tf.estimator.EstimatorSpec
       Ops and objects returned from a model_fn and passed to an Estimator.
  
tf.estimator.EstimatorSpec(
    mode, predictions=None, loss=None, train_op=None, eval_metric_ops=None,
    export_outputs=None, training_chief_hooks=None, training_hooks=None,
    scaffold=None, evaluation_hooks=None, prediction_hooks=None
)
  EstimatorSpec fully defines the model to be run by an Estimator.
  
 
 | Args | 
|---|
 
 | mode | A ModeKeys. Specifies if this is training, evaluation or prediction. | 
 | predictions | Predictions Tensoror dict ofTensor. | 
 | loss | Training loss Tensor. Must be either scalar, or with shape[1]. | 
 | train_op | Op for the training step. | 
 | eval_metric_ops | Dict of metric results keyed by name. The values of the dict can be one of the following: (1) instance of Metricclass. (2) Results of calling a metric function, namely a(metric_tensor, update_op)tuple.metric_tensorshould be evaluated without any impact on state (typically is a pure computation results based on variables.). For example, it should not trigger theupdate_opor requires any input fetching. | 
 | export_outputs | Describes the output signatures to be exported to SavedModeland used during serving. A dict{name: output}where: name: An arbitrary name for this output.output: an ExportOutputobject such asClassificationOutput,RegressionOutput, orPredictOutput. Single-headed models only need to specify one entry in this dictionary. Multi-headed models should specify one entry for each head, one of which must be named usingtf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY. If no entry is provided, a defaultPredictOutputmapping topredictionswill be created. | 
 | training_chief_hooks | Iterable of tf.train.SessionRunHookobjects to run on the chief worker during training. | 
 | training_hooks | Iterable of tf.train.SessionRunHookobjects to run on all workers during training. | 
 | scaffold | A tf.train.Scaffoldobject that can be used to set initialization, saver, and more to be used in training. | 
 | evaluation_hooks | Iterable of tf.train.SessionRunHookobjects to run during evaluation. | 
 | prediction_hooks | Iterable of tf.train.SessionRunHookobjects to run during predictions. | 
 
  
 
 | Raises | 
|---|
 
 | ValueError | If validation fails. | 
 | TypeError | If any of the arguments is not the expected type. | 
 
  
 
 | Attributes | 
|---|
 
 | mode |  | 
 | predictions |  | 
 | loss |  | 
 | train_op |  | 
 | eval_metric_ops |  | 
 | export_outputs |  | 
 | training_chief_hooks |  | 
 | training_hooks |  | 
 | scaffold |  | 
 | evaluation_hooks |  | 
 | prediction_hooks |  |