Senior Scientist Ii, Applied Machine Learning and Translational Agentic Ai, Life Science R&d

Tempus AI · Vertical AI · Redwood City, CA +1

Lead the scientific development of agentic AI frameworks for discovering prognostic and predictive models in oncology, integrating LLM orchestration with translational science. Architect 'deep agents' for hypothesis generation, experimental design, and multimodal ML using foundation models. Innovate scientific methodology, develop predictive models and causal inference frameworks, and scale scientific discovery.

What you'd actually do

  1. Design and build complex, state-of-the-art agentic workflows.
  2. Leverage oncology foundation models to integrate DNA, RNA, H&E, and clinical data into predictive algorithms.
  3. Collaborate with clinical scientists and pharma partners to define high-value use cases, such as clinical trial design support and treatment de-escalation.

Skills

Required

  • Python
  • LangGraph or similar orchestration frameworks
  • prompt engineering
  • RAG (Retrieval-Augmented Generation)
  • function calling
  • survival analysis (CoxPH, RSF, NN)
  • evaluation metrics for oncology models
  • unit testing
  • git
  • scalable systems design
  • clinical trial or real-world data experience
  • clinical guidelines experience
  • RWE methodologies experience

Nice to have

  • integrative modeling of multi-modal clinical and omics data
  • multimodal embeddings
  • foundation models
  • data and artificial intelligence in Oncology
  • cancer biology
  • clinical data
  • deploying ML models in cloud environments

What the JD emphasized

  • Agentic AI Architecture
  • Multimodal Modeling
  • Scientific Innovation
  • Agentic Frameworks
  • LLM Application
  • Machine Learning
  • Software Engineering
  • integrative modeling of multi-modal clinical and omics data

Other signals

  • agentic workflows
  • multimodal ML
  • foundation models
  • hypothesis generation
  • experimental design