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This is unreleased documentation for Rasa Documentation Main/Unreleased version.
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Version: Main/Unreleased

rasa.core.training

extract_story_graph

def extract_story_graph(
resource_name: Text,
domain: "Domain",
exclusion_percentage: Optional[int] = None) -> "StoryGraph"

Loads training stories / rules from file or directory.

Arguments:

  • resource_name - Path to file or directory.
  • domain - The model domain.
  • exclusion_percentage - Percentage of stories which should be dropped. None if all training data should be used.

Returns:

The loaded training data as graph.

load_data

def load_data(
resource_name: Union[Text, "TrainingDataImporter"],
domain: "Domain",
remove_duplicates: bool = True,
unique_last_num_states: Optional[int] = None,
augmentation_factor: int = 50,
tracker_limit: Optional[int] = None,
use_story_concatenation: bool = True,
debug_plots: bool = False,
exclusion_percentage: Optional[int] = None
) -> List["TrackerWithCachedStates"]

Load training data from a resource.

Arguments:

  • resource_name - resource to load the data from. either a path or an importer
  • domain - domain used for loading
  • remove_duplicates - should duplicated training examples be removed?
  • unique_last_num_states - number of states in a conversation that make the a tracker unique (this is used to identify duplicates) augmentation_factor: by how much should the story training data be augmented tracker_limit: maximum number of trackers to generate during augmentation use_story_concatenation: should stories be concatenated when doing data augmentation debug_plots: generate debug plots during loading exclusion_percentage: how much data to exclude

Returns:

list of loaded trackers