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ReThink Solutions
Senior Forward Deployed AI Engineer
Location
United States
Posted
157 days ago
Salary
$106.6K - $180.6K / year
Seniority
Senior
Job Description
Senior Forward Deployed AI Engineer
ReSource Pro
• Lead Engineering from Concept to Launch • Own technical architecture, design, and implementation for new AI driven insurance products • Translate open ended opportunities into defined system designs and deliver production grade solutions • Make foundational decisions related to architecture, infrastructure, data flows, and scaling • Develop prototypes and production features using Python, modern frameworks, LLM APIs, vector databases, and cloud native services • Write full stack code with a focus on quality, reliability, and performance • Participate in customer sessions to observe workflows and validate product direction.
Job Requirements
- 7+ years of hands on engineering experience
- Minimum 3 years leading greenfield or 0→1 product builds
- Strong background working with AI powered systems, automation, workflow engines, or data intensive architectures
- Experience collaborating closely with product and design teams
- Cloud deployment experience, preferably AWS
- Startup or small team operating experience.
Benefits
- Annual bonus eligibility
- Professional development opportunities
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