{"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%3Aw3-39-9011-dwa-analyzing-data%3Av1","links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-39-9011-dwa-analyzing-data%3Av1","canonical":"https://api.sb/founding-hypotheses/fh%3Aw3-39-9011-dwa-analyzing-data%3Av1","pool":"https://api.sb/v1/founding-hypotheses"},"foundingHypothesis":{"id":"fh:w3-39-9011-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/w3-39-9011-dwa-analyzing-data","stableHash":"wcc:39-9011:dwa-analyzing-data:document:w3:v1"},"problem":{"slotStatement":"Regional coaches spend 8-15 hours per center each quarter stitching together CLASS observation scores, ratio logs, incident reports, and timecards from three disconnected systems into narrative performance reports that licensing auditors and funders will actually accept without kickback."},"approach":{"oneSentence":"An AI analyst that ingests observation tools (CLASS/ERS), timecard/ratio data, and incident logs, then produces review-ready quarterly performance reports where every claim links back to the underlying primary-source record with a traceable scoring rubric."},"customer":{"icpShape":"Multi-site childcare operators (50-500 staff across 5-40 licensed centers) in the US, where the buyer is the VP of Operations or Director of Quality & Compliance and the daily user is the Center Director or Regional Coach running staff performance reviews and CACFP/QRIS reporting.","beachheadShape":"EarlyMajorityWorkflow: regional childcare chains preparing quarterly QRIS/Head Start performance reports across 5-40 centers."},"archetype":"startup-archetypes.org.ai/AIService-MoneyOnDelivery","beachhead":"EarlyMajorityWorkflow: regional childcare chains preparing quarterly QRIS/Head Start performance reports across 5-40 centers.","competitors":{"substitutes":[{"name":"Procare + manual Excel rollups by regional coaches","category":"status-quo"},{"name":"Brightwheel / Lillio (HiMama) reporting modules","category":"incumbent"},{"name":"ChatGPT / Claude used ad-hoc by center directors","category":"AI-native horizontal"},{"name":"Teachstone myTeachstone CLASS dashboards","category":"adjacent vertical"}]},"studioThesis":"T-LOW","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":"Depth of childcare-specific data integration (CLASS/ERS + ratio logs + CACFP + state licensing schemas)","yAxis":"Per-claim traceability back to primary-source observation or timecard records","winningQuadrant":"Deep childcare data integration AND every report sentence links to the source record — defensible because it requires CLASS/ERS licensing partnerships, state-by-state QRIS rubric encoding, and bidirectional Procare/Brightwheel connectors competitors have not built.","loservilleEscape":true,"loservilleQuadrant":"Shallow integration and no source-linking — occupied by ChatGPT/Claude ad-hoc use, which produces plausible-sounding narratives that coaches cannot defend in a licensing audit because no claim is tied to an underlying observation or timecard entry."}},"unmetRequirements":[],"pricingArchitecture":"usage-meter"},"actions":{},"options":{},"relationships":{"runtimeUnit":"https://api.sb/v1/runtime-units?startupRef=startup%3Afh%3Aw3-39-9011-dwa-analyzing-data%3Av1","brand":"https://api.sb/v1/brands?startupId=startup%3Afh%3Aw3-39-9011-dwa-analyzing-data%3Av1","listing":"https://api.services/listings?foundingHypothesisRef=fh%3Aw3-39-9011-dwa-analyzing-data%3Av1","cell":"https://api.sb/v1/cells/work-contexts.org.ai/w3-39-9011-dwa-analyzing-data","thesis":"https://api.sb/v1/theses/T-LOW"},"meta":{"level":"L0","scopes":[]},"user":{"requestId":"a0575a024dbea594","edgeLocation":"a0575a024dbea594","geo":{"country":"US"},"ua":{"browser":"Claude"}},"references":{"total":0,"limit":25,"page":1,"links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-39-9011-dwa-analyzing-data%3Av1/references"},"items":[]}}