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AI Engineering Manager_AI

Job

CitiusTech Inc

Rochester, MN (In Person)

Full-Time

Posted 5 days ago (Updated 2 days ago) • Actively hiring

Expires 7/25/2026

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Job Description

AI Engineering Manager_AI CitiusTech Inc - 3.7 Rochester, MN Job Details 22 hours ago Qualifications AI models Clinical research Requirements design AI integration Generative models Process design Prompt engineering System design for system development Technical solutions implementation Managing engineering teams Technology advisory Strategic consulting Scalability Clinical quality assurance standards Business requirements Senior level AI strategy Leadership Design (software development lifecycle) Generative AI Validation design
Full Job Description Job ID:
868475 15 - 25 Years 1 Opening Rochester MN Role description Role Objective Provide end to end solution and technical leadership for AI, GenAI, and agentic solutions enabling Clinical Trial Activation. Key Responsibilities 1. Own solution architecture and design for AI enabled CTA workflows. 2. Translate clinical, protocol, and activation requirements into agentic AI designs. 3. Define multi agent architectures, orchestration logic, and decision flows. 4. Establish human in the loop checkpoints for regulated clinical decisions. 5. Govern LLM selection, prompt strategy, grounding, and hallucination controls. 6. Partner with Data and Cloud Architects to ensure scalable, compliant designs. 7. Define solution level quality gates, acceptance criteria, and performance benchmarks. 8. Ensure AI solutions are explainable, auditable, and safe for clinical use. 9. Collaborate with Validation & Trust teams on AI validation and monitoring. 10. Guide AI engineers and data scientists across implementation and refinement. 11. Drive reuse of solution patterns and reference architectures across CTA. 12. Act as technical advisor to leadership on AI strategy and roadmap. Skills AI enabled CTA workflows.