示例#1
0
    def analyze_entity_sentiment(
        self,
        request: language_service.AnalyzeEntitySentimentRequest = None,
        *,
        document: language_service.Document = None,
        encoding_type: language_service.EncodingType = None,
        retry: retries.Retry = gapic_v1.method.DEFAULT,
        timeout: float = None,
        metadata: Sequence[Tuple[str, str]] = (),
    ) -> language_service.AnalyzeEntitySentimentResponse:
        r"""Finds entities, similar to
        [AnalyzeEntities][google.cloud.language.v1beta2.LanguageService.AnalyzeEntities]
        in the text and analyzes sentiment associated with each entity
        and its mentions.

        Args:
            request (google.cloud.language_v1beta2.types.AnalyzeEntitySentimentRequest):
                The request object. The entity-level sentiment analysis
                request message.
            document (google.cloud.language_v1beta2.types.Document):
                Required. Input document.
                This corresponds to the ``document`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            encoding_type (google.cloud.language_v1beta2.types.EncodingType):
                The encoding type used by the API to
                calculate offsets.

                This corresponds to the ``encoding_type`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry.Retry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, str]]): Strings which should be
                sent along with the request as metadata.

        Returns:
            google.cloud.language_v1beta2.types.AnalyzeEntitySentimentResponse:
                The entity-level sentiment analysis
                response message.

        """
        # Create or coerce a protobuf request object.
        # Sanity check: If we got a request object, we should *not* have
        # gotten any keyword arguments that map to the request.
        has_flattened_params = any([document, encoding_type])
        if request is not None and has_flattened_params:
            raise ValueError("If the `request` argument is set, then none of "
                             "the individual field arguments should be set.")

        # Minor optimization to avoid making a copy if the user passes
        # in a language_service.AnalyzeEntitySentimentRequest.
        # There's no risk of modifying the input as we've already verified
        # there are no flattened fields.
        if not isinstance(request,
                          language_service.AnalyzeEntitySentimentRequest):
            request = language_service.AnalyzeEntitySentimentRequest(request)
            # If we have keyword arguments corresponding to fields on the
            # request, apply these.
            if document is not None:
                request.document = document
            if encoding_type is not None:
                request.encoding_type = encoding_type

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._transport._wrapped_methods[
            self._transport.analyze_entity_sentiment]

        # Send the request.
        response = rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response
    async def analyze_entity_sentiment(
        self,
        request: language_service.AnalyzeEntitySentimentRequest = None,
        *,
        document: language_service.Document = None,
        encoding_type: language_service.EncodingType = None,
        retry: retries.Retry = gapic_v1.method.DEFAULT,
        timeout: float = None,
        metadata: Sequence[Tuple[str, str]] = (),
    ) -> language_service.AnalyzeEntitySentimentResponse:
        r"""Finds entities, similar to
        [AnalyzeEntities][google.cloud.language.v1beta2.LanguageService.AnalyzeEntities]
        in the text and analyzes sentiment associated with each entity
        and its mentions.

        Args:
            request (:class:`google.cloud.language_v1beta2.types.AnalyzeEntitySentimentRequest`):
                The request object. The entity-level sentiment analysis
                request message.
            document (:class:`google.cloud.language_v1beta2.types.Document`):
                Required. Input document.
                This corresponds to the ``document`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            encoding_type (:class:`google.cloud.language_v1beta2.types.EncodingType`):
                The encoding type used by the API to
                calculate offsets.

                This corresponds to the ``encoding_type`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry.Retry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, str]]): Strings which should be
                sent along with the request as metadata.

        Returns:
            google.cloud.language_v1beta2.types.AnalyzeEntitySentimentResponse:
                The entity-level sentiment analysis
                response message.

        """
        # Create or coerce a protobuf request object.
        # Sanity check: If we got a request object, we should *not* have
        # gotten any keyword arguments that map to the request.
        has_flattened_params = any([document, encoding_type])
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        request = language_service.AnalyzeEntitySentimentRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if document is not None:
            request.document = document
        if encoding_type is not None:
            request.encoding_type = encoding_type

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = gapic_v1.method_async.wrap_method(
            self._client._transport.analyze_entity_sentiment,
            default_retry=retries.Retry(
                initial=0.1,
                maximum=60.0,
                multiplier=1.3,
                predicate=retries.if_exception_type(
                    core_exceptions.DeadlineExceeded,
                    core_exceptions.ServiceUnavailable,
                ),
                deadline=600.0,
            ),
            default_timeout=600.0,
            client_info=DEFAULT_CLIENT_INFO,
        )

        # Send the request.
        response = await rpc(request, retry=retry, timeout=timeout, metadata=metadata,)

        # Done; return the response.
        return response