|  TensorFlow 1 version |  View source on GitHub | 
A return type for a serving_input_receiver_fn.
tf.estimator.export.TensorServingInputReceiver(
    features, receiver_tensors, receiver_tensors_alternatives=None
)
This is for use with models that expect a single Tensor or SparseTensor
as an input feature, as opposed to a dict of features.
The normal ServingInputReceiver always returns a feature dict, even if it
contains only one entry, and so can be used only with models that accept such
a dict.  For models that accept only a single raw feature, the
serving_input_receiver_fn provided to Estimator.export_saved_model()
should return this TensorServingInputReceiver instead.  See:
https://github.com/tensorflow/tensorflow/issues/11674
Note that the receiver_tensors and receiver_tensor_alternatives arguments
will be automatically converted to the dict representation in either case,
because the SavedModel format requires each input Tensor to have a name
(provided by the dict key).
| Attributes | |
|---|---|
| features | A single TensororSparseTensor, representing the feature to
be passed to the model. | 
| receiver_tensors | A Tensor,SparseTensor, or dict of string toTensororSparseTensor, specifying input nodes where this receiver expects to
be fed by default.  Typically, this is a single placeholder expecting
serializedtf.Exampleprotos. | 
| receiver_tensors_alternatives | a dict of string to additional groups of
receiver tensors, each of which may be a Tensor,SparseTensor, or dict
of string toTensororSparseTensor. These named receiver tensor
alternatives generate additional serving signatures, which may be used to
feed inputs at different points within the input receiver subgraph.  A
typical usage is to allow feeding raw featureTensors downstream of
the tf.parse_example() op. Defaults to None. |