Principal ML Research Engineer

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

Founding engineering leader for a new AI for Cell Biology team, focused on building and operating the platform for autonomous-science capabilities in cellular and tissue biology. This includes domain data, specialist models, serving infrastructure, agentic systems, and evaluation harnesses, integrating deep biological expertise with foundation modeling and agentic systems. The role involves leveraging and extending central AI/Data platforms, co-developing technical direction, and setting engineering standards.

What you'd actually do

  1. Build and operate the domain data platform.
  2. Build and operate the shared specialist-model serving and fine-tuning stack.
  3. Build and operate the shared agentic infrastructure.
  4. Build and operate the cross-program evaluation harness.
  5. Leverage and extend Lila's central AI Platform and Data Platform.

Skills

Required

  • Build and operate the domain data platform.
  • Build and operate the shared specialist-model serving and fine-tuning stack.
  • Build and operate the shared agentic infrastructure.
  • Build and operate the cross-program evaluation harness.
  • Leverage and extend Lila's central AI Platform and Data Platform.
  • Co-develop the technical platform direction.
  • Set engineering standards and grow the engineering bench.
  • Advanced deep biological expertise with foundation modeling and agentic systems.
  • Autonomous-science capabilities for cellular and tissue biology.
  • Multi-modal experimental data.
  • Fine-tuning and (where warranted) training of domain-specific models.
  • Unified reasoning-trace and tool-call schema.
  • Rollout generation, tool orchestration, and rubric grading.
  • Instrumentation that gauges progress across the team's research programs.
  • Connects team-internal metrics to Lila's broader scientific evaluation suite.
  • Benchmarks instrumented here outlive any single program.
  • Senior IC role for someone who wants to build.
  • Engineering depth to ship the infrastructure.
  • Judgment to co-author tech stack strategy.

Nice to have

  • Represent Lila's AI for Cell Biology platform engineering through open-source contributions, conference participation, and recruiting top-of-funnel.

What the JD emphasized

  • founding engineering leader
  • 0->1 hands-on role
  • build and operate the engineering platform
  • domain data
  • domain-specific models
  • shared specialist-model serving and inference
  • agentic infrastructure
  • evaluation harness
  • integrates cell-biology research with Lila's central autonomous-science platform
  • core-model, agentic-systems, and experimental-automation infrastructure
  • leverage and extend core Lila infrastructure
  • co-develop the technical direction
  • advanced deep biological expertise with foundation modeling and agentic systems
  • autonomous-science capabilities for cellular and tissue biology
  • multi-modal experimental data
  • fine-tuning and (where warranted) training of domain-specific models
  • unified reasoning-trace and tool-call schema
  • rollout generation, tool orchestration, and rubric grading
  • instrumentation that gauges progress across the team's research programs
  • connects team-internal metrics to Lila's broader scientific evaluation suite
  • benchmarks instrumented here outlive any single program
  • senior IC role for someone who wants to build
  • engineering depth to ship the infrastructure
  • judgment to co-author tech stack strategy
  • build and operate the domain data platform
  • curation, accessibility, lineage, schema, and versioning infrastructure
  • multi-modal scientific data
  • single-cell omics, perturbation biology, spatial profiling, imaging, genetics
  • make complex domain data discoverable and queryable
  • steward the reasoning-trace and tool-call schema
  • build and operate the shared specialist-model serving and fine-tuning stack
  • serve the field's strongest specialist biology models
  • composable, versioned tools
  • build and operate the shared agentic infrastructure
  • set the standards by which agentic workflows are reproducible, observable, evaluable, and safe to scale
  • build and operate the cross-program evaluation harness
  • partner with the team scientific leads to shape the engineering architecture end-to-end
  • set engineering standards and grow the engineering bench
  • set the team's engineering culture
  • mentor research engineers
  • externally, represent Lila's AI for Cell Biology platform engineering
  • open-source contributions, conference participation, and recruiting top-of-funnel

Other signals

  • founding engineering leader
  • 0->1 hands-on role
  • build and operate the engineering platform
  • domain data
  • domain-specific models
  • shared specialist-model serving and inference
  • agentic infrastructure
  • evaluation harness
  • integrates cell-biology research with Lila's central autonomous-science platform
  • core-model, agentic-systems, and experimental-automation infrastructure
  • leverage and extend core Lila infrastructure
  • co-develop the technical direction
  • advanced deep biological expertise with foundation modeling and agentic systems
  • autonomous-science capabilities for cellular and tissue biology
  • multi-modal experimental data
  • fine-tuning and (where warranted) training of domain-specific models
  • unified reasoning-trace and tool-call schema
  • rollout generation, tool orchestration, and rubric grading
  • instrumentation that gauges progress across the team's research programs
  • connects team-internal metrics to Lila's broader scientific evaluation suite
  • benchmarks instrumented here outlive any single program
  • senior IC role for someone who wants to build
  • engineering depth to ship the infrastructure
  • judgment to co-author tech stack strategy
  • build and operate the domain data platform
  • curation, accessibility, lineage, schema, and versioning infrastructure
  • multi-modal scientific data
  • single-cell omics, perturbation biology, spatial profiling, imaging, genetics
  • make complex domain data discoverable and queryable
  • steward the reasoning-trace and tool-call schema
  • build and operate the shared specialist-model serving and fine-tuning stack
  • serve the field's strongest specialist biology models
  • composable, versioned tools
  • build and operate the shared agentic infrastructure
  • set the standards by which agentic workflows are reproducible, observable, evaluable, and safe to scale
  • build and operate the cross-program evaluation harness
  • partner with the team scientific leads to shape the engineering architecture end-to-end
  • set engineering standards and grow the engineering bench
  • set the team's engineering culture
  • mentor research engineers
  • externally, represent Lila's AI for Cell Biology platform engineering
  • open-source contributions, conference participation, and recruiting top-of-funnel