Director, World Model & Agentic Learning

Johnson & Johnson Johnson & Johnson · Pharma · Titusville, NJ +5

Johnson & Johnson Innovative Medicine is seeking a Director, World Model & Agentic Learning to lead a team building an enterprise-level, product-agnostic R&D agentic AI platform. The role focuses on developing a 'world model' for agents to represent and reason against accumulated domain understanding, and 'agentic learning' mechanisms for the system to improve from operation rather than retraining. Key responsibilities include designing knowledge representation, confidence mechanisms, and learning processes, while ensuring expert authority and auditable outcomes.

What you'd actually do

  1. Lead the AI science team that builds our enterprise world model and agentic-learning capability for the R&D agentic AI platform, a reusable, expert-curated foundation that domain teams customize, together with the mechanisms by which it improves with use.
  2. Design how agents represent accumulated domain understanding and reason against it, rather than re-deriving knowledge from raw sources on each task.
  3. Design the mechanisms that turn operation into improvement. For example, active learning from expert corrections, memory-based / in-context learning, or outcome-driven refinement.
  4. Partner with scientists and domain experts so their expertise becomes something the system can apply consistently at scale.
  5. Define and prove the accountability bar: demonstrate that the system produces better decisions over time.

Skills

Required

  • AI/ML leadership
  • Generative AI
  • Agentic AI
  • World Models
  • Machine Learning Operations
  • Data Science
  • Knowledge Representation
  • Reasoning Systems
  • Active Learning
  • Expert Systems
  • Auditable AI Systems
  • Scientific Domain Expertise Integration

Nice to have

  • Experience in healthcare R&D
  • Building enterprise AI platforms
  • Developing product-agnostic capabilities

What the JD emphasized

  • newly created leadership role
  • enterprise world model and agentic-learning capability
  • R&D agentic AI platform
  • product-agnostic capability
  • World Model
  • Agentic Learning
  • Accumulate, don’t re-derive
  • Improve from operation, not retraining
  • Compound across workflows
  • Keep experts authoritative
  • Stay fresh and honest
  • Be auditable and accountable
  • reason against accumulated domain understanding
  • representation to the reasoning agents
  • turn operation into improvement
  • Keep institutional understanding fresh and honest
  • system can apply consistently at scale
  • system maintains and applies their judgment
  • system produces better decisions over time
  • conclusion auditable and reconstructable

Other signals

  • leading a team
  • building a new capability
  • enterprise scale
  • product agnostic