Manager, Applied AI Engineering, Life Sciences (beneficial Deployments)

Anthropic Anthropic · AI Frontier · San Francisco, CA · Applied AI

Manager for Applied AI Engineering focused on Life Sciences, leading a team to build and deploy AI solutions (agents, integrations, tools) for scientific organizations. The role involves deep customer engagement, understanding scientific workflows, and ensuring reliable, reproducible access to biological data for AI agents, with a strong emphasis on safety and responsible deployment in a regulated-like environment.

What you'd actually do

  1. Build and lead the team: hire, coach, and develop a team of Applied AI Engineers dedicated to strategic life sciences partners, setting a high technical bar and helping each engineer grow.
  2. Own technical success with partners: be accountable for the technical outcomes of our strategic pharma and biotech deployments, from first scoping conversation through production.
  3. Stay hands-on: review and contribute to prototypes, MCP integrations, agentic workflows, and Claude Code for Bio solutions; help the team get unblocked on the hardest technical problems.
  4. Build agent-ready scientific infrastructure: guide the team in creating the deterministic tools, connectors/harnesses, and evaluations that make messy biological data and workflows reliably accessible to Claude — in partnership with scientists and research institutions.
  5. Translate the field into the roadmap: partner cross functionally to turn what you learn from deployments into improvements in Anthropic's life sciences products and models.

Skills

Required

  • leading or technically mentoring software/ML engineers
  • forward-deployed, solutions, or customer-facing engineering setting
  • strong hands-on engineering background
  • comfortable reading and writing production code
  • delivered technical work directly with external customers or partners
  • built on top of large language models or agents
  • energized by an unfamiliar technical domain
  • track record of going deep fast
  • high bar for reliability and reproducibility
  • built tooling, data infrastructure, evals, or agent harnesses

Nice to have

  • background in pharma, biotech, computational biology, bioinformatics, or clinical/regulatory affairs
  • Experience deploying LLM or agent systems in regulated or enterprise environments
  • Experience building MCP servers, developer tooling, or scientific computing pipelines
  • Experience scaling a customer-facing technical team

What the JD emphasized

  • deterministic tools, connectors, and evaluations
  • messy biological data and workflows reliably accessible to agents
  • correct, reproducible, and auditable
  • built tooling, data infrastructure, evals, or agent harnesses that turn messy real-world data into something usable and trustworthy
  • deploying LLM or agent systems in regulated or enterprise environments

Other signals

  • Applied AI Engineers
  • customer-facing engineering
  • scientific and regulatory workflows
  • prototypes, integrations, and agents
  • deterministic tools, connectors, and evaluations
  • biological data reliably accessible to agents
  • research-grade bar
  • correct, reproducible, and auditable