1

I have a small problem with a customs policy in rasa for actions. I build a policy that selects the actions randomly, however when use the command "rasa shell" and chat with the bot, it does not return any answer only this error:

2022-01-14 20:50:46 WARNING rasa.core.processor - Circuit breaker tripped. Stopped predicting more actions for sender '36716023155644c88aaca2c245cec779'.

my code is:

@DefaultV1Recipe.register(DefaultV1Recipe.ComponentType.POLICY_WITHOUT_END_TO_END_SUPPORT,     is_trainable=False      )
class RandomPolicy(Policy):
 def __init__(self, 
    config: Dict[Text, Any],
    model_storage: ModelStorage,
    resource: Resource,
    execution_context: ExecutionContext,
    featurizer: Optional[TrackerFeaturizer] = None) -> None:

    super().__init__(config, model_storage, resource, execution_context, featurizer=featurizer)

@classmethod
def required_components(cls) -> List[Type]:
    """Components that should be included in the pipeline before this component."""
    return []

@staticmethod
def get_default_config() -> Dict[Text, Any]:
    """Returns the component's default config.

    Default config and user config are merged by the `GraphNode` before the
    config is passed to the `create` and `load` method of the component.

    Returns:
        The default config of the component.
    """
    return {
        'enable_feature_string_compression': True,
        'use_nlu_confidence_as_score': False,
        'priority': 1,
        'max_history': None
    }


@classmethod
def create(
    cls,
    config: Dict[Text, Any],
    model_storage: ModelStorage,
    resource: Resource,
    execution_context: ExecutionContext,
) -> RandomPolicy:
    """Creates a new `GraphComponent`.

    Args:
        config: This config overrides the `default_config`.
        model_storage: Storage which graph components can use to persist and load
            themselves.
        resource: Resource locator for this component which can be used to persist
            and load itself from the `model_storage`.
        execution_context: Information about the current graph run.

    Returns: An instantiated `GraphComponent`.
    """
    return cls(config, model_storage, resource, execution_context)


def train(
    self, 
    training_trackers: List[TrackerWithCachedStates], 
    domain: Domain,
    precomputations: Optional[MessageContainerForCoreFeaturization] = None,
    **kwargs: Any) -> Resource:

    print(training_trackers[0].as_dialogue().as_dict())
           
    return self._resource

def process(self, messages: List[Message]) -> List[Message]:
    # This is the method which Rasa Open Source will call during inference.
    #print("msg", messages)
    return messages

def predict_action_probabilities(
    self, 
    tracker: DialogueStateTracker, 
    domain: Domain, 
    rule_only_data: Optional[Dict[Text, Any]] = None, 
    **kwargs: Any) -> PolicyPrediction:


    #print(tracker.past_states(domain))

    action     = random.choice(domain.as_dict()['actions'])
    index_act  = domain.as_dict()['actions'].index(action)
    len_action = len(domain.as_dict()['actions'])

    prediction    = [0.0]*len_action
    prediction[index_act] = 1.0
    
    return self._prediction(prediction)

@classmethod
def load(
    cls,
    config: Dict[Text, Any],
    model_storage: ModelStorage,
    resource: Resource,
    execution_context: ExecutionContext,
    **kwargs: Any,
) -> RandomPolicy:
    """Creates a component using a persisted version of itself.

    If not overridden this method merely calls `create`.

    Args:
        config: The config for this graph component. This is the default config of
            the component merged with config specified by the user.
        model_storage: Storage which graph components can use to persist and load
            themselves.
        resource: Resource locator for this component which can be used to persist
            and load itself from the `model_storage`.
        execution_context: Information about the current graph run.
        kwargs: Output values from previous nodes might be passed in as `kwargs`.

    Returns:
        An instantiated, loaded `GraphComponent`.
    """
    return cls.create(config, model_storage, resource, execution_context)

@staticmethod
def supported_languages() -> Optional[List[Text]]:
    """Determines which languages this component can work with.

    Returns: A list of supported languages, or `None` to signify all are supported.
    """
    return None

@staticmethod
def not_supported_languages() -> Optional[List[Text]]:
    """Determines which languages this component cannot work with.

    Returns: A list of not supported languages, or
        `None` to signify all are supported.
    """
    return None

@staticmethod
def required_packages() -> List[Text]:
    """Any extra python dependencies required for this component to run."""
    return []

1 Answer 1

0

The problem was easy to solve, basically the prediction would have to take into account the previous state of the conversation. Here is a code example:

def predict_action_probabilities(
    self, 
    tracker: DialogueStateTracker, 
    domain: Domain, 
    rule_only_data: Optional[Dict[Text, Any]] = None, 
    **kwargs: Any) -> PolicyPrediction:


    prediction    = self._default_predictions(domain)
    if tracker.past_states(domain)[-1]['prev_action']['action_name'] == 'action_listen':
        list_action   = [
            (index, action) for index, action in enumerate(domain.action_names_or_texts)
            if 'utter' in action
        ]
        index_act     = random.choice(list(range(list_action[0][0], list_action[-1][0])))
        prediction[index_act] = 1.0
        
    else:
        prediction[0] = 1.0
    
    return self._prediction(prediction)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.