Research Scientist, Life Sciences
Anthropic · San Francisco, CA · 2 wk ago
HybridOTHR$300k–$320k/yrFull-time
About the role
Anthropic’s mission is to create reliable, interpretable, and steerable AI systems. We want AI to be safe and beneficial for our users and for society as a whole. Our team is a quickly growing group of committed researchers, engineers, policy experts, and business leaders working together to build beneficial AI systems.
Key Responsibilities
- Build and ship agentic tools and integrations that let Claude execute real life science workflows — bioinformatics pipelines, database queries, analysis notebooks, literature review
- Design and build evaluation benchmarks that measure model capabilities on biology tasks — figure interpretation, bioinformatics, protocol reasoning, literature synthesis
- Work closely with product and design teams to scope, prototype, and ship features for life sciences users
- Partner with external biotech, pharma, and academic users to understand their workflows and turn feedback into product improvements
- Build and maintain the engineering infrastructure behind our biology product surface — tool scaffolding, data pipelines, eval harnesses
- Translate biological domain knowledge into product requirements and evaluation criteria that guide model improvement
Minimum Qualifications
- Experience applying ML and software engineering to biological problems — computational biology, bioinformatics, protein ML, genomics, or similar
- Experience working in drug discovery or development at a biotech or pharma company, or conducted fundamental research in an academic setting — with an understanding of what real scientific workflows look like and where they break down
- 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
- Passionate about using AI to accelerate scientific discovery while maintaining high ethical standards
Preferred Qualifications
- 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