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One of the 15 largest US health systems, Mercy serves millions annually with nationally recognized care.
Principal Enterprise AI Architect – Healthcare
Location
United States
Posted
28 days ago
Salary
0
Seniority
Lead
Job Description
Principal Enterprise AI Architect – Healthcare
Mercy
• Owns the development and governance of Mercy’s enterprise AI architecture • Defines and maintains enterprise-wide AI architecture blueprints and standards • Defines standards and reference architectures for the development and safe deployment of agentic AI systems • Leads the identification of capabilities, outcomes, and success criteria for AI solutions • Guides the selection of AI model solutions in partnership with the AI engineering team • Leads the development of training and testing plans and evaluates AI solutions • Engages with external AI solution providers to evaluate and recommend innovations
Job Requirements
- Bachelor’s degree in computer science, data science, AI, or related field with demonstrated ongoing education and personal development
- 7 years of experience in AI/ML solution design, development, and architecture
- 3 years of experience leading enterprise architecture or large-scale AI systems
Benefits
- medical, dental, and vision coverage
- paid time off
- tuition support
- matched retirement plans for team members working 32+ hours per pay period
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