Manager, AI Operations

Carnival CorporationSeattle, WA
$89,600 - $121,000Onsite

About The Position

The Manager, AI Operations establishes and leads the business-side operating function required to turn enterprise AI capabilities into measurable, adopted, and sustainable ways of working. This role bridges AI Innovation, IT, PMO, commercial/product stakeholders, and business operations by defining the value case for AI work, translating scaled technology into operational implementation plans, and building the change, training, readiness, hypercare, and sustainment practices that enable teams to use AI effectively. As AI adoption expands, this leader will develop the standards, processes, tools, routines, and team capabilities needed to scale AI implementation across the organization. The role manages direct reports, provides strategic and operational leadership through ambiguity, and ensures AI initiatives move beyond pilots and technology delivery to realized business outcomes.

Requirements

  • Bachelor's Degree in Accounting, Information Technology, or related field; advanced Bachelor’s degree in Business Administration, Operations, Technology Management, Change Management, Organizational Effectiveness, Product Management, Analytics, or related field required; advanced degree preferred.
  • Demonstrated ability to build new operational capabilities, frameworks, processes, or teams in a changing business environment.
  • Strong understanding of business case development, KPI design, benefits realization, change management, implementation planning, and operational readiness.
  • Experience leading direct reports and developing team capabilities, performance, priorities, and ways of working.
  • Ability to partner effectively with technology, product, PMO, operations, learning/training, analytics, and senior business stakeholders.
  • Familiarity with AI, automation, digital transformation, product lifecycle, or technology implementation preferred; hands-on AI development experience is not required.
  • 8+ years of progressive experience in business operations, transformation, implementation, change management, PMO, product operations, technology adoption, consulting, or related roles.
  • 3+ years of people leadership experience or equivalent experience leading cross-functional teams, workstreams, or implementation teams.
  • Experience developing business cases, KPIs, adoption metrics, benefits tracking, executive updates, or portfolio prioritization inputs.
  • Experience implementing new tools, processes, operating models, or technology-enabled capabilities into business teams, including training, communications, readiness, launch, hypercare, and sustainment.
  • Experience operating in ambiguous or emerging domains where processes, roles, governance, and success measures must be created rather than inherited.
  • Experience working with IT, product, analytics, or digital teams to transition capabilities from build/scaling into business adoption and ongoing operations.

Responsibilities

  • Establish the business-side AI Operations function, including its service model, intake criteria, implementation standards, readiness criteria, launch playbooks, and success measures.
  • Define how AI solutions transition from innovation and IT scaling into business ownership, including roles, responsibilities, decision rights, handoff requirements, support models, and sustainment expectations.
  • Build repeatable frameworks for AI operational readiness, including process impacts, workflow changes, role impacts, controls, adoption risks, training needs, communications needs, data considerations, and support requirements.
  • Develop the organizational skillsets required to implement AI at scale, including AI change management, adoption analytics, prompt/tool usage standards, human-in-the-loop operations, business process redesign, and responsible AI ways of working.
  • Lead and coach direct reports responsible for implementation planning, adoption support, KPI tracking, training coordination, stakeholder readiness, and operational sustainment.
  • Anticipate future AI operating needs as adoption expands and proactively build scalable tools, processes, templates, and capabilities that can be reused across brands, functions, and teams.
  • Own the business implementation plan for AI capabilities after IT scaling, including launch planning, stakeholder readiness, business cutover, operational communications, training approach, support model, and hypercare execution.
  • Translate AI capabilities into practical business usage by defining who will use the tool, when it will be used, what decisions or workflows it supports, what behaviors need to change, and how performance will be measured.
  • Partner with business operations, functional leaders, learning/training teams, IT, and AI Innovation to develop enablement content, job aids, user guidance, FAQs, readiness checklists, office hours, and adoption support materials.
  • Lead change-impact assessments and stakeholder adoption plans for AI initiatives, including readiness risks, resistance points, workforce implications, governance requirements, and operational dependencies.
  • Manage hypercare after launch, including issue triage, user feedback loops, adoption monitoring, escalation paths, enhancement requests, and transition to steady-state support.
  • Ensure AI implementations are usable, supportable, and embedded into day-to-day business processes rather than remaining isolated tools or one-time pilots.
  • Define sustainment requirements for AI-enabled tools and processes, including ownership, documentation, support channels, refresh cadence, usage monitoring, escalation paths, and enhancement governance.
  • Build feedback mechanisms to understand user experience, adoption barriers, process friction, content gaps, quality issues, and opportunities for automation or workflow redesign.
  • Partner with IT and AI Innovation to ensure business feedback, operational defects, usage patterns, and enhancement opportunities are incorporated into product backlogs and lifecycle planning.
  • Establish operational controls for responsible use, including user guidance, approval paths, data handling expectations, auditability needs, human review points, and alignment with enterprise AI governance.
  • Maintain implementation assets and knowledge repositories so teams can reuse proven approaches, avoid duplicated effort, and scale AI adoption more consistently.
  • Drive continuous improvement of the AI Operations function by assessing what worked, what did not, and how future deployments can be faster, safer, clearer, and more valuable.

Benefits

  • Cruise and Travel Privileges for You and Your Family
  • Health Benefits
  • 401(k)
  • Employee Stock Purchase Plan
  • Training & Professional Development
  • Tuition & Professional Certification Reimbursement
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