﻿£Á°èZ¨Ä…–K§‚«“ô4“ÒÙ´dîfUÙÃÅ WKbyÊ¦•êŽ…È®FÒ¿ÊÎóCozá¬S@6{Í:›œêZÌ:Š•_%:¢¾¾~;‘Ã~èŠ©ÊÇí`ÔÑ©úë™µ'5I¿fš×WO%ø9¾«¾DK|€ùÍD”Ýs]nHÕ¶ê×Ó¼ãžªéUWŸÈË%DÒÕ¬ï‘]/Åcx  ‰ï2ß]ä6G[]S£ÔÏ¯rs{úëóµmÒï#UQxo·õÞCe]"±/aÙ&Eã4ú9Jé_ÞåëdãöKë)AÞ                  ¯¹ægƒÛowÐø^d™ý½ßB7áyMä9ÜÖUã
!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!
<html>
from collections.abc import Mapping
from typing import Any, SupportsIndex

import numpy as np
import numpy.typing as npt

def mode_func(
    ar: npt.NDArray[np.number[Any]],
    width: tuple[int, int],
    iaxis: SupportsIndex,
    kwargs: Mapping[str, Any],
) -> None: ...

AR_i8: npt.NDArray[np.int64]
AR_f8: npt.NDArray[np.float64]
AR_LIKE: list[int]

reveal_type(np.pad(AR_i8, (2, 3), "constant"))  # E: ndarray[Any, dtype[{int64}]]
reveal_type(np.pad(AR_LIKE, (2, 3), "constant"))  # E: ndarray[Any, dtype[Any]]

reveal_type(np.pad(AR_f8, (2, 3), mode_func))  # E: ndarray[Any, dtype[{float64}]]
reveal_type(np.pad(AR_f8, (2, 3), mode_func, a=1, b=2))  # E: ndarray[Any, dtype[{float64}]]
