Senior Director, AI Engineering and Delivery

AbbottChicago, IL
$190,000 - $380,000Hybrid

About The Position

Abbott is making a strategic investment in AI and Generative AI and is creating a senior leadership role to architect, scale, and operationalize AI as a core platform capability. This is a rare opportunity for a deeply technical, platform-oriented AI leader to shape how AI is engineered, governed, and consumed across a complex, regulated, multi-business environment—moving the organization from pockets of innovation to enterprise-wide AI at scale. The Head of AI Engineering and Delivery will lead the design, build, and evolution of enterprise AI and Generative AI teams and platforms for a global organization operating in life science, medical technology-driven markets. This leader will bring deep technical credibility across software engineering, data engineering, AI / machine learning, and cloud-native architecture, combined with a proven ability to build and lead technical teams operating within a highly regulated environment. The role is responsible for creating reusable, secure, and scalable AI capabilities that empower product teams, business units, and operations to rapidly develop and deploy AI-driven solutions. The role will serve as a senior engineering and architecture authority for AI platforms, ensuring consistency, governance, and speed while enabling innovation across the enterprise.

Requirements

  • Bachelor’s degree required (Business, Computer Science, Engineering, Data/Analytics, or related)
  • 15+ years of experience in software engineering and large-scale platform development.
  • Demonstrated success building and scaling enterprise platforms in financial services, fintech, or global technology firms.
  • Strong expertise in: Distributed systems and modern software architecture, Cloud platforms (AWS, Azure, GCP) in regulated environments, API, microservices, and event-driven architectures, Platform reliability, observability, and cost management
  • Proven track record delivering production AI and ML systems in real-world, regulated contexts.
  • Hands-on experience with: Machine learning lifecycle management (MLOps); Model monitoring, retraining, and performance management; Generative AI and foundation models (LLMs); RAG, prompt orchestration, evaluation, and guardrails; Experience operationalizing AI with risk controls, explainability, and governance.
  • Experience leading large, globally distributed engineering teams.
  • Strong stakeholder management skills across Technology, Risk, Compliance, and Business leadership.
  • Demonstrated ability to shift organizations toward platform-led, reuse-driven delivery models.
  • Track record of aligning AI platform investments to revenue growth, cost efficiency, risk reduction, or customer outcomes.
  • Proven leader of large, global, multidisciplinary teams
  • Platform mindset with a bias toward reuse, leverage, and scale
  • Clear communicator who can translate complexity into executive-level decisions.
  • Comfortable operating in highly regulated, high-stakes environments.

Responsibilities

  • Build and lead a new AI Engineering & Delivery organization operating across three layers: Platform, Delivery, and Enablement
  • Establish AI and GenAI as core enterprise platforms, not bespoke solutions.
  • Enable self-service AI capabilities for product, engineering, and analytics teams.
  • Balance innovation velocity with regulatory compliance and operational resilience.
  • Drive measurable business outcomes across customer experience, risk, operations, and productivity.
  • Build and lead delivery teams to execute on the strategic mandate, developing a future focused delivery operating model.
  • Define & Execute AI Platform Strategy
  • Set and drive a unified, cross-business-unit AI platform strategy, ensuring seamless integration across products, services, and geographies
  • Establish AI and GenAI as core enterprise platforms — not one-off solutions
  • Champion API-first, platform-based architectures that accelerate time-to-market while reducing total cost of ownership
  • Drive alignment across architecture proposals to maximize reuse, standardization, and leverage of shared AI and software services
  • Plan and implement overall AI strategy; develop enterprise priorities and facilitate business and IT governance related to information design and business insight delivery
  • Build & Scale AI Engineering Delivery
  • Build and lead the AI Engineering & Delivery organization spanning Platform, Delivery, and Enablement
  • Establish best-in-class delivery practices for AI, Software, and Data Engineering — including discovery, build, test, automation, validation, observability, and reliability
  • Own the end-to-end AI and data engineering ecosystem: cloud-native platforms, AI/ML systems, connectivity, and secure data pipelines
  • Drive end-to-end observability across data pipelines, model inference, tool execution, and agent outcomes — with clear SLIs/SLOs for quality, latency, reliability, and cost
  • Standardize ML and agent development workflows to reduce time-to-production and eliminate bespoke infrastructure across teams
  • Enable GenAI & Emerging Technology at Scale
  • Partner with business unit leaders to incubate, industrialize, and scale AI and Generative AI capabilities, including: Machine learning and advanced analytics, GenAI copilots, autonomous agents, and intelligent assistants, Agent lifecycle management: CI/CD, model registries, lineage, and access control, RAG, prompt orchestration, evaluation, and guardrails, Process optimization and reengineering, Modern data science platforms and development frameworks
  • Make agent evaluation and experimentation default platform capabilities — offline evaluation, pre-deployment quality gates and continuous post-deployment monitoring
  • Translate innovation into production-grade, governed AI systems that deliver measurable business value
  • Governance, Risk & Responsible AI
  • Embed Responsible AI principles into platform design and engineering practices from the start
  • Partner with Risk, Compliance, Legal, and Security to ensure model governance, lifecycle controls, and regulatory compliance across jurisdictions
  • Ensure AI-enabled systems meet enterprise standards for security, performance, resilience, and regulatory compliance — including FDA, SOX, MoH, and regulations applicable to pharmaceutical, food, and medical device industries
  • Implement and maintain compliance controls and policies applicable to pharmaceutical, food, and medical device industries
  • Act as a senior voice in AI risk and governance forums across the enterprise
  • Organizational Leadership & Influence
  • Recruit, develop, and retain world-class technical talent; foster a culture of excellence, accountability, and continuous learning
  • Provide clear leadership, mentoring, and guidance to senior leaders, principal engineers, and architects across the enterprise
  • Act as a connective force across Technology, Product, Operations, Cybersecurity, Compliance, and Commercial teams
  • Serve as a trusted advisor to executive leadership on technology strategy, investment decisions, and transformation roadmaps
  • Work in partnership with business and IT to govern total cost of investment for existing reporting environments with a focus on standardization and consolidation

Benefits

  • The base pay for this position is $190,000.00 – $380,000.00
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