SufficiencyOutput#
- class dataeval.workflows.SufficiencyOutput(steps: ndarray[Any, dtype[uint32]], params: dict[str, ndarray[Any, dtype[float64]]], measures: dict[str, ndarray[Any, dtype[float64]]])#
Output class for
Sufficiencyworkflow- steps#
Array of sample sizes
- Type:
NDArray
- params#
Inverse power curve coefficients for the line of best fit for each measure
- Type:
Dict[str, NDArray]
- measures#
Average of values observed for each sample size step for each measure
- Type:
Dict[str, NDArray]
- inv_project(targets: Mapping[str, ArrayLike]) dict[str, ndarray[Any, dtype[float64]]]#
Calculate training samples needed to achieve target model metric values.
- Parameters:
targets (Mapping[str, ArrayLike]) – Mapping of target metric scores (from 0.0 to 1.0) that we want to achieve, where the key is the name of the metric.
- Returns:
List of the number of training samples needed to achieve each corresponding entry in targets
- Return type:
dict[str, NDArray]
- plot(class_names: Sequence[str] | None = None) list[Figure]#
Plotting function for data sufficience tasks
- Parameters:
class_names (Sequence[str] | None, default None) – List of class names
- Returns:
List of Figures for each measure
- Return type:
list[plt.Figure]
- Raises:
ValueError – If the length of data points in the measures do not match
- project(projection: int | Iterable[int]) SufficiencyOutput#
Projects the measures for each value of X
- Parameters:
projection (int | Iterable[int]) – Step or steps to project
- Returns:
Dataclass containing the projected measures per projection
- Return type:
- Raises:
ValueError – If the length of data points in the measures do not match If projection is not numerical