| from typing import ( | |
| Any, | |
| Callable, | |
| Literal, | |
| ) | |
| import numpy as np | |
| from pandas._typing import ( | |
| WindowingRankType, | |
| npt, | |
| ) | |
| def roll_sum( | |
| values: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_mean( | |
| values: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_var( | |
| values: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ddof: int = ..., | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_skew( | |
| values: np.ndarray, # np.ndarray[np.float64] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_kurt( | |
| values: np.ndarray, # np.ndarray[np.float64] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_median_c( | |
| values: np.ndarray, # np.ndarray[np.float64] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_max( | |
| values: np.ndarray, # np.ndarray[np.float64] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_min( | |
| values: np.ndarray, # np.ndarray[np.float64] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_quantile( | |
| values: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| quantile: float, # float64_t | |
| interpolation: Literal["linear", "lower", "higher", "nearest", "midpoint"], | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_rank( | |
| values: np.ndarray, | |
| start: np.ndarray, | |
| end: np.ndarray, | |
| minp: int, | |
| percentile: bool, | |
| method: WindowingRankType, | |
| ascending: bool, | |
| ) -> np.ndarray: ... # np.ndarray[float] | |
| def roll_apply( | |
| obj: object, | |
| start: np.ndarray, # np.ndarray[np.int64] | |
| end: np.ndarray, # np.ndarray[np.int64] | |
| minp: int, # int64_t | |
| function: Callable[..., Any], | |
| raw: bool, | |
| args: tuple[Any, ...], | |
| kwargs: dict[str, Any], | |
| ) -> npt.NDArray[np.float64]: ... | |
| def roll_weighted_sum( | |
| values: np.ndarray, # const float64_t[:] | |
| weights: np.ndarray, # const float64_t[:] | |
| minp: int, | |
| ) -> np.ndarray: ... # np.ndarray[np.float64] | |
| def roll_weighted_mean( | |
| values: np.ndarray, # const float64_t[:] | |
| weights: np.ndarray, # const float64_t[:] | |
| minp: int, | |
| ) -> np.ndarray: ... # np.ndarray[np.float64] | |
| def roll_weighted_var( | |
| values: np.ndarray, # const float64_t[:] | |
| weights: np.ndarray, # const float64_t[:] | |
| minp: int, # int64_t | |
| ddof: int, # unsigned int | |
| ) -> np.ndarray: ... # np.ndarray[np.float64] | |
| def ewm( | |
| vals: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # const int64_t[:] | |
| end: np.ndarray, # const int64_t[:] | |
| minp: int, | |
| com: float, # float64_t | |
| adjust: bool, | |
| ignore_na: bool, | |
| deltas: np.ndarray | None = None, # const float64_t[:] | |
| normalize: bool = True, | |
| ) -> np.ndarray: ... # np.ndarray[np.float64] | |
| def ewmcov( | |
| input_x: np.ndarray, # const float64_t[:] | |
| start: np.ndarray, # const int64_t[:] | |
| end: np.ndarray, # const int64_t[:] | |
| minp: int, | |
| input_y: np.ndarray, # const float64_t[:] | |
| com: float, # float64_t | |
| adjust: bool, | |
| ignore_na: bool, | |
| bias: bool, | |
| ) -> np.ndarray: ... # np.ndarray[np.float64] | |