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StateofAIData
ConnectivityReport:2026Outlook
Over200dataandAIleaderssaydatainfrastructureisthebiggestbarriertoAIsuccess
StateofAIDataConnectivityReport:2026Outlook2
TheTopLine
TheAugust2025MITreport,TheGenAIDivide:StateofAIinBusiness2025,1madewavesamong
businessleadersandAIproductownerslargelyduetoitsheadlinestatistic:95%ofgenerativeAIpilotsatcompaniesarefailing.Withtheunprecedentedscaleofinvestmentandthehighexpectationsfor
enterpriseapplicationsoflargelanguagemodels(LLMs),bothGenAIevangelistsandskepticswerequicktoweighinonthedisappointingoutcomesoftheseearlyexperiments.
Whiletheaccuracyofthatspecificstatisticcontinuestobedebated,thecoreissueitsurfacesisnot:alargeshareofcompaniesarefailingtorealizemeaningfulROIfromtheirAIefforts.Themoreimportantquestionis,why?
Wesurveyed200+dataandAIleaders,bothfromenterpriseswithinternalAIadoptioninitiativesaswellassoftwarecompaniesembeddingAIcopilotsandagentsintotheirproducts.Andhere’swhatwelearned:enterpriseAIisnolongerlimitedbymodels.It’sconstrainedbydatainfrastructureandenterprisecontext.
ThestrongestpredictorofAIsuccessin2026isthematurityoftheunderlyingdatainfrastructurethatdeliversenterprisecontexttothesemodels.
Infact,60%ofcompaniesatthehighestlevelofAImaturityalsohavethemostmaturedata
infrastructure.Andtheinverseisalsotrue:53%ofcompanieswithimmatureAIhaveimmaturedatasystems.
Inthisreport,AImaturityreferstotheextenttowhichanorganizationhasoperationalizedAI,movingbeyondexperimentationtomeasurablebusinessimpact.Ourframeworkconsidersdimensions
suchasmodeldeployment,dataintegrationmaturity,governance,andROItracking.Wecategorizematurityinafive-stageprogressiveframeworkthatdrawsfromEY-Parthenon’sAImaturitymodel:
experimenting,implementing,scaling,optimizing,andleading.2
“TheparadoxofAIreadinessisthatourdatainfrastructure
becomesmorepowerfulnotthroughendlessadaptability,
butthroughintentionalsemanticboundariesthatgiveLLMs
thepredictablecontractstheyneedtoorchestratecomplex
workflows.Withoutthisdeliberatearchitectureofconstraints,
we’releftwithsystemsthatburntokensonambiguityratherthandeliveringvalue.”
—CarlisiaCampos,AISoftwareEngineer,GrokkingTech
1“TheGenAIDivide:StateofAIinBusiness2025”,MITNANDA,Aug.18,2025
2“HowaTop-DownHolisticStrategyCanMaximizeGenAIROI”,EY-Parthenon,June18,2024
StateofAIDataConnectivityReport:2026Outlook3
AsanyoneusingenterpriseAItoolslikeChatGPT,LangChain,orAgentforcecanattest,it’snosurprisethatcontextplaysadefiningroleinAImaturity.Largelanguagemodelsdependheavilyonitfor
accurate,reliable,usefuloutputs.Whatissurprisingishowfeworganizationsareactuallysetuptodeliverthatcontext.
Otherfindingsfromtheresearchhighlightthespecificchallengesstandingbetweenintentionandexecution.Acrossbothenterprisesandsoftwareproviders,wefound:
Finding
Implication
71%ofAIteamsspendmorethanaquarteroftheir
Whensignificantresourcesaretiedupindata
implementationtimeondataintegration—including
integration,attentionispulledawayfromstrategic
modelingdata,implementingETLpipelines,configuringconnectors.
productdevelopmentandinnovation.
46%oforganizationsrequirereal-timeaccesstosix
EachAIusecaserequiresconnectingtomultiple
ormoredatasourcesforanaverageAIusecase.
systems,whichaddsarchitecturalcomplexityandincreasestheburdenondatateams.
AI-nativesoftwareprovidersare3xmorelikelyto
Modernsoftwarecompaniesarearchitectingfor
requiremorethan26externaldataintegrationsin
scalefromdayone,exposingintegrationgapsin
product,ascomparedtotraditionalproviders(46%vs.15%).
moretraditionalproviders.
100%oforganizationssayreal-timedatais
necessaryforAIagentsandcustomerservice
automation.While80%ofenterpriseshavebegunimplementingreal-timeintegration,mostarestillintheearlystagesofscalingiteffectively.
Thereisasignificantreal-timeintegrationcapabilitygapthatcouldlimittheadoptionofAIagentsandautomationatscale.
Allhigh-AI-maturity(“leading”)enterpriseshave
Semanticallyconsistentdataaccessisnotjust
builtcentralized,semanticallyconsistentdata
abestpractice‚it’sbecominganAIimperative.
access:80%oflow-maturity(“experimenting”)
Softwareprovidersandenterprisesthatlackitwill
enterpriseshaven’tevenstarted.
struggletokeepup.
58%ofrespondentsprioritizestructureddata
sources(organized,schema-basedformatslikedatabasesandAPIs)forAIfeatures,whileonly
11%primarilyrelyonunstructureddata(free-formcontentsuchasdocuments,chatlogs,and
mediafiles).
There’slotsofdiscussionaboutunstructureddata,butstructureddataremainsthecorebuildingblockformostAIapplications.
Only9%ofrespondentsrankAImodelacquisitionordevelopmentastheirtopinvestmentpriority,but83%areimplementingorplanningacentralized,
semanticallyconsistentdataaccesslayer.
Themarketisprioritizingdatainfrastructureovermodelbuilding,signalingthatdataaccessistherealbottleneckinAIprogress.
StateofAIDataConnectivityReport:2026Outlook4
Thesurveyresultspointtoasoberingtruth:generativeandagenticAIaren’tbottleneckedbythe
capabilitiesoffoundationalAImodels,butbyaccesstoconnected,contextualized,controlleddata.AndtheAIlandscapeisrifewithdataintegrationissues,fromfragmentedsystemstoalackof
connectorsandreal-timeinfrastructure.
That’sthebadnews.Thegoodnews?Thereareenterprisesandsoftwareprovidersthataregettingitright,andthesurveysurfacedthekeyinitiatives,priorities,andinvestmentsbehindtheirsuccess.Ifyou’reanenterpriselookingtoself-assessyourAImaturityorthecurrentstateofout-of-the-
boxagenticAIsolutions,thisreportoffersvaluableinsight.Ifyou’reasoftwareprovideraimingtobenchmarkyourselfagainstindustryleadersandbetterunderstandenterpriseinvestmentpriorities,you’llalsofindpracticalguidancehere.
Thereportismadeupoftwomajorparts:
1.EnterpriseAIadoptionanddatachallenges:AdeepdiveintohowenterpriseorganizationsaredeployingAIandwhatinfrastructuralblockersareslowingprogress.
2.ProductAIstrategyamongsoftwareproviders:AnexplorationofhowproductleadersareembeddingAIintotheirplatformsandwhydataintegrationremainsacriticaldependency.
Together,thesesectionsformacomprehensivepictureofhowdataconnectivity,infrastructurematurity,andintegrationstrategydictateAIsuccessinbothenterpriseandproductcontexts.
StateofAIDataConnectivityReport:2026Outlook5
TableofContents
SurveyMethodologyandRespondentDemographics 6
PartI:EnterpriseAIAdoptionandtheDataInfrastructureGap 9
EnterpriseAIisn’tonthehorizon:it’sinproduction 9
Stuckinthemiddle:mostenterprisesareimplementingandscalingAI,butveryfewareleading 10
KnowledgeassistanceandcustomerserviceautomationarethemostprevalentapplicationsofenterpriseAI 11
AmajorityoforganizationshavealreadydeployedagenticAIsystems 12
AItoolsprawlisfragmentingcontext,atatimewhencontextmattersmost 13
ThecurrentstateofdatainfrastructurepoweringAI 14
EnterpriseAIleadersarelargelyunsatisfiedwithcurrentintegrationarchitecture 14
WhendataconnectivitybecomestheAIbottleneck 16
Real-timeintegrationisamaturitymarker 20
Beyondmodels:thearchitectureandcapabilitiesofAIreadiness 21
AImaturitycorrelateswithintegrationmaturity 21
Centralized,semanticallyenricheddataaccessisaprerequisiteforscalableAI 21
TopinvestmentareasforAIsuccess 24
PartII:TheSoftwareProviderLensandAIProductStrategy 25
AIfeaturesarebecomingtablestakesforproductleaders 26
DatafragmentationandintegrationisthebiggestlimitingfactorforAIfeaturedevelopment 28
MostAIusecasesneedmultipleintegrationstocustomerdata 31
Semanticstandardizationandreal-timeintegrationdemandsfromenterprisesareshapingproductroadmaps 33
TheFinalSay:TheAIConnectivityImperative 36
GlossaryofTerms 37
StateofAIDataConnectivityReport:2026Outlook6
SurveyMethodologyand
RespondentDemographics
Theinsightsinthisreportdrawfromtwocomplementarysurveysconductedin2025;onecapturingtheperspectiveofenterpriseAIimplementationleaders,andtheotherfromproductleaders
atsoftwareproviders.Together,theyofferadualviewofhoworganizationsareadoptingand
operationalizingAI:fromenterprisesembeddingAIintotheiroperations,tosoftwareprovidersbuildingAIdirectlyintotheirproducts.EachsurveyaimedtouncoverthecurrentstateofAIadoption,the
infrastructurechallengesshapingprogress,andtheinvestmentprioritiesdefiningthenextphaseofAImaturity.Accordingly,PartIofthereportfocusesonenterpriseAIadoptionandthedatainfrastructuregap,whilePartIIexaminesthesoftwareproviderperspectiveandtheevolvingstrategiesbehindAI-
poweredproductdevelopment.
PartImethodology:Weusedanindependentresearchfirmtoblindsurvey100enterprisedataandAIleaders,acrossindustriesandsizesrangingfromstartuptoover$10Binannualrecurringrevenue.
Nearlyhalf(49%)oftherespondentswereC-levelexecutivesresponsiblefortechnology,IT,data,
andAIfunctions.Includingthe22%VPsanddirectorswhorespondedtothesurvey,thedatasetisstronglyrepresentativeofenterpriseleaderswithdecision-makingauthorityandamandatetodriveorganization-wideimpactthroughtheadoptionofAI.
30%
17%
14%
2%
6%
9%
9%
13%
ChiefInformationOfficer(CIO)
EnterpriseDataArchitect
VPorDirectorofAI/ML
AIProductorPlatformOwner
VPorDirectorofData
ChiefTechnologyOfficer(CTO)
ChiefDataorAIOfficer(CDO/CAIO)
HeadofData/HeadofAI
Seventy-fourpercentofrespondentswerefromcompanieswithmorethan$500Minannualrevenue,whiletheremaining26%belongedtomid-sizedcompaniesandstartups.ThedatasetisthusskewedtowardorganizationsthathavebiggerITbudgetsandexposuretoawideswathofAIanddata
infrastructureapproachesinthemarket.
StateofAIDataConnectivityReport:2026Outlook7
Under$50M
$50M-$249M
$250M-500M
$500M-$2B
$2B-10B
Over$10B
5%
12%
9%
30%
23%
21%
Thisrespondentmixreflectsafront-rowviewofhowAIisbeingbuiltanddeployedtodayintheenterprise.
PartIImethodology:Thishalfofthereportrepresentsresultsfromablindsurveyconductedbyan
independentresearchfirmof100productandengineeringleadersfromamixofsoftwarecompanies,rangingfromAI-nativestartupstosomeofthemostestablishedplayersinSaaSandenterprise
platforms.ThisoffersusauniquelycomprehensiveviewintohowdifferentproductstrategiesintersectwithAlreadinessandintegrationapproaches.
1
AInativecompany
Cloudprovider/hyperscaler
6
Horizontalenterpriseapplication
31%
3%
%
50%VerticalSaaS
lnthiscohort丿58%ofrespondentsaresoftwareprovidersreporting$500MormoreinARR.Titles
includeproductleadersacrossfunctions:fortypercentareVPsordirectorsofproduct,withsignificantrepresentationfromengineering,architecture,andAIleadershiproles.Twenty-ninepercentareC-leveldecision-makers(CTOsandCPOs),settingorganization-wideprioritiesregardingAIimplementationinproduct.
StateofAIDataConnectivityReport:2026Outlook8
$50M-$249M
$250M-500M
Over$500M
19%
23%
58%
20%
40%
8%
5%
18%
9%
HeadofAI/MLorAIProduct
TechnicalProductManagerorAI
ChiefProductOfficer
(CPO)
ChiefTechnologyOfficer(CTO)
VPorDirector
ofEngineering/Architecture
VPorDirectorofProductManagement
Definitionsusedinthisreport(seeglossaryoftermsonpage37foradditionaldefinitions):
GenerativeAI(GenAI)—AI-poweredfeaturesbuiltintoproductsthathelpcustomerscompletetasksbygeneratingcontent,surfacinginsights,orinteractingwithdata,oftenusingLLMs.Thisreport
focusesontwocommonGenAIapplications:
•AICo-pilot—AnAI-poweredassistantembeddedinyourproductthathelpsuserscompletetasksbygeneratingcontent,retrievingdata,coding,orrecommendingnextsteps,butalwaysrequireshumaninputtoinitiateorapproveactions.Example:Acopilotthatsummarizesrecentcustomeractivityandsuggestsfollow-upactions,whichtheuserreviewsandapproves.
•AutonomousAIAgent—Actswithminimalornohumanpromptingtocompletetasksorachievegoals.Theseagentscanreason,makedecisions,andtakeactionacrosssystemsorworkflowsonbehalfoftheuser.Example:anAIagentthatmonitorspipelineactivity,flagsat-riskdeals,andsendsproactivealertsormessages.
StateofAIDataConnectivityReport:2026Outlook9
PartI:EnterpriseAIAdoptionandtheDataInfrastructureGap
ThefindingsbelowhighlightkeythemesthatemergedfromoursurveyofenterpriseleadersresponsibleforadvancingAIadoptionandmaturity.
Keytakeaways:
•AIisalreadyinproduction,notinpilot.78%ofenterpriseshavemovedbeyondexperimentation,embeddingAIintooperations,butonly17%areinadvancedstageswhereROIismeasurable.
•AIcapabilitiesandmodelsizearenotthetopblockerstoadoption.
Dataandcontextare.73%oforganizationscitedataqualityand
integrationastopblockers,and71%spendoveraquarterofAIprojecttimejustondataconnectivity.
•Scaleandmaturitygohand‑in‑hand.Largeenterpriseswithmaturedatainfrastructurearepullingahead,while80%offirmsunder$50MinARRremainstuckinearlyimplementation.
•Real‑time,governeddataisthenewdifferentiator.60%rank
governanceand42%rankreal‑timeconnectivityastopinvestmentpriorities,farsurpassinginvestmentintheAImodelsthemselves(9%).
•Fragmentedtoolsdemandunifiedintegration.44%oforganizationslisted“lackofunifiedmetadataandsemanticcontext”amongtheirtopfivecurrentblockerstoenterpriseAIadoption,and83%oforganizationshavebuiltorareplanningtobuildcentralized,semanticallyconsistentdataaccess.
Whatfollowsisadeepdiveintothepriorities,roadblocks,andemergingtrendsshapingenterpriseAIadoption,basedonthesurveyresults.
EnterpriseAIisn’tonthehorizon:it’sinproduction
Finding:
Beyondexperimentation:66%ofcompaniesaredeployingGenAIandautonomousagentstoaugmenthumanworkflows.
StateofAIDataConnectivityReport:2026Outlook10
Stuckinthemiddle:mostenterprisesareimplementingandscalingAI,butveryfewareleading
AIisnotafutureaspirationformostenterprises.It’shere.Infact,78%ofenterprisesarepastthepilotphase,withAIuse-casesalreadyembeddedinoperations.
Amajorityofenterprises(68%)fallintothemiddlestagesofAImaturity,betweenthe“implementing”and“scaling”stages.However,only17%areinadvancedstages(“optimizing”or“leading”)whereROIismeasurableandAIiscoretostrategy.
WherewouldyouplaceyourorganizationontheAImaturitycurve?
Stage%oforganizations
Experimenting(earlypilots,proofsofconcept,learningphase)
Implementing(deployinginitialproductionusecases,establishinggovernance)
Scaling(expandingAIacrossmultipledepartmentsandusecases)
Optimizing(AIintegratedintocoreoperations,measuringROIandefficiency)
Leading(AIdrivescompetitiveadvantageandinnovationstrategy)
15%
37%
31%
7%
10%
Thedataalsoshowsbiggercompaniesarepullingahead.Only4.8%ofenterprisesover$10Bin
annualrevenuearestillintheearlystageofexperimentingwithAI,while80%ofthoseunder$50Minannualrevenueremainstuckinearlyimplementation.
Under$50M
$50M-$249M
$250M-$500M
$500M-$2B
$2B-$10B
Over$10B
ExperimentingImplementingLeadingOptimizingScaling
100%
80%
60%
40%
20%
0%
Implication:Scalematters.Largeenterpriseshavethedatainfrastructureandin-housetalenttooperationalizeAI,whilesmallerfirmsarestilllayingthepipestogetpilotsofftheground.
StateofAIDataConnectivityReport:2026Outlook11
“Ayearago,weimplementedAIassistantswithinallourcall
centers,fullyinproduction.Itisfullyintegratedwithourbackenddata,sowhenacustomercalls,itautomaticallyrecognizestheirnumber,looksuptheorder,thedeliverystatus,andanswersthecall,allbeforeahumanagentcanevenpickupthecall,inreal-time.Theresultsweredramatic.”
—SVPofTechnologyPortfolio,globalretailbrand
KnowledgeassistanceandcustomerserviceautomationarethemostprevalentapplicationsofenterpriseAI
Earlysuccessstoriesfocusoninternalknowledgeassistantsandcustomersupportautomation.Codegenerationisclosebehind.Theseusecasesthriveonaccesstobothstructured(databases,APIs,spreadsheets)andunstructured(images,emails,documents)data,butevenmoreadvancedcapabilities(e.g.,AIagents,decisionsupport)aregainingtraction.
WhichusecasesisyourorganizationtargetingwithGenAIoragenticAItodayorinthenearfuture?
Usecase%ofOrgs
Employeeoragentco-pilot(e.g.,internalknowledgeassistants,agentaugmentation)
Customersupportandserviceautomation(e.g.,virtualagents,chatbots,ticketdeflection)
AI-poweredsearchorknowledgeretrieval(e.g.,RAGsystems,semanticsearch)
Codegenerationoraugmentation(e.g.,internaldevtools,LLM-drivenrefactoring)
Intelligentdocumentprocessing(e.g.,summarization,extraction,classification)
Marketingorcontentgeneration(e.g.,campaigncopy,imagegeneration,personalization)
Processorworkflowautomation(e.g.,agent-triggeredactions,RPAaugmentation)
Decisionsupportorscenarioanalysis(e.g.,contextualinsights,what-ifmodeling)
PredictiveanalyticsforGTM,revenue,orcustomerretention
Internalbusinessintelligenceenhancement(e.g.,naturallanguagedashboards)
Predictiveanalyticsforsupplychain,logistics,oroperations
AIagentorchestrationacrosssystems(e.g.,updatingrecords,syncingworkflows)
79%
70%
61%
60%
58%
55%
54%
52%
49%
47%
37%
33%
ipsum
StateofAIDataConnectivityReport:2026Outlook12
AIchatassistantsandagentsareprimarilydeployedtoaugmenthumanworkflows,notreplacethem.Thetopusecases,employee/agentcopilots(79%)andcustomersupportautomation(70%),signal
thatenterprisesarefocusingonhuman-in-the-loopaugmentation.TheseusecaseshelpknowledgeworkersoperatemoreefficientlywithouthandingoverfullcontroltoAI.
Theimpressiveadoptionofcodegeneration(60%)andmarketing/contentcreation(55%)showsthatAIisnowembeddedintechnicalandcreativeworkflowsalike.Theseareproductivitymultipliersthatarelowriskbuthighimpact,andareoftenearlywinsforAIadoption.
Implication:EnterprisesarebettingonAItoboostproductivity,notreplacepeople.Theearlyfocusoncopilots,supportautomation,andcodegenerationshowsthatadoptioniscenteredonpractical,human-in-the-loopusecasesthatdeliverfastvaluewithlowerrisk.
AmajorityoforganizationshavealreadydeployedagenticAIsystems
GenerativeandagenticAIadoptionisprevalent,withaclearshiftfromexperimentationtodeployment,especiallyaroundagent-basedusecases.
Whatbestdescribesyourorganization’scurrentinternalengagementwithgenerativeandagenticAI?
7%
7%
WeareinearlyexplorationorPoCstagesforenterpriseAIsolutions
We'vedeployedoraredeployingbothgenerativeAIusecasesandAIagents
66%
20%
We'vedeployedorare deployinggenerativeAIusecases,butnotAIagents
We'vedeployedoraredeployingAIagents
Implication:AIagentadoptionisn’ttheoretical.It’salreadyhappeningatscale,signalingafast-movingshifttowardmoreautonomous,workflow-integratedAI.
“Dataisabsolutelythelifebloodofagentsactuallybeinghelpful
foryourenterprise.Andso,havingtherightconnections,therightfidelity,therightsecurity,therightcompliancearoundyourdataisallcritical.”
—PhilipStephens,SeniorStaffSoftwareEngineer,Google
StateofAIDataConnectivityReport:2026Outlook13
AItoolsprawlisfragmentingcontextatatimewhencontextmattersmost
While76%oforganizationsleveragefoundationalmodelsinenterpriseLLMplatforms,theAI
technologystackisnotcentralized.EnterprisesalsoreportsignificantuseofBI-nativecopilots,agentplatforms,andcustomerserviceAI.
WhichAIapplicationsorplatformsaremostimportanttoyourorganization’susecases?
Platformcategory
EnterpriseLLMplatforms(OpenAI,Claude,Gemini)
Enterprisedataplatforms
(Snowflake,Databricks,etc.)
BusinessintelligenceAI
(MicrosoftCopilot,TableauAI,etc.)
CodegenerationAI
(GitHubCopilot,Cursor,etc.)
EnterpriseAIagents(SalesforceAgentforce,CopilotStudio)
CloudAIservices
(Vertex,Bedrock,AzureAI,etc.)
CustomerserviceAI
(ZendeskAI,ServiceNowAI)
CustomAIapplications(BuiltIn-House)
AIdevelopmentframeworks(LangChain,LlamaIndex,etc.)
OpensourceAImodels(Llama,Mistral,etc.)
Industry-specificAIsolutions
76%
65%
54%
48%
43%
34%
31%
29%
28%
20%
14%
Implication:Thissprawlcreatesintegrationcomplexityandcontextfragmentationthatmustbeaddressedthroughcentralized,tool-agnosticsemanticsandintegration.
StateofAIDataConnectivityReport:2026Outlook14
“Mostenterprises,especiallyoldercompanieswithlotsofhistory,havedisparatesystemsthatarecobbledtogether.Yourabilitytogetvalueoutofthesedataassetsislargelyafunctionofyourdataintegrationcapability.”
—ChiefDataandAnalyticsOfficer,Fortune100manufacturer
ThecurrentstateofdatainfrastructurepoweringAI
Finding:
Only6%ofenterprisesaresatisfiedwiththeircurrentdatainfrastructureforAl.
EnterpriseAIleadersarelargelyunsatisfiedwithcurrentintegrationarchitecture
Mostenterprisesstillrelyonamixoffragileormanualapproaches,with53%relyingoncustom-builtAPIs,connectors,anddatapipelinestodeliverenterprisedatacontexttoAImodels.
HowdoesyourorganizationcurrentlyconnectAIsystemstoenterprisedatasources?
Custom-builtAPIs,connectors,anddatapipelines
Out-of-the-boxconnectorsfromdataintegration/ETL/ELTplatforms
Directdatabaseconnections
Clouddataplatformintegrations
(Snowflake,Databricks,etc.)Manualdataexportsandimports Third-partyiPaaSsolutions(MuleSoft,SnapLogic,etc.)
53%
31%
23%
13%
3%
3%
Overall,organizationsreportahighdegreeofpainanddissatisfactionwiththeircurrentintegrationstrategyandinfrastructure.Only6%reportedtheywere“verysatisfied”withtheirintegrationstrategy.FourteenpercentreportedtheirintegrationstrategycreatessignificantchallengesforAIinitiatives.
StateofAIDataConnectivityReport:2026Outlook15
HowsatisfiedareyouwithyourcurrentdataconnectivityapproachforAIinitiatives,
includingingestionofdatafromsourcesystems,contextinjectionforGenAImodels,real-timedataintegration,etc.?
14%
Somewhatdissatisfied:
CreatessignificantchallengesforAI
initiatives
60%
50%
40%
30%
20%
10%
0
55%
Somewhatsatisfied:
Worksbuthaslimitations
6%
Verysatisfied:
Meetsallour
needsefficiently
25%
Neutral:Adequateforcurrentneeds
“AItechnologyhasadvancedfasterthanorganizationaldata
capabilities,creatingacriticalbottleneckforAIadoption.WhilesophisticatedAImodelsarereadilyavailable,mostcompaniesstrugglewithpoordataquality,fragmentedsystems,and
inadequatedatapreparationprocesses.Ultimately,AIsuccessdependsmoreonhavinghigh-quality,well-prepareddatathanonhavingthemostadvancedmodels.”
—HarshitKohli,Sr.TechnicalAccountManager,AWS
StateofAIDataConnectivityReport:2026Outlook16
Implication:Thecostofbespokeintegrationishigh;notjustindollars,butindelaysandfragility.The
MITReportonEnterpriseAIadoption
indicatesthatcustom-builtsolutionsresultinasignificantly
higherrateoffailureforenterpriseAIinitiatives.TheoveralldissatisfactionexpressedbyenterprisedataandAIleadersislikelyreflectiveofunderlyingmaintenanceoverhead,delays,andtechnical
limitationsthataccompanyt
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