Principal, Machine Learning Engineer
Lila SciencesSan Francisco, CA USAPosted 29 April 2026
Job Description
Your Impact at LILA
Lila is building a platform where AI and automation co-evolve to solve the hardest problems in medicine. Within Life Science AI (LSAI), ML engineers build and operate the systems that turn generative models and reasoning frameworks into production capabilities powering automated scientific discovery across Lila's life science domains.
We are seeking a Principal ML Engineer to design, build, and scale the ML infrastructure behind models spanning biological sequence design, molecular structure prediction, antibody engineering, and multimodal scientific reasoning. You will own critical systems end to end, from training pipelines and distributed compute to model deployment and integration into Lila's closed-loop discovery engine.
This is a high-impact IC role for someone who operates at the intersection of ML systems engineering and life science applications. You will shape the technical direction for how ML models are trained, evaluated, and deployed at scale, collaborate closely with AI scientists and experimental researchers to close the computational-experimental loop, and drive Lila's ML infrastructure toward the next generation of capabilities.
What You'll Be Building
Design, build, and optimize large-scale training pipelines for generative models on biological and chemical data, including distributed training across GPU clusters
Own production ML systems end to end: model deployment, serving infrastructure, monitoring, and reliability for models used in Lila's scientific workflows
Architect ML infrastructure that supports rapid iteration across sequence design, structure prediction, and multimodal scientific reasoning workloads
Drive the engineering side of Lila's "Lab-in-the-Loop" lifecycle: build pipeline models, integrate experimental feedback loops, and ensure model outputs are actionable for downstream scientific workflows
Define and advance ML engineering standards, tooling, and best practices across the AI organization
Collaborate with AI scientists to translate research prototypes into robust, scalable production systems, bridging the research-to-deployment gap
What You’ll Need to Succeed
Master's degree or higher in Computer Science, Machine Learning, or a related quantitative field (or Bachelor's with equivalent professional experience)
10+ years of hands-on experience building and operating production ML systems at scale
Deep expertise in distributed training infrastructure, including experience with large-scale GPU clusters (AWS, GCP, or on-prem)
Strong software engineering fundamentals: system design, production-grade code, CI/CD, observability, and reliability practices
Proficiency in ML frameworks (PyTorch, JAX, or TensorFlow) with experience optimizing training and inference performance
Demonstrated ability to drive technical direction for ML infrastructure independently, from architecture through implementation
Track record of cross-functional collaboration with research scientists, translating between ML methodology and engineering execution
Bonus Points For
Experience building training or inference infrastructure for generative models applied to biological sequences, molecular structures, or scientific data
Experience with agentic frameworks, active learning loops, or closed-loop experimental workflows
Contributions to open-source ML tools, frameworks, or infrastructure projects
Familiarity with at least one life science domain (molecular biology, genomics, protein engineering, or nucleic acid design)
Experience with model evaluation frameworks for scientific applications where ground truth is sparse or delayed
Compensation
We offer competitive base compensation with bonus potential and generous early-stage equity. Your final offer will reflect your background, expertise, and expected impact.
U.S. Benefits. Full-time U.S. employees receive a comprehensive benefits program including medical, dental, and vision coverage; employer-paid life and disability insur ... (truncated, view full listing at source)
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