{"api":{"name":"api.sb","description":"Business-as-Code surface for Startups.Studio","home":"https://api.sb","docs":"https://api.sb/docs","version":"1.0.0"},"$context":"https://api.sb/$context","$type":"FoundingHypothesis","$id":"https://api.sb/founding-hypotheses/fh%3Aw3-35-3023-dwa-analyzing-data%3Av1","links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-35-3023-dwa-analyzing-data%3Av1","canonical":"https://api.sb/founding-hypotheses/fh%3Aw3-35-3023-dwa-analyzing-data%3Av1","pool":"https://api.sb/v1/founding-hypotheses"},"foundingHypothesis":{"id":"fh:w3-35-3023-dwa-analyzing-data:v1","lens":"AIService","type":"founding-hypothesis","click":{"rubricScores":{"C8_lensFit":1,"C7_magicLensFit":1,"C4_competitorHonesty":1,"C6_crossSlotCoherence":1,"C1_customerSpecificity":1,"C2_problemFrictionRealism":1,"C9_killCriteriaAttestability":1,"C3_approachEngineCoverability":1,"C5_differentiationLoservilleEscape":1},"upperRightLoserville":true},"cellRef":{"id":"work-contexts.org.ai/w3-35-3023-dwa-analyzing-data","stableHash":"wcc:35-3023:dwa-analyzing-data:document:w3:v1"},"problem":{"slotStatement":"District managers spend Mondays stitching together POS exports, drive-thru timer CSVs, and labor schedules into brittle Excel decks to explain why Store 14's average service time slipped, with no traceable record of which transactions or shifts drove the variance when the franchisor asks"},"approach":{"oneSentence":"An AI analyst service that ingests POS, drive-thru timer, and labor-schedule exports and returns a review-ready store-performance report where every KPI callout links back to the specific transactions, shifts, and crew windows it was computed from"},"customer":{"icpShape":"Regional and multi-unit QSR franchise operators (20-200 locations) in the US fast-food segment, where the buyer is the VP of Operations or Director of Restaurant Excellence and the daily user is the District Manager or Shift Analyst reviewing crew throughput and speed-of-service data","beachheadShape":"EarlyAdopterJTBD: multi-unit QSR franchisees under corporate speed-of-service audits who already export POS/drive-thru timer data but lack analyst headcount"},"archetype":"startup-archetypes.org.ai/AIService-MoneyOnDelivery","beachhead":"EarlyAdopterJTBD: multi-unit QSR franchisees under corporate speed-of-service audits who already export POS/drive-thru timer data but lack analyst headcount","competitors":{"substitutes":[{"name":"District Manager with Excel + POS vendor dashboards (HME, Delaget, Qu)","category":"status-quo"},{"name":"Delaget Coach / Mirus restaurant analytics","category":"incumbent"},{"name":"ChatGPT Advanced Data Analysis with pasted CSVs","category":"AI-native horizontal"},{"name":"Outsourced franchise-accounting BPO analyst","category":"human alternative"}]},"studioThesis":"T-BU","killThreshold":{"K":8,"M":30,"N":7,"rubricItemSet":["C1_customerSpecificity","C2_problemFrictionRealism","C3_approachEngineCoverability","C4_competitorHonesty","C5_differentiationLoservilleEscape","C6_crossSlotCoherence","C7_magicLensFit","C8_lensFit","C9_killCriteriaAttestability"],"verdictPolicy":"all-load-bearing-pass-and-overall-ge-X","loadBearingItemSet":["C1_customerSpecificity","C2_problemFrictionRealism","C3_approachEngineCoverability","C4_competitorHonesty","C5_differentiationLoservilleEscape","C6_crossSlotCoherence"],"verdictPolicyVerbatim":"KILL unless every load-bearing rubric item passes per workbook AND overall pass-rate ≥ 7/9 (CASCADE.md §4 Stage 9 commit threshold)."},"lifecycleState":"Active","differentiation":{"twoByTwo":{"xAxis":"Line-item traceability of each KPI back to source transactions and shift windows","yAxis":"Native ingestion depth across QSR-specific feeds (POS, drive-thru timers, labor/scheduling, inventory waste)","winningQuadrant":"High traceability + deep QSR-native ingestion: every service-time or labor-variance callout in the weekly report is click-through auditable to the specific drive-thru car, transaction, or shift that caused it, across all four QSR data feeds","loservilleEscape":true,"loservilleQuadrant":"Low traceability + shallow ingestion: ChatGPT Advanced Data Analysis with pasted CSVs produces plausible narrative summaries but cannot cite which transactions drove the number and loses the QSR schema on every new session, so franchisors reject its output during speed-of-service audits"}},"unmetRequirements":[],"pricingArchitecture":"usage-meter"},"actions":{},"options":{},"relationships":{"runtimeUnit":"https://api.sb/v1/runtime-units?startupRef=startup%3Afh%3Aw3-35-3023-dwa-analyzing-data%3Av1","brand":"https://api.sb/v1/brands?startupId=startup%3Afh%3Aw3-35-3023-dwa-analyzing-data%3Av1","listing":"https://api.services/listings?foundingHypothesisRef=fh%3Aw3-35-3023-dwa-analyzing-data%3Av1","cell":"https://api.sb/v1/cells/work-contexts.org.ai/w3-35-3023-dwa-analyzing-data","thesis":"https://api.sb/v1/theses/T-BU"},"meta":{"level":"L0","scopes":[]},"user":{"requestId":"a0575a440e2ea594","edgeLocation":"a0575a440e2ea594","geo":{"country":"US"},"ua":{"browser":"Claude"}},"references":{"total":0,"limit":25,"page":1,"links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-35-3023-dwa-analyzing-data%3Av1/references"},"items":[]}}