{"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%3Aw3-45-2092-dwa-analyzing-data%3Av1","links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-45-2092-dwa-analyzing-data%3Av1","canonical":"https://api.sb/founding-hypotheses/fh%3Aw3-45-2092-dwa-analyzing-data%3Av1","pool":"https://api.sb/v1/founding-hypotheses"},"foundingHypothesis":{"id":"fh:w3-45-2092-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/w3-45-2092-dwa-analyzing-data","stableHash":"wcc:45-2092:dwa-analyzing-data:document:w3:v1"},"problem":{"slotStatement":"Harvest performance coordinators spend 10–15 hours per week stitching together scale-house tickets, crew-boss piece-count sheets, GPS punch data, and payroll exports into pick-rate-per-acre and piece-rate-per-worker reports that owners and auditors later challenge line-by-line, and the analyst cannot show which raw ticket produced which number."},"approach":{"oneSentence":"An AI analysis service that ingests scale tickets, piece-count sheets, and timekeeping exports and emits crew- and worker-level performance reports where every metric is a review-ready, traceable record linked back to the source document row and the scoring rubric that produced it."},"customer":{"icpShape":"Director of Workforce Operations or VP of Farm Operations at US fresh-produce growers and labor contractors (500–5,000 seasonal H-2A and domestic farmworkers, $50M–$500M revenue), where the buyer is the VP of Operations and the daily user is the Ag Data Analyst or Harvest Performance Coordinator","beachheadShape":"EarlyAdopterJTBD: FLC and grower-shipper operations teams preparing weekly crew-level pick-rate and piece-rate performance reports for owners, compliance auditors, and retail buyer scorecards"},"archetype":"startup-archetypes.org.ai/AIService-MoneyOnDelivery","beachhead":"EarlyAdopterJTBD: FLC and grower-shipper operations teams preparing weekly crew-level pick-rate and piece-rate performance reports for owners, compliance auditors, and retail buyer scorecards","competitors":{"substitutes":[{"name":"Excel/Google Sheets pivot tables maintained by the on-staff ag analyst","category":"status-quo"},{"name":"Famous Software Harvester / HarvestPro performance modules","category":"incumbent"},{"name":"ChatGPT Enterprise or Claude with uploaded CSVs","category":"AI-native horizontal"},{"name":"Outsourcing weekly reporting to a Western Growers-affiliated ag accounting firm","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":"Per-metric traceability to the originating scale ticket / piece sheet row (cell-level provenance)","yAxis":"Native fit to farm labor workflow primitives (crews, piece-rates, H-2A contract terms, commodity-specific pick units)","winningQuadrant":"High provenance + high farm-labor-native: every pick-rate and piece-rate figure in the weekly report is click-through to the exact ticket/sheet row and the rubric that scored it, in the vocabulary of crew bosses and DOL auditors","loservilleEscape":true,"loservilleQuadrant":"Low provenance + low domain fit: ChatGPT with uploaded CSVs produces a plausible pick-rate summary but cannot point to which scale ticket backs which number and does not distinguish a lug from a bin from a clamshell, which is exactly how it fails under owner challenge and H-2A wage audits today"}},"unmetRequirements":[],"pricingArchitecture":"usage-meter"},"actions":{},"options":{},"relationships":{"runtimeUnit":"https://api.sb/v1/runtime-units?startupRef=startup%3Afh%3Aw3-45-2092-dwa-analyzing-data%3Av1","brand":"https://api.sb/v1/brands?startupId=startup%3Afh%3Aw3-45-2092-dwa-analyzing-data%3Av1","listing":"https://api.services/listings?foundingHypothesisRef=fh%3Aw3-45-2092-dwa-analyzing-data%3Av1","cell":"https://api.sb/v1/cells/work-contexts.org.ai/w3-45-2092-dwa-analyzing-data","thesis":"https://api.sb/v1/theses/T-BU"},"meta":{"level":"L0","scopes":[]},"user":{"requestId":"a057592b1db9994c","edgeLocation":"a057592b1db9994c","geo":{"country":"US"},"ua":{"browser":"Claude"}},"references":{"total":0,"limit":25,"page":1,"links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw3-45-2092-dwa-analyzing-data%3Av1/references"},"items":[]}}