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Feature
HOWCLOSEISAI
N-?EL
LargelanguagemodelssuchasOpenAI’so1have
electrifiedthedebateoverachievingartificialgeneralintelligence.Buttheyareunlikelytoreachthis
milestoneontheirown.ByAnilAnanthaswamy
O
penAI’slatestartificialintelligence(AI)systemdroppedinSeptemberwithaboldpromise.Thecom-panybehindthechatbotChatGPTshowcasedo1—itslatestsuiteoflargelanguagemodels(LLMs)—ashavinga“newlevelofAIcapability”.OpenAI,whichisbasedinSanFran-
cisco,California,claimsthato1worksinawaythatisclosertohowapersonthinksthandopreviousLLMs.
Thereleasepouredfreshfuelonadebatethat’sbeensimmeringfordecades:justhowlongwillitbeuntilamachineiscapableofthewholerangeofcognitivetasksthathumanbrainscanhandle,includinggeneralizingfromonetasktoanother,abstractreasoning,plan-ningandchoosingwhichaspectsoftheworldtoinvestigateandlearnfrom?
Suchan‘a(chǎn)rtificialgeneralintelligence’,orAGI,couldtacklethornyproblems,includingclimatechange,pandemicsandcuresforcan-cer,Alzheimer’sandotherdiseases.Butsuchhugepowerwouldalsobringuncertainty—andposeriskstohumanity.“Badthingscould
happenbecauseofeitherthemisuseofAIorbecausewelosecontrolofit,”saysYoshuaBengio,adeep-learningresearcherattheUniversityofMontreal,Canada.
TherevolutioninLLMsoverthepastfewyearshaspromptedspeculationthatAGImightbetantalizinglyclose.ButgivenhowLLMsarebuiltandtrained,theywillnotbesufficienttogettoAGIontheirown,someresearcherssay.“Therearestillsomepiecesmissing,”saysBengio.
What’sclearisthatquestionsaboutAGIarenowmorerelevantthanever.“Mostofmylife,IthoughtpeopletalkingaboutAGIarecrack-pots,”saysSubbaraoKambhampati,acomputerscientistatArizonaStateUniversityinTempe.“Now,ofcourse,everybodyistalkingaboutit.Youcan’tsayeverybody’sacrackpot.”
WhytheAGIdebatechanged
Thephraseartificialgeneralintelligenceenteredthezeitgeistaround2007afteritsmentioninaneponymouslynamedbookeditedbyAIresearchersBenGoertzelandCassioPennachin.Itsprecisemeaningremains
elusive,butitbroadlyreferstoanAIsystemwithhuman-likereasoningandgeneralizationabilities.Fuzzydefinitionsaside,formostofthehistoryofAI,it’sbeenclearthatwehaven’tyetreachedAGI.TakeAlphaGo,theAIprogramcreatedbyGoogleDeepMindtoplaytheboardgameGo.Itbeatstheworld’sbesthumanplay-ersatthegame—butitssuperhumanqualitiesarenarrow,becausethat’sallitcando.
ThenewcapabilitiesofLLMshaveradicallychangedthelandscape.Likehumanbrains,LLMshaveabreadthofabilitiesthathavecausedsomeresearcherstoseriouslycon-sidertheideathatsomeformofAGImightbeimminent1,orevenalreadyhere.
Thisbreadthofcapabilitiesisparticularlystartlingwhenyouconsiderthatresearch-ersonlypartiallyunderstandhowLLMsachieveit.AnLLMisaneuralnetwork,amachine-learningmodellooselyinspiredbythebrain;thenetworkconsistsofartificialneurons,orcomputingunits,arrangedinlay-ers,withadjustableparametersthatdenotethestrengthofconnectionsbetweentheneurons.Duringtraining,themostpowerful
22|Nature|Vol636|5December2024
ILLUSTRATIONBYPETRAPéTERFFY
LLMs—suchaso1,Claude(builtbyAnthropicinSanFrancisco)andGoogle’sGemini—relyonamethodcallednexttokenprediction,inwhichamodelisrepeatedlyfedsamplesoftextthathasbeenchoppedupintochunksknownastokens.Thesetokenscouldbeentirewordsorsimplyasetofcharacters.Thelasttokeninasequenceishiddenor‘masked’andthemodelisaskedtopredictit.Thetrainingalgorithmthencomparesthepredictionwiththemaskedtokenandadjuststhemodel’sparameterstoenableittomakeabetterpredictionnexttime.Theprocesscontinues—typicallyusing
YOUDON’TSEETHATKINDOFAUTHENTICAGENCYINLARGE
LANGUAGEMODELS.”
billionsoffragmentsoflanguage,scientifictextandprogrammingcode—untilthemodelcanreliablypredictthemaskedtokens.Bythisstage,themodelparametershavecapturedthestatisticalstructureofthetrainingdata,andtheknowledgecontainedtherein.Theparametersarethenfixedandthemodelusesthemtopre-dictnewtokenswhengivenfreshqueriesor‘prompts’thatwerenotnecessarilypresentinitstrainingdata,aprocessknownasinference. Theuseofatypeofneuralnetworkarchitec-tureknownasatransformerhastakenLLMssignificantlybeyondpreviousachievements.Thetransformerallowsamodeltolearnthatsometokenshaveaparticularlystronginfluenceonothers,eveniftheyarewidelyseparatedinasampleoftext.ThispermitsLLMstoparselanguageinwaysthatseemtomimichowhumansdoit—forexample,dif-ferentiatingbetweenthetwomeaningsoftheword‘bank’inthissentence:“Whentheriver’sbankflooded,thewaterdamagedthebank’sATM,makingitimpossibletowithdrawmoney.” Thisapproachhasturnedouttobehighlysuccessfulinawidearrayofcontexts,
includinggeneratingcomputerprogramstosolveproblemsthataredescribedinnaturallanguage,summarizingacademicarticlesandansweringmathematicsquestions.
Andothernewcapabilitieshaveemergedalongtheway,especiallyasLLMshaveincreasedinsize,raisingthepossibilitythatAGI,too,couldsimplyemergeifLLMsgetbigenough.Oneexampleischain-of-thought(CoT)prompting.ThisinvolvesshowinganLLManexampleofhowtobreakdownaproblemintosmallerstepstosolveit,orsimplyaskingtheLLMtosolveaproblemstep-by-step.CoTpromptingcanleadLLMstocorrectlyanswerquestionsthatpreviouslyflummoxedthem.Buttheprocessdoesn’tworkverywellwithsmallLLMs.
ThelimitsofLLMs
CoTpromptinghasbeenintegratedintotheworkingsofo1,accordingtoOpenAI,andunderliesthemodel’sprowess.FrancoisChollet,whowasanAIresearcheratGoogleinMountainView,California,andleftinNovembertostartanewcompany,thinks
Nature|Vol636|5December2024|23
Feature
thatthemodelincorporatesaCoTgeneratorthatcreatesnumerousCoTpromptsforauserqueryandamechanismtoselectagoodpromptfromthechoices.Duringtraining,o1istaughtnotonlytopredictthenexttoken,butalsotoselectthebestCoTpromptforagivenquery.TheadditionofCoTreasoningexplainswhy,forexample,o1-preview—theadvancedversionofo1—correctlysolved83%ofprob-lemsinaqualifyingexamfortheInternationalMathematicalOlympiad,aprestigiousmathe-maticscompetitionforhigh-schoolstudents,accordingtoOpenAI.Thatcompareswithascoreofjust13%forthecompany’spreviousmostpowerfulLLM,GPT-4o.
But,despitesuchsophistication,o1hasitslimitationsanddoesnotconstituteAGI,sayKambhampatiandChollet.Ontasksthatrequireplanning,forexample,Kambhampati’steamhasshownthatalthougho1performsadmirablyontasksthatrequireupto16plan-ningsteps,itsperformancedegradesrapidlywhenthenumberofstepsincreasestobetween20and40(ref.2).Cholletsawsimilarlimita-tionswhenhechallengedo1-previewwithatestofabstractreasoningandgeneralizationthathedesignedtomeasureprogresstowardsAGI.Thetesttakestheformofvisualpuzzles.Solvingthemrequireslookingatexamplestodeduceanabstractruleandusingthattosolvenewinstancesofasimilarpuzzle,somethinghumansdowithrelativeease.
LLMs,saysChollet,irrespectiveoftheirsize,arelimitedintheirabilitytosolveproblemsthatrequirerecombiningwhattheyhavelearnttotacklenewtasks.“LLMscannottrulyadapttonoveltybecausetheyhavenoabilitytobasicallytaketheirknowledgeandthendoafairlysophisticatedrecombinationofthatknowledgeontheflytoadapttonewcontext.”
CanLLMsdeliverAGI?
So,willLLMseverdeliverAGI?Onepointintheirfavouristhattheunderlyingtransformerarchitecturecanprocessandfindstatisticalpatternsinothertypesofinformationinadditiontotext,suchasimagesandaudio,providedthatthereisawaytoappropriatelytokenizethosedata.AndrewWilson,whostudiesmachinelearningatNewYorkUni-versityinNewYorkCity,andhiscolleaguesshowedthatthismightbebecausethedif-ferenttypesofdataallshareafeature:suchdatasetshavelow‘Kolmogorovcomplexity’,definedasthelengthoftheshortestcomputerprogramthat’srequiredtocreatethem3.Theresearchersalsoshowedthattransformersarewell-suitedtolearningaboutpatternsindatawithlowKolmogorovcomplexityandthatthissuitabilitygrowswiththesizeofthemodel.Transformershavethecapacitytomodelawideswatheofpossibilities,increasingthechancethatthetrainingalgorithmwilldiscoveranappropriatesolutiontoaproblem,andthis‘expressivity’increaseswithsize.Theseare,
saysWilson,“someoftheingredientsthatwereallyneedforuniversallearning”.AlthoughWilsonthinksAGIiscurrentlyoutofreach,hesaysthatLLMsandotherAIsystemsthatusethetransformerarchitecturehavesomeofthekeypropertiesofAGI-likebehaviour.
Yettherearealsosignsthattransformer-basedLLMshavelimits.Forastart,thedatausedtotrainthemodelsarerunningout.ResearchersatEpochAI,aninstituteinSanFranciscothatstudiestrendsinAI,estimate4thattheexistingstockofpubliclyavailabletextualdatausedfortrainingmightrunoutsomewherebetween2026and2032.TherearealsosignsthatthegainsbeingmadebyLLMs
HUMANSAND
OTHERANIMALS
AREAPROOFOF
PRINCIPLETHAT
YOUCANGETTHERE.”
astheygetbiggerarenotasgreatastheyoncewere,althoughit’snotclearifthisisrelatedtotherebeinglessnoveltyinthedatabecausesomanyhavenowbeenused,orsomethingelse.ThelatterwouldbodebadlyforLLMs.
RaiaHadsell,vice-presidentofresearchatGoogleDeepMindinLondon,raisesanotherproblem.Thepowerfultransformer-basedLLMsaretrainedtopredictthenexttoken,butthissingularfocus,sheargues,istoolimitedtodeliverAGI.BuildingmodelsthatinsteadgeneratesolutionsallatonceorinlargechunkscouldbringusclosertoAGI,shesays.Thealgorithmsthatcouldhelptobuildsuchmodelsarealreadyatworkinsomeexisting,non-LLMsystems,suchasOpenAI’sDALL-E,whichgeneratesrealistic,sometimestrippy,imagesinresponsetodescriptionsinnaturallanguage.ButtheylackLLMs’broadsuiteofcapabilities.
Buildmeaworldmodel
TheintuitionforwhatbreakthroughsareneededtoprogresstoAGIcomesfromneuroscientists.Theyarguethatourintelli-genceistheresultofthebrainbeingabletobuilda‘worldmodel’,arepresentationofoursurroundings.Thiscanbeusedtoimaginedifferentcoursesofactionandpredicttheirconsequences,andthereforetoplanandrea-son.Itcanalsobeusedtogeneralizeskillsthathavebeenlearntinonedomaintonewtasksbysimulatingdifferentscenarios.
Severalreportshaveclaimedevidencefortheemergenceofrudimentaryworldmodels
insideLLMs.Inonestudy5,researchersWesGurneeandMaxTegmarkattheMassachusettsInstituteofTechnologyinCambridgeclaimedthatawidelyusedopen-sourcefamilyofLLMsdevelopedinternalrepresentationsoftheworld,theUnitedStatesandNewYorkCitywhentrainedondatasetscontaininginfor-mationabouttheseplaces,althoughotherresearchersnotedonX(formerlyTwitter)thattherewasnoevidencethattheLLMswereusingtheworldmodelforsimulationsortolearncausalrelationships.Inanotherstudy6,KennethLi,acomputerscientistatHarvardUniversityinCambridgeandhiscolleaguesreportedevi-dencethatasmallLLMtrainedontranscriptsofmovesmadebyplayersoftheboardgameOthellolearnttointernallyrepresentthestateoftheboardandusedthistocorrectlypredictthenextlegalmove.
Otherresults,however,showhowworldmodelslearntbytoday’sAIsystemscanbeunreliable.Inonesuchstudy7,computersci-entistKeyonVafaatHarvardUniversity,andhiscolleaguesusedagiganticdatasetoftheturnstakenduringtaxiridesinNewYorkCitytotrainatransformer-basedmodeltopredictthenextturninasequence,whichitdidwithalmost100%accuracy.
Byexaminingtheturnsthemodelgener-ated,theresearcherswereabletoshowthatithadconstructedaninternalmaptoarriveatitsanswers.Butthemapborelittleresem-blancetoManhattan(see‘TheimpossiblestreetsofAI’),“containingstreetswithimpos-siblephysicalorientationsandflyoversaboveotherstreets”,theauthorswrite.“Althoughthemodeldoesdowellinsomenavigationtasks,it’sdoingwellwithanincoherentmap,”saysVafa.Andwhentheresearcherstweakedthetestdatatoincludeunforeseendetoursthatwerenotpresentinthetrainingdata,itfailedtopredictthenextturn,suggestingthatitwasunabletoadapttonewsituations.
Theimportanceoffeedback
Oneimportantfeaturethattoday’sLLMslackisinternalfeedback,saysDileepGeorge,amemberoftheAGIresearchteamatGoogleDeepMindinMountainView,California.Thehumanbrainisfulloffeedbackconnectionsthatallowinformationtoflowbidirectionallybetweenlayersofneurons.Thisallowsinfor-mationtoflowfromthesensorysystemtohigherlayersofthebraintocreateworldmod-elsthatreflectourenvironment.Italsomeansthatinformationfromtheworldmodelscanripplebackdownandguidetheacquisitionoffurthersensoryinformation.Suchbidirec-tionalprocesseslead,forexample,topercep-tions,whereinthebrainusesworldmodelstodeducetheprobablecausesofsensoryinputs.Theyalsoenableplanning,withworldmodelsusedtosimulatedifferentcoursesofaction. ButcurrentLLMsareabletousefeedbackonlyinatacked-onway.Inthecaseofo1,the
24|Nature|Vol636|5December2024
TruestreetsinManhattan,NewYork
Non-existent‘streets’reconstructed
Directionbyanartificial-intelligencesystem
oftravel
attheDalleMolleInstituteforArtificialIntelligenceStudiesinLugano-Viganelllo,Switzerland,reported9buildinganeuralnet-workthatcouldefficientlybuildaworldmodelofanartificialenvironment,andthenuseittotraintheAItoracevirtualcars.
IfyouthinkthatAIsystemswiththislevelofautonomysoundscary,youarenotalone.AswellasresearchinghowtobuildAGI,BengioisanadvocateofincorporatingsafetyintothedesignandregulationofAIsystems.Hearguesthatresearchmustfocusontrainingmodelsthatcanguaranteethesafetyoftheirownbehaviour—forinstance,byhavingmech-anismsthatcalculatetheprobabilitythatthemodelisviolatingsomespecifiedsafetycon-straintandrejectactionsiftheprobabilityistoohigh.Also,governmentsneedtoensuresafeuse.“Weneedademocraticprocessthatmakessureindividuals,corporations,eventhemilitary,useAIanddevelopAIinwaysthataregoingtobesafeforthepublic,”hesays.
SOURCE:REF.7
THEIMPOSSIBLESTREETSOFAI
Theabilitytobuildrepresentationsofour
environment,calledworldmodels,helpshumansto
reasonandplan.ItisthoughtthatAIsystemswillneedthiscapacity,too,iftheyaretodevelophuman-level
intelligence.InthecaseofanAIsystemthatwas
trainedtopredictroutestakenbytaxisinManhattan,NewYork,itsinternalmapdidnotresemblethereal
world.Inlatertesting,thisledtoaninabilitytohandledetoursthatwerenotpresentinthetrainingdata.
TheAIsystem’smap
containsstreetswith
impossibleorientations
andbridgesthatdon’texist.
SowilliteverbepossibletoachieveAGI?Computerscientistssaythereisnoreasontothinkotherwise.“Therearenotheoreticalimpediments,”saysGeorge.MelanieMitchell,acomputerscientistattheSantaFeInstituteinNewMexico,agrees.“Humansandsomeotheranimalsareaproofofprinciplethatyoucangetthere,”shesays.“Idon’tthinkthere’sanythingparticularlyspecialaboutbiologicalsystemsversussystemsmadeofothermaterialsthatwould,inprinciple,preventnon-biologicalsystemsfrombecomingintelligent.”
internalCoTpromptingthatseemstobeatwork—inwhichpromptsaregeneratedtohelpansweraqueryandfedbacktotheLLMbeforeitproducesitsfinalanswer—isaformoffeed-backconnectivity.But,asseenwithChollet’stestsofo1,thisdoesn’tensurebullet-proofabstractreasoning.
Researchers,includingKambhampati,havealsoexperimentedwithaddingexternalmod-ules,calledverifiers,ontoLLMs.ThesecheckanswersthataregeneratedbyanLLMinaspe-cificcontext,suchasforcreatingviabletravelplans,andasktheLLMtorerunthequeryiftheanswerisnotuptoscratch8.Kambhampati’steamshowedthatLLMsaidedbyexternalverifi-erswereabletocreatetravelplanssignificantlybetterthanwerevanillaLLMs.Theproblemisthatresearchershavetodesignbespokeverifi-ersforeachtask.“Thereisnouniversalverifier,”saysKambhampati.Bycontrast,anAGIsystemthatusedthisapproachwouldprobablyneedtobuilditsownverifierstosuitsituationsastheyarise,inmuchthesamewaythathumanscanuseabstractrulestoensuretheyarereasoningcorrectly,evenfornewtasks.
EffortstousesuchideastohelpproducenewAIsystemsareintheirinfancy.Bengio,forexample,isexploringhowtocreateAIsys-temswithdifferentarchitecturestotoday’stransformer-basedLLMs.Oneofthese,which
useswhathecallsgenerativeflownetworks,wouldallowasingleAIsystemtolearnhowtosimultaneouslybuildworldmodelsandthemodulesneededtousethemforreasoningandplanning.
AnotherbighurdleencounteredbyLLMsisthattheyaredataguzzlers.KarlFriston,athe-oreticalneuroscientistatUniversityCollegeLondon,suggeststhatfuturesystemscouldbemademoreefficientbygivingthemtheabilitytodecidejusthowmuchdatatheyneedtosam-plefromtheenvironmenttoconstructworldmodelsandmakereasonedpredictions,ratherthansimplyingestingallthedatatheyarefed.This,saysFriston,wouldrepresentaformofagencyorautonomy,whichmightbeneededforAGI.“Youdon’tseethatkindofauthen-ticagency,insay,largelanguagemodels,orgenerativeAI,”hesays.“Ifyou’vegotanykindofinte
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