TensorFlow 1 version
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A return type for a serving_input_receiver_fn.
tf.estimator.export.ServingInputReceiver(
    features, receiver_tensors, receiver_tensors_alternatives=None
)
The expected return values are:
  features: A Tensor, SparseTensor, or dict of string or int to Tensor
    or SparseTensor, specifying the features to be passed to the model.
    Note: if features passed is not a dict, it will be wrapped in a dict
    with a single entry, using 'feature' as the key.  Consequently, the model
    must accept a feature dict of the form {'feature': tensor}.  You may use
    TensorServingInputReceiver if you want the tensor to be passed as is.
  receiver_tensors: A Tensor, SparseTensor, or dict of string to Tensor
    or SparseTensor, specifying input nodes where this receiver expects to
    be fed by default.  Typically, this is a single placeholder expecting
    serialized tf.Example protos.
  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 to Tensor orSparseTensor.
    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
    feature Tensors downstream of the tf.parse_example() op.
    Defaults to None.
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features
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receiver_tensors
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receiver_tensors_alternatives
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  TensorFlow 1 version
    View source on GitHub