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Procurement that protects enterprises
Founding AI Engineer
Location
United States
Posted
108 days ago
Salary
$140K - $220K / year
Seniority
Senior
Job Description
Founding AI Engineer
Coverbase
• Build LLM features from ideation to production, including scaling. • Develop benchmarks to evaluate LLM performance and mitigate hallucinations. • Own the full development lifecycle, including infrastructure and front-end work around AI features. • Foster a constructive environment through code reviews, mentoring, and knowledge sharing.
Job Requirements
- Experience developing LLM applications.
- Background in rigorous, quantitative work (e.g., PhD-level research, machine learning modeling, or advanced data science projects).
- Ability to thrive in a dynamic, early-stage startup environment.
- High standards for code quality.
Benefits
- Health insurance (100% employee / 80% dependents).
- 21 days PTO.
- In-person gatherings within the U.S. (travel covered) every 3-5 months.
- 401(k) with 4% matching.
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