def create_context( self, request: Union[gcd_context.CreateContextRequest, dict] = None, *, parent: str = None, context: gcd_context.Context = None, retry: OptionalRetry = gapic_v1.method.DEFAULT, timeout: float = None, metadata: Sequence[Tuple[str, str]] = (), ) -> gcd_context.Context: r"""Creates a context. If the specified context already exists, overrides the context. .. code-block:: python from google.cloud import dialogflow_v2 def sample_create_context(): # Create a client client = dialogflow_v2.ContextsClient() # Initialize request argument(s) context = dialogflow_v2.Context() context.name = "name_value" request = dialogflow_v2.CreateContextRequest( parent="parent_value", context=context, ) # Make the request response = client.create_context(request=request) # Handle the response print(response) Args: request (Union[google.cloud.dialogflow_v2.types.CreateContextRequest, dict]): The request object. The request message for [Contexts.CreateContext][google.cloud.dialogflow.v2.Contexts.CreateContext]. parent (str): Required. The session to create a context for. Format: ``projects/<Project ID>/agent/sessions/<Session ID>`` or ``projects/<Project ID>/agent/environments/<Environment ID>/users/<User ID>/sessions/<Session ID>``. If ``Environment ID`` is not specified, we assume default 'draft' environment. If ``User ID`` is not specified, we assume default '-' user. This corresponds to the ``parent`` field on the ``request`` instance; if ``request`` is provided, this should not be set. context (google.cloud.dialogflow_v2.types.Context): Required. The context to create. This corresponds to the ``context`` 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.dialogflow_v2.types.Context: Dialogflow contexts are similar to natural language context. If a person says to you "they are orange", you need context in order to understand what "they" is referring to. Similarly, for Dialogflow to handle an end-user expression like that, it needs to be provided with context in order to correctly match an intent. Using contexts, you can control the flow of a conversation. You can configure contexts for an intent by setting input and output contexts, which are identified by string names. When an intent is matched, any configured output contexts for that intent become active. While any contexts are active, Dialogflow is more likely to match intents that are configured with input contexts that correspond to the currently active contexts. For more information about context, see the [Contexts guide](\ https://cloud.google.com/dialogflow/docs/contexts-overview). """ # Create or coerce a protobuf request object. # Quick check: If we got a request object, we should *not* have # gotten any keyword arguments that map to the request. has_flattened_params = any([parent, context]) 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 gcd_context.CreateContextRequest. # There's no risk of modifying the input as we've already verified # there are no flattened fields. if not isinstance(request, gcd_context.CreateContextRequest): request = gcd_context.CreateContextRequest(request) # If we have keyword arguments corresponding to fields on the # request, apply these. if parent is not None: request.parent = parent if context is not None: request.context = context # Wrap the RPC method; this adds retry and timeout information, # and friendly error handling. rpc = self._transport._wrapped_methods[self._transport.create_context] # Certain fields should be provided within the metadata header; # add these here. metadata = tuple(metadata) + (gapic_v1.routing_header.to_grpc_metadata( (("parent", request.parent), )), ) # Send the request. response = rpc( request, retry=retry, timeout=timeout, metadata=metadata, ) # Done; return the response. return response
async def create_context( self, request: gcd_context.CreateContextRequest = None, *, parent: str = None, context: gcd_context.Context = None, retry: retries.Retry = gapic_v1.method.DEFAULT, timeout: float = None, metadata: Sequence[Tuple[str, str]] = (), ) -> gcd_context.Context: r"""Creates a context. If the specified context already exists, overrides the context. Args: request (:class:`~.gcd_context.CreateContextRequest`): The request object. The request message for [Contexts.CreateContext][google.cloud.dialogflow.v2.Contexts.CreateContext]. parent (:class:`str`): Required. The session to create a context for. Format: ``projects/<Project ID>/agent/sessions/<Session ID>`` or ``projects/<Project ID>/agent/environments/<Environment ID>/users/<User ID>/sessions/<Session ID>``. If ``Environment ID`` is not specified, we assume default 'draft' environment. If ``User ID`` is not specified, we assume default '-' user. This corresponds to the ``parent`` field on the ``request`` instance; if ``request`` is provided, this should not be set. context (:class:`~.gcd_context.Context`): Required. The context to create. This corresponds to the ``context`` 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: ~.gcd_context.Context: Dialogflow contexts are similar to natural language context. If a person says to you "they are orange", you need context in order to understand what "they" is referring to. Similarly, for Dialogflow to handle an end-user expression like that, it needs to be provided with context in order to correctly match an intent. Using contexts, you can control the flow of a conversation. You can configure contexts for an intent by setting input and output contexts, which are identified by string names. When an intent is matched, any configured output contexts for that intent become active. While any contexts are active, Dialogflow is more likely to match intents that are configured with input contexts that correspond to the currently active contexts. For more information about context, see the `Contexts guide <https://cloud.google.com/dialogflow/docs/contexts-overview>`__. """ # 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([parent, context]) 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 = gcd_context.CreateContextRequest(request) # If we have keyword arguments corresponding to fields on the # request, apply these. if parent is not None: request.parent = parent if context is not None: request.context = context # Wrap the RPC method; this adds retry and timeout information, # and friendly error handling. rpc = gapic_v1.method_async.wrap_method( self._client._transport.create_context, default_timeout=None, client_info=DEFAULT_CLIENT_INFO, ) # Certain fields should be provided within the metadata header; # add these here. metadata = tuple(metadata) + (gapic_v1.routing_header.to_grpc_metadata( (("parent", request.parent), )), ) # Send the request. response = await rpc( request, retry=retry, timeout=timeout, metadata=metadata, ) # Done; return the response. return response