Research Engineer, Life Sciences

Anthropic Anthropic · AI Frontier · San Francisco, CA · AI Research & Engineering

Research Engineer role focused on developing novel evaluation frameworks and training strategies for AI in life sciences, aiming to accelerate progress in biological discovery and translation. The role involves measuring and improving model performance on complex scientific tasks, with a focus on safety and beneficial impact.

What you'd actually do

  1. develop novel evaluation frameworks and training strategies that push the frontier of what AI can achieve in biology
  2. build AI systems that can engage in all phases of research and development
  3. collaborate closely with world-class researchers and engineers
  4. develop rigorous methods to measure and improve model performance on complex scientific tasks

Skills

Required

  • Python
  • modern ML development practices
  • building and managing data pipelines for large-scale datasets
  • navigating ambiguity and developing solutions in rapidly evolving research environments
  • written and verbal communication skills
  • work independently while collaborating effectively across cross-functional teams

Nice to have

  • 8+ years of machine learning experience
  • AI and biology
  • molecular biology, biochemistry, computational biology, or related fields
  • large-scale biological datasets
  • scientific AI applications
  • long-horizon reasoning
  • reinforcement learning
  • pretraining
  • containerization technologies (e.g., Docker, Kubernetes)
  • cloud deployment at scale
  • language modeling
  • systems engineering
  • scientific computing
  • open-source scientific software or databases

What the JD emphasized

  • training and evaluating large language models
  • large-scale datasets
  • published research or practical experience in scientific AI applications or long-horizon reasoning
  • reinforcement learning and/or pretraining

Other signals

  • develop novel evaluation frameworks
  • training strategies
  • push the frontier of what AI can achieve in biology
  • measure and improve model performance on complex scientific tasks