Senior Director, Applied Intelligence

Pfizer Pfizer · Pharma · New York, NY

Lead a team focused on rapidly determining the solvability of ambiguous AI/ML problems for commercial use cases in a regulated pharmaceutical environment. The role involves hands-on technical leadership, rapid prototyping (2-6 week cycles), enforcing engineering excellence, and guiding the adoption of Generative AI, including LLMs and RAG, with a focus on building production-ready prototypes that can scale.

What you'd actually do

  1. Serve as the technical anchor of the team by actively contributing to architecture, code, and experimental design; you model the standard, not just set it
  2. Own a 2 to 6 week rapid prototype cycle framework: scope decisively, experiment fast, validate against clear success criteria, and surface actionable go/no-go recommendations
  3. Enforce strict engineering hygiene in every prototype: version control, GitHub-based workflows, CI/CD practices, reproducibility, modular code, automated testing, and documentation are non-negotiable standards regardless of stage
  4. Lead the responsible and effective adoption of Generative AI tools, building internal capability at scale while establishing guardrails appropriate for a regulated pharmaceutical environment
  5. Translate complex AI/ML prototype outcomes into clear, actionable narratives for senior leadership and executive stakeholders

Skills

Required

  • Python
  • modern ML frameworks (PyTorch, scikit-learn, TensorFlow, LangChain)
  • MLOps frameworks
  • ML lifecycle management
  • production-grade model development practices
  • CI/CD pipelines
  • containerization (Docker/Kubernetes)
  • Git-based workflows
  • testing frameworks
  • reproducibility tooling
  • Generative AI applications
  • LLM-based systems
  • prompt engineering
  • retrieval-augmented generation (RAG)
  • executive communication

Nice to have

  • MS/MBA or PhD

What the JD emphasized

  • hardest, most ambiguous AI/ML problems
  • rapidly determine whether they are solvable
  • rapid, disciplined experimentation
  • not a sandbox
  • engineering hygiene of production code
  • fast, disciplined iteration
  • non-negotiable standards
  • regulated pharmaceutical environment
  • hard requirement
  • active, hands-on technical proficiency
  • Deep expertise in MLOps frameworks
  • Strong command of software engineering fundamentals
  • Proven ability to lead through ambiguity
  • Experience building and deploying Generative AI applications
  • Strong executive communication skills
  • Experience working in or with regulated industries

Other signals

  • rapid prototyping
  • experimental design
  • MLOps
  • Generative AI
  • LLM-based systems
  • RAG