How insurance should be done.
Lead AI Engineer
Location
Utah
Posted
6 days ago
Salary
$170K - $215K / year
Seniority
Senior
Job Description
Lead AI Engineer
Veracity Insurance Solutions, LLC
• Define the AI engineering roadmap and architecture standards across the organization • Lead build vs. buy vs. integrate decision-making for AI systems and platforms • Architect AI solutions for the enterprise platform • Design systems for scale, reliability, and cost-efficiency in production environments • Establish LLMOps practices • Partner closely with Product and Engineering leadership to align AI capabilities with business outcomes • Champion and introduce AI-assisted coding practices and developer tooling across the engineering organization
Job Requirements
- Bachelor's or Master's degree in Computer Science, Engineering, or a related quantitative field (or equivalent practical experience)
- 8+ years of software engineering experience, with demonstrated mastery designing and shipping production systems where correctness, reliability, and auditability matter
- 2+ years building production LLM/GenAI and agentic systems, plus fluency with AI-assisted coding tooling and the judgment to set org-wide standards, evals, and guardrails for AI-generated code
- Sound judgment about where AI belongs and where it must not
- Experience making and communicating build vs. buy vs. integrate decisions at an organizational level
- Proficiency in Python and the modern GenAI application stack
- Exceptional written and verbal communication skills
Benefits
- Health, dental, and vision plans
- Amazing work-life balance with 4 weeks of Paid Time Off
- 10 Paid Company Holidays with 2 floating holidays
- 401K Programs with employer match
- Personal assistance programs for support in a healthy personal and work life
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