| from typing import Literal |
|
|
| import numpy as np |
|
|
| from pandas._typing import npt |
|
|
| def group_median_float64( |
| out: np.ndarray, |
| counts: npt.NDArray[np.int64], |
| values: np.ndarray, |
| labels: npt.NDArray[np.int64], |
| min_count: int = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_cumprod( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| is_datetimelike: bool, |
| skipna: bool = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_cumsum( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| is_datetimelike: bool, |
| skipna: bool = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_shift_indexer( |
| out: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| periods: int, |
| ) -> None: ... |
| def group_fillna_indexer( |
| out: np.ndarray, |
| labels: np.ndarray, |
| sorted_labels: npt.NDArray[np.intp], |
| mask: npt.NDArray[np.uint8], |
| limit: int, |
| dropna: bool, |
| ) -> None: ... |
| def group_any_all( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: np.ndarray, |
| val_test: Literal["any", "all"], |
| skipna: bool, |
| result_mask: np.ndarray | None, |
| ) -> None: ... |
| def group_sum( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: np.ndarray | None, |
| result_mask: np.ndarray | None = ..., |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| ) -> None: ... |
| def group_prod( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: np.ndarray | None, |
| result_mask: np.ndarray | None = ..., |
| min_count: int = ..., |
| ) -> None: ... |
| def group_var( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| min_count: int = ..., |
| ddof: int = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| is_datetimelike: bool = ..., |
| name: str = ..., |
| ) -> None: ... |
| def group_skew( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| skipna: bool = ..., |
| ) -> None: ... |
| def group_mean( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_ohlc( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| min_count: int = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_quantile( |
| out: npt.NDArray[np.float64], |
| values: np.ndarray, |
| labels: npt.NDArray[np.intp], |
| mask: npt.NDArray[np.uint8], |
| qs: npt.NDArray[np.float64], |
| starts: npt.NDArray[np.int64], |
| ends: npt.NDArray[np.int64], |
| interpolation: Literal["linear", "lower", "higher", "nearest", "midpoint"], |
| result_mask: np.ndarray | None, |
| is_datetimelike: bool, |
| ) -> None: ... |
| def group_last( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: npt.NDArray[np.bool_] | None, |
| result_mask: npt.NDArray[np.bool_] | None = ..., |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| skipna: bool = ..., |
| ) -> None: ... |
| def group_nth( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| mask: npt.NDArray[np.bool_] | None, |
| result_mask: npt.NDArray[np.bool_] | None = ..., |
| min_count: int = ..., |
| rank: int = ..., |
| is_datetimelike: bool = ..., |
| skipna: bool = ..., |
| ) -> None: ... |
| def group_rank( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| is_datetimelike: bool, |
| ties_method: Literal["average", "min", "max", "first", "dense"] = ..., |
| ascending: bool = ..., |
| pct: bool = ..., |
| na_option: Literal["keep", "top", "bottom"] = ..., |
| mask: npt.NDArray[np.bool_] | None = ..., |
| ) -> None: ... |
| def group_max( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_min( |
| out: np.ndarray, |
| counts: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_idxmin_idxmax( |
| out: npt.NDArray[np.intp], |
| counts: npt.NDArray[np.int64], |
| values: np.ndarray, |
| labels: npt.NDArray[np.intp], |
| min_count: int = ..., |
| is_datetimelike: bool = ..., |
| mask: np.ndarray | None = ..., |
| name: str = ..., |
| skipna: bool = ..., |
| result_mask: np.ndarray | None = ..., |
| ) -> None: ... |
| def group_cummin( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| is_datetimelike: bool, |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| skipna: bool = ..., |
| ) -> None: ... |
| def group_cummax( |
| out: np.ndarray, |
| values: np.ndarray, |
| labels: np.ndarray, |
| ngroups: int, |
| is_datetimelike: bool, |
| mask: np.ndarray | None = ..., |
| result_mask: np.ndarray | None = ..., |
| skipna: bool = ..., |
| ) -> None: ... |
|
|