable_service_logs, model_version=model_version, string_index_type=string_index_type, show_stats=show_stats, cls=kwargs.pop("cls", linked_entities_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.0", args_mapping={"v3.1": ["disable_service_logs"]} ) async def extract_key_phrases( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[ExtractKeyPhrasesResult, DocumentError]]: """Extract key phrases from a batch of documents. Returns a list of strings denoting the key phrases in the input text. For example, for the input text "The food was delicious and there were wonderful staff", the API returns the main talking points: "food" and "wonderful staff" See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword bool disable_service_logs: If set to true, you opt-out of having your text input logged on the service side for troubleshooting. By default, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Setting this parameter to true, disables input logging and may limit our ability to remediate issues that occur. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.ExtractKeyPhrasesResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.ExtractKeyPhrasesResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *disable_service_logs* keyword argument. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_extract_key_phrases_async.py :start-after: [START extract_key_phrases_async] :end-before: [END extract_key_phrases_async] :language: python :dedent: 4 :caption: Extract the key phrases in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language docs = _validate_input(documents, "language", language) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) disable_service_logs = kwargs.pop("disable_service_logs", None) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextKeyPhraseExtractionInput( analysis_input={"documents": docs}, parameters=models.KeyPhraseTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version, ) ), show_stats=show_stats, cls=kwargs.pop("cls", key_phrases_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.key_phrases( documents=docs, model_version=model_version, show_stats=show_stats, logging_opt_out=disable_service_logs, cls=kwargs.pop("cls", key_phrases_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.0", args_mapping={"v3.1": ["show_opinion_mining", "disable_service_logs", "string_index_type"]} ) async def analyze_sentiment( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> List[Union[AnalyzeSentimentResult, DocumentError]]: """Analyze sentiment for a batch of documents. Turn on opinion mining with `show_opinion_mining`. Returns a sentiment prediction, as well as sentiment scores for each sentiment class (Positive, Negative, and Neutral) for the document and each sentence within it. See https://aka.ms/azsdk/textanalytics/data-limits for service data limits. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword bool show_opinion_mining: Whether to mine the opinions of a sentence and conduct more granular analysis around the aspects of a product or service (also known as aspect-based sentiment analysis). If set to true, the returned :class:`~azure.ai.textanalytics.SentenceSentiment` objects will have property `mined_opinions` containing the result of this analysis. Only available for API version v3.1 and up. :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics in the `statistics` field of the document-level response. :keyword str string_index_type: Specifies the method used to interpret string offsets. `UnicodeCodePoint`, the Python encoding, is the default. To override the Python default, you can also pass in `Utf16CodeUnit` or `TextElement_v8`. For additional information see https://aka.ms/text-analytics-offsets :keyword bool disable_service_logs: If set to true, you opt-out of having your text input logged on the service side for troubleshooting. By default, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the service's natural language processing functions. Setting this parameter to true, disables input logging and may limit our ability to remediate issues that occur. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: The combined list of :class:`~azure.ai.textanalytics.AnalyzeSentimentResult` and :class:`~azure.ai.textanalytics.DocumentError` in the order the original documents were passed in. :rtype: list[~azure.ai.textanalytics.AnalyzeSentimentResult or ~azure.ai.textanalytics.DocumentError] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *show_opinion_mining*, *disable_service_logs*, and *string_index_type* keyword arguments. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_analyze_sentiment_async.py :start-after: [START analyze_sentiment_async] :end-before: [END analyze_sentiment_async] :language: python :dedent: 4 :caption: Analyze sentiment in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language docs = _validate_input(documents, "language", language) model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) show_opinion_mining = kwargs.pop("show_opinion_mining", None) disable_service_logs = kwargs.pop("disable_service_logs", None) string_index_type = kwargs.pop("string_index_type", self._string_code_unit) try: if is_language_api(self._api_version): models = self._client.models(api_version=self._api_version) return await self._client.analyze_text( body=models.AnalyzeTextSentimentAnalysisInput( analysis_input={"documents": docs}, parameters=models.SentimentAnalysisTaskParameters( logging_opt_out=disable_service_logs, model_version=model_version, string_index_type=string_index_type_compatibility(string_index_type), opinion_mining=show_opinion_mining, ) ), show_stats=show_stats, cls=kwargs.pop("cls", sentiment_result), **kwargs ) # api_versions 3.0, 3.1 return await self._client.sentiment( documents=docs, logging_opt_out=disable_service_logs, model_version=model_version, string_index_type=string_index_type, opinion_mining=show_opinion_mining, show_stats=show_stats, cls=kwargs.pop("cls", sentiment_result), **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
def _healthcare_result_callback( self, doc_id_order, raw_response, deserialized, headers, show_stats=False ): if deserialized is None: models = self._client.models(api_version=self._api_version) response_cls = \ models.AnalyzeTextJobState if is_language_api(self._api_version) else models.HealthcareJobState deserialized = response_cls.deserialize(raw_response) return healthcare_paged_result( doc_id_order, self._client.analyze_text_job_status if is_language_api(self._api_version) else self._client.health_status, raw_response, deserialized, headers, show_stats=show_stats, )
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.1", args_mapping={"2022-04-01-preview": ["display_name", "fhir_version"]} ) async def begin_analyze_healthcare_entities( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], **kwargs: Any, ) -> AsyncAnalyzeHealthcareEntitiesLROPoller[ AsyncItemPaged[Union[AnalyzeHealthcareEntitiesResult, DocumentError]] ]: """Analyze healthcare entities and identify relationships between these entities in a batch of documents. Entities are associated with references that can be found in existing knowledge bases, such as UMLS, CHV, MSH, etc. We also extract the relations found between entities, for example in "The subject took 100 mg of ibuprofen", we would extract the relationship between the "100 mg" dosage and the "ibuprofen" medication. :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :keyword str model_version: This value indicates which model will be used for scoring, e.g. "latest", "2019-10-01". If a model-version is not specified, the API will default to the latest, non-preview version. See here for more info: https://aka.ms/text-analytics-model-versioning :keyword bool show_stats: If set to true, response will contain document level statistics. :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Text Analytics API. :keyword str display_name: An optional display name to set for the requested analysis. :keyword str fhir_version: The FHIR Spec version that the result will use to format the fhir_bundle on the result object. For additional information see https://www.hl7.org/fhir/overview.html. The only acceptable values to pass in are None and "4.0.1". The default value is None. :keyword str string_index_type: Specifies the method used to interpret string offsets. Can be one of 'UnicodeCodePoint' (default), 'Utf16CodeUnit', or 'TextElement_v8'. For additional information see https://aka.ms/text-analytics-offsets :keyword int polling_interval: Waiting time between two polls for LRO operations if no Retry-After header is present. Defaults to 5 seconds. :keyword str continuation_token: Call `continuation_token()` on the poller object to save the long-running operation (LRO) state into an opaque token. Pass the value as the `continuation_token` keyword argument to restart the LRO from a saved state. :keyword bool disable_service_logs: Defaults to true, meaning that the Language service will not log your input text on the service side for troubleshooting. If set to False, the Language service logs your input text for 48 hours, solely to allow for troubleshooting issues in providing you with the Text Analytics natural language processing functions. Please see Cognitive Services Compliance and Privacy notes at https://aka.ms/cs-compliance for additional details, and Microsoft Responsible AI principles at https://www.microsoft.com/ai/responsible-ai. :return: An instance of an AsyncAnalyzeHealthcareEntitiesLROPoller. Call `result()` on the poller object to return a heterogeneous pageable of :class:`~azure.ai.textanalytics.AnalyzeHealthcareEntitiesResult` and :class:`~azure.ai.textanalytics.DocumentError`. :rtype: ~azure.ai.textanalytics.aio.AsyncAnalyzeHealthcareEntitiesLROPoller[~azure.core.async_paging.AsyncItemPaged[ ~azure.ai.textanalytics.AnalyzeHealthcareEntitiesResult or ~azure.ai.textanalytics.DocumentError]] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *begin_analyze_healthcare_entities* client method. .. versionadded:: 2022-04-01-preview The *display_name* and *fhir_version* keyword arguments. .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_analyze_healthcare_entities_async.py :start-after: [START analyze_healthcare_entities_async] :end-before: [END analyze_healthcare_entities_async] :language: python :dedent: 4 :caption: Analyze healthcare entities in a batch of documents. """ language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language model_version = kwargs.pop("model_version", None) show_stats = kwargs.pop("show_stats", None) polling_interval = kwargs.pop("polling_interval", 5) continuation_token = kwargs.pop("continuation_token", None) string_index_type = kwargs.pop("string_index_type", self._string_code_unit) disable_service_logs = kwargs.pop("disable_service_logs", None) display_name = kwargs.pop("display_name", None) fhir_version = kwargs.pop("fhir_version", None) if continuation_token: def get_result_from_cont_token(initial_response, pipeline_response): doc_id_order = initial_response.context.options["doc_id_order"] show_stats = initial_response.context.options["show_stats"] return self._healthcare_result_callback( doc_id_order, pipeline_response, None, {}, show_stats=show_stats ) return AsyncAnalyzeHealthcareEntitiesLROPoller.from_continuation_token( polling_method=AsyncAnalyzeHealthcareEntitiesLROPollingMethod( text_analytics_client=self._client, timeout=polling_interval, **kwargs ), client=self._client._client, # pylint: disable=protected-access deserialization_callback=get_result_from_cont_token, continuation_token=continuation_token ) docs = _validate_input(documents, "language", language) doc_id_order = [doc.get("id") for doc in docs] my_cls = kwargs.pop( "cls", partial( self._healthcare_result_callback, doc_id_order, show_stats=show_stats ), ) models = self._client.models(api_version=self._api_version) try: if is_language_api(self._api_version): docs = models.MultiLanguageAnalysisInput( documents=_validate_input(documents, "language", language) ) return await self._client.begin_analyze_text_submit_job( # type: ignore body=models.AnalyzeTextJobsInput( analysis_input=docs, display_name=display_name, tasks=[ models.HealthcareLROTask( task_name="0", parameters=models.HealthcareTaskParameters( model_version=model_version, logging_opt_out=disable_service_logs, string_index_type=string_index_type_compatibility(string_index_type), fhir_version=fhir_version, ) ) ] ), cls=my_cls, polling=AsyncAnalyzeHealthcareEntitiesLROPollingMethod( text_analytics_client=self._client, timeout=polling_interval, show_stats=show_stats, doc_id_order=doc_id_order, lro_algorithms=[ TextAnalyticsOperationResourcePolling( show_stats=show_stats, ) ], **kwargs ), continuation_token=continuation_token, poller_cls=AsyncAnalyzeHealthcareEntitiesLROPoller, **kwargs ) # v3.1 return await self._client.begin_health( docs, model_version=model_version, string_index_type=string_index_type, logging_opt_out=disable_service_logs, cls=my_cls, polling=AsyncAnalyzeHealthcareEntitiesLROPollingMethod( text_analytics_client=self._client, doc_id_order=doc_id_order, show_stats=show_stats, timeout=polling_interval, lro_algorithms=[ TextAnalyticsOperationResourcePolling( show_stats=show_stats, ) ], **kwargs, ), continuation_token=continuation_token, **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)
def _analyze_result_callback( self, doc_id_order, task_order, raw_response, deserialized, headers, show_stats=False ): if deserialized is None: models = self._client.models(api_version=self._api_version) response_cls = models.AnalyzeTextJobState if is_language_api(self._api_version) else models.AnalyzeJobState deserialized = response_cls.deserialize(raw_response) return analyze_paged_result( doc_id_order, task_order, self._client.analyze_text_job_status if is_language_api(self._api_version) else self._client.analyze_status, raw_response, deserialized, headers, show_stats=show_stats, )
[docs] @distributed_trace_async @validate_multiapi_args( version_method_added="v3.1", custom_wrapper=check_for_unsupported_actions_types ) async def begin_analyze_actions( self, documents: Union[List[str], List[TextDocumentInput], List[Dict[str, str]]], actions: List[ Union[ RecognizeEntitiesAction, RecognizeLinkedEntitiesAction, RecognizePiiEntitiesAction, ExtractKeyPhrasesAction, AnalyzeSentimentAction, ExtractSummaryAction, RecognizeCustomEntitiesAction, SingleCategoryClassifyAction, MultiCategoryClassifyAction, AnalyzeHealthcareEntitiesAction, ] ], **kwargs: Any, ) -> AsyncAnalyzeActionsLROPoller[ AsyncItemPaged[ List[ Union[ RecognizeEntitiesResult, RecognizeLinkedEntitiesResult, RecognizePiiEntitiesResult, ExtractKeyPhrasesResult, AnalyzeSentimentResult, ExtractSummaryResult, RecognizeCustomEntitiesResult, SingleCategoryClassifyResult, MultiCategoryClassifyResult, AnalyzeHealthcareEntitiesResult, DocumentError, ] ] ] ]: """Start a long-running operation to perform a variety of text analysis actions over a batch of documents. We recommend you use this function if you're looking to analyze larger documents, and / or combine multiple text analysis actions into one call. Otherwise, we recommend you use the action specific endpoints, for example :func:`analyze_sentiment`. .. note:: See the service documentation for regional support of custom action features: https://aka.ms/azsdk/textanalytics/customfunctionalities :param documents: The set of documents to process as part of this batch. If you wish to specify the ID and language on a per-item basis you must use as input a list[:class:`~azure.ai.textanalytics.TextDocumentInput`] or a list of dict representations of :class:`~azure.ai.textanalytics.TextDocumentInput`, like `{"id": "1", "language": "en", "text": "hello world"}`. :type documents: list[str] or list[~azure.ai.textanalytics.TextDocumentInput] or list[dict[str, str]] :param actions: A heterogeneous list of actions to perform on the input documents. Each action object encapsulates the parameters used for the particular action type. The action results will be in the same order of the input actions. :type actions: list[RecognizeEntitiesAction or RecognizePiiEntitiesAction or ExtractKeyPhrasesAction or RecognizeLinkedEntitiesAction or AnalyzeSentimentAction or ExtractSummaryAction or RecognizeCustomEntitiesAction or SingleCategoryClassifyAction or MultiCategoryClassifyAction or AnalyzeHealthcareEntitiesAction] :keyword str display_name: An optional display name to set for the requested analysis. :keyword str language: The 2 letter ISO 639-1 representation of language for the entire batch. For example, use "en" for English; "es" for Spanish etc. If not set, uses "en" for English as default. Per-document language will take precedence over whole batch language. See https://aka.ms/talangs for supported languages in Language API. :keyword bool show_stats: If set to true, response will contain document level statistics. :keyword int polling_interval: Waiting time between two polls for LRO operations if no Retry-After header is present. Defaults to 5 seconds. :keyword str continuation_token: Call `continuation_token()` on the poller object to save the long-running operation (LRO) state into an opaque token. Pass the value as the `continuation_token` keyword argument to restart the LRO from a saved state. :return: An instance of an AsyncAnalyzeActionsLROPoller. Call `result()` on the poller object to return a pageable heterogeneous list of lists. This list of lists is first ordered by the documents you input, then ordered by the actions you input. For example, if you have documents input ["Hello", "world"], and actions :class:`~azure.ai.textanalytics.RecognizeEntitiesAction` and :class:`~azure.ai.textanalytics.AnalyzeSentimentAction`, when iterating over the list of lists, you will first iterate over the action results for the "Hello" document, getting the :class:`~azure.ai.textanalytics.RecognizeEntitiesResult` of "Hello", then the :class:`~azure.ai.textanalytics.AnalyzeSentimentResult` of "Hello". Then, you will get the :class:`~azure.ai.textanalytics.RecognizeEntitiesResult` and :class:`~azure.ai.textanalytics.AnalyzeSentimentResult` of "world". :rtype: ~azure.ai.textanalytics.aio.AsyncAnalyzeActionsLROPoller[~azure.core.async_paging.AsyncItemPaged[ list[RecognizeEntitiesResult or RecognizeLinkedEntitiesResult or RecognizePiiEntitiesResult or ExtractKeyPhrasesResult or AnalyzeSentimentResult or ExtractSummaryAction or RecognizeCustomEntitiesResult or SingleCategoryClassifyResult or MultiCategoryClassifyResult or AnalyzeHealthcareEntitiesResult or DocumentError]]] :raises ~azure.core.exceptions.HttpResponseError or TypeError or ValueError: .. versionadded:: v3.1 The *begin_analyze_actions* client method. .. versionadded:: 2022-04-01-preview The *ExtractSummaryAction*, *RecognizeCustomEntitiesAction*, *SingleCategoryClassifyAction*, *MultiCategoryClassifyAction*, and *AnalyzeHealthcareEntitiesAction* input options and the corresponding *ExtractSummaryResult*, *RecognizeCustomEntitiesResult*, *SingleCategoryClassifyResult*, *MultiCategoryClassifyResult*, and *AnalyzeHealthcareEntitiesResult* result objects .. admonition:: Example: .. literalinclude:: ../samples/async_samples/sample_analyze_actions_async.py :start-after: [START analyze_async] :end-before: [END analyze_async] :language: python :dedent: 4 :caption: Start a long-running operation to perform a variety of text analysis actions over a batch of documents. """ display_name = kwargs.pop("display_name", None) language_arg = kwargs.pop("language", None) language = language_arg if language_arg is not None else self._default_language show_stats = kwargs.pop("show_stats", None) polling_interval = kwargs.pop("polling_interval", 5) continuation_token = kwargs.pop("continuation_token", None) if continuation_token: def get_result_from_cont_token(initial_response, pipeline_response): doc_id_order = initial_response.context.options["doc_id_order"] task_id_order = initial_response.context.options["task_id_order"] show_stats = initial_response.context.options["show_stats"] return self._analyze_result_callback( doc_id_order, task_id_order, pipeline_response, None, {}, show_stats=show_stats ) return AsyncAnalyzeActionsLROPoller.from_continuation_token( polling_method=AsyncAnalyzeActionsLROPollingMethod( timeout=polling_interval, **kwargs ), client=self._client._client, # pylint: disable=protected-access deserialization_callback=get_result_from_cont_token, continuation_token=continuation_token ) models = self._client.models(api_version=self._api_version) input_model_cls = \ models.MultiLanguageAnalysisInput if is_language_api(self._api_version) else models.MultiLanguageBatchInput docs = input_model_cls( documents=_validate_input(documents, "language", language) ) doc_id_order = [doc.get("id") for doc in docs.documents] try: generated_tasks = [ action._to_generated(self._api_version, str(idx)) # pylint: disable=protected-access for idx, action in enumerate(actions) ] except AttributeError as e: raise TypeError("Unsupported action type in list.") from e task_order = [(_determine_action_type(a), a.task_name) for a in generated_tasks] try: if is_language_api(self._api_version): return await self._client.begin_analyze_text_submit_job( body=models.AnalyzeTextJobsInput( analysis_input=docs, display_name=display_name, tasks=generated_tasks ), cls=kwargs.pop( "cls", partial( self._analyze_result_callback, doc_id_order, task_order, show_stats=show_stats, ), ), polling=AsyncAnalyzeActionsLROPollingMethod( timeout=polling_interval, show_stats=show_stats, doc_id_order=doc_id_order, task_id_order=task_order, lro_algorithms=[ TextAnalyticsOperationResourcePolling( show_stats=show_stats, ) ], **kwargs ), continuation_token=continuation_token, **kwargs ) # v3.1 analyze_tasks = models.JobManifestTasks( entity_recognition_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.RECOGNIZE_ENTITIES ], entity_recognition_pii_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.RECOGNIZE_PII_ENTITIES ], key_phrase_extraction_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.EXTRACT_KEY_PHRASES ], entity_linking_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.RECOGNIZE_LINKED_ENTITIES ], sentiment_analysis_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.ANALYZE_SENTIMENT ], extractive_summarization_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.EXTRACT_SUMMARY ], custom_entity_recognition_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.RECOGNIZE_CUSTOM_ENTITIES ], custom_single_classification_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.SINGLE_CATEGORY_CLASSIFY ], custom_multi_classification_tasks=[ a for a in generated_tasks if _determine_action_type(a) == _AnalyzeActionsType.MULTI_CATEGORY_CLASSIFY ], ) analyze_body = models.AnalyzeBatchInput( display_name=display_name, tasks=analyze_tasks, analysis_input=docs ) return await self._client.begin_analyze( body=analyze_body, cls=kwargs.pop( "cls", partial( self._analyze_result_callback, doc_id_order, task_order, show_stats=show_stats, ), ), polling=AsyncAnalyzeActionsLROPollingMethod( timeout=polling_interval, show_stats=show_stats, doc_id_order=doc_id_order, task_id_order=task_order, lro_algorithms=[ TextAnalyticsOperationResourcePolling( show_stats=show_stats, ) ], **kwargs, ), continuation_token=continuation_token, **kwargs, ) except HttpResponseError as error: return process_http_response_error(error)