tpcp.misc.TypedIterator#
- class tpcp.misc.TypedIterator(data_type: type[DataclassT], aggregations: Sequence[tuple[str, Callable[[list, list], Any]]] = cf([]))[source]#
Helper to iterate over data and collect results.
- Parameters:
- data_type
A dataclass that defines the result type you expect from each iteration.
- aggregations
An optional list of aggregations to apply to the results. This has the form
[(result_name, aggregation_function), ...]. If a result-name is in the list, the aggregation will be applied to it, when accessing the respective result attribute (i.e.{result_name}_). If no aggregation is defined for a result, a simple list of all results will be returned.- NULL_VALUE
(Class attribute) The value that is used to initialize the result dataclass and will remain in the results, if no result was for a specific attribute in one or more iterations.
- Attributes:
- inputs_
List of all input elements that were iterated over.
- raw_results_
List of all results as dataclass instances. The attribute of the dataclass instance will have the value of
_NOT_SETif no result was set. To check for this, you can useisinstance(val, TypedIterator.NULL_VALUE).- {result_name}_
The aggregated results for the respective result name.
- done_
True, if the iterator is done. If the iterator is not done, but you try to access the results, a warning will be raised.
Methods
clone()Create a new instance of the class with all parameters copied over.
get_params([deep])Get parameters for this algorithm.
iterate(iterable)Iterate over the given iterable and yield the input and a new empty result object for each iteration.
set_params(**params)Set the parameters of this Algorithm.
- clone() Self[source]#
Create a new instance of the class with all parameters copied over.
This will create a new instance of the class itself and all nested objects
- get_params(deep: bool = True) dict[str, Any][source]#
Get parameters for this algorithm.
- Parameters:
- deep
Only relevant if object contains nested algorithm objects. If this is the case and deep is True, the params of these nested objects are included in the output using a prefix like
nested_object_name__(Note the two “_” at the end)
- Returns:
- params
Parameter names mapped to their values.
- iterate(iterable: Iterable[T]) Iterator[tuple[T, DataclassT]][source]#
Iterate over the given iterable and yield the input and a new empty result object for each iteration.
- Parameters:
- iterable
The iterable to iterate over.
- Yields:
- input, result_object
The input and a new empty result object. The result object is a dataclass instance of the type defined in
self.data_type. All values of the result object are set toTypedIterator.NULL_VALUEby default.