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Remote Underwriting Expert - AI Trainer

Mercor Inc
FULL_TIME Remote · US Midland, US USD 70–95 / hour Posted: 2026-05-11 Until: 2026-06-10
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Job Description
What you'll do Mercor is partnering with leading AI labs to advance frontier agent evaluations in insurance underwriting. As an Underwriting Expert, you'll build long‑horizon underwriting tasks that mirror the work you already do, each paired with a deterministic rubric that grades agent performance against verifiable ground truth. Tasks need to have checkable answers; no open‑ended essays, no subjective judgment calls. Expect to build scenarios across the following areas: Submission and triage – submission intake against appetite rules, risk classification, referral memos to senior underwriting against defined thresholds Risk assessment and pricing – exposure analysis with ground‑truth calculations, quote preparation against rating manuals, surplus lines processing against state rules Issuance and brokerage – bind and issue prep with required documents, broker correspondence against playbook positions These scenarios will be challenging and will require long sessions of focus. Who we're looking for 3+ years in commercial, specialty, or personal lines underwriting at a carrier, MGA, or wholesale broker Expertise in one or more of the following: a specific line of business (property, GL, professional, workers’ comp, cyber, specialty), rating and pricing manuals, surplus lines and E&S processing, broker relationship management, an underwriting platform (Duck Creek, Guidewire, or carrier systems) Comfortable reading and producing underwriting artifacts: submission packages, risk reports, quote letters, referral memos, bind documentation Clear written communication; can articulate reasoning step by step and encode it into deterministic rubrics Located in the United States Compensation: $70–$95 / hr depending on domain depth and prior experience. Strong contributors are promoted based on task quality and throughput.