Staff ML Engineer, Life Sciences AI

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

Staff ML Engineer role focused on building and operating the software infrastructure for AI-driven protein design and engineering pipelines, connecting generative models, scientific data, and experimental workflows. This role emphasizes scalable production systems, pipeline orchestration, data flow, and integrating new ML tools into commercial deliverables.

What you'd actually do

  1. Architect and build software infrastructure powering Lila's protein design and engineering pipelines: orchestration, data flow, APIs, and integration with experimental systems.
  2. Own the engineering side of LSAI's "Lab-in-the-Loop" lifecycle — connecting computational outputs to experimental inputs and feeding results back into design workflows.
  3. Onboard new tools and methods developed by AI scientists and ML engineers into production-ready systems used in commercial partnership campaigns.
  4. Partner cross-functionally with ML researchers, scientists, and platform engineers to translate research code into reliable, scalable systems.
  5. Set engineering standards for LSAI software — design reviews, CI/CD, testing, observability, reproducibility — and mentor senior engineers as the team grows.

Skills

Required

  • Python
  • scalable production systems
  • APIs
  • data pipelines
  • orchestration
  • cloud infrastructure
  • system design
  • production-grade code
  • CI/CD
  • observability
  • reliability practices
  • workflow orchestration
  • experiment tracking
  • reproducible pipelines
  • containerization
  • orchestration platforms
  • infrastructure-as-code
  • cloud provider

Nice to have

  • protein design and engineering
  • antibody engineering
  • molecular ML applications
  • biological data formats
  • bioinformatics tooling
  • integrating ML training/inference systems
  • scientific computing
  • data infrastructure projects

What the JD emphasized

  • scalable production systems
  • scientific or ML-adjacent infrastructure
  • leading technical direction

Other signals

  • ML models
  • production-grade pipelines
  • commercial partnership deliverables