Sr. Principal / Distinguished ML Scientist, Autonomous Science for Cell Biology

Lila Sciences Lila Sciences · AI Frontier · San Francisco, CA · AI

Founding Sr. Principal / Distinguished ML Scientist to co-develop scientific direction and own the integration of cell-biology research with Lila's central autonomous-science platform, focusing on foundation models and agentic systems for cellular and tissue biology.

What you'd actually do

  1. Co-develop the scientific direction.
  2. Own integration with Lila's central autonomous-science platform.
  3. Lead the foundation-model and integration architecture.
  4. Lead agentic discovery.
  5. Own the cross-program evaluation architecture.

Skills

Required

  • PhD in Computer Science, Machine Learning, Computational Biology, or a related quantitative field
  • Track record of impact at premier venues — first- and last-author publications at ICLR, ICML, or NeurIPS (full track) and/or Nature, Science, Cell, or specialized titles (Nature Methods, Nature Biotechnology, Nature Medicine)
  • Deep expertise in large-scale generative or representation-learning model architectures
  • Hands-on experience training and adapting them at scale
  • Hands-on experience integrating multiple specialist models into end-to-end reasoning systems

Nice to have

  • Equivalent industry track records — production agentic-systems leadership, recognized open-source impact, or peer-reviewed contributions of comparable scope

What the JD emphasized

  • founding senior ML Scientist
  • 0→1 leadership-grade role
  • co-develop the team's scientific direction
  • own the integration
  • refine, challenge, or replace it
  • shape what Lab-in-the-Loop autonomous science looks like
  • frontier of generative AI applied to biology
  • scientific judgment to define research strategy
  • technical depth to drive end-to-end the architecture
  • architect how cell-biology research feeds into and benefits from Lila's foundation-model, agentic-systems, and experimental-automation infrastructure
  • Own the technical choices that turn cell-biology data into mechanism-grounded scientific inference
  • design and steward the benchmarks and evaluation methodology
  • track record of impact at premier venues
  • Equivalent industry track records

Other signals

  • foundation models
  • agentic systems
  • autonomous science
  • lab-in-the-loop