Research Scientist, Life Sciences

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

Research Scientist role focused on improving AI model capabilities for life sciences tasks. This involves building agentic tools, designing evaluation benchmarks, and applying post-training techniques to enhance model performance on scientific workflows like bioinformatics, database queries, and literature synthesis. The role bridges ML, software engineering, and biology to make AI a better research assistant in life sciences.

What you'd actually do

  1. Build and ship agentic tools and integrations that let Claude execute real life science workflows — bioinformatics pipelines, database queries, analysis notebooks, literature review
  2. Design and build evaluation benchmarks that measure model capabilities on biology tasks — figure interpretation, bioinformatics, protocol reasoning, literature synthesis
  3. Work closely with product and design teams to scope, prototype, and ship features for life sciences users
  4. Partner with external biotech, pharma, and academic users to understand their workflows and turn feedback into product improvements
  5. Build and maintain the engineering infrastructure behind our biology product surface — tool scaffolding, data pipelines, eval harnesses

Skills

Required

  • Experience applying ML and software engineering to biological problems — computational biology, bioinformatics, protein ML, genomics, or similar
  • Strong software engineering skills: comfortable building production-quality Python, working in large codebases, and owning infrastructure end-to-end
  • Hands-on experience training or fine-tuning ML models (LLMs, protein language models, or other deep learning architectures)
  • A track record of shipping computational tools or pipelines that biologists actually use
  • Comfortable navigating ambiguity and defining problems in a rapidly evolving research environment
  • Able to work independently while collaborating tightly with research, product, and domain-expert teams
  • Results-oriented with a bias toward rapid iteration and measurable impact

Nice to have

  • 5+ years of experience applying ML and software engineering to biological problems — computational biology, bioinformatics, protein ML, genomics, or similar
  • Ph.D. in computational biology, bioinformatics, bioengineering, CS, or a related quantitative field — or equivalent industry experience
  • Experience with LLM post-training: RLHF, RL from verifiable rewards, SFT data curation, or eval-driven development
  • Direct experience with therapeutic discovery pipelines — target identification, lead optimization, ADMET modeling, or clinical data analysis
  • Familiarity with bioinformatics tooling and pipelines (sequence analysis, structure prediction, single-cell, variant calling, etc.)
  • Experience building agentic systems or tool-use environments
  • Published research in ML for biology, or open-source contributions to computational biology tools
  • Fluency with biological databases (UniProt, PDB, Ensembl, NCBI) and the ability to reason about their schemas and failure modes

What the JD emphasized

  • Experience applying ML and software engineering to biological problems
  • Experience working in drug discovery or development at a biotech or pharma company, or conducted fundamental research in an academic setting
  • A track record of shipping computational tools or pipelines that biologists actually use
  • Experience with LLM post-training: RLHF, RL from verifiable rewards, SFT data curation, or eval-driven development
  • Experience building agentic systems or tool-use environments

Other signals

  • building agentic tools for life sciences workflows
  • designing and building evaluation benchmarks for biology tasks
  • improving model capabilities on scientific tasks through post-training and evaluation design