Applied Bioinformatics Engineer, Pipelines & AI

Eli Lilly Eli Lilly · Pharma · Boston, MA +1

This role focuses on building and scaling analytical pipelines for bioinformatics and genomics data, with a significant emphasis on integrating AI-enabled tooling, including LLMs and agentic workflows. The engineer will prototype agentic workflows for automating analytical tasks, build connectors for LLM agents, and identify use cases for AI to improve research speed and quality. The role requires strong software engineering skills and a curiosity for both classical bioinformatics and modern AI.

What you'd actually do

  1. Support for computational biology workflows, including single cell, spatial, and other multi-omics analysis workflows for clinical and preclinical applications
  2. Prototype agentic workflows that automate established and routine analytical tasks — for example, pulling target evidence across data sources, generating standardized due-diligence reports, or letting scientists interrogate complex datasets in natural language
  3. Build and maintain MCP connectors that expose internal data, public resources, and analytical pipelines to LLM-based agents and tools like Claude
  4. Identify and develop use cases where LLMs and agentic AI workflows can improve the speed, quality, consistency, or accessibility of work across therapeutic areas, focusing on end-to-end capabilities rather than isolated task completion
  5. Write tests, documentation, and clear examples so the pipelines you build are usable by colleagues with a range of technical backgrounds

Skills

Required

  • Python
  • R
  • Git
  • workflow managers (Nextflow, Snakemake, WDL)
  • containerization (Docker, Singularity)
  • bioinformatics file formats (VCF, BED, GTF, BAM)
  • standard bioinformatics tools (PLINK, samtools, bcftools)
  • NGS data

Nice to have

  • strong software engineering instincts
  • keen curiosity and creativity
  • modern AI tooling

What the JD emphasized

  • AI-assisted workflows
  • agentic workflows
  • LLM-based agents
  • AI tooling landscape
  • AI-enabled tooling and workflows

Other signals

  • AI-assisted workflows
  • agentic workflows
  • LLM-based agents
  • AI tooling landscape