CSI is a leading technology partner delivering innovative solutions and expert service.
VP – AI Engineering
Location
United States
Posted
3 days ago
Salary
0
Seniority
Lead
Job Description
VP – AI Engineering
CSI
• Own the central AI engineering platform • Own the delivery-velocity mandate • Build the AI Harness as a product • Empower developers and agents • Evaluation, quality & security • Enablement & adoption • Organization & leadership
Job Requirements
- 10+ years of experience in senior leadership of an AI/ML platform
- Experience operationalizing AI-assisted and agentic software development
- Hands-on experience with quality and security guardrails
- Deep, current fluency in LLM application engineering
- Preferred experience in building an internal AI agent platform
- Familiarity with the community-bank and credit-union market
Benefits
- Comprehensive range of benefits
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