Gurobi Optimization Gurobi v4.5.1 GurobiOptimizationGurobiv4.5.1英文正式版(智慧引擎提供了新一代的高精確性的描繪軟體) 破解說明: 關掉主程式,破解檔放置於crack夾內,請將破解檔複製於主程式的安裝目錄內既可破解 內容說明: Gurobi智慧引擎提供了新一代的高精確性的描繪方案。 英文說明: TheGurobiOptimizerisastate-of-the-artsolver forlinearprogramming(LP),quadraticprogramming (QP)andmixed-integerprogramming(MILPandMIQP). Itwasdesignedfromthegrounduptoexploitmodern multi-coreprocessors.EveryGurobilicenseallows parallelprocessing,andtheGurobiParallel Optimizerisdeterministic:twoseparaterunsonthe samemodelwillproduceidenticalsolutionpaths. ForsolvingLPandQPmodels,theGurobiOptimizer includeshigh-performanceimplementationsofthe primalsimplexmethod,thedualsimplexmethod,and aparallelbarriersolver.ForMILPandMIQPmodels, theGurobiOptimizerincorporatesthelatestmethods includingcuttingplanesandpowerfulsolution heuristics.Allmodelsbenefitfromadvanced presolvemethodstosimplifymodelsandslashsolve times. TheGurobiOptimizeriswritteninCandis accessiblefromseverallanguages.Inadditiontoa powerful,interactivePythoninterfaceanda matrix-orientedCinterface,weprovide object-orientedinterfacesfromC++,Java,Python, andthe.NETlanguages.Theseinterfaceshaveall beendesignedtobelightweightandeasytouse, withthegoalofgreatlyenhancingtheaccessibility ofourproducts.Andsincetheinterfacesare lightweight,theyarefasteranduselessmemory thanotherstandardinterfaces.Ouronline documentation(QuickStartGuide,ExampleTourand ReferenceManual)describestheuseofthese interfaces. Gurobiisalsoavailablethroughseveralpowerful third-partymodelingsystemsincludingAIMMS,AMPL, FRONTLINESOLVERS,GAMS,MPL,OptimJandTOMLAB. Mostofthechangesinthe4.5releaseoftheGurobi Optimizerarerelatedtoperformance.Usersof previousversionswilltypicallynotneedtomake anychangestotheirprogramstousethenew version.Thenewversiondoescontainafewnew features,describedhere. *NewdefaultMethodforcontinuousmodels:The newversionusesanewAutomaticsettingasthe defaultforsolvingcontinuousmodels.Inprevious releases,continuousmodelsweresolvedwiththe dualsimplexmethodbydefault.Whiletheexact strategyusedbythenewAutomaticsettingmay changeinfuturereleases,inthisreleasethenew approachusestheconcurrentoptimizerfor continuousmodelswithalinearobjective(LPs), thebarrieroptimizerforcontinuousmodelswitha quadraticobjective(QPs),andthedualsimplex optimizerfortherootnodeofaMIPmodel.You shouldchangetheMethodparameterifyouwould liketochooseadifferentmethod. *NewMinimumReleaxationheuristic:Thenew versioncontainsanewMinimumRelaxation heuristicthatcanbeusefulforfindingsolutions toMIPmodelswhereotherstrategiesfailtofind feasiblesolutionsinareasonableamountoftime. UsethenewMinRelNodesparametertocontrolthis newheuristic. *Newbranchdirectioncontrol:Thenewversion allowsmorecontroloverhowthebranch-and-cut treeisexplored.Specifically,whenanodeinthe MIPsearchiscompletedandtwochildnodes, correspondingtothedownbranchandtheupbranch arecreated,thenewBranchDirparameterallows youtodeterminewhethertheMIPsolverwill explorethedownbranchfirst,theupbranch first,orwhetheritwillchoosethenextnode basedonaheuristicdeterminationofwhich sub-treeappearsmorepromising. *Cutpasslimit:Thenewversionallowsyouto limitthenumberofcutpassesperformedduring rootcutgenerationinMIP.UsethenewCutPasses parameter. *Additionalinformationforinfeasibleand unboundedlinearmodels:Thenewversionallows youtoobtainaFarkasinfeasibilityprooffor infeasiblemodels,andanunboundedrayfor unboundedmodels.UsethenewInfUnbdInfo parameter,andthenewFarkasProof,FarkasDual, UnbdRayattributestoobtainthisinformation. 圖片說明: 相關商品:WileyRFIDfortheOptimizationofBusinessProcessesApr2008英文正式版(PDF格式電子書)