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Staff AI Enablement Engineer
Location
New York
Posted
29 days ago
Salary
0
Seniority
Lead
Job Description
Staff AI Enablement Engineer
Vendelux
• Build the shared AI infrastructure layer • Drive adoption across every function • Build purpose-built agents for non-engineering teams • Own the hard infrastructure problems
Job Requirements
- Strong software engineering fundamentals
- Deep hands-on experience with frontier AI agents (Claude Code, Codex, or equivalent)
- Practical, production experience building with LLM APIs
- Hands-on experience with MCP or similar integration frameworks
- Experience designing for non-technical users
- Comfort working cross-functionally.
Benefits
- Vendelux is a Series A SaaS company backed by leading investors including FirstMark
- Equal opportunity workplace
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