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Vizient, Inc

Director, AI Engineering – Delivery

Vizient, Inc

Director of AI Engineering leading enterprise AI delivery initiatives across Vizient. Building AI applications and operational processes to support enterprise AI transformation strategy.

Posted 6/18/2026full-timeEdina • Illinois, Minnesota • 🇺🇸 United StatesLead💰 $117,600 - $206,000 per yearWebsite

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Hard Skills
AI engineeringAI application engineeringsoftware engineeringlarge language models (LLMs)APIsorchestration frameworksagile delivery ecosystemsDevOps practicesautomation frameworksengineering operating models
Soft Skills
analytical skillsproblem-solvingcommunicationpresentationstakeholder managementcross-functional collaborationleadershipmentoringorganizational skillsadaptability
Tools & Technologies
cloud platformsdata integrationAI delivery frameworksengineering quality practicesruntime observabilityrelease managementincident managementoperational telemetryvendor evaluation toolsengineering modernization tools
Industry Keywords
enterprise technologyhealthcareHIPAASOC 2responsible AIoperational risk managementAI securitygovernancemodel monitoringregulated environments

Tech Stack

Tools & technologies
CloudSDLC

About the role

Key responsibilities & impact
  • Lead the execution and delivery of enterprise AI engineering initiatives, including AI-powered applications, LLM-enabled workflows, agentic orchestration solutions, AI-enabled automation capabilities, and platform integrations
  • Drive day-to-day engineering delivery activities across AI teams, including sprint execution, backlog management, delivery tracking, issue resolution, dependency management, and operational execution
  • Implement and operationalize enterprise AI engineering practices, including AI software development lifecycle (SDLC) processes, deployment standards, runtime observability, release management, and engineering quality practices
  • Provide technical oversight across solution design, development, validation, deployment, monitoring, optimization, and production support activities
  • Support AIOps and LLMOps operational practices, including runtime monitoring, drift detection, observability, incident management, prompt lifecycle management, evaluation execution, operational telemetry, and production reliability
  • Develop reusable AI engineering patterns, implementation playbooks, shared services, templates, internal libraries, and engineering accelerators to improve delivery consistency, scalability, and operational efficiency
  • Drive adoption of enterprise engineering standards, scalable delivery practices, and shared implementation patterns across AI delivery teams
  • Partner with AI Governance, Quality Engineering, Automation, Architecture, and AI Delivery Lifecycle teams to operationalize governance requirements, validation processes, responsible AI controls, runtime safeguards, and secure delivery practices
  • Coordinate AI delivery activities across teams, including operational planning, resource management, contractor and vendor alignment, knowledge transfer, and delivery continuity
  • Partner with cross-functional stakeholders to support technical feasibility assessments, delivery readiness activities, implementation planning, and engineering sustainability efforts
  • Support vendor evaluations, platform implementation initiatives, build-versus-buy assessments, and engineering modernization efforts
  • Lead, mentor, and develop engineering managers, architects, engineers, and contractor teams while fostering a high-performing, collaborative, and continuously learning culture
  • Communicate delivery progress, operational risks, technical updates, engineering tradeoffs, and implementation recommendations to technical and business leaders
  • Research and evaluate emerging AI engineering, automation, observability, orchestration, and platform technologies to support innovation and continuous improvement

Requirements

What you’ll need
  • Relevant degree preferred
  • 7 or more years of experience in software engineering, AI application engineering, engineering delivery, platform engineering, or enterprise technology functions required
  • 3 or more years of experience leading engineering teams, delivery organizations, or large-scale technology initiatives required
  • Experience leading distributed teams, contractor/vendor coordination, and large-scale engineering delivery initiatives within complex and evolving operational environments required
  • Hands-on experience designing, delivering, and operationalizing production AI solutions leveraging large language models (LLMs), APIs, agentic workflows, orchestration frameworks, and modern AI engineering patterns required
  • Experience implementing and scaling engineering operating models, AI delivery frameworks, agile delivery ecosystems, or enterprise engineering practices required
  • Strong analytical, problem-solving, communication, presentation, stakeholder management, and cross-functional collaboration skills required
  • Ability to manage multiple priorities in fast-paced, evolving, and deadline-driven environments required
  • Experience with cloud platforms, APIs, data integration, DevOps practices, automation frameworks, and modern software engineering tools preferred
  • Experience operating in healthcare or other regulated environments preferred
  • Strong understanding of responsible AI concepts, including governance, human oversight, model monitoring, operational risk management, AI security considerations, and secure operationalization of AI solutions within enterprise environments preferred
  • Healthcare industry experience, including familiarity with HIPAA, SOC 2, or other regulated data environments preferred
  • Experience with AI-enabled automation, intelligent orchestration, evaluation pipelines, operational AI delivery practices, and agentic frameworks preferred
  • Demonstrated ability to balance execution excellence, operational scalability, governance, and engineering delivery effectiveness preferred
  • You must be authorized to work in the United States without sponsorship.

Benefits

Comp & perks
  • Comprehensive benefits plan