Senior ML Scientist, Biological Systems

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

Seeking a Senior ML Scientist to build autonomous life science systems that connect AI reasoning, biological evidence, experimental design, and automated execution. The role involves translating scientific direction into working architectures, workflows, and evaluation methods, with a focus on rigorous reasoning about biological hypotheses, proposing experiments, and incorporating evidence to accelerate discovery. This is a hands-on role at the intersection of ML, biological reasoning, agentic systems, and experimental design.

What you'd actually do

  1. Build autonomous life science systems that connect AI reasoning, biological evidence, experimental design, and automated execution.
  2. Translate the broader Autonomous Life Science AI vision into concrete architectures, workflows, prototypes, and production-quality research systems.
  3. Develop methods for representing hypotheses, uncertainty, evidence, and scientific arguments in ways that enable robust machine reasoning.
  4. Apply Bayesian reasoning, epistemology, and scientific methodology to the design of AI systems that can propose, test, and revise biological hypotheses.
  5. Design agentic workflows that plan experiments, reason over results, and close the loop between computational predictions and automated laboratory feedback.

Skills

Required

  • Machine Learning
  • AI for Science
  • Computational Biology
  • Probabilistic Modeling
  • Agentic Systems
  • Scientific Reasoning
  • Experimental Design
  • Uncertainty Quantification
  • Evidence Integration
  • PyTorch
  • JAX
  • TensorFlow

Nice to have

  • Bayesian Modeling
  • Probabilistic Programming
  • Causal Inference
  • Formal Methods
  • Active Learning
  • Closed-loop Systems
  • Autonomous Science Systems
  • Single-cell Omics
  • Perturbation Data
  • Imaging
  • Spatial Profiling
  • Genetics
  • Multi-omics
  • Hypothesis Generation
  • Philosophy of Science
  • Epistemology
  • Scientific Methodology
  • Formal Argumentation

What the JD emphasized

  • PhD in Computer Science, Machine Learning, Computational Biology, Statistics, Biology, or a related quantitative field.
  • Strong research track record in machine learning, AI for science, computational biology, probabilistic modeling, agentic systems, or a related area.
  • Deep understanding of scientific reasoning, experimental design, uncertainty, and evidence integration.
  • Experience building or researching systems that reason over complex scientific, biological, or experimental data.
  • Strong foundation in modern ML methods, with hands-on experience in frameworks such as PyTorch, JAX, or TensorFlow.
  • Ability to translate biological questions into computational and ML problems, and to translate ML system behavior back into scientific terms.
  • Strong technical judgment, with the ability to operate in open-ended research settings where the right architecture, abstraction, or evaluation method is not yet obvious.

Other signals

  • building autonomous life science systems
  • connect AI reasoning, biological evidence, experimental design, and automated execution
  • design agentic workflows that plan experiments, reason over results, and close the loop between computational predictions and automated laboratory feedback
  • build evaluation frameworks for autonomous discovery systems