示例#1
0
    def __init__(
        self,
        model,
        prefix,
        input_record,
        predict_input_record_fields=None,
        tags=None,
        **kwargs
    ):
        """
        Base class for model layers. Layer is an abstraction that allows to
        provide model description in terms of meta-operators, where each of the
        meta-operators can have different implementations for training,
        evaluation and prediction, that are instantiated later. As an example
        SampledSoftmax can do something related to sampling depending on
        supervision during the training and just apply softmax if it's used for
        prediction/evaluation.

        All inputs/outputs from layers are represented as a record (instance of
        schema bounded to blobs) and are accessible through input_record and
        output_schema. If Layer needs to have only a subset of inputs/provides
        subset of outputs during the inference - it should provide
        predict_input_record and predict_output_schema correspondingly (those
        records are expected to be a subset of input_record/output_schema).

        Each layer has a list of Tags associated with it, that depends on
        current context and arguments. It's possible to use those tags during
        the instantiation time.

        """
        self.name = model.next_layer_name(prefix)
        self.model = model
        self.kwargs = kwargs
        self._input_record = input_record
        if predict_input_record_fields:
            if not isinstance(predict_input_record_fields, list):
                predict_input_record_fields = [predict_input_record_fields]
            self._predict_input_record = self._input_record[predict_input_record_fields]
        else:
            self._predict_input_record = None

        self.request_only = True
        if len(input_record.all_scalars()) == 0:
            self.request_only = False
        for scalar in input_record.all_scalars():
            if not is_request_only_scalar(scalar):
                self.request_only = False
                break

        self.precomputation_request_only = False
        self.precomputation_object_only = False

        self._output_schema = None
        self._predict_output_schema = None
        self.eval_output_schema = None
        self.tags = set(tags or [])
        self.tags.update(TagContext.current().tags)
        self.params = []
        self._export_output_for_metrics = False
        self._export_params_for_metrics = False
示例#2
0
文件: layers.py 项目: Ralfhund/caffe2
    def __init__(self, model, prefix, input_record,
                 predict_input_record_fields=None, tags=None, **kwargs):
        """
        Base class for model layers. Layer is an abstraction that allows to
        provide model description in terms of meta-operators, where each of the
        meta-operators can have different implementations for training,
        evaluation and prediction, that are instantiated later. As an example
        SampledSoftmax can do something related to sampling depending on
        supervision during the training and just apply softmax if it's used for
        prediction/evaluation.

        All inputs/outputs from layers are represented as a record (instance of
        schema bounded to blobs) and are accessible through input_record and
        output_schema. If Layer needs to have only a subset of inputs/provides
        subset of outputs during the inference - it should provide
        predict_input_record and predict_output_schema correspondingly (those
        records are expected to be a subset of input_record/output_schema).

        Each layer has a list of Tags associated with it, that depends on
        current context and arguments. It's possible to use those tags during
        the instantiation time.

        """
        self.name = model.next_layer_name(prefix)
        self.model = model
        self.kwargs = kwargs
        self._input_record = input_record
        if predict_input_record_fields:
            if not isinstance(predict_input_record_fields, list):
                predict_input_record_fields = [predict_input_record_fields]
            self._predict_input_record = self._input_record[
                predict_input_record_fields]
        else:
            self._predict_input_record = None

        self.request_only = True
        if len(input_record.all_scalars()) == 0:
            self.request_only = False
        for scalar in input_record.all_scalars():
            if not is_request_only_scalar(scalar):
                self.request_only = False
                break

        self._output_schema = None
        self._predict_output_schema = None
        self.eval_output_schema = None
        self.tags = set(tags or [])
        self.tags.update(TagContext.current().tags)
        self.params = []
        self._export_output_for_metrics = False
        self._export_params_for_metrics = False
示例#3
0
 def __init__(self, model, prefix, input_record, tags=set(), **kwargs):
     self.name = model.next_layer_name(prefix)
     self.model = model
     self.kwargs = kwargs
     self.input_record = input_record
     self.request_only = True
     if len(input_record.all_scalars()) == 0:
         self.request_only = False
     for scalar in input_record.all_scalars():
         if not _is_request_only_scalar(scalar):
             self.request_only = False
             break
     self.output_schema = None
     self.tags = set(tags)
     self.tags.update(TagContext.current().tags)
     self.params = []
示例#4
0
文件: layers.py 项目: zhxxhit/caffe2
 def __init__(self, model, prefix, input_record, tags=set(), **kwargs):
     self.name = model.next_block_name(prefix)
     self.model = model
     self.kwargs = kwargs
     self.input_record = input_record
     self.request_only = True
     if len(input_record.all_scalars()) == 0:
         self.request_only = False
     for scalar in input_record.all_scalars():
         if not _is_request_only_scalar(scalar):
             self.request_only = False
             break
     self.output_schema = None
     self.tags = set(tags)
     self.tags.update(TagContext.current().tags)
     self.params = []