Head of AI & Agentic Platform Engineering

Pfizer Pfizer · Pharma · New York, NY

Head of AI & Agentic Platform Engineering at Pfizer, responsible for the core infrastructure supporting AI workloads, including compute, LLM gateway, MLOps, and observability. The role focuses on enabling AI strategy execution, supporting diverse AI applications, and architecting for future agentic systems. Key areas include LLM gateway, model serving, agentic AI runtime, compute provisioning, MLOps platform, and deployment pipelines with a strong emphasis on governance and trust.

What you'd actually do

  1. Enterprise LLM gateway, access control, multi-model routing, rate limiting, cost attribution, and audit logging for all LLM interactions across Pfizer, including agentic AI workloads.
  2. Agentic AI runtime, the infrastructure layer that supports autonomous AI agents taking multi-step actions across Pfizer's systems.
  3. Enterprise compute provisioning, GPU, TPU, and CPU infrastructure across cloud and on-premises, including capacity planning, FinOps governance, and utilization optimization.
  4. MLOps platform, experiment tracking, model versioning, automated evaluation, deployment pipelines, and model registry, with integration into Trusted AI's risk classification and sign-off process.
  5. Enterprise AI model registry, the authoritative record of every AI model and agent in development, staging, and production across Pfizer, including metadata, version history, risk tier, Trusted AI validation status, ownership, and complete audit trail.

Skills

Required

  • Experience leading infrastructure engineering teams
  • Deep understanding of AI/ML infrastructure
  • Experience with LLM gateways and model serving
  • Experience with agentic AI systems and orchestration
  • Expertise in MLOps and CI/CD for AI
  • Strong understanding of cloud and on-premises compute provisioning
  • Experience with observability and monitoring for AI systems
  • Knowledge of AI governance and trust frameworks
  • Experience with Infrastructure as Code

Nice to have

  • Experience with HPC support
  • Familiarity with GxP compliance

What the JD emphasized

  • AI strategy moves at the speed of ambition or the speed of infrastructure constraints
  • difference between a data scientist who spends two weeks provisioning an environment and one who is running experiments on day one
  • AI model that takes six months to reach production and one that ships in days through a governed, automated deployment pipeline
  • architect this capability proactively, not wait for agent use cases to arrive and then retrofit the infrastructure
  • governed catalog of tools, APIs, and data sources that AI agents are permitted to call at runtime
  • mechanism by which the platform enforces what agents can do, not just what they can say
  • Trusted AI's risk classification and sign-off process
  • agent lifecycle management, register, deploy, monitor, govern, retire, is infrastructure
  • operational boundary between deploying a model and operating an agent has collapsed
  • Trusted AI sign-off gates enforced as first-class pipeline steps
  • technical implementation of Trusted AI's governance policies as executable runtime controls
  • GxP-compliant audit trail

Other signals

  • Owns the infrastructure layer for AI ambitions
  • Platform determines speed of AI strategy execution
  • Supports broad AI workloads across R&D, Commercial, etc.
  • Architects for autonomous agentic systems
  • Manages pods for LLM Gateway, Compute, Runtime, Deploy & Trust