PNG  IHDRQgAMA a cHRMz&u0`:pQ<bKGDgmIDATxwUﹻ& ^CX(J I@ "% (** BX +*i"]j(IH{~R)[~>h{}gy)I$Ij .I$I$ʊy@}x.: $I$Ii}VZPC)I$IF ^0ʐJ$I$Q^}{"r=OzI$gRZeC.IOvH eKX $IMpxsk.쒷/&r[޳<v| .I~)@$updYRa$I |M.e JaֶpSYR6j>h%IRز if&uJ)M$I vLi=H;7UJ,],X$I1AҒJ$ XY XzI@GNҥRT)E@;]K*Mw;#5_wOn~\ DC&$(A5 RRFkvIR}l!RytRl;~^ǷJj اy뷦BZJr&ӥ8Pjw~vnv X^(I;4R=P[3]J,]ȏ~:3?[ a&e)`e*P[4]T=Cq6R[ ~ޤrXR Հg(t_HZ-Hg M$ãmL5R uk*`%C-E6/%[t X.{8P9Z.vkXŐKjgKZHg(aK9ڦmKjѺm_ \#$5,)-  61eJ,5m| r'= &ڡd%-]J on Xm|{ RҞe $eڧY XYrԮ-a7RK6h>n$5AVڴi*ֆK)mѦtmr1p| q:흺,)Oi*ֺK)ܬ֦K-5r3>0ԔHjJئEZj,%re~/z%jVMڸmrt)3]J,T K֦OvԒgii*bKiNO~%PW0=dii2tJ9Jݕ{7"I P9JKTbu,%r"6RKU}Ij2HKZXJ,妝 XYrP ެ24c%i^IK|.H,%rb:XRl1X4Pe/`x&P8Pj28Mzsx2r\zRPz4J}yP[g=L) .Q[6RjWgp FIH*-`IMRaK9TXcq*I y[jE>cw%gLRԕiFCj-ďa`#e~I j,%r,)?[gp FI˨mnWX#>mʔ XA DZf9,nKҲzIZXJ,L#kiPz4JZF,I,`61%2s $,VOϚ2/UFJfy7K> X+6 STXIeJILzMfKm LRaK9%|4p9LwJI!`NsiazĔ)%- XMq>pk$-$Q2x#N ؎-QR}ᶦHZډ)J,l#i@yn3LN`;nڔ XuX5pF)m|^0(>BHF9(cզEerJI rg7 4I@z0\JIi䵙RR0s;$s6eJ,`n 䂦0a)S)A 1eJ,堌#635RIgpNHuTH_SԕqVe ` &S)>p;S$魁eKIuX`I4춒o}`m$1":PI<[v9^\pTJjriRŭ P{#{R2,`)e-`mgj~1ϣLKam7&U\j/3mJ,`F;M'䱀 .KR#)yhTq;pcK9(q!w?uRR,n.yw*UXj#\]ɱ(qv2=RqfB#iJmmL<]Y͙#$5 uTU7ӦXR+q,`I}qL'`6Kͷ6r,]0S$- [RKR3oiRE|nӦXR.(i:LDLTJjY%o:)6rxzҒqTJjh㞦I.$YR.ʼnGZ\ֿf:%55 I˼!6dKxm4E"mG_ s? .e*?LRfK9%q#uh$)i3ULRfK9yxm܌bj84$i1U^@Wbm4uJ,ҪA>_Ij?1v32[gLRD96oTaR׿N7%L2 NT,`)7&ƝL*꽙yp_$M2#AS,`)7$rkTA29_Iye"|/0t)$n XT2`YJ;6Jx".e<`$) PI$5V4]29SRI>~=@j]lp2`K9Jaai^" Ԋ29ORI%:XV5]JmN9]H;1UC39NI%Xe78t)a;Oi Ҙ>Xt"~G>_mn:%|~ޅ_+]$o)@ǀ{hgN;IK6G&rp)T2i୦KJuv*T=TOSV>(~D>dm,I*Ɛ:R#ۙNI%D>G.n$o;+#RR!.eU˽TRI28t)1LWϚ>IJa3oFbu&:tJ*(F7y0ZR ^p'Ii L24x| XRI%ۄ>S1]Jy[zL$adB7.eh4%%누>WETf+3IR:I3Xה)3אOۦSRO'ٺ)S}"qOr[B7ϙ.edG)^ETR"RtRݜh0}LFVӦDB^k_JDj\=LS(Iv─aTeZ%eUAM-0;~˃@i|l @S4y72>sX-vA}ϛBI!ݎߨWl*)3{'Y|iSlEڻ(5KtSI$Uv02,~ԩ~x;P4ցCrO%tyn425:KMlD ^4JRxSهF_}شJTS6uj+ﷸk$eZO%G*^V2u3EMj3k%)okI]dT)URKDS 7~m@TJR~荪fT"֛L \sM -0T KfJz+nإKr L&j()[E&I ߴ>e FW_kJR|!O:5/2跌3T-'|zX ryp0JS ~^F>-2< `*%ZFP)bSn"L :)+pʷf(pO3TMW$~>@~ū:TAIsV1}S2<%ޟM?@iT ,Eūoz%i~g|`wS(]oȤ8)$ ntu`өe`6yPl IzMI{ʣzʨ )IZ2= ld:5+請M$-ї;U>_gsY$ÁN5WzWfIZ)-yuXIfp~S*IZdt;t>KūKR|$#LcԀ+2\;kJ`]YǔM1B)UbG"IRߊ<xܾӔJ0Z='Y嵤 Leveg)$znV-º^3Ւof#0Tfk^Zs[*I꯳3{)ˬW4Ւ4 OdpbZRS|*I 55#"&-IvT&/윚Ye:i$ 9{LkuRe[I~_\ؠ%>GL$iY8 9ܕ"S`kS.IlC;Ҏ4x&>u_0JLr<J2(^$5L s=MgV ~,Iju> 7r2)^=G$1:3G< `J3~&IR% 6Tx/rIj3O< ʔ&#f_yXJiގNSz; Tx(i8%#4 ~AS+IjerIUrIj362v885+IjAhK__5X%nV%Iͳ-y|7XV2v4fzo_68"S/I-qbf; LkF)KSM$ Ms>K WNV}^`-큧32ŒVؙGdu,^^m%6~Nn&͓3ŒVZMsRpfEW%IwdǀLm[7W&bIRL@Q|)* i ImsIMmKmyV`i$G+R 0tV'!V)֏28vU7͒vHꦼtxꗞT ;S}7Mf+fIRHNZUkUx5SAJㄌ9MqμAIRi|j5)o*^'<$TwI1hEU^c_j?Е$%d`z cyf,XO IJnTgA UXRD }{H}^S,P5V2\Xx`pZ|Yk:$e ~ @nWL.j+ϝYb퇪bZ BVu)u/IJ_ 1[p.p60bC >|X91P:N\!5qUB}5a5ja `ubcVxYt1N0Zzl4]7­gKj]?4ϻ *[bg$)+À*x쳀ogO$~,5 زUS9 lq3+5mgw@np1sso Ӻ=|N6 /g(Wv7U;zωM=wk,0uTg_`_P`uz?2yI!b`kĸSo+Qx%!\οe|އԁKS-s6pu_(ֿ$i++T8=eY; צP+phxWQv*|p1. ά. XRkIQYP,drZ | B%wP|S5`~́@i޾ E;Չaw{o'Q?%iL{u D?N1BD!owPHReFZ* k_-~{E9b-~P`fE{AܶBJAFO wx6Rox5 K5=WwehS8 (JClJ~ p+Fi;ŗo+:bD#g(C"wA^ r.F8L;dzdIHUX݆ϞXg )IFqem%I4dj&ppT{'{HOx( Rk6^C٫O.)3:s(۳(Z?~ٻ89zmT"PLtw䥈5&b<8GZ-Y&K?e8,`I6e(֍xb83 `rzXj)F=l($Ij 2*(F?h(/9ik:I`m#p3MgLaKjc/U#n5S# m(^)=y=đx8ŬI[U]~SцA4p$-F i(R,7Cx;X=cI>{Km\ o(Tv2vx2qiiDJN,Ҏ!1f 5quBj1!8 rDFd(!WQl,gSkL1Bxg''՞^ǘ;pQ P(c_ IRujg(Wz bs#P­rz> k c&nB=q+ؔXn#r5)co*Ũ+G?7< |PQӣ'G`uOd>%Mctz# Ԫڞ&7CaQ~N'-P.W`Oedp03C!IZcIAMPUۀ5J<\u~+{9(FbbyAeBhOSܳ1 bÈT#ŠyDžs,`5}DC-`̞%r&ڙa87QWWp6e7 Rϫ/oY ꇅ Nܶըtc!LA T7V4Jsū I-0Pxz7QNF_iZgúWkG83 0eWr9 X]㾮݁#Jˢ C}0=3ݱtBi]_ &{{[/o[~ \q鯜00٩|cD3=4B_b RYb$óBRsf&lLX#M*C_L܄:gx)WΘsGSbuL rF$9';\4Ɍq'n[%p.Q`u hNb`eCQyQ|l_C>Lb꟟3hSb #xNxSs^ 88|Mz)}:](vbۢamŖ࿥ 0)Q7@0=?^k(*J}3ibkFn HjB׻NO z x}7p 0tfDX.lwgȔhԾŲ }6g E |LkLZteu+=q\Iv0쮑)QٵpH8/2?Σo>Jvppho~f>%bMM}\//":PTc(v9v!gոQ )UfVG+! 35{=x\2+ki,y$~A1iC6#)vC5^>+gǵ@1Hy٪7u;p psϰu/S <aʸGu'tD1ԝI<pg|6j'p:tպhX{o(7v],*}6a_ wXRk,O]Lܳ~Vo45rp"N5k;m{rZbΦ${#)`(Ŵg,;j%6j.pyYT?}-kBDc3qA`NWQū20/^AZW%NQ MI.X#P#,^Ebc&?XR tAV|Y.1!؅⨉ccww>ivl(JT~ u`ٵDm q)+Ri x/x8cyFO!/*!/&,7<.N,YDŽ&ܑQF1Bz)FPʛ?5d 6`kQձ λc؎%582Y&nD_$Je4>a?! ͨ|ȎWZSsv8 j(I&yj Jb5m?HWp=g}G3#|I,5v珿] H~R3@B[☉9Ox~oMy=J;xUVoj bUsl_35t-(ՃɼRB7U!qc+x4H_Qo֮$[GO<4`&č\GOc[.[*Af%mG/ ňM/r W/Nw~B1U3J?P&Y )`ѓZ1p]^l“W#)lWZilUQu`-m|xĐ,_ƪ|9i:_{*(3Gѧ}UoD+>m_?VPۅ15&}2|/pIOʵ> GZ9cmíتmnz)yߐbD >e}:) r|@R5qVSA10C%E_'^8cR7O;6[eKePGϦX7jb}OTGO^jn*媓7nGMC t,k31Rb (vyܴʭ!iTh8~ZYZp(qsRL ?b}cŨʊGO^!rPJO15MJ[c&~Z`"ѓޔH1C&^|Ш|rʼ,AwĴ?b5)tLU)F| &g٣O]oqSUjy(x<Ϳ3 .FSkoYg2 \_#wj{u'rQ>o;%n|F*O_L"e9umDds?.fuuQbIWz |4\0 sb;OvxOSs; G%T4gFRurj(֍ڑb uԖKDu1MK{1^ q; C=6\8FR艇!%\YÔU| 88m)֓NcLve C6z;o&X x59:q61Z(T7>C?gcļxѐ Z oo-08jہ x,`' ҔOcRlf~`jj".Nv+sM_]Zk g( UOPyεx%pUh2(@il0ݽQXxppx-NS( WO+轾 nFߢ3M<;z)FBZjciu/QoF 7R¥ ZFLF~#ȣߨ^<쩡ݛкvџ))ME>ώx4m#!-m!L;vv#~Y[đKmx9.[,UFS CVkZ +ߟrY٧IZd/ioi$%͝ب_ֶX3ܫhNU ZZgk=]=bbJS[wjU()*I =ώ:}-蹞lUj:1}MWm=̛ _ ¾,8{__m{_PVK^n3esw5ӫh#$-q=A̟> ,^I}P^J$qY~Q[ Xq9{#&T.^GVj__RKpn,b=`żY@^՝;z{paVKkQXj/)y TIc&F;FBG7wg ZZDG!x r_tƢ!}i/V=M/#nB8 XxЫ ^@CR<{䤭YCN)eKOSƟa $&g[i3.C6xrOc8TI;o hH6P&L{@q6[ Gzp^71j(l`J}]e6X☉#͕ ׈$AB1Vjh㭦IRsqFBjwQ_7Xk>y"N=MB0 ,C #o6MRc0|$)ف"1!ixY<B9mx `,tA>)5ػQ?jQ?cn>YZe Tisvh# GMމȇp:ԴVuږ8ɼH]C.5C!UV;F`mbBk LTMvPʍϤj?ԯ/Qr1NB`9s"s TYsz &9S%U԰> {<ؿSMxB|H\3@!U| k']$U+> |HHMLޢ?V9iD!-@x TIî%6Z*9X@HMW#?nN ,oe6?tQwڱ.]-y':mW0#!J82qFjH -`ѓ&M0u Uγmxϵ^-_\])@0Rt.8/?ٰCY]x}=sD3ojަЫNuS%U}ԤwHH>ڗjܷ_3gN q7[q2la*ArǓԖ+p8/RGM ]jacd(JhWko6ڎbj]i5Bj3+3!\j1UZLsLTv8HHmup<>gKMJj0@H%,W΃7R) ">c, xixј^ aܖ>H[i.UIHc U1=yW\=S*GR~)AF=`&2h`DzT󑓶J+?W+}C%P:|0H܆}-<;OC[~o.$~i}~HQ TvXΈr=b}$vizL4:ȰT|4~*!oXQR6Lk+#t/g lԁߖ[Jڶ_N$k*". xsxX7jRVbAAʯKҎU3)zSNN _'s?f)6X!%ssAkʱ>qƷb hg %n ~p1REGMHH=BJiy[<5 ǁJҖgKR*倳e~HUy)Ag,K)`Vw6bRR:qL#\rclK/$sh*$ 6덤 KԖc 3Z9=Ɣ=o>X Ώ"1 )a`SJJ6k(<c e{%kϊP+SL'TcMJWRm ŏ"w)qc ef꒵i?b7b('"2r%~HUS1\<(`1Wx9=8HY9m:X18bgD1u ~|H;K-Uep,, C1 RV.MR5άh,tWO8WC$ XRVsQS]3GJ|12 [vM :k#~tH30Rf-HYݺ-`I9%lIDTm\ S{]9gOڒMNCV\G*2JRŨ;Rҏ^ڽ̱mq1Eu?To3I)y^#jJw^Ńj^vvlB_⋌P4x>0$c>K†Aļ9s_VjTt0l#m>E-,,x,-W)سo&96RE XR.6bXw+)GAEvL)͞K4$p=Ũi_ѱOjb HY/+@θH9޼]Nԥ%n{ &zjT? Ty) s^ULlb,PiTf^<À] 62R^V7)S!nllS6~͝V}-=%* ʻ>G DnK<y&>LPy7'r=Hj 9V`[c"*^8HpcO8bnU`4JȪAƋ#1_\ XϘHPRgik(~G~0DAA_2p|J묭a2\NCr]M_0 ^T%e#vD^%xy-n}-E\3aS%yN!r_{ )sAw ڼp1pEAk~v<:`'ӭ^5 ArXOI驻T (dk)_\ PuA*BY]yB"l\ey hH*tbK)3 IKZ򹞋XjN n *n>k]X_d!ryBH ]*R 0(#'7 %es9??ښFC,ՁQPjARJ\Ρw K#jahgw;2$l*) %Xq5!U᢯6Re] |0[__64ch&_}iL8KEgҎ7 M/\`|.p,~`a=BR?xܐrQ8K XR2M8f ?`sgWS%" Ԉ 7R%$ N}?QL1|-эټwIZ%pvL3Hk>,ImgW7{E xPHx73RA @RS CC !\ȟ5IXR^ZxHл$Q[ŝ40 (>+ _C >BRt<,TrT {O/H+˟Pl6 I B)/VC<6a2~(XwV4gnXR ϱ5ǀHٻ?tw똤Eyxp{#WK qG%5],(0ӈH HZ])ג=K1j&G(FbM@)%I` XRg ʔ KZG(vP,<`[ Kn^ SJRsAʠ5xՅF`0&RbV tx:EaUE/{fi2;.IAwW8/tTxAGOoN?G}l L(n`Zv?pB8K_gI+ܗ #i?ޙ.) p$utc ~DžfՈEo3l/)I-U?aԅ^jxArA ΧX}DmZ@QLےbTXGd.^|xKHR{|ΕW_h] IJ`[G9{).y) 0X YA1]qp?p_k+J*Y@HI>^?gt.06Rn ,` ?);p pSF9ZXLBJPWjgQ|&)7! HjQt<| ؅W5 x W HIzYoVMGP Hjn`+\(dNW)F+IrS[|/a`K|ͻ0Hj{R,Q=\ (F}\WR)AgSG`IsnAR=|8$}G(vC$)s FBJ?]_u XRvύ6z ŨG[36-T9HzpW̞ú Xg큽=7CufzI$)ki^qk-) 0H*N` QZkk]/tnnsI^Gu't=7$ Z;{8^jB% IItRQS7[ϭ3 $_OQJ`7!]W"W,)Iy W AJA;KWG`IY{8k$I$^%9.^(`N|LJ%@$I}ֽp=FB*xN=gI?Q{٥4B)mw $Igc~dZ@G9K X?7)aK%݅K$IZ-`IpC U6$I\0>!9k} Xa IIS0H$I H ?1R.Чj:4~Rw@p$IrA*u}WjWFPJ$I➓/6#! LӾ+ X36x8J |+L;v$Io4301R20M I$-E}@,pS^ޟR[/s¹'0H$IKyfŸfVOπFT*a$I>He~VY/3R/)>d$I>28`Cjw,n@FU*9ttf$I~<;=/4RD~@ X-ѕzἱI$: ԍR a@b X{+Qxuq$IЛzo /~3\8ڒ4BN7$IҀj V]n18H$IYFBj3̵̚ja pp $Is/3R Ӻ-Yj+L;.0ŔI$Av? #!5"aʄj}UKmɽH$IjCYs?h$IDl843.v}m7UiI=&=0Lg0$I4: embe` eQbm0u? $IT!Sƍ'-sv)s#C0:XB2a w I$zbww{."pPzO =Ɔ\[ o($Iaw]`E).Kvi:L*#gР7[$IyGPI=@R 4yR~̮´cg I$I/<tPͽ hDgo 94Z^k盇΄8I56^W$I^0̜N?4*H`237}g+hxoq)SJ@p|` $I%>-hO0eO>\ԣNߌZD6R=K ~n($I$y3D>o4b#px2$yڪtzW~a $I~?x'BwwpH$IZݑnC㧄Pc_9sO gwJ=l1:mKB>Ab<4Lp$Ib o1ZQ@85b̍ S'F,Fe,^I$IjEdù{l4 8Ys_s Z8.x m"+{~?q,Z D!I$ϻ'|XhB)=…']M>5 rgotԎ 獽PH$IjIPhh)n#cÔqA'ug5qwU&rF|1E%I$%]!'3AFD/;Ck_`9 v!ٴtPV;x`'*bQa w I$Ix5 FC3D_~A_#O݆DvV?<qw+I$I{=Z8".#RIYyjǪ=fDl9%M,a8$I$Ywi[7ݍFe$s1ՋBVA?`]#!oz4zjLJo8$I$%@3jAa4(o ;p,,dya=F9ً[LSPH$IJYЉ+3> 5"39aZ<ñh!{TpBGkj}Sp $IlvF.F$I z< '\K*qq.f<2Y!S"-\I$IYwčjF$ w9 \ߪB.1v!Ʊ?+r:^!I$BϹB H"B;L'G[ 4U#5>੐)|#o0aڱ$I>}k&1`U#V?YsV x>{t1[I~D&(I$I/{H0fw"q"y%4 IXyE~M3 8XψL}qE$I[> nD?~sf ]o΁ cT6"?'_Ἣ $I>~.f|'!N?⟩0G KkXZE]ޡ;/&?k OۘH$IRۀwXӨ<7@PnS04aӶp.:@\IWQJ6sS%I$e5ڑv`3:x';wq_vpgHyXZ 3gЂ7{{EuԹn±}$I$8t;b|591nءQ"P6O5i }iR̈́%Q̄p!I䮢]O{H$IRϻ9s֧ a=`- aB\X0"+5"C1Hb?߮3x3&gşggl_hZ^,`5?ߎvĸ%̀M!OZC2#0x LJ0 Gw$I$I}<{Eb+y;iI,`ܚF:5ܛA8-O-|8K7s|#Z8a&><a&/VtbtLʌI$I$I$I$I$I$IRjDD%tEXtdate:create2022-05-31T04:40:26+00:00!Î%tEXtdate:modify2022-05-31T04:40:26+00:00|{2IENDB`Mini Shell

HOME


Mini Shell 1.0
DIR:/proc/self/root/opt/cloudlinux/venv/lib/python3.11/site-packages/numpy/core/tests/
Upload File :
Current File : //proc/self/root/opt/cloudlinux/venv/lib/python3.11/site-packages/numpy/core/tests/test_api.py
import sys

import numpy as np
from numpy.core._rational_tests import rational
import pytest
from numpy.testing import (
     assert_, assert_equal, assert_array_equal, assert_raises, assert_warns,
     HAS_REFCOUNT
    )


def test_array_array():
    tobj = type(object)
    ones11 = np.ones((1, 1), np.float64)
    tndarray = type(ones11)
    # Test is_ndarray
    assert_equal(np.array(ones11, dtype=np.float64), ones11)
    if HAS_REFCOUNT:
        old_refcount = sys.getrefcount(tndarray)
        np.array(ones11)
        assert_equal(old_refcount, sys.getrefcount(tndarray))

    # test None
    assert_equal(np.array(None, dtype=np.float64),
                 np.array(np.nan, dtype=np.float64))
    if HAS_REFCOUNT:
        old_refcount = sys.getrefcount(tobj)
        np.array(None, dtype=np.float64)
        assert_equal(old_refcount, sys.getrefcount(tobj))

    # test scalar
    assert_equal(np.array(1.0, dtype=np.float64),
                 np.ones((), dtype=np.float64))
    if HAS_REFCOUNT:
        old_refcount = sys.getrefcount(np.float64)
        np.array(np.array(1.0, dtype=np.float64), dtype=np.float64)
        assert_equal(old_refcount, sys.getrefcount(np.float64))

    # test string
    S2 = np.dtype((bytes, 2))
    S3 = np.dtype((bytes, 3))
    S5 = np.dtype((bytes, 5))
    assert_equal(np.array(b"1.0", dtype=np.float64),
                 np.ones((), dtype=np.float64))
    assert_equal(np.array(b"1.0").dtype, S3)
    assert_equal(np.array(b"1.0", dtype=bytes).dtype, S3)
    assert_equal(np.array(b"1.0", dtype=S2), np.array(b"1."))
    assert_equal(np.array(b"1", dtype=S5), np.ones((), dtype=S5))

    # test string
    U2 = np.dtype((str, 2))
    U3 = np.dtype((str, 3))
    U5 = np.dtype((str, 5))
    assert_equal(np.array("1.0", dtype=np.float64),
                 np.ones((), dtype=np.float64))
    assert_equal(np.array("1.0").dtype, U3)
    assert_equal(np.array("1.0", dtype=str).dtype, U3)
    assert_equal(np.array("1.0", dtype=U2), np.array(str("1.")))
    assert_equal(np.array("1", dtype=U5), np.ones((), dtype=U5))

    builtins = getattr(__builtins__, '__dict__', __builtins__)
    assert_(hasattr(builtins, 'get'))

    # test memoryview
    dat = np.array(memoryview(b'1.0'), dtype=np.float64)
    assert_equal(dat, [49.0, 46.0, 48.0])
    assert_(dat.dtype.type is np.float64)

    dat = np.array(memoryview(b'1.0'))
    assert_equal(dat, [49, 46, 48])
    assert_(dat.dtype.type is np.uint8)

    # test array interface
    a = np.array(100.0, dtype=np.float64)
    o = type("o", (object,),
             dict(__array_interface__=a.__array_interface__))
    assert_equal(np.array(o, dtype=np.float64), a)

    # test array_struct interface
    a = np.array([(1, 4.0, 'Hello'), (2, 6.0, 'World')],
                 dtype=[('f0', int), ('f1', float), ('f2', str)])
    o = type("o", (object,),
             dict(__array_struct__=a.__array_struct__))
    ## wasn't what I expected... is np.array(o) supposed to equal a ?
    ## instead we get a array([...], dtype=">V18")
    assert_equal(bytes(np.array(o).data), bytes(a.data))

    # test array
    o = type("o", (object,),
             dict(__array__=lambda *x: np.array(100.0, dtype=np.float64)))()
    assert_equal(np.array(o, dtype=np.float64), np.array(100.0, np.float64))

    # test recursion
    nested = 1.5
    for i in range(np.MAXDIMS):
        nested = [nested]

    # no error
    np.array(nested)

    # Exceeds recursion limit
    assert_raises(ValueError, np.array, [nested], dtype=np.float64)

    # Try with lists...
    # float32
    assert_equal(np.array([None] * 10, dtype=np.float32),
                 np.full((10,), np.nan, dtype=np.float32))
    assert_equal(np.array([[None]] * 10, dtype=np.float32),
                 np.full((10, 1), np.nan, dtype=np.float32))
    assert_equal(np.array([[None] * 10], dtype=np.float32),
                 np.full((1, 10), np.nan, dtype=np.float32))
    assert_equal(np.array([[None] * 10] * 10, dtype=np.float32),
                 np.full((10, 10), np.nan, dtype=np.float32))
    # float64
    assert_equal(np.array([None] * 10, dtype=np.float64),
                 np.full((10,), np.nan, dtype=np.float64))
    assert_equal(np.array([[None]] * 10, dtype=np.float64),
                 np.full((10, 1), np.nan, dtype=np.float64))
    assert_equal(np.array([[None] * 10], dtype=np.float64),
                 np.full((1, 10), np.nan, dtype=np.float64))
    assert_equal(np.array([[None] * 10] * 10, dtype=np.float64),
                 np.full((10, 10), np.nan, dtype=np.float64))

    assert_equal(np.array([1.0] * 10, dtype=np.float64),
                 np.ones((10,), dtype=np.float64))
    assert_equal(np.array([[1.0]] * 10, dtype=np.float64),
                 np.ones((10, 1), dtype=np.float64))
    assert_equal(np.array([[1.0] * 10], dtype=np.float64),
                 np.ones((1, 10), dtype=np.float64))
    assert_equal(np.array([[1.0] * 10] * 10, dtype=np.float64),
                 np.ones((10, 10), dtype=np.float64))

    # Try with tuples
    assert_equal(np.array((None,) * 10, dtype=np.float64),
                 np.full((10,), np.nan, dtype=np.float64))
    assert_equal(np.array([(None,)] * 10, dtype=np.float64),
                 np.full((10, 1), np.nan, dtype=np.float64))
    assert_equal(np.array([(None,) * 10], dtype=np.float64),
                 np.full((1, 10), np.nan, dtype=np.float64))
    assert_equal(np.array([(None,) * 10] * 10, dtype=np.float64),
                 np.full((10, 10), np.nan, dtype=np.float64))

    assert_equal(np.array((1.0,) * 10, dtype=np.float64),
                 np.ones((10,), dtype=np.float64))
    assert_equal(np.array([(1.0,)] * 10, dtype=np.float64),
                 np.ones((10, 1), dtype=np.float64))
    assert_equal(np.array([(1.0,) * 10], dtype=np.float64),
                 np.ones((1, 10), dtype=np.float64))
    assert_equal(np.array([(1.0,) * 10] * 10, dtype=np.float64),
                 np.ones((10, 10), dtype=np.float64))

@pytest.mark.parametrize("array", [True, False])
def test_array_impossible_casts(array):
    # All builtin types can be forcibly cast, at least theoretically,
    # but user dtypes cannot necessarily.
    rt = rational(1, 2)
    if array:
        rt = np.array(rt)
    with assert_raises(TypeError):
        np.array(rt, dtype="M8")


# TODO: remove when fastCopyAndTranspose deprecation expires
@pytest.mark.parametrize("a",
    (
        np.array(2),  # 0D array
        np.array([3, 2, 7, 0]),  # 1D array
        np.arange(6).reshape(2, 3)  # 2D array
    ),
)
def test_fastCopyAndTranspose(a):
    with pytest.deprecated_call():
        b = np.fastCopyAndTranspose(a)
        assert_equal(b, a.T)
        assert b.flags.owndata


def test_array_astype():
    a = np.arange(6, dtype='f4').reshape(2, 3)
    # Default behavior: allows unsafe casts, keeps memory layout,
    #                   always copies.
    b = a.astype('i4')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('i4'))
    assert_equal(a.strides, b.strides)
    b = a.T.astype('i4')
    assert_equal(a.T, b)
    assert_equal(b.dtype, np.dtype('i4'))
    assert_equal(a.T.strides, b.strides)
    b = a.astype('f4')
    assert_equal(a, b)
    assert_(not (a is b))

    # copy=False parameter can sometimes skip a copy
    b = a.astype('f4', copy=False)
    assert_(a is b)

    # order parameter allows overriding of the memory layout,
    # forcing a copy if the layout is wrong
    b = a.astype('f4', order='F', copy=False)
    assert_equal(a, b)
    assert_(not (a is b))
    assert_(b.flags.f_contiguous)

    b = a.astype('f4', order='C', copy=False)
    assert_equal(a, b)
    assert_(a is b)
    assert_(b.flags.c_contiguous)

    # casting parameter allows catching bad casts
    b = a.astype('c8', casting='safe')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('c8'))

    assert_raises(TypeError, a.astype, 'i4', casting='safe')

    # subok=False passes through a non-subclassed array
    b = a.astype('f4', subok=0, copy=False)
    assert_(a is b)

    class MyNDArray(np.ndarray):
        pass

    a = np.array([[0, 1, 2], [3, 4, 5]], dtype='f4').view(MyNDArray)

    # subok=True passes through a subclass
    b = a.astype('f4', subok=True, copy=False)
    assert_(a is b)

    # subok=True is default, and creates a subtype on a cast
    b = a.astype('i4', copy=False)
    assert_equal(a, b)
    assert_equal(type(b), MyNDArray)

    # subok=False never returns a subclass
    b = a.astype('f4', subok=False, copy=False)
    assert_equal(a, b)
    assert_(not (a is b))
    assert_(type(b) is not MyNDArray)

    # Make sure converting from string object to fixed length string
    # does not truncate.
    a = np.array([b'a'*100], dtype='O')
    b = a.astype('S')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('S100'))
    a = np.array(['a'*100], dtype='O')
    b = a.astype('U')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('U100'))

    # Same test as above but for strings shorter than 64 characters
    a = np.array([b'a'*10], dtype='O')
    b = a.astype('S')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('S10'))
    a = np.array(['a'*10], dtype='O')
    b = a.astype('U')
    assert_equal(a, b)
    assert_equal(b.dtype, np.dtype('U10'))

    a = np.array(123456789012345678901234567890, dtype='O').astype('S')
    assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30'))
    a = np.array(123456789012345678901234567890, dtype='O').astype('U')
    assert_array_equal(a, np.array('1234567890' * 3, dtype='U30'))

    a = np.array([123456789012345678901234567890], dtype='O').astype('S')
    assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30'))
    a = np.array([123456789012345678901234567890], dtype='O').astype('U')
    assert_array_equal(a, np.array('1234567890' * 3, dtype='U30'))

    a = np.array(123456789012345678901234567890, dtype='S')
    assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30'))
    a = np.array(123456789012345678901234567890, dtype='U')
    assert_array_equal(a, np.array('1234567890' * 3, dtype='U30'))

    a = np.array('a\u0140', dtype='U')
    b = np.ndarray(buffer=a, dtype='uint32', shape=2)
    assert_(b.size == 2)

    a = np.array([1000], dtype='i4')
    assert_raises(TypeError, a.astype, 'S1', casting='safe')

    a = np.array(1000, dtype='i4')
    assert_raises(TypeError, a.astype, 'U1', casting='safe')

    # gh-24023
    assert_raises(TypeError, a.astype)

@pytest.mark.parametrize("dt", ["S", "U"])
def test_array_astype_to_string_discovery_empty(dt):
    # See also gh-19085
    arr = np.array([""], dtype=object)
    # Note, the itemsize is the `0 -> 1` logic, which should change.
    # The important part the test is rather that it does not error.
    assert arr.astype(dt).dtype.itemsize == np.dtype(f"{dt}1").itemsize

    # check the same thing for `np.can_cast` (since it accepts arrays)
    assert np.can_cast(arr, dt, casting="unsafe")
    assert not np.can_cast(arr, dt, casting="same_kind")
    # as well as for the object as a descriptor:
    assert np.can_cast("O", dt, casting="unsafe")

@pytest.mark.parametrize("dt", ["d", "f", "S13", "U32"])
def test_array_astype_to_void(dt):
    dt = np.dtype(dt)
    arr = np.array([], dtype=dt)
    assert arr.astype("V").dtype.itemsize == dt.itemsize

def test_object_array_astype_to_void():
    # This is different to `test_array_astype_to_void` as object arrays
    # are inspected.  The default void is "V8" (8 is the length of double)
    arr = np.array([], dtype="O").astype("V")
    assert arr.dtype == "V8"

@pytest.mark.parametrize("t",
    np.sctypes['uint'] + np.sctypes['int'] + np.sctypes['float']
)
def test_array_astype_warning(t):
    # test ComplexWarning when casting from complex to float or int
    a = np.array(10, dtype=np.complex_)
    assert_warns(np.ComplexWarning, a.astype, t)

@pytest.mark.parametrize(["dtype", "out_dtype"],
        [(np.bytes_, np.bool_),
         (np.str_, np.bool_),
         (np.dtype("S10,S9"), np.dtype("?,?"))])
def test_string_to_boolean_cast(dtype, out_dtype):
    """
    Currently, for `astype` strings are cast to booleans effectively by
    calling `bool(int(string)`. This is not consistent (see gh-9875) and
    will eventually be deprecated.
    """
    arr = np.array(["10", "10\0\0\0", "0\0\0", "0"], dtype=dtype)
    expected = np.array([True, True, False, False], dtype=out_dtype)
    assert_array_equal(arr.astype(out_dtype), expected)

@pytest.mark.parametrize(["dtype", "out_dtype"],
        [(np.bytes_, np.bool_),
         (np.str_, np.bool_),
         (np.dtype("S10,S9"), np.dtype("?,?"))])
def test_string_to_boolean_cast_errors(dtype, out_dtype):
    """
    These currently error out, since cast to integers fails, but should not
    error out in the future.
    """
    for invalid in ["False", "True", "", "\0", "non-empty"]:
        arr = np.array([invalid], dtype=dtype)
        with assert_raises(ValueError):
            arr.astype(out_dtype)

@pytest.mark.parametrize("str_type", [str, bytes, np.str_, np.unicode_])
@pytest.mark.parametrize("scalar_type",
        [np.complex64, np.complex128, np.clongdouble])
def test_string_to_complex_cast(str_type, scalar_type):
    value = scalar_type(b"1+3j")
    assert scalar_type(value) == 1+3j
    assert np.array([value], dtype=object).astype(scalar_type)[()] == 1+3j
    assert np.array(value).astype(scalar_type)[()] == 1+3j
    arr = np.zeros(1, dtype=scalar_type)
    arr[0] = value
    assert arr[0] == 1+3j

@pytest.mark.parametrize("dtype", np.typecodes["AllFloat"])
def test_none_to_nan_cast(dtype):
    # Note that at the time of writing this test, the scalar constructors
    # reject None
    arr = np.zeros(1, dtype=dtype)
    arr[0] = None
    assert np.isnan(arr)[0]
    assert np.isnan(np.array(None, dtype=dtype))[()]
    assert np.isnan(np.array([None], dtype=dtype))[0]
    assert np.isnan(np.array(None).astype(dtype))[()]

def test_copyto_fromscalar():
    a = np.arange(6, dtype='f4').reshape(2, 3)

    # Simple copy
    np.copyto(a, 1.5)
    assert_equal(a, 1.5)
    np.copyto(a.T, 2.5)
    assert_equal(a, 2.5)

    # Where-masked copy
    mask = np.array([[0, 1, 0], [0, 0, 1]], dtype='?')
    np.copyto(a, 3.5, where=mask)
    assert_equal(a, [[2.5, 3.5, 2.5], [2.5, 2.5, 3.5]])
    mask = np.array([[0, 1], [1, 1], [1, 0]], dtype='?')
    np.copyto(a.T, 4.5, where=mask)
    assert_equal(a, [[2.5, 4.5, 4.5], [4.5, 4.5, 3.5]])

def test_copyto():
    a = np.arange(6, dtype='i4').reshape(2, 3)

    # Simple copy
    np.copyto(a, [[3, 1, 5], [6, 2, 1]])
    assert_equal(a, [[3, 1, 5], [6, 2, 1]])

    # Overlapping copy should work
    np.copyto(a[:, :2], a[::-1, 1::-1])
    assert_equal(a, [[2, 6, 5], [1, 3, 1]])

    # Defaults to 'same_kind' casting
    assert_raises(TypeError, np.copyto, a, 1.5)

    # Force a copy with 'unsafe' casting, truncating 1.5 to 1
    np.copyto(a, 1.5, casting='unsafe')
    assert_equal(a, 1)

    # Copying with a mask
    np.copyto(a, 3, where=[True, False, True])
    assert_equal(a, [[3, 1, 3], [3, 1, 3]])

    # Casting rule still applies with a mask
    assert_raises(TypeError, np.copyto, a, 3.5, where=[True, False, True])

    # Lists of integer 0's and 1's is ok too
    np.copyto(a, 4.0, casting='unsafe', where=[[0, 1, 1], [1, 0, 0]])
    assert_equal(a, [[3, 4, 4], [4, 1, 3]])

    # Overlapping copy with mask should work
    np.copyto(a[:, :2], a[::-1, 1::-1], where=[[0, 1], [1, 1]])
    assert_equal(a, [[3, 4, 4], [4, 3, 3]])

    # 'dst' must be an array
    assert_raises(TypeError, np.copyto, [1, 2, 3], [2, 3, 4])

def test_copyto_permut():
    # test explicit overflow case
    pad = 500
    l = [True] * pad + [True, True, True, True]
    r = np.zeros(len(l)-pad)
    d = np.ones(len(l)-pad)
    mask = np.array(l)[pad:]
    np.copyto(r, d, where=mask[::-1])

    # test all permutation of possible masks, 9 should be sufficient for
    # current 4 byte unrolled code
    power = 9
    d = np.ones(power)
    for i in range(2**power):
        r = np.zeros(power)
        l = [(i & x) != 0 for x in range(power)]
        mask = np.array(l)
        np.copyto(r, d, where=mask)
        assert_array_equal(r == 1, l)
        assert_equal(r.sum(), sum(l))

        r = np.zeros(power)
        np.copyto(r, d, where=mask[::-1])
        assert_array_equal(r == 1, l[::-1])
        assert_equal(r.sum(), sum(l))

        r = np.zeros(power)
        np.copyto(r[::2], d[::2], where=mask[::2])
        assert_array_equal(r[::2] == 1, l[::2])
        assert_equal(r[::2].sum(), sum(l[::2]))

        r = np.zeros(power)
        np.copyto(r[::2], d[::2], where=mask[::-2])
        assert_array_equal(r[::2] == 1, l[::-2])
        assert_equal(r[::2].sum(), sum(l[::-2]))

        for c in [0xFF, 0x7F, 0x02, 0x10]:
            r = np.zeros(power)
            mask = np.array(l)
            imask = np.array(l).view(np.uint8)
            imask[mask != 0] = c
            np.copyto(r, d, where=mask)
            assert_array_equal(r == 1, l)
            assert_equal(r.sum(), sum(l))

    r = np.zeros(power)
    np.copyto(r, d, where=True)
    assert_equal(r.sum(), r.size)
    r = np.ones(power)
    d = np.zeros(power)
    np.copyto(r, d, where=False)
    assert_equal(r.sum(), r.size)

def test_copy_order():
    a = np.arange(24).reshape(2, 1, 3, 4)
    b = a.copy(order='F')
    c = np.arange(24).reshape(2, 1, 4, 3).swapaxes(2, 3)

    def check_copy_result(x, y, ccontig, fcontig, strides=False):
        assert_(not (x is y))
        assert_equal(x, y)
        assert_equal(res.flags.c_contiguous, ccontig)
        assert_equal(res.flags.f_contiguous, fcontig)

    # Validate the initial state of a, b, and c
    assert_(a.flags.c_contiguous)
    assert_(not a.flags.f_contiguous)
    assert_(not b.flags.c_contiguous)
    assert_(b.flags.f_contiguous)
    assert_(not c.flags.c_contiguous)
    assert_(not c.flags.f_contiguous)

    # Copy with order='C'
    res = a.copy(order='C')
    check_copy_result(res, a, ccontig=True, fcontig=False, strides=True)
    res = b.copy(order='C')
    check_copy_result(res, b, ccontig=True, fcontig=False, strides=False)
    res = c.copy(order='C')
    check_copy_result(res, c, ccontig=True, fcontig=False, strides=False)
    res = np.copy(a, order='C')
    check_copy_result(res, a, ccontig=True, fcontig=False, strides=True)
    res = np.copy(b, order='C')
    check_copy_result(res, b, ccontig=True, fcontig=False, strides=False)
    res = np.copy(c, order='C')
    check_copy_result(res, c, ccontig=True, fcontig=False, strides=False)

    # Copy with order='F'
    res = a.copy(order='F')
    check_copy_result(res, a, ccontig=False, fcontig=True, strides=False)
    res = b.copy(order='F')
    check_copy_result(res, b, ccontig=False, fcontig=True, strides=True)
    res = c.copy(order='F')
    check_copy_result(res, c, ccontig=False, fcontig=True, strides=False)
    res = np.copy(a, order='F')
    check_copy_result(res, a, ccontig=False, fcontig=True, strides=False)
    res = np.copy(b, order='F')
    check_copy_result(res, b, ccontig=False, fcontig=True, strides=True)
    res = np.copy(c, order='F')
    check_copy_result(res, c, ccontig=False, fcontig=True, strides=False)

    # Copy with order='K'
    res = a.copy(order='K')
    check_copy_result(res, a, ccontig=True, fcontig=False, strides=True)
    res = b.copy(order='K')
    check_copy_result(res, b, ccontig=False, fcontig=True, strides=True)
    res = c.copy(order='K')
    check_copy_result(res, c, ccontig=False, fcontig=False, strides=True)
    res = np.copy(a, order='K')
    check_copy_result(res, a, ccontig=True, fcontig=False, strides=True)
    res = np.copy(b, order='K')
    check_copy_result(res, b, ccontig=False, fcontig=True, strides=True)
    res = np.copy(c, order='K')
    check_copy_result(res, c, ccontig=False, fcontig=False, strides=True)

def test_contiguous_flags():
    a = np.ones((4, 4, 1))[::2,:,:]
    a.strides = a.strides[:2] + (-123,)
    b = np.ones((2, 2, 1, 2, 2)).swapaxes(3, 4)

    def check_contig(a, ccontig, fcontig):
        assert_(a.flags.c_contiguous == ccontig)
        assert_(a.flags.f_contiguous == fcontig)

    # Check if new arrays are correct:
    check_contig(a, False, False)
    check_contig(b, False, False)
    check_contig(np.empty((2, 2, 0, 2, 2)), True, True)
    check_contig(np.array([[[1], [2]]], order='F'), True, True)
    check_contig(np.empty((2, 2)), True, False)
    check_contig(np.empty((2, 2), order='F'), False, True)

    # Check that np.array creates correct contiguous flags:
    check_contig(np.array(a, copy=False), False, False)
    check_contig(np.array(a, copy=False, order='C'), True, False)
    check_contig(np.array(a, ndmin=4, copy=False, order='F'), False, True)

    # Check slicing update of flags and :
    check_contig(a[0], True, True)
    check_contig(a[None, ::4, ..., None], True, True)
    check_contig(b[0, 0, ...], False, True)
    check_contig(b[:, :, 0:0, :, :], True, True)

    # Test ravel and squeeze.
    check_contig(a.ravel(), True, True)
    check_contig(np.ones((1, 3, 1)).squeeze(), True, True)

def test_broadcast_arrays():
    # Test user defined dtypes
    a = np.array([(1, 2, 3)], dtype='u4,u4,u4')
    b = np.array([(1, 2, 3), (4, 5, 6), (7, 8, 9)], dtype='u4,u4,u4')
    result = np.broadcast_arrays(a, b)
    assert_equal(result[0], np.array([(1, 2, 3), (1, 2, 3), (1, 2, 3)], dtype='u4,u4,u4'))
    assert_equal(result[1], np.array([(1, 2, 3), (4, 5, 6), (7, 8, 9)], dtype='u4,u4,u4'))

@pytest.mark.parametrize(["shape", "fill_value", "expected_output"],
        [((2, 2), [5.0,  6.0], np.array([[5.0, 6.0], [5.0, 6.0]])),
         ((3, 2), [1.0,  2.0], np.array([[1.0, 2.0], [1.0, 2.0], [1.0,  2.0]]))])
def test_full_from_list(shape, fill_value, expected_output):
    output = np.full(shape, fill_value)
    assert_equal(output, expected_output)

def test_astype_copyflag():
    # test the various copyflag options
    arr = np.arange(10, dtype=np.intp)

    res_true = arr.astype(np.intp, copy=True)
    assert not np.may_share_memory(arr, res_true)
    res_always = arr.astype(np.intp, copy=np._CopyMode.ALWAYS)
    assert not np.may_share_memory(arr, res_always)

    res_false = arr.astype(np.intp, copy=False)
    # `res_false is arr` currently, but check `may_share_memory`.
    assert np.may_share_memory(arr, res_false)
    res_if_needed = arr.astype(np.intp, copy=np._CopyMode.IF_NEEDED)
    # `res_if_needed is arr` currently, but check `may_share_memory`.
    assert np.may_share_memory(arr, res_if_needed)

    res_never = arr.astype(np.intp, copy=np._CopyMode.NEVER)
    assert np.may_share_memory(arr, res_never)

    # Simple tests for when a copy is necessary:
    res_false = arr.astype(np.float64, copy=False)
    assert_array_equal(res_false, arr)
    res_if_needed = arr.astype(np.float64, 
                               copy=np._CopyMode.IF_NEEDED)
    assert_array_equal(res_if_needed, arr)
    assert_raises(ValueError, arr.astype, np.float64,
                  copy=np._CopyMode.NEVER)