def test_predict_flattened(): client = PredictionServiceClient(credentials=credentials.AnonymousCredentials(),) # Mock the actual call within the gRPC stub, and fake the request. with mock.patch.object(type(client._transport.predict), "__call__") as call: # Designate an appropriate return value for the call. call.return_value = prediction_service.PredictResponse() # Call the method with a truthy value for each flattened field, # using the keyword arguments to the method. client.predict( name="name_value", payload=data_items.ExamplePayload( image=data_items.Image(image_bytes=b"image_bytes_blob") ), params={"key_value": "value_value"}, ) # Establish that the underlying call was made with the expected # request object values. assert len(call.mock_calls) == 1 _, args, _ = call.mock_calls[0] assert args[0].name == "name_value" assert args[0].payload == data_items.ExamplePayload( image=data_items.Image(image_bytes=b"image_bytes_blob") ) assert args[0].params == {"key_value": "value_value"}
def test_predict_flattened_error(): client = PredictionServiceClient(credentials=credentials.AnonymousCredentials(),) # Attempting to call a method with both a request object and flattened # fields is an error. with pytest.raises(ValueError): client.predict( prediction_service.PredictRequest(), name="name_value", payload=data_items.ExamplePayload( image=data_items.Image(image_bytes=b"image_bytes_blob") ), params={"key_value": "value_value"}, )
def test_predict( transport: str = "grpc", request_type=prediction_service.PredictRequest ): client = PredictionServiceClient( credentials=credentials.AnonymousCredentials(), transport=transport, ) # Everything is optional in proto3 as far as the runtime is concerned, # and we are mocking out the actual API, so just send an empty request. request = request_type() # Mock the actual call within the gRPC stub, and fake the request. with mock.patch.object(type(client._transport.predict), "__call__") as call: # Designate an appropriate return value for the call. call.return_value = prediction_service.PredictResponse() response = client.predict(request) # Establish that the underlying gRPC stub method was called. assert len(call.mock_calls) == 1 _, args, _ = call.mock_calls[0] assert args[0] == prediction_service.PredictRequest() # Establish that the response is the type that we expect. assert isinstance(response, prediction_service.PredictResponse)
def test_predict_field_headers(): client = PredictionServiceClient(credentials=credentials.AnonymousCredentials(),) # Any value that is part of the HTTP/1.1 URI should be sent as # a field header. Set these to a non-empty value. request = prediction_service.PredictRequest() request.name = "name/value" # Mock the actual call within the gRPC stub, and fake the request. with mock.patch.object(type(client._transport.predict), "__call__") as call: call.return_value = prediction_service.PredictResponse() client.predict(request) # Establish that the underlying gRPC stub method was called. assert len(call.mock_calls) == 1 _, args, _ = call.mock_calls[0] assert args[0] == request # Establish that the field header was sent. _, _, kw = call.mock_calls[0] assert ("x-goog-request-params", "name=name/value",) in kw["metadata"]