{"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%3Aw4-332-inventory-audit%3Av1","links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw4-332-inventory-audit%3Av1","canonical":"https://api.sb/founding-hypotheses/fh%3Aw4-332-inventory-audit%3Av1","pool":"https://api.sb/v1/founding-hypotheses"},"foundingHypothesis":{"id":"fh:w4-332-inventory-audit: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/w4-332-inventory-audit","stableHash":"wcc:w4:332:inventory-audit:v1"},"problem":{"slotStatement":"Cycle-count crews chase phantom WIP on the shop floor — heat-numbered plate, drop-offs, and nested sheet remnants whose ERP quantities drift from physical reality between counts, forcing controllers to book large year-end variance adjustments that auditors flag and that operations cannot explain line-by-line."},"approach":{"oneSentence":"An AI service that ingests ERP inventory snapshots, count sheets, heat/lot traceability records, and scrap tickets, then produces a review-ready variance reconciliation package — each SKU adjustment tied to its primary-source evidence — that the controller hands directly to external auditors."},"customer":{"icpShape":"Mid-market fabricated metal manufacturers ($50M–$500M revenue, 150–800 employees, multi-plant) where the buyer is the VP of Operations or Corporate Controller and the daily user is the Plant Materials Manager or Inventory Control Supervisor running cycle counts against SAP/Epicor/Plex.","beachheadShape":"EarlyAdopterJTBD: fabricated metal shops failing their annual inventory audit reconciliation (shrinkage >2% on WIP steel, plate, and weldments) and facing auditor PBC list pressure before Q1 close."},"archetype":"startup-archetypes.org.ai/AIService-MoneyOnDelivery","beachhead":"EarlyAdopterJTBD: fabricated metal shops failing their annual inventory audit reconciliation (shrinkage >2% on WIP steel, plate, and weldments) and facing auditor PBC list pressure before Q1 close.","competitors":{"substitutes":[{"name":"RF Smart / Barcoding Inc. cycle-count modules bolted onto SAP/Epicor","category":"incumbent"},{"name":"Big-4 and regional audit-firm inventory observation teams (BDO, RSM manual count supervision)","category":"human alternative"},{"name":"ChatGPT Enterprise + Excel pivot tables run by the plant controller's analyst","category":"AI-native horizontal"},{"name":"Status-quo annual wall-to-wall physical count with clipboard + spreadsheet reconciliation","category":"status-quo"}]},"studioThesis":"T-TD","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 fabricated-metal domain integration (heat-number lineage, nest/remnant accounting, WIP routing stage)","yAxis":"Evidence traceability per adjustment (each variance line linked to count sheet, scrap ticket, and ERP transaction ID)","winningQuadrant":"High domain depth + High per-line evidence traceability: every WIP variance is explained by a specific heat lot, nest drop, or routing step with source documents attached — the package an external auditor signs off on without follow-up PBC requests.","loservilleEscape":true,"loservilleQuadrant":"Low domain depth + Low traceability: ChatGPT Enterprise + Excel pivots produce plausible-sounding variance narratives with no link back to heat numbers or scrap tickets, and RF Smart cycle-count modules report quantity deltas but cannot reconcile WIP stage transitions, leaving the controller to hand-build the auditor binder anyway."}},"unmetRequirements":[],"pricingArchitecture":"usage-meter"},"actions":{},"options":{},"relationships":{"runtimeUnit":"https://api.sb/v1/runtime-units?startupRef=startup%3Afh%3Aw4-332-inventory-audit%3Av1","brand":"https://api.sb/v1/brands?startupId=startup%3Afh%3Aw4-332-inventory-audit%3Av1","listing":"https://api.services/listings?foundingHypothesisRef=fh%3Aw4-332-inventory-audit%3Av1","cell":"https://api.sb/v1/cells/work-contexts.org.ai/w4-332-inventory-audit","thesis":"https://api.sb/v1/theses/T-TD"},"meta":{"level":"L0","scopes":[]},"user":{"requestId":"a05759717e12994c","edgeLocation":"a05759717e12994c","geo":{"country":"US"},"ua":{"browser":"Claude"}},"references":{"total":0,"limit":25,"page":1,"links":{"self":"https://api.sb/v1/founding-hypotheses/fh%3Aw4-332-inventory-audit%3Av1/references"},"items":[]}}