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Lead AI Engineer
Location
United States
Posted
41 days ago
Salary
0
Seniority
Senior
Job Description
Lead AI Engineer
Title Resources Group
• Own AI agent projects from zero to one: problem framing, design, implementation, deployment, monitoring, and iteration • Embed with business teams to map workflows (title production, underwriting, ops), identify high-leverage bottlenecks, and streamline them using AI • Design agent architectures (tools/functions, memory/state, retrieval, guardrails) and write prompts that are testable and versioned • Build full-stack features in C# and TypeScript/React that make agents usable, safe, and fast for internal users • Ship on Azure using Microsoft/Azure AI Foundry: model selection, evaluation, deployment pipelines, and production operations • Instrument quality: define success metrics, create evals/test suites, reduce hallucinations and failure modes, and drive reliability over time • Partner with security/compliance to ensure data handling and access patterns are appropriate for enterprise workflows.
Job Requirements
- 3–8 years building and shipping software to production (AI experience can be newer if engineering fundamentals are strong)
- Strong coding ability in C# and modern TypeScript/React; consistently produces maintainable code, tests, and high-quality PRs
- Hands-on experience deploying LLM/agent solutions using Azure AI Foundry (or adjacent Azure AI services) and operating them in production
- Proven ability to lead and mentor a small, high-performing team, setting technical direction while remaining hands-on in delivery
- Comfort with ambiguity – able to translate loosely defined problems into clear specs, milestones, and working systems
- High ownership and bias to action – focuses on shipping, measuring impact, and iterating quickly over polishing demos
- Strong communication skills, with the ability to engage effectively with both technical and non-technical stakeholders.
Benefits
- medical
- dental
- vision
- 401k
- PTO/paid sick leave
- tuition reimbursement
- life insurance
- disability
- flexible work environment
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NavitasPartnersNavitas Partners, LLC is a certified WBENC and one of the fastest-growing Technical / IT staffing firms in the US providing services to numerous clients. We offer the most competitive pay for every position. We understand this is a partnership. You will not be blindsided and your salary will be discussed upfront.
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